Literature DB >> 25635527

Autophagy Regulatory Network - a systems-level bioinformatics resource for studying the mechanism and regulation of autophagy.

Dénes Türei1, László Földvári-Nagy, Dávid Fazekas, Dezső Módos, János Kubisch, Tamás Kadlecsik, Amanda Demeter, Katalin Lenti, Péter Csermely, Tibor Vellai, Tamás Korcsmáros.   

Abstract

Autophagy is a complex cellular process having multiple roles, depending on tissue, physiological, or pathological conditions. Major post-translational regulators of autophagy are well known, however, they have not yet been collected comprehensively. The precise and context-dependent regulation of autophagy necessitates additional regulators, including transcriptional and post-transcriptional components that are listed in various datasets. Prompted by the lack of systems-level autophagy-related information, we manually collected the literature and integrated external resources to gain a high coverage autophagy database. We developed an online resource, Autophagy Regulatory Network (ARN; http://autophagy-regulation.org), to provide an integrated and systems-level database for autophagy research. ARN contains manually curated, imported, and predicted interactions of autophagy components (1,485 proteins with 4,013 interactions) in humans. We listed 413 transcription factors and 386 miRNAs that could regulate autophagy components or their protein regulators. We also connected the above-mentioned autophagy components and regulators with signaling pathways from the SignaLink 2 resource. The user-friendly website of ARN allows researchers without computational background to search, browse, and download the database. The database can be downloaded in SQL, CSV, BioPAX, SBML, PSI-MI, and in a Cytoscape CYS file formats. ARN has the potential to facilitate the experimental validation of novel autophagy components and regulators. In addition, ARN helps the investigation of transcription factors, miRNAs and signaling pathways implicated in the control of the autophagic pathway. The list of such known and predicted regulators could be important in pharmacological attempts against cancer and neurodegenerative diseases.

Entities:  

Keywords:  NHR, nuclear hormone receptor; PPI, protein-protein interaction; TFs, transcription factors; autophagy; estrogen receptors; miRNA; miRNA, microRNA; network; protein-protein interactions; regulation; resource; signaling pathway; transcription factors

Mesh:

Substances:

Year:  2015        PMID: 25635527      PMCID: PMC4502651          DOI: 10.4161/15548627.2014.994346

Source DB:  PubMed          Journal:  Autophagy        ISSN: 1554-8627            Impact factor:   16.016


Introduction

Since the discovery of autophagy in the 1960s, and the discovery of autophagy-related genes in yeast in the 1990s, our knowledge of the regulation of autophagy expanded significantly. Major post-translational regulators of the autophagic machinery are well known, compared to the transcriptional and post-transcriptional regulators, where only limited information is available currently. Autophagy is essential in homeostasis and stress-response as well as in macromolecular turnover and development. Both its insufficient and overdriven functions can hinder cell survival. Thus, the regulation of autophagy is critical, with high medical importance. The autophagic machinery, consisting of a complex interplay between more than 30 initiator and executor proteins, must be under constraints of precise, context-dependent and systems-level regulatory mechanisms at post-translational, transcriptional, and post-transcriptional levels. The proteins involved in the process of autophagy are organized into interacting complexes, having different functions in the autophagic process (e.g., initiation, membrane sequestration, and in targeting the materials to degrade in the forming phagophore). Most of the interactions within the core machinery of autophagy are well known, however, there are some unanswered questions that are needed to be resolved in order to better understand the mechanism. Interestingly, direct connections between the initiation and execution complexes were only found in the past year: it has been proved that ULK1/2, the major initiator could activate autophagy by phosphorylating another key autophagic protein, BECN1/Beclin 1. A similar important finding was obtained from yeast, where Atg1 (yeast ortholog of ULK1/2) phosphorylates Atg9 and Atg2, enhancing the membrane trafficking to the phagophore assembly site. These recent and key findings indicate that post-translational regulation of autophagy could still provide unexpected and undiscovered connection with high evolutionary or biomedical relevance. To facilitate such discoveries in silico, structure-based predictions could guide experimental researchers to validate and identify such connections. There is no doubt that post-translational regulation of autophagy is only one part of the story. Autophagic activity also depends on the expression of autophagy-related genes and is regulated by certain transcription factors (TFs) and microRNAs (miRNAs). These regulatory influences can be realized on different time scales, be driven by external signals, and constitute feedback loops. Considering the transcriptional regulation of autophagy, some elements have already been highlighted in the literature, such as the transcription factors TFEB, FOXO, and SREBFs/SREBPs. By modulating autophagy, these TFs take part in the cellular response to starvation, stress, or lipid depletion, and are also involved in the pathomechanism of several diseases. TFEB is activated upon starvation, and facilitates the transcription of many autophagy and lysosome related genes and maintains the regeneration of lysosomes. FOXO1 and FOXO3 act as effectors of the insulin signaling pathway, to regulate autophagic activity. Analogously, SREBF2/SREBP2 activates autophagy in case of sterol depletion. Beyond the role of the few TFs extensively examined and highlighted in the literature, further transcriptional regulatory components are expected to regulate autophagy in certain context. Given the advances of novel high-throughput techniques in protein-DNA interaction discovery, such as ChIP-Seq, PBA, and SELEX, numerous candidate TFs have been discovered. In addition, with resources containing TF binding site information, like JASPAR, potential target genes for a given TF can be predicted on a genome-wide scale. One may think that the current limitation in the search for autophagy regulators is the available data and computational expertise to evaluate and analyze data sets. Several miRNAs downregulate mRNAs of autophagy-related genes by specific binding. However, little is known about their systems-level role. A recent review listed more than 16 miRNAs regulating autophagy genes post-transcriptionally. These miRNAs are able to block specific steps of autophagy (e.g.,, MIR376B acts on ATG4 and BECN1, while MIR630 acts on ATG12 and UVRAG). Remarkably, most of these miRNAs affect the early stage of autophagic vacuole formation, possibly because this way miRNAs could prevent the accumulation of autophagosomes. The growing number of experimental data on miRNA-driven regulation necessitates repositories for the post-transcriptional regulation of autophagy. Such resources could facilitate our understanding on the context-dependent role of these regulators. The importance of identifying such context-dependent regulators is also supported by the fact that autophagy is a promising therapeutic target in several pathologies, especially in cancer and neurodegenerative diseases. Because autophagy has an ambiguous role in cancer, described by the ‘double-edged sword’ metaphor, therapies targeting the process need to be specific and context-dependent. Considering the complexity of autophagy and its regulation, searching for therapeutic targets without a systems-level analysis is like looking for needle in a haystack. The first step on the way to investigate the regulation of autophagy as a system is to collect all the available knowledge, including all levels of regulation. Currently elements of this knowledge are scattered in huge number of articles and bioinformatics resources, like databases of protein-protein interactions, transcriptional regulation, or post-transcriptional regulation. An integrated and precisely compiled interaction network could allow mapping feedback loops at all levels of regulation; to investigate differences by tissue, physiological or pathological state, drug effect, or gender; to build models using different mathematical formalisms, and thus simulate different conditions, and verify the models experimentally. Until now few systems-level resources about autophagy have been published. The Human Autophagy Database (HADb) is a collection of 234 autophagy-related genes, containing references to major genome and protein databases. It does not intend to provide an interaction network, so it completely lacks interaction data. Another database named Autophagy Database (ADB) contains orthologs from 40 species, and gives a comparative list of them, including a total of 206 proteins in human. For some proteins, it also collects a list of interactions—641 interactions in human—but the sources of those data and the scope of the collection is not clearly defined. A large-scale LC-MS (liquid chromatography and mass spectrometry) study provided a network of 751 interactions between 409 autophagy-related proteins. The advantage of this dataset is the uniform methodology and the relatively wide range of proteins involved in the study. However, this resource contains only the interactions detectable by the LC-MS method, and omits other interactions described in the literature. The 2 mentioned autophagy-focused resources lack data on transcriptional and post-transcriptional regulation. Prompted by the lack of a proper bioinformatics database that extensively collects available data from the literature, from protein-protein interaction databases, and prediction methods, and contains data on several levels of regulation, we developed Autophagy Regulatory Network (ARN; http://autophagy-regulation.org), a novel resource to help both in silico and wet lab researchers in their investigation of the human autophagic process.

Results

The Autophagy Regulatory Network (ARN) database

The ARN database (http://autophagy-regulation.org) contains proteins involved in the mechanisms of autophagy, their regulators, and their TF and miRNA regulators as well as connections between all these components and signaling pathways (). Six main layers build up the structure of ARN: (1) autophagy proteins, (2) their direct regulators from autophagy specific resources, (3) post-translational regulators that directly regulate proteins in the first 2 layers, (4) transcriptional regulators of the first 3 layers, (5) post-transcriptional regulators of the first 4 layers, (6) signaling pathways and protein-protein interactions connecting pathways to autophagy regulators. ARN contains interactions from manual curation, 19 external databases, and 4 prediction methods (listed in ). For basic statistics, please see . Users are able to filter interactions by sources, and use resources in a comparative way, according to their requirements. Interactions may have confidence scores, users can filter by the data set, setting preferable level of confidence, using the customizable download module.
Figure 1.

Connections between autophagy components and signaling proteins in one, 2 or 3 steps. One-step connections are direct protein-protein interactions (PPIs), or a pathway member TF regulates the transcription of an autophagy protein. Two-step connections also can include PPIs and TF-gene interactions, but TF-miRNA-mRNA interactions as well. Three-step interactions are combinations of all these types of interactions, involving 4 molecular species. In this representation, signal is coming from the signaling pathway receptors binding ligands, toward the proteins executing autophagy. By analyzing the whole network, feedback circuits and network motifs can be identified along the paths.

Table 1.

The data sources of the Autophagy Regulatory Network

Type of interactionsData sources
Protein-protein interactionsADB20
ARN manual curation
Behrends et al.21
BioGRID44
HPRD47
InnateDB45
IntAct46
ELM based prediction38
Prediction based on domain-domain interaction
Signalink 2.0 manual curation55
Transcriptional regulationABS40
ARN manual curation
ENCODE distal41
ENCODE proximal filtered41
HTRI29
JASPAR15
ORegAnno42
PAZAR43
miRNA-mRNA interactionsmiR2Disease48
miRDeathDB49
miRecords50
miRTarBase51
TarBase52
Transcriptional regulation of miRNAsENCODE41
PuTmiR 1.153
PuTmiR 2.053
TransmiR 1.254

ARN contains data from manual curation and from 23 external resources. From SignaLink we included 3,287 manually curated interactions; we used 4 prediction methods in ARN (domain-domain based prediction (using data from Pfam,39 DOMINE60 and Negatome,61) domain-motif based prediction using the structure filter for ELM,38 TF-promoter binding prediction using the JASPAR15 algorithm, and TF-miRNA gene regulation from PuTmiR53); the remaining 18 databases, including all the miRNA-mRNA data sets, contains data mainly from high-throughput experiments.

Figure 2.

Basic statistics of ARN. Number of components (A) and interactions (B) in different layers of ARN is shown. The numbers of experimentally verified interactions are indicated in parenthesis next to the total number of interactions, which also includes predicted ones.

The data sources of the Autophagy Regulatory Network ARN contains data from manual curation and from 23 external resources. From SignaLink we included 3,287 manually curated interactions; we used 4 prediction methods in ARN (domain-domain based prediction (using data from Pfam,39 DOMINE60 and Negatome,61) domain-motif based prediction using the structure filter for ELM,38 TF-promoter binding prediction using the JASPAR15 algorithm, and TF-miRNA gene regulation from PuTmiR53); the remaining 18 databases, including all the miRNA-mRNA data sets, contains data mainly from high-throughput experiments. Basic statistics of the Autophagy Regulatory Network Data sources of each layer are listed with the corresponding number of nodes (i.e., proteins or miRNAs) and edges (i.e., protein-protein interactions, TF-gene, miRNA-mRNA, or TF-miRNA regulatory connections). The number of identical nodes shows both connecting component pairs (i.e., TFs and target genes as well). For each major layer we highlighted the total number of nodes and edges in ARN that is generally less than the sum of the components due to the overlap among the resources. Note that the highlighted numbers in each layer are higher than those in any of the sources. Connections between autophagy components and signaling proteins in one, 2 or 3 steps. One-step connections are direct protein-protein interactions (PPIs), or a pathway member TF regulates the transcription of an autophagy protein. Two-step connections also can include PPIs and TF-gene interactions, but TF-miRNA-mRNA interactions as well. Three-step interactions are combinations of all these types of interactions, involving 4 molecular species. In this representation, signal is coming from the signaling pathway receptors binding ligands, toward the proteins executing autophagy. By analyzing the whole network, feedback circuits and network motifs can be identified along the paths. Basic statistics of ARN. Number of components (A) and interactions (B) in different layers of ARN is shown. The numbers of experimentally verified interactions are indicated in parenthesis next to the total number of interactions, which also includes predicted ones.

The ARN website

ARN's website is available at http://autophagy-regulation.org. The website is designed to give a comfortable way to browse interactions, providing hyperlinks to original sources and PubMed references of each interaction. The download section of the website gives an opportunity to customize the data to download: select between layers, and filter interactions by source, or by confidence score. The search field on the main page autocompletes the search term, and understands several different database IDs and accession numbers. If the search is successful, the page navigates to the datasheet of the selected protein. The protein datasheet shown in illustrating the interactions of a key autophagy protein, BECN1, contains 4 main sections. At the top of the page, in a box the full name, gene name, UniProt ID and Ensembl ID of the protein are available. Below the names, a list of related diseases and cancer types can be found. On the left side, a list of interactions enumerates all the first neighbors of the protein, grouped by layers. The lists of the layers are expandable, and within these lists, detailed information (e.g., sources, references, confidence scores) can be obtained about an individual interaction. Below the list of the interactions, the connections between signaling pathways and the autophagy system are listed. We defined this pathway connection either in one or 2 steps, where one of the proteins is a member of a given pathway, and the other one is a present in the ARN database. On the right side of the protein datasheet, an interactive view of the first neighbors’ network is presented. In this view, interactors can be filtered by layers of ARN, and users are able to get more information on proteins and interactions by clicking on them ().
Figure 3.

Screenshots from the protein datasheet of BECN1 from the ARN webpage. (A) At the top of the datasheet the name, gene name, UniProt ID, and Ensembl protein ID of the selected protein is shown, with hyperlinks to the UniProt and Ensembl webpages. Below this box, the potential signaling properties and disease related information with a special highlight on cancer types is listed. (B) The interactions of the selected protein are listed, grouped by layers. In addition, at the bottom of the list, the pathway connections can be browsed by pathways. (C) Information on sources, references and confidence scores of each interaction can be obtained by clicking on the green triangles. (D) On the right side of the datasheet, an interactive network image of the first neighbors of the selected proteins is available. Note that unlike ULK1, ULK2 is not present in the BECN1 network as ARN contains only those interactions that were specifically identified between exact proteins, and no publications were curated that experimentally verified the likely connection between ULK2 and BECN1.

Screenshots from the protein datasheet of BECN1 from the ARN webpage. (A) At the top of the datasheet the name, gene name, UniProt ID, and Ensembl protein ID of the selected protein is shown, with hyperlinks to the UniProt and Ensembl webpages. Below this box, the potential signaling properties and disease related information with a special highlight on cancer types is listed. (B) The interactions of the selected protein are listed, grouped by layers. In addition, at the bottom of the list, the pathway connections can be browsed by pathways. (C) Information on sources, references and confidence scores of each interaction can be obtained by clicking on the green triangles. (D) On the right side of the datasheet, an interactive network image of the first neighbors of the selected proteins is available. Note that unlike ULK1, ULK2 is not present in the BECN1 network as ARN contains only those interactions that were specifically identified between exact proteins, and no publications were curated that experimentally verified the likely connection between ULK2 and BECN1.

Comparison with other resources

Compared with general protein-protein interaction (PPI) databases, BioGRID contains 76 interactions between 30 autophagy proteins, while in IntAct 136 interactions between 34 autophagy proteins can be found. ADB contains 114 interactions between 31 autophagy proteins. ARN as an integrated resource contains 238 interactions between 38 autophagy proteins. Note that nearly all of the PPIs in ARN are present in other sources but it is ARN that contains them together in a single resource. Thanks to our manual curation we could increase the number of well-referenced interactions with 18, which are not present in the other sources. Similar comparison with transcriptional and post-transcriptional resources is shown in . Note that many of these connections might be false positives or highly context specific. However, similarly to PPI predictions, these potential connections could also serve as a pool of possible autophagy-related regulatory mechanisms that should be examined and confirmed experimentally. The ARN resource contains 98 known and predicted TFs for 37 autophagy genes with 557 TF-gene connections; 35 of them are manually curated, and cannot be found in other resources. Of note, we found only a few TFs present in multiple bioinformatics resources, indicating the importance of different approaches to discover TFs capable to regulate autophagy, and the usefulness of ARN as an integrated single resource. We extracted the interactions relevant in the regulation of autophagy from all constituting databases, while we have integrated different types of molecular interactions (protein-protein, TF-gene, miRNA-mRNA) into a uniform data scheme. Overall, ARN contains more regulatory interactions for the autophagy proteins than any of the constituting databases. Interactions from 23 sources have been integrated into one comprehensive database, giving the opportunity for comparison and selection between the data sources. Note that the total numbers in each ARN layer at are higher than any of the sources. This indicates the increased amount of data in ARN, compared to other resources.

Application

ARN can be used to examine the autophagy system in humans for both a global analysis or for gene-specific studies. For both cases, different levels of the regulation can be examined, validated or experiments can be evaluated. Here, we highlight another key feature of ARN that is its immersive connection with signaling pathways: ARN connects autophagy proteins directly and indirectly with 7 major signaling pathways taken from SignaLink 2. We included all connections up to 3 steps (4 elements) length, considering PPIs, TF-gene, and miRNA-mRNA interactions as well. There are 357 direct connections between pathway member proteins and autophagy proteins, indicating the robust and context specific regulation of autophagy by signaling pathways. On the one- and 2-step long connections between pathways and autophagy components are shown. This is a global map that could be specifically analyzed or zoomed in by users who download ARN.
Figure 4.

The network of 7 signaling pathways with direct autophagy regulators and core autophagy proteins. The numbers represent the total number of components in each section but for clarity, only components with the highest confidence, one- or 2- step long connections are shown on this figure. We also omitted the connections through transcription factors or miRNAs. Edges between autophagy proteins are blue. Intermediate components (i.e., direct autophagy regulators) in the 2-step connections and their edges are colored with black. Pathways are color-coded, multipathway proteins and edges between different pathways have the colors of the involved pathways mixed. Edges directly connecting pathways and autophagy proteins have the color of the source pathway.

The network of 7 signaling pathways with direct autophagy regulators and core autophagy proteins. The numbers represent the total number of components in each section but for clarity, only components with the highest confidence, one- or 2- step long connections are shown on this figure. We also omitted the connections through transcription factors or miRNAs. Edges between autophagy proteins are blue. Intermediate components (i.e., direct autophagy regulators) in the 2-step connections and their edges are colored with black. Pathways are color-coded, multipathway proteins and edges between different pathways have the colors of the involved pathways mixed. Edges directly connecting pathways and autophagy proteins have the color of the source pathway. In the following, we illustrate the power of multilayered connection between autophagy and signaling pathways with the example of the nuclear hormone receptor (NHR) pathway. Most of the transcription factors regulating autophagy proteins belong to the NHR pathway. Using ARN data, we found potential androgen or estrogen receptor binding sites in the promoters of 2-thirds of the autophagy proteins (32). Though gender differences at the level of autophagy are observed in many diseases, little is known about the mechanisms underlying this phenomenon. For example, in cardiomyocytes and neurons, following ischemia and reperfusion, autophagy mediates in part the cytoprotective effect of estrogen, resulting in a higher level of apoptosis in males. Also in neurodegenerative diseases, gender differences in autophagy have been described. In addition, almost all neurodegenerative diseases have higher incidence in females. At certain prostate cancer cell types, androgen signaling plays a cardinal role in the choice between autophagy and apoptosis, former helping survival and metastasis formation, while latter delaying tumor growth. ARN could help to find the connection between sex steroid signaling and autophagy. In , the transcriptional regulation of autophagy proteins by the androgen and estrogen receptors is presented. Regulation of ULK1/2 and UVRAG by ESR1 is experimentally verified, according to the HTRI database. All the other connections were predicted in ARN using the JASPAR algorithm. Another autophagy protein, WIPI1 can also be transcriptionally regulated by sex steroid receptors. In addition, WIPI1 contains an LXXLL motif, which enables it to bind to ESR1, ESR2, and AR in a hormone independent way. This connection is important, because localization of WIPI1 depends on autophagic activity, and at the same time it regulates sex steroid signaling, affecting the transcription of several autophagy proteins, including WIPI1 itself. As it is shown in , 84% of the core autophagy proteins are transcriptionally regulated by sex steroid receptors. ESR1, ESR2, and AR regulate different but overlapping sets of autophagy proteins (23, 12, and 12 proteins, respectively). AR is also able to heterodimerize and activate ESR1, as well as ESR1 and ESR2 each other. Further research studies might reveal the role of these mechanisms in a gender-specific regulation of the autophagic activity.
Figure 5.

Interactions between the 2 estrogen receptors (ESR1 and ESR2), the androgen receptor (AR), and 32 autophagy proteins. Dashed line represents transcriptional regulation, while continuous line is for post-translational regulation. The width of the lines shows the number of data sources where the interaction can be found. The size of a node is proportional with the number of its connections. WIPI1 is able to bind to the estrogen receptors. AR and ESR2 are able to heterodimerize with ESR1. The interactions between the autophagy proteins are shown with a continuous line.

Interactions between the 2 estrogen receptors (ESR1 and ESR2), the androgen receptor (AR), and 32 autophagy proteins. Dashed line represents transcriptional regulation, while continuous line is for post-translational regulation. The width of the lines shows the number of data sources where the interaction can be found. The size of a node is proportional with the number of its connections. WIPI1 is able to bind to the estrogen receptors. AR and ESR2 are able to heterodimerize with ESR1. The interactions between the autophagy proteins are shown with a continuous line.

Discussion

Here we present a novel resource on the regulation of autophagy in human. Autophagy Regulatory Network (ARN; http://autophagy-regulation.org) is a comprehensive interaction database featuring a manually curated core dataset, integrated and predicted data from numerous sources, and direct connection to literature curated interactions of 7 major signaling pathways. Directions, signs, confidence scores, and references are available for each interaction. ARN is accessible through a user-friendly webpage, and the data can be downloaded in all major bioinformatics standard formats, including simple text/table files and visualized Cytoscape networks. To achieve a better understanding of context-dependent regulation of autophagic activity, a systems-level analysis of regulatory mechanisms is necessary. External stimuli processed by the signaling network can modulate autophagy at post-translational, transcriptional, and post-transcriptional level. Applying this approach in research studies can lead to the identification of key regulatory circuits, which are responsible for specificities in the regulation of autophagy, in different tissues, and under pathologic or therapeutic conditions. We created ARN with the aim to support the systems-level analysis of context-dependent regulation of autophagy, and also to facilitate the large-scale examination of a single autophagy-related protein. Primary data on post-translational, transcriptional, and post-transcriptional regulation of autophagy proteins can be obtained from various resources. However, to use data from multiple resources in one analysis can be tedious because of the different data formats and molecular database IDs. Furthermore, many resources often contain erroneous interactions between proteins, derived from high-throughput methods or predictions. To address this problem, ARN involves manually curated interactions between autophagy proteins, their post-translational regulators, and between signaling components. Most of the interactions in ARN have confidence values allowing the user to set an own cut-off value (or use the default value calculated by ROC analysis, using manually curated interactions as gold standard set). For all protein-protein interactions we offer the Gene Ontology semantic similarity score. This score is based on the assumption, that proteins involved in similar biological processes are more likely to interact in vivo. This way we can decrease the ratio of erroneous interactions from high-throughput screenings or predictions. Before ARN, 2 autophagy-focused resources have been published. The Human Autophagy Database (HADb) contains only sequence data of genes from an autophagy-dedicated microarray. Autophagy Database (ADB) provides orthology data from 41 species, and for some proteins also a list of interactions. However, the source of these interactions and the scope of the curation are not clearly defined. Indeed, the main aim of ADB is to serve a comprehensive collection of orthologs of autophagy-related genes. The interaction data are not available for download in a single file, but can be browsed only on the webpage. Compared to HADb and ADB, in ARN the data sources are well defined, and the size of the network is determined by the principles of its design. ARN provides data not only on post-translational regulators, but also on transcriptional and post-transcriptional regulators. In addition, beside the direct regulators of the proteins involved in autophagy initiation and execution, ARN makes a connection between the cellular signaling network and the regulation of autophagy. The directions, signs, and confidence scores of the interactions are supplied in format ready for computational processing. ARN serves as a good basis for various kinds of bioinformatics approaches, while it also effectively supports wet lab research work. Using the ARN website, researchers are able to search for potential interactors or regulators affecting their subject of interest. ARN database contains many potential regulators of the entire autophagic process and even for a single component that allows researchers to combine expression or mutation data sets and analyze autophagy in context-specific states. For example, ARN data can be used to point out important alterations in autophagy regulation upon a disease. Therefore, ARN can support experiment design and evaluation for both basic and translational research works. Furthermore, network data of ARN can be analyzed with graph topological methods, modularization methods, perturbation simulations, and models can be built using different mathematical formalisms. Having an appropriate, good quality a priori knowledge as a starting point is a crucial requirement of successful modeling. ARN aims to support modeling approaches by serving as a good basis for a variety of methods, such as Boolean and rule-based modeling. Combining with gene expression or mutation data, comparative analyses can be carried out to investigate differences in autophagy regulation by tissue, physiological or pathological conditions, gender, and many other aspects. With the inclusion of drug compound and target interaction data, ARN is suitable to support network-based pharmacological attempts, such as multi-target and allo-network drug design. Knowing that the list of components and interactions in each layer is not complete, we will include further experimentally validated data every year. We also intend to include tissue-specific localization information to future versions of ARN. In addition, we will work on the extension of ARN for other species, for example, yeast, Drosophila, and zebrafish. In the form of the feedback option of the ARN website, we are looking for comments and suggestions from autophagy researchers on how we can improve ARN. In conclusion, the Autophagy Regulatory Network reported here is a novel, extensive bioinformatics resource focusing on the regulation of autophagy. It opens up new opportunities in autophagy research, both for experimental and in silico research work, as well as for small-scale and systems-level studies. On the ARN website (http://autophagy-regulation.org), possible post-translational, transcriptional, and post-transcriptional regulators of autophagy related proteins can be examined easily. Key disease and cancer-related information are also listed to highlight the medical relevance of the proteins. ARN database can be downloaded in a user specific content and format allowing a customizable and efficient way to assist the community. ARN is a gap-filling integrative resource, and we hope that it will enable the autophagy research community to analyze more easily the already available data, guide future research projects, and facilitate autophagy-related conceptualizations of biomedical processes.

Methods

Compilation of the Autophagy Regulatory Network

We developed an onion-like, multilayered database structure to integrate and utilize the different regulatory layers of the Autophagy Regulatory Network. The core of the network contains autophagy executor proteins based on reviews. Within the core module, interactions between the proteins are from manual curation of the literature. First, we systematically checked every autophagy related protein-protein interactions mentioned in the review articles. Next, we searched for the original research articles experimentally verifying the interactions. We also used iHop and Chilibot web services to supplement the review-based information and cite experimental evidence. For each manually curated interaction, we listed the following information on the interaction: 1) PubMed ID of the primary first-time verifying article; 2) direction; 3) effect type (stimulatory/inhibitory); 4) molecular mechanism (if available). We searched for interactions among autophagy core proteins and between autophagy core proteins and their regulating proteins. We collected exclusively and very strictly interactions between 2 human proteins; interspecies, or even uncertain human-protein interactions, were omitted. We considered interactions as direct if chemical reaction or physical binding occur between the 2 molecules (e.g., a protein phosphorylates another). Interactions presumably without such chemical or physical mechanism are denoted as indirect (e.g., interaction between a transcription factor and the protein, whose gene is targeted by the transcription factor, or in case of 2 members of a complex without direct binding to each other). Similarly, all miRNA interactions are indirect, because the miRNA does not regulate directly the protein's concentration or activity, but only its translation process. ARN is a network database, where nodes represent primarily proteins, not genes or mRNAs. That is why in the ARN database interactions taking effect with interposition of more molecules, are indirect. In the first layer, the direct protein regulators of the core autophagy machinery are collected. The first layer is from 3 sources: (a) from manual curation of the literature, (b) data acquired from the Autophagy Database (ADB), and (c) from a proteomic analysis of the autophagy network. In the second layer, potential protein regulators are listed that have not yet been found to regulate the core autophagy proteins or their known regulators but in silico methods predicted their enzymatic reaction or protein binding to them. For this purpose, we used the ELM server and searched for enzymes (i.e., phosphatases, ubiquitin-ligases, peptidases, etc.) that can directly or indirectly modify autophagy components. We also used protein domain information from PFAM to predict a protein-protein interaction (PPI) based on domain-domain interactions. The next 3 layers contain information on the transcriptional and post-transcriptional regulators of the above described inner-layers (i.e., autophagy components, their known and predicted protein regulators). The transcriptional regulatory layer contains transcription factors that are known or predicted to transcriptionally regulate the inner layers. These regulatory connections were integrated from databases such as ABS, ENCODE, HTRIdb, ORegAnno and PAZAR, or predicted with JASPAR. We also performed manual curation to collect TFs directly regulating autophagy proteins. In addition, to add the known complexity of transcriptional regulation, this layer also contains PPIs between the TFs from BioGRID, InnateDB, IntAct and HPRD databases. In the next layer, we integrated miRNAs as post-transcriptional regulators of the inner-layers (autophagy components and their direct regulators, including enzymes and TFs) from experimentally verified miRNA-mRNA interaction databases: miR2Disease, miRDeathDB, miRecords, miRTarBase, and Tarbase. The third regulatory layer contains the transcriptional regulators of these miRNAs (i.e., TFs known to regulate the expression of the miRNAs known to downregulate autophagy component or regulators). We used ENCODE, PuTmiR 1.1 and 2.0 versions and TransmiR v1.2 to integrate this information. Data from the integrated resources were downloaded in the spring of 2013. In the last step of the compilation, we connected signaling pathways from SignaLink 2 (http://signalink.org), a resource we recently developed, containing manually curated data of signaling pathways. SignaLink 2 contains 7 major signaling pathways: RTK (receptor tyrosine kinase), TGFB/TGF-β (transforming growth factor β), WNT, Hedgehog, JAK-STAT, NOTCH and NHR. Connections between signaling pathways and autophagy were derived in 3 different ways: (a) predicted or experimentally verified direct PPIs between a signaling protein and an autophagy protein; (b) via the transcriptional regulation of a signaling pathway related TFs and its autophagy-related target; and (c) through post-transcriptional regulation, where a signaling pathway affects a TF of a miRNA, which regulates a protein involved in autophagy or its regulation. Note that we also added further protein-protein interactions from BioGRID, InnateDB, IntAct, HPRD, and predictions between all the already included protein components. For every integrated data source containing interactions collected with different methods, quality control is highly important. From each source databases we included the available confidence scores, maintaining the possibility for the users to exclude low confidence interactions from their analysis. However, these scores are only available for the subset of interactions derived from the specific source. To obtain a general confidence score for all protein-protein interactions, we calculated semantic similarity score between the Gene Ontology Biological Process properties of the interacting pairs of proteins. In case of PPIs inferred from domain-domain based prediction, we performed a ROC analysis to minimize the false positive rate. With the domain-motif based prediction, we used the cut-off value suggested by the authors of the ELM Structure Filter algorithm. For each protein in ARN we included disease and cancer type annotations. We obtained diseases from GAD (The Genetic Associations Database), and OMIM (Online Mendelian Inheritance in Man), and cancer-type mutation patterns from COSMIC (Catalog of Somatic Mutations in Cancer).

Database implementation and structure

Data storage is based on MySQL, which serves data to the webpage by a PHP interface. The webpage uses jQuery on the client side to offer a high interactivity. Information can be loaded asynchronously by small http requests, giving an efficient and comfortable browsing experience through hundreds of interactions. We wrote a separate data export module in Python language that offers various choices to download data in CSV, BioPAX, PSI-MI TAB, PSI-MI XML, SBML, and Cytoscape's CYS format. Several options are available to customize the network to download: users are able to filter by interaction types (e.g., PPIs, transcriptional regulation), as well as by sources. There is also an option to separate experimentally verified and predicted interactions. The customized network files are generated according to the selected options by the export module running in the background. This process can take few minutes. Then, for each download, we generate a URL, where users can access the data for 14 days Optionally, users can provide their email addresses to which files smaller than 10 MB will be emailed. The whole dataset is also available as a standard SQL dump, so any complex query or modification can be applied using SQL statements. The core of the ARN database is the interaction table. In the interaction table source and target fields are integers pointing to the primary keys of protein or "mirna" tables. The layer field denotes the type of the interaction, and its value determines if the source or the target refers to a protein or miRNA. The meanings of the values in the layer field are the followings: 0: interactions between autophagy executor proteins; 1: PPIs between autophagy proteins and their direct regulators from our manual curation, ADB and the ChIP-Seq study of Behrends et al.; 2: direct and indirect regulators of autophagy proteins from general PPI resources and from predictions based on domain-domain and domain-motif interactions; 3: value not used due to technical reasons; 4: TF-target connections; 5: miRNA-mRNA connections, 6: PPIs in the signaling pathways, imported from SignaLink 2; 7: TF-miRNA connections; 8: PPIs between TFs, signaling pathways and autophagy regulators, from the same sources as layer 2. Each interaction has 3 main attributes: is_directed (0: undirected; 1: directed; 2: direction is predicted), is_direct (0: indirect; 1: direct) and is_stimulation (0: unknown; 1: stimulation, -1: inhibition). In addition, interactions have one or more sources. Sources are listed in the source table, and the interaction_source table contains their assignment to the interaction table. Manually curated interactions have literature references, contained by the interaction_reference table. In the interaction_reference table, articles are identified by their Pubmed IDs. Most of the interactions have confidence scores. These are stored as float values in the interaction_weight table, the different types of scores are listed in weight table. Components of ARN are listed in the protein and "mirna" tables. The protein table contains the uniprot_name field, which is unique, and it contains the UniProt accession number of proteins. All records imported from other databases, as well protein names from articles are mapped to their primary UniProtKB ID. Proteins may have signaling topological properties and pathway assignments, available in protein_topology and protein_pathway tables. In the "mirna" table we used miRBase AC and miRNA name to identify miRNAs.
Table 2.

Basic statistics of the Autophagy Regulatory Network

Data sources and layersIdentical nodesIdentical edges
Core autophagy proteins38238
 ADB2031114
 ARN manual curation2026
 Behrends et al.212638
 BioGRID443076
 ELM-based prediction381664
 HPRD471111
 InnateDB452840
 IntAct4634136
Post-translational regulators13,803197,167
 ADB206381
 ARN manual curation4746
 Behrends et al.398441
 BioGRID12,05171,496
 Domain-domain based prediction1661,138
 ELM-based prediction93778,824
 HPRD7,29029,617
 InnateDB2,8166,125
 IntAct9,86245,745
Transcriptional regulators13,340170,245
 ABS402314
 ARN manual curation3135
 ENCODE412,2099,217
 HTRI2912,20939,477
 JASPAR1512,813119,873
 ORegAnno42908932
 PAZAR431,9403,018
Post-transcriptional regulators7,63320,186
 miR2Disease48171124
 miRDeathDB49126108
 miRecords50664760
 miRTarBase517,20319,177
 TarBase521,7982,584
Transcriptional regulation of miRNAs6466,911
 ENCODE195590
 PuTmiR 1.1534133,034
 PuTmiR 2.02883,095
 TransmiR54291542
Signaling pathways and interactions1,1993,287
 SignaLink 2 manual curation551,1993,287
 BioGRID535697
 HPRD481611
 InnateDB951
 IntAct1269

Data sources of each layer are listed with the corresponding number of nodes (i.e., proteins or miRNAs) and edges (i.e., protein-protein interactions, TF-gene, miRNA-mRNA, or TF-miRNA regulatory connections). The number of identical nodes shows both connecting component pairs (i.e., TFs and target genes as well). For each major layer we highlighted the total number of nodes and edges in ARN that is generally less than the sum of the components due to the overlap among the resources. Note that the highlighted numbers in each layer are higher than those in any of the sources.

  59 in total

1.  Gene ontology: tool for the unification of biology. The Gene Ontology Consortium.

Authors:  M Ashburner; C A Ball; J A Blake; D Botstein; H Butler; J M Cherry; A P Davis; K Dolinski; S S Dwight; J T Eppig; M A Harris; D P Hill; L Issel-Tarver; A Kasarskis; S Lewis; J C Matese; J E Richardson; M Ringwald; G M Rubin; G Sherlock
Journal:  Nat Genet       Date:  2000-05       Impact factor: 38.330

2.  The genetic association database.

Authors:  Kevin G Becker; Kathleen C Barnes; Tiffani J Bright; S Alex Wang
Journal:  Nat Genet       Date:  2004-05       Impact factor: 38.330

3.  A gene network for navigating the literature.

Authors:  Robert Hoffmann; Alfonso Valencia
Journal:  Nat Genet       Date:  2004-07       Impact factor: 38.330

Review 4.  Androgen receptor (AR) positive vs negative roles in prostate cancer cell deaths including apoptosis, anoikis, entosis, necrosis and autophagic cell death.

Authors:  Simeng Wen; Yuanjie Niu; Soo Ok Lee; Chawnshang Chang
Journal:  Cancer Treat Rev       Date:  2013-08-07       Impact factor: 12.111

5.  Different apoptotic mechanisms are activated in male and female brains after neonatal hypoxia-ischaemia.

Authors:  Changlian Zhu; Falin Xu; Xiaoyang Wang; Masahiro Shibata; Yasuo Uchiyama; Klas Blomgren; Henrik Hagberg
Journal:  J Neurochem       Date:  2006-01-12       Impact factor: 5.372

6.  WIPI-1alpha (WIPI49), a member of the novel 7-bladed WIPI protein family, is aberrantly expressed in human cancer and is linked to starvation-induced autophagy.

Authors:  Tassula Proikas-Cezanne; Scott Waddell; Anja Gaugel; Tancred Frickey; Andrei Lupas; Alfred Nordheim
Journal:  Oncogene       Date:  2004-12-16       Impact factor: 9.867

7.  ABS: a database of Annotated regulatory Binding Sites from orthologous promoters.

Authors:  Enrique Blanco; Domènec Farré; M Mar Albà; Xavier Messeguer; Roderic Guigó
Journal:  Nucleic Acids Res       Date:  2006-01-01       Impact factor: 16.971

8.  Content-rich biological network constructed by mining PubMed abstracts.

Authors:  Hao Chen; Burt M Sharp
Journal:  BMC Bioinformatics       Date:  2004-10-08       Impact factor: 3.169

9.  Early steps in autophagy depend on direct phosphorylation of Atg9 by the Atg1 kinase.

Authors:  Daniel Papinski; Martina Schuschnig; Wolfgang Reiter; Larissa Wilhelm; Christopher A Barnes; Alessio Maiolica; Isabella Hansmann; Thaddaeus Pfaffenwimmer; Monika Kijanska; Ingrid Stoffel; Sung Sik Lee; Andrea Brezovich; Jane Hua Lou; Benjamin E Turk; Ruedi Aebersold; Gustav Ammerer; Matthias Peter; Claudine Kraft
Journal:  Mol Cell       Date:  2014-01-16       Impact factor: 17.970

Review 10.  Navigating the multilayered organization of eukaryotic signaling: a new trend in data integration.

Authors:  Tapesh Santra; Walter Kolch; Boris N Kholodenko
Journal:  PLoS Comput Biol       Date:  2014-02-13       Impact factor: 4.475

View more
  45 in total

Review 1.  The emergence of noncoding RNAs as Heracles in autophagy.

Authors:  Jian Zhang; Peiyuan Wang; Lin Wan; Shouping Xu; Da Pang
Journal:  Autophagy       Date:  2017-04-25       Impact factor: 16.016

2.  ATD: a comprehensive bioinformatics resource for deciphering the association of autophagy and diseases.

Authors:  Wenjing Wang; Peng Zhang; Leijie Li; Zhaobin Chen; Weiyang Bai; Guiyou Liu; Liangcai Zhang; Haiyang Jia; Li Li; Yingcui Yu; Mingzhi Liao
Journal:  Database (Oxford)       Date:  2018-01-01       Impact factor: 3.451

3.  THANATOS: an integrative data resource of proteins and post-translational modifications in the regulation of autophagy.

Authors:  Wankun Deng; Lili Ma; Ying Zhang; Jiaqi Zhou; Yongbo Wang; Zexian Liu; Yu Xue
Journal:  Autophagy       Date:  2018       Impact factor: 16.016

4.  Autophagy and Tumor Database: ATdb, a novel database connecting autophagy and tumor.

Authors:  Kelie Chen; Dexin Yang; Fan Zhao; Shengchao Wang; Yao Ye; Wenjie Sun; Haohua Lu; Zhi Ruan; Jinming Xu; Tianru Wang; Guang Lu; Liming Wang; Yu Shi; Honghe Zhang; Han Wu; Weiguo Lu; Han-Ming Shen; Dajing Xia; Yihua Wu
Journal:  Database (Oxford)       Date:  2020-01-01       Impact factor: 3.451

5.  Tracing the footsteps of autophagy in computational biology.

Authors:  Dipanka Tanu Sarmah; Nandadulal Bairagi; Samrat Chatterjee
Journal:  Brief Bioinform       Date:  2021-07-20       Impact factor: 11.622

Review 6.  Adoptive Autophagy Activation: a Much-Needed Remedy Against Chemical Induced Neurotoxicity/Developmental Neurotoxicity.

Authors:  A Srivastava; V Kumar; A Pandey; S Jahan; D Kumar; C S Rajpurohit; S Singh; V K Khanna; A B Pant
Journal:  Mol Neurobiol       Date:  2016-02-18       Impact factor: 5.590

7.  AutophagySMDB: a curated database of small molecules that modulate protein targets regulating autophagy.

Authors:  Ravikanth Nanduri; Rashi Kalra; Ella Bhagyaraj; Anuja P Chacko; Nancy Ahuja; Drishti Tiwari; Sumit Kumar; Monika Jain; Raman Parkesh; Pawan Gupta
Journal:  Autophagy       Date:  2019-02-03       Impact factor: 16.016

8.  MDH1 and MPP7 Regulate Autophagy in Pancreatic Ductal Adenocarcinoma.

Authors:  Maria New; Tim Van Acker; Jun-Ichi Sakamaki; Ming Jiang; Rebecca E Saunders; Jaclyn Long; Victoria M-Y Wang; Axel Behrens; Joana Cerveira; Padhmanand Sudhakar; Tamas Korcsmaros; Harold B J Jefferies; Kevin M Ryan; Michael Howell; Sharon A Tooze
Journal:  Cancer Res       Date:  2019-02-14       Impact factor: 12.701

Review 9.  Sex differences in autophagy-mediated diseases: toward precision medicine.

Authors:  Dangtong Shang; Lingling Wang; Daniel J Klionsky; Hanhua Cheng; Rongjia Zhou
Journal:  Autophagy       Date:  2020-04-17       Impact factor: 16.016

10.  Guidelines for the use and interpretation of assays for monitoring autophagy (3rd edition).

Authors:  Daniel J Klionsky; Kotb Abdelmohsen; Akihisa Abe; Md Joynal Abedin; Hagai Abeliovich; Abraham Acevedo Arozena; Hiroaki Adachi; Christopher M Adams; Peter D Adams; Khosrow Adeli; Peter J Adhihetty; Sharon G Adler; Galila Agam; Rajesh Agarwal; Manish K Aghi; Maria Agnello; Patrizia Agostinis; Patricia V Aguilar; Julio Aguirre-Ghiso; Edoardo M Airoldi; Slimane Ait-Si-Ali; Takahiko Akematsu; Emmanuel T Akporiaye; Mohamed Al-Rubeai; Guillermo M Albaiceta; Chris Albanese; Diego Albani; Matthew L Albert; Jesus Aldudo; Hana Algül; Mehrdad Alirezaei; Iraide Alloza; Alexandru Almasan; Maylin Almonte-Beceril; Emad S Alnemri; Covadonga Alonso; Nihal Altan-Bonnet; Dario C Altieri; Silvia Alvarez; Lydia Alvarez-Erviti; Sandro Alves; Giuseppina Amadoro; Atsuo Amano; Consuelo Amantini; Santiago Ambrosio; Ivano Amelio; Amal O Amer; Mohamed Amessou; Angelika Amon; Zhenyi An; Frank A Anania; Stig U Andersen; Usha P Andley; Catherine K Andreadi; Nathalie Andrieu-Abadie; Alberto Anel; David K Ann; Shailendra Anoopkumar-Dukie; Manuela Antonioli; Hiroshi Aoki; Nadezda Apostolova; Saveria Aquila; Katia Aquilano; Koichi Araki; Eli Arama; Agustin Aranda; Jun Araya; Alexandre Arcaro; Esperanza Arias; Hirokazu Arimoto; Aileen R Ariosa; Jane L Armstrong; Thierry Arnould; Ivica Arsov; Katsuhiko Asanuma; Valerie Askanas; Eric Asselin; Ryuichiro Atarashi; Sally S Atherton; Julie D Atkin; Laura D Attardi; Patrick Auberger; Georg Auburger; Laure Aurelian; Riccardo Autelli; Laura Avagliano; Maria Laura Avantaggiati; Limor Avrahami; Suresh Awale; Neelam Azad; Tiziana Bachetti; Jonathan M Backer; Dong-Hun Bae; Jae-Sung Bae; Ok-Nam Bae; Soo Han Bae; Eric H Baehrecke; Seung-Hoon Baek; Stephen Baghdiguian; Agnieszka Bagniewska-Zadworna; Hua Bai; Jie Bai; Xue-Yuan Bai; Yannick Bailly; Kithiganahalli Narayanaswamy Balaji; Walter Balduini; Andrea Ballabio; Rena Balzan; Rajkumar Banerjee; Gábor Bánhegyi; Haijun Bao; Benoit Barbeau; Maria D Barrachina; Esther Barreiro; Bonnie Bartel; Alberto Bartolomé; Diane C Bassham; Maria Teresa Bassi; Robert C Bast; Alakananda Basu; Maria Teresa Batista; Henri Batoko; Maurizio Battino; Kyle Bauckman; Bradley L Baumgarner; K Ulrich Bayer; Rupert Beale; Jean-François Beaulieu; George R Beck; Christoph Becker; J David Beckham; Pierre-André Bédard; Patrick J Bednarski; Thomas J Begley; Christian Behl; Christian Behrends; Georg Mn Behrens; Kevin E Behrns; Eloy Bejarano; Amine Belaid; Francesca Belleudi; Giovanni Bénard; Guy Berchem; Daniele Bergamaschi; Matteo Bergami; Ben Berkhout; Laura Berliocchi; Amélie Bernard; Monique Bernard; Francesca Bernassola; Anne Bertolotti; Amanda S Bess; Sébastien Besteiro; Saverio Bettuzzi; Savita Bhalla; Shalmoli Bhattacharyya; Sujit K Bhutia; Caroline Biagosch; Michele Wolfe Bianchi; Martine Biard-Piechaczyk; Viktor Billes; Claudia Bincoletto; Baris Bingol; Sara W Bird; Marc Bitoun; Ivana Bjedov; Craig Blackstone; Lionel Blanc; Guillermo A Blanco; Heidi Kiil Blomhoff; Emilio Boada-Romero; Stefan Böckler; Marianne Boes; Kathleen Boesze-Battaglia; Lawrence H Boise; Alessandra Bolino; Andrea Boman; Paolo Bonaldo; Matteo Bordi; Jürgen Bosch; Luis M Botana; Joelle Botti; German Bou; Marina Bouché; Marion Bouchecareilh; Marie-Josée Boucher; Michael E Boulton; Sebastien G Bouret; Patricia Boya; Michaël Boyer-Guittaut; Peter V Bozhkov; Nathan Brady; Vania Mm Braga; Claudio Brancolini; Gerhard H Braus; José M Bravo-San Pedro; Lisa A Brennan; Emery H Bresnick; Patrick Brest; Dave Bridges; Marie-Agnès Bringer; Marisa Brini; Glauber C Brito; Bertha Brodin; Paul S Brookes; Eric J Brown; Karen Brown; Hal E Broxmeyer; Alain Bruhat; Patricia Chakur Brum; John H Brumell; Nicola Brunetti-Pierri; Robert J Bryson-Richardson; Shilpa Buch; Alastair M Buchan; Hikmet Budak; Dmitry V Bulavin; Scott J Bultman; Geert Bultynck; Vladimir Bumbasirevic; Yan Burelle; Robert E Burke; Margit Burmeister; Peter Bütikofer; Laura Caberlotto; Ken Cadwell; Monika Cahova; Dongsheng Cai; Jingjing Cai; Qian Cai; Sara Calatayud; Nadine Camougrand; Michelangelo Campanella; Grant R Campbell; Matthew Campbell; Silvia Campello; Robin Candau; Isabella Caniggia; Lavinia Cantoni; Lizhi Cao; Allan B Caplan; Michele Caraglia; Claudio Cardinali; Sandra Morais Cardoso; Jennifer S Carew; Laura A Carleton; Cathleen R Carlin; Silvia Carloni; Sven R Carlsson; Didac Carmona-Gutierrez; Leticia Am Carneiro; Oliana Carnevali; Serena Carra; Alice Carrier; Bernadette Carroll; Caty Casas; Josefina Casas; Giuliana Cassinelli; Perrine Castets; Susana Castro-Obregon; Gabriella Cavallini; Isabella Ceccherini; Francesco Cecconi; Arthur I Cederbaum; Valentín Ceña; Simone Cenci; Claudia Cerella; Davide Cervia; Silvia Cetrullo; Hassan Chaachouay; Han-Jung Chae; Andrei S Chagin; Chee-Yin Chai; Gopal Chakrabarti; Georgios Chamilos; Edmond Yw Chan; Matthew Tv Chan; Dhyan Chandra; Pallavi Chandra; Chih-Peng Chang; Raymond Chuen-Chung Chang; Ta Yuan Chang; John C Chatham; Saurabh Chatterjee; Santosh Chauhan; Yongsheng Che; Michael E Cheetham; Rajkumar Cheluvappa; Chun-Jung Chen; Gang Chen; Guang-Chao Chen; Guoqiang Chen; Hongzhuan Chen; Jeff W Chen; Jian-Kang Chen; Min Chen; Mingzhou Chen; Peiwen Chen; Qi Chen; Quan Chen; Shang-Der Chen; Si Chen; Steve S-L Chen; Wei Chen; Wei-Jung Chen; Wen Qiang Chen; Wenli Chen; Xiangmei Chen; Yau-Hung Chen; Ye-Guang Chen; Yin Chen; Yingyu Chen; Yongshun Chen; Yu-Jen Chen; Yue-Qin Chen; Yujie Chen; Zhen Chen; Zhong Chen; Alan Cheng; Christopher Hk Cheng; Hua Cheng; Heesun Cheong; Sara Cherry; Jason Chesney; Chun Hei Antonio Cheung; Eric Chevet; Hsiang Cheng Chi; Sung-Gil Chi; Fulvio Chiacchiera; Hui-Ling Chiang; Roberto Chiarelli; Mario Chiariello; Marcello Chieppa; Lih-Shen Chin; Mario Chiong; Gigi Nc Chiu; Dong-Hyung Cho; Ssang-Goo Cho; William C Cho; Yong-Yeon Cho; Young-Seok Cho; Augustine Mk Choi; Eui-Ju Choi; Eun-Kyoung Choi; Jayoung Choi; Mary E Choi; Seung-Il Choi; Tsui-Fen Chou; Salem Chouaib; Divaker Choubey; Vinay Choubey; Kuan-Chih Chow; Kamal Chowdhury; Charleen T Chu; Tsung-Hsien Chuang; Taehoon Chun; Hyewon Chung; Taijoon Chung; Yuen-Li Chung; Yong-Joon Chwae; Valentina Cianfanelli; Roberto Ciarcia; Iwona A Ciechomska; Maria Rosa Ciriolo; Mara Cirone; Sofie Claerhout; Michael J Clague; Joan Clària; Peter Gh Clarke; Robert Clarke; Emilio Clementi; Cédric Cleyrat; Miriam Cnop; Eliana M Coccia; Tiziana Cocco; Patrice Codogno; Jörn Coers; Ezra Ew Cohen; David Colecchia; Luisa Coletto; Núria S Coll; Emma Colucci-Guyon; Sergio Comincini; Maria Condello; Katherine L Cook; Graham H Coombs; Cynthia D Cooper; J Mark Cooper; Isabelle Coppens; Maria Tiziana Corasaniti; Marco Corazzari; Ramon Corbalan; Elisabeth Corcelle-Termeau; Mario D Cordero; Cristina Corral-Ramos; Olga Corti; Andrea Cossarizza; Paola Costelli; Safia Costes; Susan L Cotman; Ana Coto-Montes; Sandra Cottet; Eduardo Couve; Lori R Covey; L Ashley Cowart; Jeffery S Cox; Fraser P Coxon; Carolyn B Coyne; Mark S Cragg; Rolf J Craven; Tiziana Crepaldi; Jose L Crespo; Alfredo Criollo; Valeria Crippa; Maria Teresa Cruz; Ana Maria Cuervo; Jose M Cuezva; Taixing Cui; Pedro R Cutillas; Mark J Czaja; Maria F Czyzyk-Krzeska; Ruben K Dagda; Uta Dahmen; Chunsun Dai; Wenjie Dai; Yun Dai; Kevin N Dalby; Luisa Dalla Valle; Guillaume Dalmasso; Marcello D'Amelio; Markus Damme; Arlette Darfeuille-Michaud; Catherine Dargemont; Victor M Darley-Usmar; Srinivasan Dasarathy; Biplab Dasgupta; Srikanta Dash; Crispin R Dass; Hazel Marie Davey; Lester M Davids; David Dávila; Roger J Davis; Ted M Dawson; Valina L Dawson; Paula Daza; Jackie de Belleroche; Paul de Figueiredo; Regina Celia Bressan Queiroz de Figueiredo; José de la Fuente; Luisa De Martino; Antonella De Matteis; Guido Ry De Meyer; Angelo De Milito; Mauro De Santi; Wanderley de Souza; Vincenzo De Tata; Daniela De Zio; Jayanta Debnath; Reinhard Dechant; Jean-Paul Decuypere; Shane Deegan; Benjamin Dehay; Barbara Del Bello; Dominic P Del Re; Régis Delage-Mourroux; Lea Md Delbridge; Louise Deldicque; Elizabeth Delorme-Axford; Yizhen Deng; Joern Dengjel; Melanie Denizot; Paul Dent; Channing J Der; Vojo Deretic; Benoît Derrien; Eric Deutsch; Timothy P Devarenne; Rodney J Devenish; Sabrina Di Bartolomeo; Nicola Di Daniele; Fabio Di Domenico; Alessia Di Nardo; Simone Di Paola; Antonio Di Pietro; Livia Di Renzo; Aaron DiAntonio; Guillermo Díaz-Araya; Ines Díaz-Laviada; Maria T Diaz-Meco; Javier Diaz-Nido; Chad A Dickey; Robert C Dickson; Marc Diederich; Paul Digard; Ivan Dikic; Savithrama P Dinesh-Kumar; Chan Ding; Wen-Xing Ding; Zufeng Ding; Luciana Dini; Jörg Hw Distler; Abhinav Diwan; Mojgan Djavaheri-Mergny; Kostyantyn Dmytruk; Renwick Cj Dobson; Volker Doetsch; Karol Dokladny; Svetlana Dokudovskaya; Massimo Donadelli; X Charlie Dong; Xiaonan Dong; Zheng Dong; Terrence M Donohue; Kelly S Doran; Gabriella D'Orazi; Gerald W Dorn; Victor Dosenko; Sami Dridi; Liat Drucker; Jie Du; Li-Lin Du; Lihuan Du; André du Toit; Priyamvada Dua; Lei Duan; Pu Duann; Vikash Kumar Dubey; Michael R Duchen; Michel A Duchosal; Helene Duez; Isabelle Dugail; Verónica I Dumit; Mara C Duncan; Elaine A Dunlop; William A Dunn; Nicolas Dupont; Luc Dupuis; Raúl V Durán; Thomas M Durcan; Stéphane Duvezin-Caubet; Umamaheswar Duvvuri; Vinay Eapen; Darius Ebrahimi-Fakhari; Arnaud Echard; Leopold Eckhart; Charles L Edelstein; Aimee L Edinger; Ludwig Eichinger; Tobias Eisenberg; Avital Eisenberg-Lerner; N Tony Eissa; Wafik S El-Deiry; Victoria El-Khoury; Zvulun Elazar; Hagit Eldar-Finkelman; Chris Jh Elliott; Enzo Emanuele; Urban Emmenegger; Nikolai Engedal; Anna-Mart Engelbrecht; Simone Engelender; Jorrit M Enserink; Ralf Erdmann; Jekaterina Erenpreisa; Rajaraman Eri; Jason L Eriksen; Andreja Erman; Ricardo Escalante; Eeva-Liisa Eskelinen; Lucile Espert; Lorena Esteban-Martínez; Thomas J Evans; Mario Fabri; Gemma Fabrias; Cinzia Fabrizi; Antonio Facchiano; Nils J Færgeman; Alberto Faggioni; W Douglas Fairlie; Chunhai Fan; Daping Fan; Jie Fan; Shengyun Fang; Manolis Fanto; Alessandro Fanzani; Thomas Farkas; Mathias Faure; Francois B Favier; Howard Fearnhead; Massimo Federici; Erkang Fei; Tania C Felizardo; Hua Feng; Yibin Feng; Yuchen Feng; Thomas A Ferguson; Álvaro F Fernández; Maite G Fernandez-Barrena; Jose C Fernandez-Checa; Arsenio Fernández-López; Martin E Fernandez-Zapico; Olivier Feron; Elisabetta Ferraro; Carmen Veríssima Ferreira-Halder; Laszlo Fesus; Ralph Feuer; Fabienne C Fiesel; Eduardo C Filippi-Chiela; Giuseppe Filomeni; Gian Maria Fimia; John H Fingert; Steven Finkbeiner; Toren Finkel; Filomena Fiorito; Paul B Fisher; Marc Flajolet; Flavio Flamigni; Oliver Florey; Salvatore Florio; R Andres Floto; Marco Folini; Carlo Follo; Edward A Fon; Francesco Fornai; Franco Fortunato; Alessandro Fraldi; Rodrigo Franco; Arnaud Francois; Aurélie François; Lisa B Frankel; Iain Dc Fraser; Norbert Frey; Damien G Freyssenet; Christian Frezza; Scott L Friedman; Daniel E Frigo; Dongxu Fu; José M Fuentes; Juan Fueyo; Yoshio Fujitani; Yuuki Fujiwara; Mikihiro Fujiya; Mitsunori Fukuda; Simone Fulda; Carmela Fusco; Bozena Gabryel; Matthias Gaestel; Philippe Gailly; Malgorzata Gajewska; Sehamuddin Galadari; Gad Galili; Inmaculada Galindo; Maria F Galindo; Giovanna Galliciotti; Lorenzo Galluzzi; Luca Galluzzi; Vincent Galy; Noor Gammoh; Sam Gandy; Anand K Ganesan; Swamynathan Ganesan; Ian G Ganley; Monique Gannagé; Fen-Biao Gao; Feng Gao; Jian-Xin Gao; Lorena García Nannig; Eleonora García Véscovi; Marina Garcia-Macía; Carmen Garcia-Ruiz; Abhishek D Garg; Pramod Kumar Garg; Ricardo Gargini; Nils Christian Gassen; Damián Gatica; Evelina Gatti; Julie Gavard; Evripidis Gavathiotis; Liang Ge; Pengfei Ge; Shengfang Ge; Po-Wu Gean; Vania Gelmetti; Armando A Genazzani; Jiefei Geng; Pascal Genschik; Lisa Gerner; Jason E Gestwicki; David A Gewirtz; Saeid Ghavami; Eric Ghigo; Debabrata Ghosh; Anna Maria Giammarioli; Francesca Giampieri; Claudia Giampietri; Alexandra Giatromanolaki; Derrick J Gibbings; Lara Gibellini; Spencer B Gibson; Vanessa Ginet; Antonio Giordano; Flaviano Giorgini; Elisa Giovannetti; Stephen E Girardin; Suzana Gispert; Sandy Giuliano; Candece L Gladson; Alvaro Glavic; Martin Gleave; Nelly Godefroy; Robert M Gogal; Kuppan Gokulan; Gustavo H Goldman; Delia Goletti; Michael S Goligorsky; Aldrin V Gomes; Ligia C Gomes; Hernando Gomez; Candelaria Gomez-Manzano; Rubén Gómez-Sánchez; Dawit Ap Gonçalves; Ebru Goncu; Qingqiu Gong; Céline Gongora; Carlos B Gonzalez; Pedro Gonzalez-Alegre; Pilar Gonzalez-Cabo; Rosa Ana González-Polo; Ing Swie Goping; Carlos Gorbea; Nikolai V Gorbunov; Daphne R Goring; Adrienne M Gorman; Sharon M Gorski; Sandro Goruppi; Shino Goto-Yamada; Cecilia Gotor; Roberta A Gottlieb; Illana Gozes; Devrim Gozuacik; Yacine Graba; Martin Graef; Giovanna E Granato; Gary Dean Grant; Steven Grant; Giovanni Luca Gravina; Douglas R Green; Alexander Greenhough; Michael T Greenwood; Benedetto Grimaldi; Frédéric Gros; Charles Grose; Jean-Francois Groulx; Florian Gruber; Paolo Grumati; Tilman Grune; Jun-Lin Guan; Kun-Liang Guan; Barbara Guerra; Carlos Guillen; Kailash Gulshan; Jan Gunst; Chuanyong Guo; Lei Guo; Ming Guo; Wenjie Guo; Xu-Guang Guo; Andrea A Gust; Åsa B Gustafsson; Elaine Gutierrez; Maximiliano G Gutierrez; Ho-Shin Gwak; Albert Haas; James E Haber; Shinji Hadano; Monica Hagedorn; David R Hahn; Andrew J Halayko; Anne Hamacher-Brady; Kozo Hamada; Ahmed Hamai; Andrea Hamann; Maho Hamasaki; Isabelle Hamer; Qutayba Hamid; Ester M Hammond; Feng Han; Weidong Han; James T Handa; John A Hanover; Malene Hansen; Masaru Harada; Ljubica Harhaji-Trajkovic; J Wade Harper; Abdel Halim Harrath; Adrian L Harris; James Harris; Udo Hasler; Peter Hasselblatt; Kazuhisa Hasui; Robert G Hawley; Teresa S Hawley; Congcong He; Cynthia Y He; Fengtian He; Gu He; Rong-Rong He; Xian-Hui He; You-Wen He; Yu-Ying He; Joan K Heath; Marie-Josée Hébert; Robert A Heinzen; Gudmundur Vignir Helgason; Michael Hensel; Elizabeth P Henske; Chengtao Her; Paul K Herman; Agustín Hernández; Carlos Hernandez; Sonia Hernández-Tiedra; Claudio Hetz; P Robin Hiesinger; Katsumi Higaki; Sabine Hilfiker; Bradford G Hill; Joseph A Hill; William D Hill; Keisuke Hino; Daniel Hofius; Paul Hofman; Günter U Höglinger; Jörg Höhfeld; Marina K Holz; Yonggeun Hong; David A Hood; Jeroen Jm Hoozemans; Thorsten Hoppe; Chin Hsu; Chin-Yuan Hsu; Li-Chung Hsu; Dong Hu; Guochang Hu; Hong-Ming Hu; Hongbo Hu; Ming Chang Hu; Yu-Chen Hu; Zhuo-Wei Hu; Fang Hua; Ya Hua; Canhua Huang; Huey-Lan Huang; Kuo-How Huang; Kuo-Yang Huang; Shile Huang; Shiqian Huang; Wei-Pang Huang; Yi-Ran Huang; Yong Huang; Yunfei Huang; Tobias B Huber; Patricia Huebbe; Won-Ki Huh; Juha J Hulmi; Gang Min Hur; James H Hurley; Zvenyslava Husak; Sabah Na Hussain; Salik Hussain; Jung Jin Hwang; Seungmin Hwang; Thomas Is Hwang; Atsuhiro Ichihara; Yuzuru Imai; Carol Imbriano; Megumi Inomata; Takeshi Into; Valentina Iovane; Juan L Iovanna; Renato V Iozzo; Nancy Y Ip; Javier E Irazoqui; Pablo Iribarren; Yoshitaka Isaka; Aleksandra J Isakovic; Harry Ischiropoulos; Jeffrey S Isenberg; Mohammad Ishaq; Hiroyuki Ishida; Isao Ishii; Jane E Ishmael; Ciro Isidoro; Ken-Ichi Isobe; Erika Isono; Shohreh Issazadeh-Navikas; Koji Itahana; Eisuke Itakura; Andrei I Ivanov; Anand Krishnan V Iyer; José M Izquierdo; Yotaro Izumi; Valentina Izzo; Marja Jäättelä; Nadia Jaber; Daniel John Jackson; William T Jackson; Tony George Jacob; Thomas S Jacques; Chinnaswamy Jagannath; Ashish Jain; Nihar Ranjan Jana; Byoung Kuk Jang; Alkesh Jani; Bassam Janji; Paulo Roberto Jannig; Patric J Jansson; Steve Jean; Marina Jendrach; Ju-Hong Jeon; Niels Jessen; Eui-Bae Jeung; Kailiang Jia; Lijun Jia; Hong Jiang; Hongchi Jiang; Liwen Jiang; Teng Jiang; Xiaoyan Jiang; Xuejun Jiang; Xuejun Jiang; Ying Jiang; Yongjun Jiang; Alberto Jiménez; Cheng Jin; Hongchuan Jin; Lei Jin; Meiyan Jin; Shengkan Jin; Umesh Kumar Jinwal; Eun-Kyeong Jo; Terje Johansen; Daniel E Johnson; Gail Vw Johnson; James D Johnson; Eric Jonasch; Chris Jones; Leo Ab Joosten; Joaquin Jordan; Anna-Maria Joseph; Bertrand Joseph; Annie M Joubert; Dianwen Ju; Jingfang Ju; Hsueh-Fen Juan; Katrin Juenemann; Gábor Juhász; Hye Seung Jung; Jae U Jung; Yong-Keun Jung; Heinz Jungbluth; Matthew J Justice; Barry Jutten; Nadeem O Kaakoush; Kai Kaarniranta; Allen Kaasik; Tomohiro Kabuta; Bertrand Kaeffer; Katarina Kågedal; Alon Kahana; Shingo Kajimura; Or Kakhlon; Manjula Kalia; Dhan V Kalvakolanu; Yoshiaki Kamada; Konstantinos Kambas; Vitaliy O Kaminskyy; Harm H Kampinga; Mustapha Kandouz; Chanhee Kang; Rui Kang; Tae-Cheon Kang; Tomotake Kanki; Thirumala-Devi Kanneganti; Haruo Kanno; Anumantha G Kanthasamy; Marc Kantorow; Maria Kaparakis-Liaskos; Orsolya Kapuy; Vassiliki Karantza; Md Razaul Karim; Parimal Karmakar; Arthur Kaser; Susmita Kaushik; Thomas Kawula; A Murat Kaynar; Po-Yuan Ke; Zun-Ji Ke; John H Kehrl; Kate E Keller; Jongsook Kim Kemper; Anne K Kenworthy; Oliver Kepp; Andreas Kern; Santosh Kesari; David Kessel; Robin Ketteler; Isis do Carmo Kettelhut; Bilon Khambu; Muzamil Majid Khan; Vinoth Km Khandelwal; Sangeeta Khare; Juliann G Kiang; Amy A Kiger; Akio Kihara; Arianna L Kim; Cheol Hyeon Kim; Deok Ryong Kim; Do-Hyung Kim; Eung Kweon Kim; Hye Young Kim; Hyung-Ryong Kim; Jae-Sung Kim; Jeong Hun Kim; Jin Cheon Kim; Jin Hyoung Kim; Kwang Woon Kim; Michael D Kim; Moon-Moo Kim; Peter K Kim; Seong Who Kim; Soo-Youl Kim; Yong-Sun Kim; Yonghyun Kim; Adi Kimchi; Alec C Kimmelman; Tomonori Kimura; Jason S King; Karla Kirkegaard; Vladimir Kirkin; Lorrie A Kirshenbaum; Shuji Kishi; Yasuo Kitajima; Katsuhiko Kitamoto; Yasushi Kitaoka; Kaio Kitazato; Rudolf A Kley; Walter T Klimecki; Michael Klinkenberg; Jochen Klucken; Helene Knævelsrud; Erwin Knecht; Laura Knuppertz; Jiunn-Liang Ko; Satoru Kobayashi; Jan C Koch; Christelle Koechlin-Ramonatxo; Ulrich Koenig; Young Ho Koh; Katja Köhler; Sepp D Kohlwein; Masato Koike; Masaaki Komatsu; Eiki Kominami; Dexin Kong; Hee Jeong Kong; Eumorphia G Konstantakou; Benjamin T Kopp; Tamas Korcsmaros; Laura Korhonen; Viktor I Korolchuk; Nadya V Koshkina; Yanjun Kou; Michael I Koukourakis; Constantinos Koumenis; Attila L Kovács; Tibor Kovács; Werner J Kovacs; Daisuke Koya; Claudine Kraft; Dimitri Krainc; Helmut Kramer; Tamara Kravic-Stevovic; Wilhelm Krek; Carole Kretz-Remy; Roswitha Krick; Malathi Krishnamurthy; Janos Kriston-Vizi; Guido Kroemer; Michael C Kruer; Rejko Kruger; Nicholas T Ktistakis; Kazuyuki Kuchitsu; Christian Kuhn; Addanki Pratap Kumar; Anuj Kumar; Ashok Kumar; Deepak Kumar; Dhiraj Kumar; Rakesh Kumar; Sharad Kumar; Mondira Kundu; Hsing-Jien Kung; Atsushi Kuno; Sheng-Han Kuo; Jeff Kuret; Tino Kurz; Terry Kwok; Taeg Kyu Kwon; Yong Tae Kwon; Irene Kyrmizi; Albert R La Spada; Frank Lafont; Tim Lahm; Aparna Lakkaraju; Truong Lam; Trond Lamark; Steve Lancel; Terry H Landowski; Darius J R Lane; Jon D Lane; Cinzia Lanzi; Pierre Lapaquette; Louis R Lapierre; Jocelyn Laporte; Johanna Laukkarinen; Gordon W Laurie; Sergio Lavandero; Lena Lavie; Matthew J LaVoie; Betty Yuen Kwan Law; Helen Ka-Wai Law; Kelsey B Law; Robert Layfield; Pedro A Lazo; Laurent Le Cam; Karine G Le Roch; Hervé Le Stunff; Vijittra Leardkamolkarn; Marc Lecuit; Byung-Hoon Lee; Che-Hsin Lee; Erinna F Lee; Gyun Min Lee; He-Jin Lee; Hsinyu Lee; Jae Keun Lee; Jongdae Lee; Ju-Hyun Lee; Jun Hee Lee; Michael Lee; Myung-Shik Lee; Patty J Lee; Sam W Lee; Seung-Jae Lee; Shiow-Ju Lee; Stella Y Lee; Sug Hyung Lee; Sung Sik Lee; Sung-Joon Lee; Sunhee Lee; Ying-Ray Lee; Yong J Lee; Young H Lee; Christiaan Leeuwenburgh; Sylvain Lefort; Renaud Legouis; Jinzhi Lei; Qun-Ying Lei; David A Leib; Gil Leibowitz; Istvan Lekli; Stéphane D Lemaire; John J Lemasters; Marius K Lemberg; Antoinette Lemoine; Shuilong Leng; Guido Lenz; Paola Lenzi; Lilach O Lerman; Daniele Lettieri Barbato; Julia I-Ju Leu; Hing Y Leung; Beth Levine; Patrick A Lewis; Frank Lezoualc'h; Chi Li; Faqiang Li; Feng-Jun Li; Jun Li; Ke Li; Lian Li; Min Li; Min Li; Qiang Li; Rui Li; Sheng Li; Wei Li; Wei Li; Xiaotao Li; Yumin Li; Jiqin Lian; Chengyu Liang; Qiangrong Liang; Yulin Liao; Joana Liberal; Pawel P Liberski; Pearl Lie; Andrew P Lieberman; Hyunjung Jade Lim; Kah-Leong Lim; Kyu Lim; Raquel T Lima; Chang-Shen Lin; Chiou-Feng Lin; Fang Lin; Fangming Lin; Fu-Cheng Lin; Kui Lin; Kwang-Huei Lin; Pei-Hui Lin; Tianwei Lin; Wan-Wan Lin; Yee-Shin Lin; Yong Lin; Rafael Linden; Dan Lindholm; Lisa M Lindqvist; Paul Lingor; Andreas Linkermann; Lance A Liotta; Marta M Lipinski; Vitor A Lira; Michael P Lisanti; Paloma B Liton; Bo Liu; Chong Liu; Chun-Feng Liu; Fei Liu; Hung-Jen Liu; Jianxun Liu; Jing-Jing Liu; Jing-Lan Liu; Ke Liu; Leyuan Liu; Liang Liu; Quentin Liu; Rong-Yu Liu; Shiming Liu; Shuwen Liu; Wei Liu; Xian-De Liu; Xiangguo Liu; Xiao-Hong Liu; Xinfeng Liu; Xu Liu; Xueqin Liu; Yang Liu; Yule Liu; Zexian Liu; Zhe Liu; Juan P Liuzzi; Gérard Lizard; Mila Ljujic; Irfan J Lodhi; Susan E Logue; Bal L Lokeshwar; Yun Chau Long; Sagar Lonial; Benjamin Loos; Carlos López-Otín; Cristina López-Vicario; Mar Lorente; Philip L Lorenzi; Péter Lõrincz; Marek Los; Michael T Lotze; Penny E Lovat; Binfeng Lu; Bo Lu; Jiahong Lu; Qing Lu; She-Min Lu; Shuyan Lu; Yingying Lu; Frédéric Luciano; Shirley Luckhart; John Milton Lucocq; Paula Ludovico; Aurelia Lugea; Nicholas W Lukacs; Julian J Lum; Anders H Lund; Honglin Luo; Jia Luo; Shouqing Luo; Claudio Luparello; Timothy Lyons; Jianjie Ma; Yi Ma; Yong Ma; Zhenyi Ma; Juliano Machado; Glaucia M Machado-Santelli; Fernando Macian; Gustavo C MacIntosh; Jeffrey P MacKeigan; Kay F Macleod; John D MacMicking; Lee Ann MacMillan-Crow; Frank Madeo; Muniswamy Madesh; Julio Madrigal-Matute; Akiko Maeda; Tatsuya Maeda; Gustavo Maegawa; Emilia Maellaro; Hannelore Maes; Marta Magariños; Kenneth Maiese; Tapas K Maiti; Luigi Maiuri; Maria Chiara Maiuri; Carl G Maki; Roland Malli; Walter Malorni; Alina Maloyan; Fathia Mami-Chouaib; Na Man; Joseph D Mancias; Eva-Maria Mandelkow; Michael A Mandell; Angelo A Manfredi; Serge N Manié; Claudia Manzoni; Kai Mao; Zixu Mao; Zong-Wan Mao; Philippe Marambaud; Anna Maria Marconi; Zvonimir Marelja; Gabriella Marfe; Marta Margeta; Eva Margittai; Muriel Mari; Francesca V Mariani; Concepcio Marin; Sara Marinelli; Guillermo Mariño; Ivanka Markovic; Rebecca Marquez; Alberto M Martelli; Sascha Martens; Katie R Martin; Seamus J Martin; Shaun Martin; Miguel A Martin-Acebes; Paloma Martín-Sanz; Camille Martinand-Mari; Wim Martinet; Jennifer Martinez; Nuria Martinez-Lopez; Ubaldo Martinez-Outschoorn; Moisés Martínez-Velázquez; Marta Martinez-Vicente; Waleska Kerllen Martins; Hirosato Mashima; James A Mastrianni; Giuseppe Matarese; Paola Matarrese; Roberto Mateo; Satoaki Matoba; Naomichi Matsumoto; Takehiko Matsushita; Akira Matsuura; Takeshi Matsuzawa; Mark P Mattson; Soledad Matus; Norma Maugeri; Caroline Mauvezin; Andreas Mayer; Dusica Maysinger; Guillermo D Mazzolini; Mary Kate McBrayer; Kimberly McCall; Craig McCormick; Gerald M McInerney; Skye C McIver; Sharon McKenna; John J McMahon; Iain A McNeish; Fatima Mechta-Grigoriou; Jan Paul Medema; Diego L Medina; Klara Megyeri; Maryam Mehrpour; Jawahar L Mehta; Yide Mei; Ute-Christiane Meier; Alfred J Meijer; Alicia Meléndez; Gerry Melino; Sonia Melino; Edesio Jose Tenorio de Melo; Maria A Mena; Marc D Meneghini; Javier A Menendez; Regina Menezes; Liesu Meng; Ling-Hua Meng; Songshu Meng; Rossella Menghini; A Sue Menko; Rubem Fs Menna-Barreto; Manoj B Menon; Marco A Meraz-Ríos; Giuseppe Merla; Luciano Merlini; Angelica M Merlot; Andreas Meryk; Stefania Meschini; Joel N Meyer; Man-Tian Mi; Chao-Yu Miao; Lucia Micale; Simon Michaeli; Carine Michiels; Anna Rita Migliaccio; Anastasia Susie Mihailidou; Dalibor Mijaljica; Katsuhiko Mikoshiba; Enrico Milan; Leonor Miller-Fleming; Gordon B Mills; Ian G Mills; Georgia Minakaki; Berge A Minassian; Xiu-Fen Ming; Farida Minibayeva; Elena A Minina; Justine D Mintern; Saverio Minucci; Antonio Miranda-Vizuete; Claire H Mitchell; Shigeki Miyamoto; Keisuke Miyazawa; Noboru Mizushima; Katarzyna Mnich; Baharia Mograbi; Simin Mohseni; Luis Ferreira Moita; Marco Molinari; Maurizio Molinari; Andreas Buch Møller; Bertrand Mollereau; Faustino Mollinedo; Marco Mongillo; Martha M Monick; Serena Montagnaro; Craig Montell; Darren J Moore; Michael N Moore; Rodrigo Mora-Rodriguez; Paula I Moreira; Etienne Morel; Maria Beatrice Morelli; Sandra Moreno; Michael J Morgan; Arnaud Moris; Yuji Moriyasu; Janna L Morrison; Lynda A Morrison; Eugenia Morselli; Jorge Moscat; Pope L Moseley; Serge Mostowy; Elisa Motori; Denis Mottet; Jeremy C Mottram; Charbel E-H Moussa; Vassiliki E Mpakou; Hasan Mukhtar; Jean M Mulcahy Levy; Sylviane Muller; Raquel Muñoz-Moreno; Cristina Muñoz-Pinedo; Christian Münz; Maureen E Murphy; James T Murray; Aditya Murthy; Indira U Mysorekar; Ivan R Nabi; Massimo Nabissi; Gustavo A Nader; Yukitoshi Nagahara; Yoshitaka Nagai; Kazuhiro Nagata; Anika Nagelkerke; Péter Nagy; Samisubbu R Naidu; Sreejayan Nair; Hiroyasu Nakano; Hitoshi Nakatogawa; Meera Nanjundan; Gennaro Napolitano; Naweed I Naqvi; Roberta Nardacci; Derek P Narendra; Masashi Narita; Anna Chiara Nascimbeni; Ramesh Natarajan; Luiz C Navegantes; Steffan T Nawrocki; Taras Y Nazarko; Volodymyr Y Nazarko; Thomas Neill; Luca M Neri; Mihai G Netea; Romana T Netea-Maier; Bruno M Neves; Paul A Ney; Ioannis P Nezis; Hang Tt Nguyen; Huu Phuc Nguyen; Anne-Sophie Nicot; Hilde Nilsen; Per Nilsson; Mikio Nishimura; Ichizo Nishino; Mireia Niso-Santano; Hua Niu; Ralph A Nixon; Vincent Co Njar; Takeshi Noda; Angelika A Noegel; Elsie Magdalena Nolte; Erik Norberg; Koenraad K Norga; Sakineh Kazemi Noureini; Shoji Notomi; Lucia Notterpek; Karin Nowikovsky; Nobuyuki Nukina; Thorsten Nürnberger; Valerie B O'Donnell; Tracey O'Donovan; Peter J O'Dwyer; Ina Oehme; Clara L Oeste; Michinaga Ogawa; Besim Ogretmen; Yuji Ogura; Young J Oh; Masaki Ohmuraya; Takayuki Ohshima; Rani Ojha; Koji Okamoto; Toshiro Okazaki; F Javier Oliver; Karin Ollinger; Stefan Olsson; Daniel P Orban; Paulina Ordonez; Idil Orhon; Laszlo Orosz; Eyleen J O'Rourke; Helena Orozco; Angel L Ortega; Elena Ortona; Laura D Osellame; Junko Oshima; Shigeru Oshima; Heinz D Osiewacz; Takanobu Otomo; Kinya Otsu; Jing-Hsiung James Ou; Tiago F Outeiro; Dong-Yun Ouyang; Hongjiao Ouyang; Michael Overholtzer; Michelle A Ozbun; P Hande Ozdinler; Bulent Ozpolat; Consiglia Pacelli; Paolo Paganetti; Guylène Page; Gilles Pages; Ugo Pagnini; Beata Pajak; Stephen C Pak; Karolina Pakos-Zebrucka; Nazzy Pakpour; Zdena Palková; Francesca Palladino; Kathrin Pallauf; Nicolas Pallet; Marta Palmieri; Søren R Paludan; Camilla Palumbo; Silvia Palumbo; Olatz Pampliega; Hongming Pan; Wei Pan; Theocharis Panaretakis; Aseem Pandey; Areti Pantazopoulou; Zuzana Papackova; Daniela L Papademetrio; Issidora Papassideri; Alessio Papini; Nirmala Parajuli; Julian Pardo; Vrajesh V Parekh; Giancarlo Parenti; Jong-In Park; Junsoo Park; Ohkmae K Park; Roy Parker; Rosanna Parlato; Jan B Parys; Katherine R Parzych; Jean-Max Pasquet; Benoit Pasquier; Kishore Bs Pasumarthi; Daniel Patschan; Cam Patterson; Sophie Pattingre; Scott Pattison; Arnim Pause; Hermann Pavenstädt; Flaminia Pavone; Zully Pedrozo; Fernando J Peña; Miguel A Peñalva; Mario Pende; Jianxin Peng; Fabio Penna; Josef M Penninger; Anna Pensalfini; Salvatore Pepe; Gustavo Js Pereira; Paulo C Pereira; Verónica Pérez-de la Cruz; María Esther Pérez-Pérez; Diego Pérez-Rodríguez; Dolores Pérez-Sala; Celine Perier; Andras Perl; David H Perlmutter; Ida Perrotta; Shazib Pervaiz; Maija Pesonen; Jeffrey E Pessin; Godefridus J Peters; Morten Petersen; Irina Petrache; Basil J Petrof; Goran Petrovski; James M Phang; Mauro Piacentini; Marina Pierdominici; Philippe Pierre; Valérie Pierrefite-Carle; Federico Pietrocola; Felipe X Pimentel-Muiños; Mario Pinar; Benjamin Pineda; Ronit Pinkas-Kramarski; Marcello Pinti; Paolo Pinton; Bilal Piperdi; James M Piret; Leonidas C Platanias; Harald W Platta; Edward D Plowey; Stefanie Pöggeler; Marc Poirot; Peter Polčic; Angelo Poletti; Audrey H Poon; Hana Popelka; Blagovesta Popova; Izabela Poprawa; Shibu M Poulose; Joanna Poulton; Scott K Powers; Ted Powers; Mercedes Pozuelo-Rubio; Krisna Prak; Reinhild Prange; Mark Prescott; Muriel Priault; Sharon Prince; Richard L Proia; Tassula Proikas-Cezanne; Holger Prokisch; Vasilis J Promponas; Karin Przyklenk; Rosa Puertollano; Subbiah Pugazhenthi; Luigi Puglielli; Aurora Pujol; Julien Puyal; Dohun Pyeon; Xin Qi; Wen-Bin Qian; Zheng-Hong Qin; Yu Qiu; Ziwei Qu; Joe Quadrilatero; Frederick Quinn; Nina Raben; Hannah Rabinowich; Flavia Radogna; Michael J Ragusa; Mohamed Rahmani; Komal Raina; Sasanka Ramanadham; Rajagopal Ramesh; Abdelhaq Rami; Sarron Randall-Demllo; Felix Randow; Hai Rao; V Ashutosh Rao; Blake B Rasmussen; Tobias M Rasse; Edward A Ratovitski; Pierre-Emmanuel Rautou; Swapan K Ray; Babak Razani; Bruce H Reed; Fulvio Reggiori; Markus Rehm; Andreas S Reichert; Theo Rein; David J Reiner; Eric Reits; Jun Ren; Xingcong Ren; Maurizio Renna; Jane Eb Reusch; Jose L Revuelta; Leticia Reyes; Alireza R Rezaie; Robert I Richards; Des R Richardson; Clémence Richetta; Michael A Riehle; Bertrand H Rihn; Yasuko Rikihisa; Brigit E Riley; Gerald Rimbach; Maria Rita Rippo; Konstantinos Ritis; Federica Rizzi; Elizete Rizzo; Peter J Roach; Jeffrey Robbins; Michel Roberge; Gabriela Roca; Maria Carmela Roccheri; Sonia Rocha; Cecilia Mp Rodrigues; Clara I Rodríguez; Santiago Rodriguez de Cordoba; Natalia Rodriguez-Muela; Jeroen Roelofs; Vladimir V Rogov; Troy T Rohn; Bärbel Rohrer; Davide Romanelli; Luigina Romani; Patricia Silvia Romano; M Isabel G Roncero; Jose Luis Rosa; Alicia Rosello; Kirill V Rosen; Philip Rosenstiel; Magdalena Rost-Roszkowska; Kevin A Roth; Gael Roué; Mustapha Rouis; Kasper M Rouschop; Daniel T Ruan; Diego Ruano; David C Rubinsztein; Edmund B Rucker; Assaf Rudich; Emil Rudolf; Ruediger Rudolf; Markus A Ruegg; Carmen Ruiz-Roldan; Avnika Ashok Ruparelia; Paola Rusmini; David W Russ; Gian Luigi Russo; Giuseppe Russo; Rossella Russo; Tor Erik Rusten; Victoria Ryabovol; Kevin M Ryan; Stefan W Ryter; David M Sabatini; Michael Sacher; Carsten Sachse; Michael N Sack; Junichi Sadoshima; Paul Saftig; Ronit Sagi-Eisenberg; Sumit Sahni; Pothana Saikumar; Tsunenori Saito; Tatsuya Saitoh; Koichi Sakakura; Machiko Sakoh-Nakatogawa; Yasuhito Sakuraba; María Salazar-Roa; Paolo Salomoni; Ashok K Saluja; Paul M Salvaterra; Rosa Salvioli; Afshin Samali; Anthony Mj Sanchez; José A Sánchez-Alcázar; Ricardo Sanchez-Prieto; Marco Sandri; Miguel A Sanjuan; Stefano Santaguida; Laura Santambrogio; Giorgio Santoni; Claudia Nunes Dos Santos; Shweta Saran; Marco Sardiello; Graeme Sargent; Pallabi Sarkar; Sovan Sarkar; Maria Rosa Sarrias; Minnie M Sarwal; Chihiro Sasakawa; Motoko Sasaki; Miklos Sass; Ken Sato; Miyuki Sato; Joseph Satriano; Niramol Savaraj; Svetlana Saveljeva; Liliana Schaefer; Ulrich E Schaible; Michael Scharl; Hermann M Schatzl; Randy Schekman; Wiep Scheper; Alfonso Schiavi; Hyman M Schipper; Hana Schmeisser; Jens Schmidt; Ingo Schmitz; Bianca E Schneider; E Marion Schneider; Jaime L Schneider; Eric A Schon; Miriam J Schönenberger; Axel H Schönthal; Daniel F Schorderet; Bernd Schröder; Sebastian Schuck; Ryan J Schulze; Melanie Schwarten; Thomas L Schwarz; Sebastiano Sciarretta; Kathleen Scotto; A Ivana Scovassi; Robert A Screaton; Mark Screen; Hugo Seca; Simon Sedej; Laura Segatori; Nava Segev; Per O Seglen; Jose M Seguí-Simarro; Juan Segura-Aguilar; Ekihiro Seki; Christian Sell; Iban Seiliez; Clay F Semenkovich; Gregg L Semenza; Utpal Sen; Andreas L Serra; Ana Serrano-Puebla; Hiromi Sesaki; Takao Setoguchi; Carmine Settembre; John J Shacka; Ayesha N Shajahan-Haq; Irving M Shapiro; Shweta Sharma; Hua She; C-K James Shen; Chiung-Chyi Shen; Han-Ming Shen; Sanbing Shen; Weili Shen; Rui Sheng; Xianyong Sheng; Zu-Hang Sheng; Trevor G Shepherd; Junyan Shi; Qiang Shi; Qinghua Shi; Yuguang Shi; Shusaku Shibutani; Kenichi Shibuya; Yoshihiro Shidoji; Jeng-Jer Shieh; Chwen-Ming Shih; Yohta Shimada; Shigeomi Shimizu; Dong Wook Shin; Mari L Shinohara; Michiko Shintani; Takahiro Shintani; Tetsuo Shioi; Ken Shirabe; Ronit Shiri-Sverdlov; Orian Shirihai; Gordon C Shore; Chih-Wen Shu; Deepak Shukla; Andriy A Sibirny; Valentina Sica; Christina J Sigurdson; Einar M Sigurdsson; Puran Singh Sijwali; Beata Sikorska; Wilian A Silveira; Sandrine Silvente-Poirot; Gary A Silverman; Jan Simak; Thomas Simmet; Anna Katharina Simon; Hans-Uwe Simon; Cristiano Simone; Matias Simons; Anne Simonsen; Rajat Singh; Shivendra V Singh; Shrawan K Singh; Debasish Sinha; Sangita Sinha; Frank A Sinicrope; Agnieszka Sirko; Kapil Sirohi; Balindiwe Jn Sishi; Annie Sittler; Parco M Siu; Efthimios Sivridis; Anna Skwarska; Ruth Slack; Iva Slaninová; Nikolai Slavov; Soraya S Smaili; Keiran Sm Smalley; Duncan R Smith; Stefaan J Soenen; Scott A Soleimanpour; Anita Solhaug; Kumaravel Somasundaram; Jin H Son; Avinash Sonawane; Chunjuan Song; Fuyong Song; Hyun Kyu Song; Ju-Xian Song; Wei Song; Kai Y Soo; Anil K Sood; Tuck Wah Soong; Virawudh Soontornniyomkij; Maurizio Sorice; Federica Sotgia; David R Soto-Pantoja; Areechun Sotthibundhu; Maria João Sousa; Herman P Spaink; Paul N Span; Anne Spang; Janet D Sparks; Peter G Speck; Stephen A Spector; Claudia D Spies; Wolfdieter Springer; Daret St Clair; Alessandra Stacchiotti; Bart Staels; Michael T Stang; Daniel T Starczynowski; Petro Starokadomskyy; Clemens Steegborn; John W Steele; Leonidas Stefanis; Joan Steffan; Christine M Stellrecht; Harald Stenmark; Tomasz M Stepkowski; Stęphan T Stern; Craig Stevens; Brent R Stockwell; Veronika Stoka; Zuzana Storchova; Björn Stork; Vassilis Stratoulias; Dimitrios J Stravopodis; Pavel Strnad; Anne Marie Strohecker; Anna-Lena Ström; Per Stromhaug; Jiri Stulik; Yu-Xiong Su; Zhaoliang Su; Carlos S Subauste; Srinivasa Subramaniam; Carolyn M Sue; Sang Won Suh; Xinbing Sui; Supawadee Sukseree; David Sulzer; Fang-Lin Sun; Jiaren Sun; Jun Sun; Shi-Yong Sun; Yang Sun; Yi Sun; Yingjie Sun; Vinod Sundaramoorthy; Joseph Sung; Hidekazu Suzuki; Kuninori Suzuki; Naoki Suzuki; Tadashi Suzuki; Yuichiro J Suzuki; Michele S Swanson; Charles Swanton; Karl Swärd; Ghanshyam Swarup; Sean T Sweeney; Paul W Sylvester; Zsuzsanna Szatmari; Eva Szegezdi; Peter W Szlosarek; Heinrich Taegtmeyer; Marco Tafani; Emmanuel Taillebourg; Stephen Wg Tait; Krisztina Takacs-Vellai; Yoshinori Takahashi; Szabolcs Takáts; Genzou Takemura; Nagio Takigawa; Nicholas J Talbot; Elena Tamagno; Jerome Tamburini; Cai-Ping Tan; Lan Tan; Mei Lan Tan; Ming Tan; Yee-Joo Tan; Keiji Tanaka; Masaki Tanaka; Daolin Tang; Dingzhong Tang; Guomei Tang; Isei Tanida; Kunikazu Tanji; Bakhos A Tannous; Jose A Tapia; Inmaculada Tasset-Cuevas; Marc Tatar; Iman Tavassoly; Nektarios Tavernarakis; Allen Taylor; Graham S Taylor; Gregory A Taylor; J Paul Taylor; Mark J Taylor; Elena V Tchetina; Andrew R Tee; Fatima Teixeira-Clerc; Sucheta Telang; Tewin Tencomnao; Ba-Bie Teng; Ru-Jeng Teng; Faraj Terro; Gianluca Tettamanti; Arianne L Theiss; Anne E Theron; Kelly Jean Thomas; Marcos P Thomé; Paul G Thomes; Andrew Thorburn; Jeremy Thorner; Thomas Thum; Michael Thumm; Teresa Lm Thurston; Ling Tian; Andreas Till; Jenny Pan-Yun Ting; Vladimir I Titorenko; Lilach Toker; Stefano Toldo; Sharon A Tooze; Ivan Topisirovic; Maria Lyngaas Torgersen; Liliana Torosantucci; Alicia Torriglia; Maria Rosaria Torrisi; Cathy Tournier; Roberto Towns; Vladimir Trajkovic; Leonardo H Travassos; Gemma Triola; Durga Nand Tripathi; Daniela Trisciuoglio; Rodrigo Troncoso; Ioannis P Trougakos; Anita C Truttmann; Kuen-Jer Tsai; Mario P Tschan; Yi-Hsin Tseng; Takayuki Tsukuba; Allan Tsung; Andrey S Tsvetkov; Shuiping Tu; Hsing-Yu Tuan; Marco Tucci; David A Tumbarello; Boris Turk; Vito Turk; Robin Fb Turner; Anders A Tveita; Suresh C Tyagi; Makoto Ubukata; Yasuo Uchiyama; Andrej Udelnow; Takashi Ueno; Midori Umekawa; Rika Umemiya-Shirafuji; Benjamin R Underwood; Christian Ungermann; Rodrigo P Ureshino; Ryo Ushioda; Vladimir N Uversky; Néstor L Uzcátegui; Thomas Vaccari; Maria I Vaccaro; Libuše Váchová; Helin Vakifahmetoglu-Norberg; Rut Valdor; Enza Maria Valente; Francois Vallette; Angela M Valverde; Greet Van den Berghe; Ludo Van Den Bosch; Gijs R van den Brink; F Gisou van der Goot; Ida J van der Klei; Luc Jw van der Laan; Wouter G van Doorn; Marjolein van Egmond; Kenneth L van Golen; Luc Van Kaer; Menno van Lookeren Campagne; Peter Vandenabeele; Wim Vandenberghe; Ilse Vanhorebeek; Isabel Varela-Nieto; M Helena Vasconcelos; Radovan Vasko; Demetrios G Vavvas; Ignacio Vega-Naredo; Guillermo Velasco; Athanassios D Velentzas; Panagiotis D Velentzas; Tibor Vellai; Edo Vellenga; Mikkel Holm Vendelbo; Kartik Venkatachalam; Natascia Ventura; Salvador Ventura; Patrícia St Veras; Mireille Verdier; Beata G Vertessy; Andrea Viale; Michel Vidal; Helena L A Vieira; Richard D Vierstra; Nadarajah Vigneswaran; Neeraj Vij; Miquel Vila; Margarita Villar; Victor H Villar; Joan Villarroya; Cécile Vindis; Giampietro Viola; Maria Teresa Viscomi; Giovanni Vitale; Dan T Vogl; Olga V Voitsekhovskaja; Clarissa von Haefen; Karin von Schwarzenberg; Daniel E Voth; Valérie Vouret-Craviari; Kristina Vuori; Jatin M Vyas; Christian Waeber; Cheryl Lyn Walker; Mark J Walker; Jochen Walter; Lei Wan; Xiangbo Wan; Bo Wang; Caihong Wang; Chao-Yung Wang; Chengshu Wang; Chenran Wang; Chuangui Wang; Dong Wang; Fen Wang; Fuxin Wang; Guanghui Wang; Hai-Jie Wang; Haichao Wang; Hong-Gang Wang; Hongmin Wang; Horng-Dar Wang; Jing Wang; Junjun Wang; Mei Wang; Mei-Qing Wang; Pei-Yu Wang; Peng Wang; Richard C Wang; Shuo Wang; Ting-Fang Wang; Xian Wang; Xiao-Jia Wang; Xiao-Wei Wang; Xin Wang; Xuejun Wang; Yan Wang; Yanming Wang; Ying Wang; Ying-Jan Wang; Yipeng Wang; Yu Wang; Yu Tian Wang; Yuqing Wang; Zhi-Nong Wang; Pablo Wappner; Carl Ward; Diane McVey Ward; Gary Warnes; Hirotaka Watada; Yoshihisa Watanabe; Kei Watase; Timothy E Weaver; Colin D Weekes; Jiwu Wei; Thomas Weide; Conrad C Weihl; Günther Weindl; Simone Nardin Weis; Longping Wen; Xin Wen; Yunfei Wen; Benedikt Westermann; Cornelia M Weyand; Anthony R White; Eileen White; J Lindsay Whitton; Alexander J Whitworth; Joëlle Wiels; Franziska Wild; Manon E Wildenberg; Tom Wileman; Deepti Srinivas Wilkinson; Simon Wilkinson; Dieter Willbold; Chris Williams; Katherine Williams; Peter R Williamson; Konstanze F Winklhofer; Steven S Witkin; Stephanie E Wohlgemuth; Thomas Wollert; Ernst J Wolvetang; Esther Wong; G William Wong; Richard W Wong; Vincent Kam Wai Wong; Elizabeth A Woodcock; Karen L Wright; Chunlai Wu; Defeng Wu; Gen Sheng Wu; Jian Wu; Junfang Wu; Mian Wu; Min Wu; Shengzhou Wu; William Kk Wu; Yaohua Wu; Zhenlong Wu; Cristina Pr Xavier; Ramnik J Xavier; Gui-Xian Xia; Tian Xia; Weiliang Xia; Yong Xia; Hengyi Xiao; Jian Xiao; Shi Xiao; Wuhan Xiao; Chuan-Ming Xie; Zhiping Xie; Zhonglin Xie; Maria Xilouri; Yuyan Xiong; Chuanshan Xu; Congfeng Xu; Feng Xu; Haoxing Xu; Hongwei Xu; Jian Xu; Jianzhen Xu; Jinxian Xu; Liang Xu; Xiaolei Xu; Yangqing Xu; Ye Xu; Zhi-Xiang Xu; Ziheng Xu; Yu Xue; Takahiro Yamada; Ai Yamamoto; Koji Yamanaka; Shunhei Yamashina; Shigeko Yamashiro; Bing Yan; Bo Yan; Xianghua Yan; Zhen Yan; Yasuo Yanagi; Dun-Sheng Yang; Jin-Ming Yang; Liu Yang; Minghua Yang; Pei-Ming Yang; Peixin Yang; Qian Yang; Wannian Yang; Wei Yuan Yang; Xuesong Yang; Yi Yang; Ying Yang; Zhifen Yang; Zhihong Yang; Meng-Chao Yao; Pamela J Yao; Xiaofeng Yao; Zhenyu Yao; Zhiyuan Yao; Linda S Yasui; Mingxiang Ye; Barry Yedvobnick; Behzad Yeganeh; Elizabeth S Yeh; Patricia L Yeyati; Fan Yi; Long Yi; Xiao-Ming Yin; Calvin K Yip; Yeong-Min Yoo; Young Hyun Yoo; Seung-Yong Yoon; Ken-Ichi Yoshida; Tamotsu Yoshimori; Ken H Young; Huixin Yu; Jane J Yu; Jin-Tai Yu; Jun Yu; Li Yu; W Haung Yu; Xiao-Fang Yu; Zhengping Yu; Junying Yuan; Zhi-Min Yuan; Beatrice Yjt Yue; Jianbo Yue; Zhenyu Yue; David N Zacks; Eldad Zacksenhaus; Nadia Zaffaroni; Tania Zaglia; Zahra Zakeri; Vincent Zecchini; Jinsheng Zeng; Min Zeng; Qi Zeng; Antonis S Zervos; Donna D Zhang; Fan Zhang; Guo Zhang; Guo-Chang Zhang; Hao Zhang; Hong Zhang; Hong Zhang; Hongbing Zhang; Jian Zhang; Jian Zhang; Jiangwei Zhang; Jianhua Zhang; Jing-Pu Zhang; Li Zhang; Lin Zhang; Lin Zhang; Long Zhang; Ming-Yong Zhang; Xiangnan Zhang; Xu Dong Zhang; Yan Zhang; Yang Zhang; Yanjin Zhang; Yingmei Zhang; Yunjiao Zhang; Mei Zhao; Wei-Li Zhao; Xiaonan Zhao; Yan G Zhao; Ying Zhao; Yongchao Zhao; Yu-Xia Zhao; Zhendong Zhao; Zhizhuang J Zhao; Dexian Zheng; Xi-Long Zheng; Xiaoxiang Zheng; Boris Zhivotovsky; Qing Zhong; Guang-Zhou Zhou; Guofei Zhou; Huiping Zhou; Shu-Feng Zhou; Xu-Jie Zhou; Hongxin Zhu; Hua Zhu; Wei-Guo Zhu; Wenhua Zhu; Xiao-Feng Zhu; Yuhua Zhu; Shi-Mei Zhuang; Xiaohong Zhuang; Elio Ziparo; Christos E Zois; Teresa Zoladek; Wei-Xing Zong; Antonio Zorzano; Susu M Zughaier
Journal:  Autophagy       Date:  2016       Impact factor: 16.016

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