| Literature DB >> 22817640 |
Yijun Ding1, Minjun Chen, Zhichao Liu, Don Ding, Yanbin Ye, Min Zhang, Reagan Kelly, Li Guo, Zhenqiang Su, Stephen C Harris, Feng Qian, Weigong Ge, Hong Fang, Xiaowei Xu, Weida Tong.
Abstract
BACKGROUND: Large amounts of mammalian protein-protein interaction (PPI) data have been generated and are available for public use. From a systems biology perspective, Proteins/genes interactions encode the key mechanisms distinguishing disease and health, and such mechanisms can be uncovered through network analysis. An effective network analysis tool should integrate different content-specific PPI databases into a comprehensive network format with a user-friendly platform to identify key functional modules/pathways and the underlying mechanisms of disease and toxicity.Entities:
Mesh:
Substances:
Year: 2012 PMID: 22817640 PMCID: PMC3443675 DOI: 10.1186/1471-2164-13-325
Source DB: PubMed Journal: BMC Genomics ISSN: 1471-2164 Impact factor: 3.969
Information for the seven public PPI databases
| BioGRID thebiogrid.org | BioGRID provides PPI data compiled through comprehensive curation efforts from high-throughput data sets and individual focused studies. | 8204 | 33625 |
| DIP dip.doembi.ucla.edu/dip/Main.cgi | The DIPTM catalogs experimentally determined interactions between proteins, mainly from yeast, and includes interactions from Helicobacter pylori and human. | 1137 | 1509 |
| HPRD | The HPRD provides submitted human PPI data including mass spectrometry and protein microarray-derived data among other data types. | 9553 | 38802 |
| IntAct | IntAct contains PPI data with full descriptions of the experimental conditions; data is derived from literature curation or direct user submissions. | 7495 | 30965 |
| MINT mint.bio.uniroma2.it/mint/Welcome.do | MINT focuses on experimentally verified PPIs classified as human, domain–peptide, and virus–virus/host. Data is mined from the scientific literature by expert curators. | 5230 | 15353 |
| REACTOME | REACTOME collects manually curated and peer-reviewed pathway data for all species. | 3599 | 74490 |
| SPIKE | SPIKE focuses on highly curated human signaling pathways. | 6927 | 23224 |
Figure 1atBioNet interface. The network visualization for the systemic lupus erythematosus data in atBioNet’s interface for both the top 6 modules (A) and the entire network (B). Square nodes represent seed proteins/genes and circles are added by the network.
Figure 2atBioNet workflow. Flowchart of an example use case of atBioNet. The user inputs a Proteins/genes list (A); a network is created (B); ranked in order of significance (C); and then the results are interpreted for their biological significance (D).
Summary of the gene counts from the three case studies
| Original published genes | 50 | 37 | 70 |
| # inputted as seed genes in atBioNet | 46 | 37 | 65 |
| Mapped genes from atBioNet | 44 | 37 | 50 |
| Added genes from atBioNet | 1362 | 1312 | 856 |
| Added edges from atBioNet | 1671 | 2160 | 1089 |
Top 10 KEGG pathways ranked by p-value for the top two modules in the three disease case studies
| Acute leukemias | Module #1: Leukemia module (n = 44) | Huntington's disease(hsa05016) | 6 | <0.0001 |
| | | Cell cycle(hsa04110) | 5 | 0.00015 |
| Chronic myeloid leukemia(hsa05220) | 4 | 0.00021 | ||
| Prostate cancer(hsa05215) | 4 | 0.00045 | ||
| Notch signaling pathway(hsa04330) | 3 | 0.00092 | ||
| Pathways in cancer(hsa05200) | 6 | 0.00184 | ||
| Measles(hsa05162) | 4 | 0.00209 | ||
| Neuroactive ligand-receptor interaction(hsa04080) | 5 | 0.00465 | ||
| Primary immunodeficiency(hsa05340) | 2 | 0.00913 | ||
| Endometrial cancer(hsa05213) | 2 | 0.01948 | ||
| Module #2: Immune module (n = 32) | JAK-STAT signaling pathway(hsa04630) | 12 | <0.0001 | |
| | B cell receptor signaling pathway(hsa04662) | 8 | <0.0001 | |
| Primary immunodeficiency(hsa05340) | 8 | <0.0001 | ||
| Measles(hsa05162) | 7 | <0.0001 | ||
| Natural killer cell mediated cytotoxicity(hsa04650) | 7 | <0.0001 | ||
| Osteoclast differentiation(hsa04380) | 6 | <0.0001 | ||
| Hematopoietic cell lineage(hsa04640) | 5 | <0.0001 | ||
| T cell receptor signaling pathway(hsa04660) | 5 | 0.00012 | ||
| Chemokine signaling pathway(hsa04062) | 6 | 0.00019 | ||
| Chronic myeloid leukemia(hsa05220) | 4 | 0.00033 | ||
| Lupus | Module #1: Inflammatory Module (n = 69) | MAPK signaling pathway(hsa04010) | 28 | <0.0001 |
| | | Cell cycle(hsa04110) | 12 | <0.0001 |
| Osteoclast differentiation(hsa04380) | 15 | <0.0001 | ||
| Toll-like receptor signaling pathway(hsa04620) | 16 | <0.0001 | ||
| NOD-like receptor signaling pathway(hsa04621) | 14 | <0.0001 | ||
| GnRH signaling pathway(hsa04912) | 12 | <0.0001 | ||
| Pertussis(hsa05133) | 12 | <0.0001 | ||
| Leishmaniasis(hsa05140) | 10 | <0.0001 | ||
| Chagas disease (American trypanosomiasis)(hsa05142) | 11 | <0.0001 | ||
| Toxoplasmosis(hsa05145) | 13 | <0.0001 | ||
| Module #2: Immune module (n = 49) | Osteoclast differentiation(hsa04380) | 13 | <0.0001 | |
| | JAK-STAT signaling pathway(hsa04630) | 12 | <0.0001 | |
| Measles(hsa05162) | 10 | <0.0001 | ||
| Influenza A(hsa05164) | 12 | <0.0001 | ||
| Pathways in cancer(hsa05200) | 13 | <0.0001 | ||
| Hepatitis C(hsa05160) | 8 | <0.0001 | ||
| Leishmaniasis(hsa05140) | 5 | <0.0001 | ||
| Basal transcription factors(hsa03022) | 4 | 0.00025 | ||
| Toll-like receptor signaling pathway(hsa04620) | 5 | 0.00028 | ||
| Acute myeloid leukemia(hsa05221) | 4 | 0.00033 | ||
| Breast cancer | Module #1: Proliferative module (n = 192) | DNA replication(hsa03030) | 16 | <0.0001 |
| | Nucleotide excision repair(hsa03420) | 13 | <0.0001 | |
| ErbB signaling pathway(hsa04012) | 15 | <0.0001 | ||
| Cell cycle(hsa04110) | 41 | <0.0001 | ||
| Pathways in cancer(hsa05200) | 28 | <0.0001 | ||
| Renal cell carcinoma(hsa05211) | 13 | <0.0001 | ||
| Pancreatic cancer(hsa05212) | 13 | <0.0001 | ||
| Chronic myeloid leukemia(hsa05220) | 16 | <0.0001 | ||
| Focal adhesion(hsa04510) | 20 | <0.0001 | ||
| | Measles(hsa05162) | 14 | <0.0001 | |
| Module #2: Metastasis module (n = 74) | Focal adhesion(hsa04510) | 17 | <0.0001 | |
| ECM-receptor interaction(hsa04512) | 15 | <0.0001 | ||
| Amoebiasis(hsa05146) | 11 | <0.0001 | ||
| Pathways in cancer(hsa05200) | 14 | <0.0001 | ||
| Protein digestion and absorption(hsa04974) | 8 | <0.0001 | ||
| Small cell lung cancer(hsa05222) | 7 | <0.0001 | ||
| Bladder cancer(hsa05219) | 4 | 0.00019 | ||
| Malaria(hsa05144) | 4 | 0.00041 | ||
| Rheumatoid arthritis(hsa05323) | 5 | 0.00041 | ||
| Cytokine-cytokine receptor interaction(hsa04060) | 8 | 0.00042 |
Figure 3Known and potential SLE biomarkers found by atBioNet. Additional SLE biomarker genes found based on the 37 seed genes using atBioNet. Module 1 (A) and module 2 (B) are shown. The red squares represent the seed genes, and the light blue circles represent the identified SLE biomarker genes that are confirmed by literatures.