Literature DB >> 16381901

The LIFEdb database in 2006.

Alexander Mehrle1, Heiko Rosenfelder, Ingo Schupp, Coral del Val, Dorit Arlt, Florian Hahne, Stephanie Bechtel, Jeremy Simpson, Oliver Hofmann, Winston Hide, Karl-Heinz Glatting, Wolfgang Huber, Rainer Pepperkok, Annemarie Poustka, Stefan Wiemann.   

Abstract

LIFEdb (http://www.LIFEdb.de) integrates data from large-scale functional genomics assays and manual cDNA annotation with bioinformatics gene expression and protein analysis. New features of LIFEdb include (i) an updated user interface with enhanced query capabilities, (ii) a configurable output table and the option to download search results in XML, (iii) the integration of data from cell-based screening assays addressing the influence of protein-overexpression on cell proliferation and (iv) the display of the relative expression ('Electronic Northern') of the genes under investigation using curated gene expression ontology information. LIFEdb enables researchers to systematically select and characterize genes and proteins of interest, and presents data and information via its user-friendly web-based interface.

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Year:  2006        PMID: 16381901      PMCID: PMC1347501          DOI: 10.1093/nar/gkj139

Source DB:  PubMed          Journal:  Nucleic Acids Res        ISSN: 0305-1048            Impact factor:   16.971


INTRODUCTION

LIFEdb (1) has been implemented towards the integration, mining and visualization of functional genomics data. The system was designed to cope with large amounts of heterogeneous data originating from high-throughput experimental approaches (2) and to relate these data with information from an automatic bioinformatics analysis of the proteins investigated (3). The LIFEdb web-interface provides integrated access to cDNA-data, experimental results and bioinformatics information via several search forms, enabling researchers to systematically select and characterize genes and proteins of interest. By linking results to further external databases, the user is empowered to view the functional information within a larger context. Here we describe the newly added content in the LIFEdb database and highlight recent developments of interfaces to query and visualize the data.

NEW LAYOUT AND ADDED FUNCTIONALITY

The user interface has been completely updated and revised (Figure 1). Search fields are grouped into panels according to functionality. Users may either use the simple search field with a built-in analysis logic recognizing the type of input string or use additional fields to search for biological identifiers or experimental results. We have added a configurable search page in which groups of search fields can be selected or de-selected. The groups comprise experimental results, predictions, cDNA/protein data and keyword fields. The criteria of the respective groups can be connected by logical operators (‘AND’, ‘OR’). This allows for a ‘fine tuning’ of search capabilities.
Figure 1

The new LIFEdb web-interface. Users can choose between several search forms and are able to customize the output to display features of interest (left). All search results can be downloaded in XML (right).

Users can customize the output by selecting the experimental data or additional information to be displayed. The latter comprises annotations (gene names, chromosomal position of the cDNAs), identifiers (gene symbols, cDNA accession numbers, RefSeq/UniGene IDs) and bioinformatics analysis data (predictions, protein motifs). By default, results are shown in a tabular format but they can be downloaded as XML as well, to allow further processing with spreadsheets, databases or statistics software.

NEWLY ADDED DATA

LIFEdb was initially developed to publish data on full-length cDNAs and the subcellular localization of the encoded proteins (4). During the past two years the content of the database has constantly grown to currently contain data on 1500 cDNAs and localizations and microscopic images of some 1000 proteins. We have now integrated a first dataset from a cell-based screening assay that addresses the influence of protein-overexpression on cell proliferation (5). This screen comprised initially 103 proteins and is the first posting of such high-throughput data in an open-access database (Figure 2). Expression constructs encoding proteins of interest and fused to green fluorescent protein derivates at either their N- or C-terminus were transfected into mammalian cells, and effects of protein-overexpression on G1/S-phase transition were measured. This was done using a high-content screening microscope by monitoring the incorporation of BrdU through immunofluorescent staining. The data were statistically analysed using a linear model correcting for systematic and random errors. This resulted in a Z-score, based on a smoothed local regression function for each single experiment. Proteins with positive values of Z are considered to be an activator and those having a negative value to be a repressor of cell proliferation. The results for each investigated protein were calculated as the median value of the Z-scores of all replicate experiments carried out with the respective ORF. To obtain a measure of the significance (P-value), the set of Z-scores of one protein was compared with the overall distribution of Z-scores for all proteins via the two-sided Wilcoxon test. Results from the cellular screen can be searched for with a suitable search field, where users can specify if activators, repressors or both are to be displayed and where they are able to define a cut-off for the minimal accepted P-value. Results are displayed as an extra column showing the median Z-score and the accompanying P-value. The distribution of the Z-scores for each ORF can be viewed as a histogram in an extra window (see Figure 2) that is accessible via a hyperlink. There, the data on N-terminal fusion constructs (CFP–ORF) are displayed in dark blue and values from C-terminal fusion constructs (ORF–YFP) are displayed in green. The numbers of proteins with attached information from functional profiling will continuously increase as more proteins are screened.
Figure 2

Presentation of new data in LIFEdb. ‘Electronic Northern’ data are shown color-coded indicating the relative over-representation (red) or under-representation (blue) of the displayed genes in several tissues. Details are shown by moving the mouse over the respective tissue (left). Results of S-Phase assays are shown in a separate column with an extra window ploting the Z-scores of the single experiments for each protein (right) and the statistical significance of the result (P-value).

In addition to these experimental results, we included data on the relative tissue expression of the genes under investigation (‘Electronic Northern’, Figure 2). The calculation is based on the number of ESTs for every gene that were sequenced mostly in large scale projects (6–10). We used the UniGene (11) EST-dataset and eVOC ontologies (12) which curate this dataset in a detailed manner, to obtain a controlled tissue vocabulary. dbEST library mappings to the ontologies were obtained from the eVOC website (). The first level terms of the ontology ‘Anatomical System’ were used for the tissue-definitions (for a list, see ). All EST-libraries assigned to the respective term (or sub-term) were pooled. cDNAs were mapped to UniGene cluster IDs via the GenBank accession number in the UniGene dataset. The relative gene expression of one transcript was calculated using the number of ESTs in the respective UniGene cluster belonging to each ontology term which was then normalized for each term (for details on the calculation see ). The datasets, mappings and calculations are updated when new versions of the respective datasets become available. The expression for each gene is shown for the terms of the anatomical system as colored boxes in the table output. Boxes are labeled with an abbreviation of the underlying definition. Relative gene expression values are indicated by different colors. Values <1 (relative ‘under-expression’) are displayed in blue and values >1 are in red (relative ‘overexpression’). Darker colors represent a higher degree of under- or overexpression. Boxes in white indicate that no UniGene expression of the respective gene was identified in that particular group of tissues. Information on the underlying numbers (ESTs in the respective cluster and tissues) is displayed upon moving the mouse over the boxes. This information is included in the XML output.

FUTURE EXTENSIONS

In the future, we will integrate results from further ongoing cellular screens and extend the cDNA-annotation by integrating other external databases that cover for instance IPI identifiers and ontology terms.
  12 in total

1.  Systematic subcellular localization of novel proteins identified by large-scale cDNA sequencing.

Authors:  J C Simpson; R Wellenreuther; A Poustka; R Pepperkok; S Wiemann
Journal:  EMBO Rep       Date:  2000-09       Impact factor: 8.807

2.  The cancer genome anatomy project: building an annotated gene index.

Authors:  R L Strausberg; K H Buetow; M R Emmert-Buck; R D Klausner
Journal:  Trends Genet       Date:  2000-03       Impact factor: 11.639

3.  High-throughput protein analysis integrating bioinformatics and experimental assays.

Authors:  Coral del Val; Alexander Mehrle; Mechthild Falkenhahn; Markus Seiler; Karl-Heinz Glatting; Annemarie Poustka; Sandor Suhai; Stefan Wiemann
Journal:  Nucleic Acids Res       Date:  2004-02-03       Impact factor: 16.971

4.  Complete sequencing and characterization of 21,243 full-length human cDNAs.

Authors:  Toshio Ota; Yutaka Suzuki; Tetsuo Nishikawa; Tetsuji Otsuki; Tomoyasu Sugiyama; Ryotaro Irie; Ai Wakamatsu; Koji Hayashi; Hiroyuki Sato; Keiichi Nagai; Kouichi Kimura; Hiroshi Makita; Mitsuo Sekine; Masaya Obayashi; Tatsunari Nishi; Toshikazu Shibahara; Toshihiro Tanaka; Shizuko Ishii; Jun-ichi Yamamoto; Kaoru Saito; Yuri Kawai; Yuko Isono; Yoshitaka Nakamura; Kenji Nagahari; Katsuhiko Murakami; Tomohiro Yasuda; Takao Iwayanagi; Masako Wagatsuma; Akiko Shiratori; Hiroaki Sudo; Takehiko Hosoiri; Yoshiko Kaku; Hiroyo Kodaira; Hiroshi Kondo; Masanori Sugawara; Makiko Takahashi; Katsuhiro Kanda; Takahide Yokoi; Takako Furuya; Emiko Kikkawa; Yuhi Omura; Kumi Abe; Kumiko Kamihara; Naoko Katsuta; Kazuomi Sato; Machiko Tanikawa; Makoto Yamazaki; Ken Ninomiya; Tadashi Ishibashi; Hiromichi Yamashita; Katsuji Murakawa; Kiyoshi Fujimori; Hiroyuki Tanai; Manabu Kimata; Motoji Watanabe; Susumu Hiraoka; Yoshiyuki Chiba; Shinichi Ishida; Yukio Ono; Sumiyo Takiguchi; Susumu Watanabe; Makoto Yosida; Tomoko Hotuta; Junko Kusano; Keiichi Kanehori; Asako Takahashi-Fujii; Hiroto Hara; Tomo-o Tanase; Yoshiko Nomura; Sakae Togiya; Fukuyo Komai; Reiko Hara; Kazuha Takeuchi; Miho Arita; Nobuyuki Imose; Kaoru Musashino; Hisatsugu Yuuki; Atsushi Oshima; Naokazu Sasaki; Satoshi Aotsuka; Yoko Yoshikawa; Hiroshi Matsunawa; Tatsuo Ichihara; Namiko Shiohata; Sanae Sano; Shogo Moriya; Hiroko Momiyama; Noriko Satoh; Sachiko Takami; Yuko Terashima; Osamu Suzuki; Satoshi Nakagawa; Akihiro Senoh; Hiroshi Mizoguchi; Yoshihiro Goto; Fumio Shimizu; Hirokazu Wakebe; Haretsugu Hishigaki; Takeshi Watanabe; Akio Sugiyama; Makoto Takemoto; Bunsei Kawakami; Masaaki Yamazaki; Koji Watanabe; Ayako Kumagai; Shoko Itakura; Yasuhito Fukuzumi; Yoshifumi Fujimori; Megumi Komiyama; Hiroyuki Tashiro; Akira Tanigami; Tsutomu Fujiwara; Toshihide Ono; Katsue Yamada; Yuka Fujii; Kouichi Ozaki; Maasa Hirao; Yoshihiro Ohmori; Ayako Kawabata; Takeshi Hikiji; Naoko Kobatake; Hiromi Inagaki; Yasuko Ikema; Sachiko Okamoto; Rie Okitani; Takuma Kawakami; Saori Noguchi; Tomoko Itoh; Keiko Shigeta; Tadashi Senba; Kyoka Matsumura; Yoshie Nakajima; Takae Mizuno; Misato Morinaga; Masahide Sasaki; Takushi Togashi; Masaaki Oyama; Hiroko Hata; Manabu Watanabe; Takami Komatsu; Junko Mizushima-Sugano; Tadashi Satoh; Yuko Shirai; Yukiko Takahashi; Kiyomi Nakagawa; Koji Okumura; Takahiro Nagase; Nobuo Nomura; Hisashi Kikuchi; Yasuhiko Masuho; Riu Yamashita; Kenta Nakai; Tetsushi Yada; Yusuke Nakamura; Osamu Ohara; Takao Isogai; Sumio Sugano
Journal:  Nat Genet       Date:  2003-12-21       Impact factor: 38.330

5.  Complementary DNA sequencing: expressed sequence tags and human genome project.

Authors:  M D Adams; J M Kelley; J D Gocayne; M Dubnick; M H Polymeropoulos; H Xiao; C R Merril; A Wu; B Olde; R F Moreno
Journal:  Science       Date:  1991-06-21       Impact factor: 47.728

6.  From ORFeome to biology: a functional genomics pipeline.

Authors:  Stefan Wiemann; Dorit Arlt; Wolfgang Huber; Ruth Wellenreuther; Simone Schleeger; Alexander Mehrle; Stephanie Bechtel; Mamatha Sauermann; Ulrike Korf; Rainer Pepperkok; Holger Sültmann; Annemarie Poustka
Journal:  Genome Res       Date:  2004-10       Impact factor: 9.043

7.  eVOC: a controlled vocabulary for unifying gene expression data.

Authors:  Janet Kelso; Johann Visagie; Gregory Theiler; Alan Christoffels; Soraya Bardien; Damian Smedley; Darren Otgaar; Gary Greyling; C Victor Jongeneel; Mark I McCarthy; Tania Hide; Winston Hide
Journal:  Genome Res       Date:  2003-06       Impact factor: 9.043

8.  Toward a catalog of human genes and proteins: sequencing and analysis of 500 novel complete protein coding human cDNAs.

Authors:  S Wiemann; B Weil; R Wellenreuther; J Gassenhuber; S Glassl; W Ansorge; M Böcher; H Blöcker; S Bauersachs; H Blum; J Lauber; A Düsterhöft; A Beyer; K Köhrer; N Strack; H W Mewes; B Ottenwälder; B Obermaier; J Tampe; D Heubner; R Wambutt; B Korn; M Klein; A Poustka
Journal:  Genome Res       Date:  2001-03       Impact factor: 9.043

9.  Generation and initial analysis of more than 15,000 full-length human and mouse cDNA sequences.

Authors:  Robert L Strausberg; Elise A Feingold; Lynette H Grouse; Jeffery G Derge; Richard D Klausner; Francis S Collins; Lukas Wagner; Carolyn M Shenmen; Gregory D Schuler; Stephen F Altschul; Barry Zeeberg; Kenneth H Buetow; Carl F Schaefer; Narayan K Bhat; Ralph F Hopkins; Heather Jordan; Troy Moore; Steve I Max; Jun Wang; Florence Hsieh; Luda Diatchenko; Kate Marusina; Andrew A Farmer; Gerald M Rubin; Ling Hong; Mark Stapleton; M Bento Soares; Maria F Bonaldo; Tom L Casavant; Todd E Scheetz; Michael J Brownstein; Ted B Usdin; Shiraki Toshiyuki; Piero Carninci; Christa Prange; Sam S Raha; Naomi A Loquellano; Garrick J Peters; Rick D Abramson; Sara J Mullahy; Stephanie A Bosak; Paul J McEwan; Kevin J McKernan; Joel A Malek; Preethi H Gunaratne; Stephen Richards; Kim C Worley; Sarah Hale; Angela M Garcia; Laura J Gay; Stephen W Hulyk; Debbie K Villalon; Donna M Muzny; Erica J Sodergren; Xiuhua Lu; Richard A Gibbs; Jessica Fahey; Erin Helton; Mark Ketteman; Anuradha Madan; Stephanie Rodrigues; Amy Sanchez; Michelle Whiting; Anup Madan; Alice C Young; Yuriy Shevchenko; Gerard G Bouffard; Robert W Blakesley; Jeffrey W Touchman; Eric D Green; Mark C Dickson; Alex C Rodriguez; Jane Grimwood; Jeremy Schmutz; Richard M Myers; Yaron S N Butterfield; Martin I Krzywinski; Ursula Skalska; Duane E Smailus; Angelique Schnerch; Jacqueline E Schein; Steven J M Jones; Marco A Marra
Journal:  Proc Natl Acad Sci U S A       Date:  2002-12-11       Impact factor: 11.205

10.  Functional profiling: from microarrays via cell-based assays to novel tumor relevant modulators of the cell cycle.

Authors:  Dorit Arlt; Wolfgang Huber; Urban Liebel; Christian Schmidt; Meher Majety; Mamatha Sauermann; Heiko Rosenfelder; Stephanie Bechtel; Alexander Mehrle; Detlev Bannasch; Ingo Schupp; Markus Seiler; Jeremy C Simpson; Florian Hahne; Petra Moosmayer; Markus Ruschhaupt; Birgit Guilleaume; Ruth Wellenreuther; Rainer Pepperkok; Holger Sültmann; Annemarie Poustka; Stefan Wiemann
Journal:  Cancer Res       Date:  2005-09-01       Impact factor: 12.701

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  14 in total

1.  FOXRED1, encoding an FAD-dependent oxidoreductase complex-I-specific molecular chaperone, is mutated in infantile-onset mitochondrial encephalopathy.

Authors:  Elisa Fassone; Andrew J Duncan; Jan-Willem Taanman; Alistair T Pagnamenta; Michael I Sadowski; Tatjana Holand; Waseem Qasim; Paul Rutland; Sarah E Calvo; Vamsi K Mootha; Maria Bitner-Glindzicz; Shamima Rahman
Journal:  Hum Mol Genet       Date:  2010-09-21       Impact factor: 6.150

Review 2.  The mitochondrial proteome and human disease.

Authors:  Sarah E Calvo; Vamsi K Mootha
Journal:  Annu Rev Genomics Hum Genet       Date:  2010       Impact factor: 8.929

Review 3.  Human Proteinpedia as a resource for clinical proteomics.

Authors:  Suresh Mathivanan; Akhilesh Pandey
Journal:  Mol Cell Proteomics       Date:  2008-06-23       Impact factor: 5.911

4.  Dual channel rank-based intensity weighting for quantitative co-localization of microscopy images.

Authors:  Vasanth R Singan; Thouis R Jones; Kathleen M Curran; Jeremy C Simpson
Journal:  BMC Bioinformatics       Date:  2011-10-21       Impact factor: 3.169

5.  Defective nuclear import of Tpr in Progeria reflects the Ran sensitivity of large cargo transport.

Authors:  Chelsi J Snow; Ashraf Dar; Anindya Dutta; Ralph H Kehlenbach; Bryce M Paschal
Journal:  J Cell Biol       Date:  2013-05-06       Impact factor: 10.539

6.  Selection of suitable housekeeping genes for expression analysis in glioblastoma using quantitative RT-PCR.

Authors:  Valeria Valente; Silvia A Teixeira; Luciano Neder; Oswaldo K Okamoto; Sueli M Oba-Shinjo; Suely K N Marie; Carlos A Scrideli; Maria L Paçó-Larson; Carlos G Carlotti
Journal:  BMC Mol Biol       Date:  2009-03-03       Impact factor: 2.946

7.  The full-ORF clone resource of the German cDNA Consortium.

Authors:  Stephanie Bechtel; Heiko Rosenfelder; Anny Duda; Christian Peter Schmidt; Ute Ernst; Ruth Wellenreuther; Alexander Mehrle; Claudia Schuster; Andre Bahr; Helmut Blöcker; Dagmar Heubner; Andreas Hoerlein; Guenter Michel; Holger Wedler; Karl Köhrer; Birgit Ottenwälder; Annemarie Poustka; Stefan Wiemann; Ingo Schupp
Journal:  BMC Genomics       Date:  2007-10-31       Impact factor: 3.969

8.  ProtSweep, 2Dsweep and DomainSweep: protein analysis suite at DKFZ.

Authors:  C del Val; P Ernst; M Falkenhahn; C Fladerer; K H Glatting; S Suhai; A Hotz-Wagenblatt
Journal:  Nucleic Acids Res       Date:  2007-05-25       Impact factor: 16.971

9.  Towards defining the nuclear proteome.

Authors:  J Lynn Fink; Seetha Karunaratne; Amit Mittal; Donald M Gardiner; Nicholas Hamilton; Donna Mahony; Chikatoshi Kai; Harukazu Suzuki; Yosihide Hayashizaki; Rohan D Teasdale
Journal:  Genome Biol       Date:  2008-01-23       Impact factor: 13.583

10.  Dual specificity phosphatases 18 and 21 target to opposing sides of the mitochondrial inner membrane.

Authors:  Matthew J Rardin; Sandra E Wiley; Anne N Murphy; David J Pagliarini; Jack E Dixon
Journal:  J Biol Chem       Date:  2008-04-02       Impact factor: 5.157

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