High-Throughput GoMiner, an 'industrial-strength' integrative gene ontology tool for interpretation of multiple-microarray experiments, with application to studies of Common Variable Immune Deficiency (CVID)
-
Published:2005-07-05
Issue:1
Volume:6
Page:
-
ISSN:1471-2105
-
Container-title:BMC Bioinformatics
-
language:en
-
Short-container-title:BMC Bioinformatics
Author:
Zeeberg Barry R,Qin Haiying,Narasimhan Sudarshan,Sunshine Margot,Cao Hong,Kane David W,Reimers Mark,Stephens Robert M,Bryant David,Burt Stanley K,Elnekave Eldad,Hari Danielle M,Wynn Thomas A,Cunningham-Rundles Charlotte,Stewart Donn M,Nelson David,Weinstein John N
Abstract
Abstract
Background
We previously developed GoMiner, an application that organizes lists of 'interesting' genes (for example, under-and overexpressed genes from a microarray experiment) for biological interpretation in the context of the Gene Ontology. The original version of GoMiner was oriented toward visualization and interpretation of the results from a single microarray (or other high-throughput experimental platform), using a graphical user interface. Although that version can be used to examine the results from a number of microarrays one at a time, that is a rather tedious task, and original GoMiner includes no apparatus for obtaining a global picture of results from an experiment that consists of multiple microarrays. We wanted to provide a computational resource that automates the analysis of multiple microarrays and then integrates the results across all of them in useful exportable output files and visualizations.
Results
We now introduce a new tool, High-Throughput GoMiner, that has those capabilities and a number of others: It (i) efficiently performs the computationally-intensive task of automated batch processing of an arbitrary number of microarrays, (ii) produces a human-or computer-readable report that rank-orders the multiple microarray results according to the number of significant GO categories, (iii) integrates the multiple microarray results by providing organized, global clustered image map visualizations of the relationships of significant GO categories, (iv) provides a fast form of 'false discovery rate' multiple comparisons calculation, and (v) provides annotations and visualizations for relating transcription factor binding sites to genes and GO categories.
Conclusion
High-Throughput GoMiner achieves the desired goal of providing a computational resource that automates the analysis of multiple microarrays and integrates results across all of the microarrays. For illustration, we show an application of this new tool to the interpretation of altered gene expression patterns in Common Variable Immune Deficiency (CVID). High-Throughput GoMiner will be useful in a wide range of applications, including the study of time-courses, evaluation of multiple drug treatments, comparison of multiple gene knock-outs or knock-downs, and screening of large numbers of chemical derivatives generated from a promising lead compound.
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Structural Biology
Reference51 articles.
1. Zeeberg BR, Feng W, Wang G, Wang MD, Fojo AT, Sunshine M, Narasimhan S, Kane DW, Reinhold WC, Lababidi S, et al.: GoMiner: a resource for biological interpretation of genomic and proteomic data. Genome Biol 2003, 4: R28. 2. GoMiner[http://discover.nci.nih.gov/gominer] 3. High-Throughput GoMiner[http://discover.nci.nih.gov/gominer/htgm.jsp] 4. Bonferroni[http://home.clara.net/sisa/bonhlp.htm] 5. Weinstein J, Myers T, O'Connor P, Friend S, Fornace A Jr, Kohn K, Fojo T, Bates S, Rubinstein , Anderson N, Buolamwini J, van Osdol W, Monks A, Scudiero D, Sausville E, Zaharevitz D, Bunow B, Viswanadhan V, Johnson G, Wittes , Paull K: An information-intensive approach to the molecular pharmacology of cancer. Science 1997, 275: 343–349.
Cited by
233 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|