Literature DB >> 21127725

A Bayesian model for cross-study differential gene expression.

Robert B Scharpf1, Håkon Tjelmeland, Giovanni Parmigiani, Andrew B Nobel.   

Abstract

In this paper we define a hierarchical Bayesian model for microarray expression data collected from several studies and use it to identify genes that show differential expression between two conditions. Key features include shrinkage across both genes and studies, and flexible modeling that allows for interactions between platforms and the estimated effect, as well as concordant and discordant differential expression across studies. We evaluated the performance of our model in a comprehensive fashion, using both artificial data, and a "split-study" validation approach that provides an agnostic assessment of the model's behavior not only under the null hypothesis, but also under a realistic alternative. The simulation results from the artificial data demonstrate the advantages of the Bayesian model. The 1 - AUC values for the Bayesian model are roughly half of the corresponding values for a direct combination of t- and SAM-statistics. Furthermore, the simulations provide guidelines for when the Bayesian model is most likely to be useful. Most noticeably, in small studies the Bayesian model generally outperforms other methods when evaluated by AUC, FDR, and MDR across a range of simulation parameters, and this difference diminishes for larger sample sizes in the individual studies. The split-study validation illustrates appropriate shrinkage of the Bayesian model in the absence of platform-, sample-, and annotation-differences that otherwise complicate experimental data analyses. Finally, we fit our model to four breast cancer studies employing different technologies (cDNA and Affymetrix) to estimate differential expression in estrogen receptor positive tumors versus negative ones. Software and data for reproducing our analysis are publicly available.

Entities:  

Year:  2009        PMID: 21127725      PMCID: PMC2994029          DOI: 10.1198/jasa.2009.ap07611

Source DB:  PubMed          Journal:  J Am Stat Assoc        ISSN: 0162-1459            Impact factor:   5.033


  44 in total

1.  A genomic view of alternative splicing.

Authors:  Barmak Modrek; Christopher Lee
Journal:  Nat Genet       Date:  2002-01       Impact factor: 38.330

2.  Statistical issues and methods for meta-analysis of microarray data: a case study in prostate cancer.

Authors:  Debashis Ghosh; Terrence R Barette; Dan Rhodes; Arul M Chinnaiyan
Journal:  Funct Integr Genomics       Date:  2003-07-22       Impact factor: 3.410

3.  Meta-analysis of microarrays: interstudy validation of gene expression profiles reveals pathway dysregulation in prostate cancer.

Authors:  Daniel R Rhodes; Terrence R Barrette; Mark A Rubin; Debashis Ghosh; Arul M Chinnaiyan
Journal:  Cancer Res       Date:  2002-08-01       Impact factor: 12.701

4.  Bayesian hierarchical model for identifying changes in gene expression from microarray experiments.

Authors:  Philippe Broët; Sylvia Richardson; François Radvanyi
Journal:  J Comput Biol       Date:  2002       Impact factor: 1.479

5.  Cross-study validation and combined analysis of gene expression microarray data.

Authors:  Elizabeth Garrett-Mayer; Giovanni Parmigiani; Xiaogang Zhong; Leslie Cope; Edward Gabrielson
Journal:  Biostatistics       Date:  2007-09-14       Impact factor: 5.899

6.  Classification of human lung carcinomas by mRNA expression profiling reveals distinct adenocarcinoma subclasses.

Authors:  A Bhattacharjee; W G Richards; J Staunton; C Li; S Monti; P Vasa; C Ladd; J Beheshti; R Bueno; M Gillette; M Loda; G Weber; E J Mark; E S Lander; W Wong; B E Johnson; T R Golub; D J Sugarbaker; M Meyerson
Journal:  Proc Natl Acad Sci U S A       Date:  2001-11-13       Impact factor: 11.205

Review 7.  Gene expression profiling reveals reproducible human lung adenocarcinoma subtypes in multiple independent patient cohorts.

Authors:  D Neil Hayes; Stefano Monti; Giovanni Parmigiani; C Blake Gilks; Katsuhiko Naoki; Arindam Bhattacharjee; Mark A Socinski; Charles Perou; Matthew Meyerson
Journal:  J Clin Oncol       Date:  2006-11-01       Impact factor: 44.544

8.  Large-scale prediction of Saccharomyces cerevisiae gene function using overlapping transcriptional clusters.

Authors:  Lani F Wu; Timothy R Hughes; Armaity P Davierwala; Mark D Robinson; Roland Stoughton; Steven J Altschuler
Journal:  Nat Genet       Date:  2002-06-24       Impact factor: 38.330

9.  Extended analysis of benchmark datasets for Agilent two-color microarrays.

Authors:  Kathleen F Kerr
Journal:  BMC Bioinformatics       Date:  2007-10-03       Impact factor: 3.169

10.  Prognostic meta-signature of breast cancer developed by two-stage mixture modeling of microarray data.

Authors:  Ronglai Shen; Debashis Ghosh; Arul M Chinnaiyan
Journal:  BMC Genomics       Date:  2004-12-14       Impact factor: 3.969

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  19 in total

1.  An empirical Bayes' approach to joint analysis of multiple microarray gene expression studies.

Authors:  Lingyan Ruan; Ming Yuan
Journal:  Biometrics       Date:  2011-04-22       Impact factor: 2.571

2.  Assumption weighting for incorporating heterogeneity into meta-analysis of genomic data.

Authors:  Yihan Li; Debashis Ghosh
Journal:  Bioinformatics       Date:  2012-01-27       Impact factor: 6.937

3.  Likelihood estimation of conjugacy relationships in linear models with applications to high-throughput genomics.

Authors:  Brian S Caffo; Dongmei Liu; Robert B Scharpf; Giovanni Parmigiani
Journal:  Int J Biostat       Date:  2009-05-29       Impact factor: 0.968

4.  A Joint Bayesian Model for Integrating Microarray and RNA Sequencing Transcriptomic Data.

Authors:  Tianzhou Ma; Faming Liang; Steffi Oesterreich; George C Tseng
Journal:  J Comput Biol       Date:  2017-05-25       Impact factor: 1.479

5.  On integrating multi-experiment microarray data.

Authors:  Georgia Tsiliki; Dimitrios Vlachakis; Sophia Kossida
Journal:  Philos Trans A Math Phys Eng Sci       Date:  2014-04-21       Impact factor: 4.226

6.  Joint analysis of differential gene expression in multiple studies using correlation motifs.

Authors:  Yingying Wei; Toyoaki Tenzen; Hongkai Ji
Journal:  Biostatistics       Date:  2014-08-19       Impact factor: 5.899

7.  Biomarker detection and categorization in ribonucleic acid sequencing meta-analysis using Bayesian hierarchical models.

Authors:  Tianzhou Ma; Faming Liang; George Tseng
Journal:  J R Stat Soc Ser C Appl Stat       Date:  2016-12-16       Impact factor: 1.864

8.  Rejoinder.

Authors:  Robert B Scharpf; Håkon Tjelmeland; Giovanni Parmigiani; Andrew B Nobel
Journal:  J Am Stat Assoc       Date:  2009-12       Impact factor: 5.033

9.  Unifying gene expression measures from multiple platforms using factor analysis.

Authors:  Xin Victoria Wang; Roel G W Verhaak; Elizabeth Purdom; Paul T Spellman; Terence P Speed
Journal:  PLoS One       Date:  2011-03-11       Impact factor: 3.240

10.  A Bayesian model for pooling gene expression studies that incorporates co-regulation information.

Authors:  Erin M Conlon; Bradley L Postier; Barbara A Methé; Kelly P Nevin; Derek R Lovley
Journal:  PLoS One       Date:  2012-12-28       Impact factor: 3.240

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