Literature DB >> 12844246

A mixture model approach to detecting differentially expressed genes with microarray data.

Wei Pan1, Jizhen Lin, Chap T Le.   

Abstract

An exciting biological advancement over the past few years is the use of microarray technologies to measure simultaneously the expression levels of thousands of genes. The bottleneck now is how to extract useful information from the resulting large amounts of data. An important and common task in analyzing microarray data is to identify genes with altered expression under two experimental conditions. We propose a nonparametric statistical approach, called the mixture model method (MMM), to handle the problem when there are a small number of replicates under each experimental condition. Specifically, we propose estimating the distributions of a t -type test statistic and its null statistic using finite normal mixture models. A comparison of these two distributions by means of a likelihood ratio test, or simply using the tail distribution of the null statistic, can identify genes with significantly changed expression. Several methods are proposed to effectively control the false positives. The methodology is applied to a data set containing expression levels of 1,176 genes of rats with and without pneumococcal middle ear infection.

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Year:  2003        PMID: 12844246     DOI: 10.1007/s10142-003-0085-7

Source DB:  PubMed          Journal:  Funct Integr Genomics        ISSN: 1438-793X            Impact factor:   3.410


  40 in total

1.  A model for measurement error for gene expression arrays.

Authors:  D M Rocke; B Durbin
Journal:  J Comput Biol       Date:  2001       Impact factor: 1.479

2.  Analysis of variance for gene expression microarray data.

Authors:  M K Kerr; M Martin; G A Churchill
Journal:  J Comput Biol       Date:  2000       Impact factor: 1.479

3.  Testing for differentially-expressed genes by maximum-likelihood analysis of microarray data.

Authors:  T Ideker; V Thorsson; A F Siegel; L E Hood
Journal:  J Comput Biol       Date:  2000       Impact factor: 1.479

4.  Importance of replication in microarray gene expression studies: statistical methods and evidence from repetitive cDNA hybridizations.

Authors:  M L Lee; F C Kuo; G A Whitmore; J Sklar
Journal:  Proc Natl Acad Sci U S A       Date:  2000-08-29       Impact factor: 11.205

5.  Nonparametric methods for identifying differentially expressed genes in microarray data.

Authors:  Olga G Troyanskaya; Mitchell E Garber; Patrick O Brown; David Botstein; Russ B Altman
Journal:  Bioinformatics       Date:  2002-11       Impact factor: 6.937

6.  Comparing three methods for variance estimation with duplicated high density oligonucleotide arrays.

Authors:  Xiaohong Huang; Wei Pan
Journal:  Funct Integr Genomics       Date:  2002-07-24       Impact factor: 3.410

7.  Evaluating test statistics to select interesting genes in microarray experiments.

Authors:  Charles Kooperberg; Simonetta Sipione; Michael LeBlanc; Andrew D Strand; Elena Cattaneo; James M Olson
Journal:  Hum Mol Genet       Date:  2002-09-15       Impact factor: 6.150

8.  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

9.  Ratio-based decisions and the quantitative analysis of cDNA microarray images.

Authors:  Y Chen; E R Dougherty; M L Bittner
Journal:  J Biomed Opt       Date:  1997-10       Impact factor: 3.170

10.  Match-only integral distribution (MOID) algorithm for high-density oligonucleotide array analysis.

Authors:  Yingyao Zhou; Ruben Abagyan
Journal:  BMC Bioinformatics       Date:  2002-01-22       Impact factor: 3.169

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  26 in total

1.  Empirical Bayes estimation of gene-specific effects in micro-array research.

Authors:  Jode W Edwards; Grier P Page; Gary Gadbury; Moonseong Heo; Tsuyoshi Kayo; Richard Weindruch; David B Allison
Journal:  Funct Integr Genomics       Date:  2004-09-29       Impact factor: 3.410

2.  A simple Bayesian mixture model with a hybrid procedure for genome-wide association studies.

Authors:  Yu-Chung Wei; Shu-Hui Wen; Pei-Chun Chen; Chih-Hao Wang; Chuhsing K Hsiao
Journal:  Eur J Hum Genet       Date:  2010-04-21       Impact factor: 4.246

3.  The t-mixture model approach for detecting differentially expressed genes in microarrays.

Authors:  Shuo Jiao; Shunpu Zhang
Journal:  Funct Integr Genomics       Date:  2008-01-22       Impact factor: 3.410

4.  A Robust Unified Approach to Analyzing Methylation and Gene Expression Data.

Authors:  Abbas Khalili; Tim Huang; Shili Lin
Journal:  Comput Stat Data Anal       Date:  2009-03-15       Impact factor: 1.681

5.  ICN: Extracting interconnected communities in gene Co-expression networks.

Authors:  Qiong Wu; Tianzhou Ma; Qingzhi Liu; Donald K Milton; Yuan Zhang; Shuo Chen
Journal:  Bioinformatics       Date:  2021-01-28       Impact factor: 6.937

6.  NetMix: A Network-Structured Mixture Model for Reduced-Bias Estimation of Altered Subnetworks.

Authors:  Matthew A Reyna; Uthsav Chitra; Rebecca Elyanow; Benjamin J Raphael
Journal:  J Comput Biol       Date:  2021-01-05       Impact factor: 1.479

7.  Empirical Bayes analysis of quantitative proteomics experiments.

Authors:  Adam A Margolin; Shao-En Ong; Monica Schenone; Robert Gould; Stuart L Schreiber; Steven A Carr; Todd R Golub
Journal:  PLoS One       Date:  2009-10-14       Impact factor: 3.240

8.  A new test statistic based on shrunken sample variance for identifying differentially expressed genes in small microarray experiments.

Authors:  Akihiro Hirakawa; Yasunori Sato; Chikuma Hamada; Isao Yoshimura
Journal:  Bioinform Biol Insights       Date:  2008-02-29

9.  Evaluation of fecal mRNA reproducibility via a marginal transformed mixture modeling approach.

Authors:  Nysia I George; Joanne R Lupton; Nancy D Turner; Robert S Chapkin; Laurie A Davidson; Naisyin Wang
Journal:  BMC Bioinformatics       Date:  2010-01-07       Impact factor: 3.169

10.  Estimating the false discovery rate using mixed normal distribution for identifying differentially expressed genes in microarray data analysis.

Authors:  Akihiro Hirakawa; Yasunori Sato; Takashi Sozu; Chikuma Hamada; Isao Yoshimura
Journal:  Cancer Inform       Date:  2008-01-22
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