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Testing multiple hypotheses through IMP weighted FDR based on a genetic functional network with application to a new zebrafish transcriptome study

  • Jiang Gui
  • , Casey S. Greene
  • , Con Sullivan
  • , Walter Taylor
  • , Jason H. Moore
  • , Carol Kim
  • Dartmouth College
  • Dartmouth-Hitchcock Medical Center
  • University of Maine
  • University of Pennsylvania

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

In genome-wide studies, hundreds of thousands of hypothesis tests are performed simultaneously. Bonferroni correction and False Discovery Rate (FDR) can effectively control type I error but often yield a high false negative rate. We aim to develop a more powerful method to detect differentially expressed genes. We present a Weighted False Discovery Rate (WFDR) method that incorporate biological knowledge from genetic networks. We first identify weights using Integrative Multi-species Prediction (IMP) and then apply the weights in WFDR to identify differentially expressed genes through an IMP-WFDR algorithm. We performed a gene expression experiment to identify zebrafish genes that change expression in the presence of arsenic during a systemic Pseudomonas aeruginosa infection. Zebrafish were exposed to arsenic at 10 parts per billion and/or infected with P. aeruginosa. Appropriate controls were included. We then applied IMP-WFDR during the analysis of differentially expressed genes. We compared the mRNA expression for each group and found over 200 differentially expressed genes and several enriched pathways including defense response pathways, arsenic response pathways, and the Notch signaling pathway.

Original languageEnglish
Article number17
JournalBioData Mining
Volume8
Issue number1
DOIs
StatePublished - Jun 17 2015

Keywords

  • Data integration
  • False discovery rate
  • Family-wise error rate
  • Genomic studies

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