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arxiv: 1111.4639 · v1 · pith:W3JGE24Xnew · submitted 2011-11-20 · 💻 cs.CE · q-bio.GN· stat.AP· stat.ME

Cancer gene prioritization by integrative analysis of mRNA expression and DNA copy number data: a comparative review

classification 💻 cs.CE q-bio.GNstat.APstat.ME
keywords datageneanalysiscancercopyexpressiongenome-widenumber
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A variety of genome-wide profiling techniques are available to probe complementary aspects of genome structure and function. Integrative analysis of heterogeneous data sources can reveal higher-level interactions that cannot be detected based on individual observations. A standard integration task in cancer studies is to identify altered genomic regions that induce changes in the expression of the associated genes based on joint analysis of genome-wide gene expression and copy number profiling measurements. In this review, we provide a comparison among various modeling procedures for integrating genome-wide profiling data of gene copy number and transcriptional alterations and highlight common approaches to genomic data integration. A transparent benchmarking procedure is introduced to quantitatively compare the cancer gene prioritization performance of the alternative methods. The benchmarking algorithms and data sets are available at http://intcomp.r-forge.r-project.org

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