Publication | Open Access
Outlier sums for differential gene expression analysis
170
Citations
8
References
2006
Year
EngineeringGenetic EpidemiologyPathologyGene Expression ProfilingData MiningDisease GroupBiostatisticsPublic HealthMolecular DiagnosticsMicroarray Data AnalysisOutlier DetectionKnowledge DiscoveryHigh Gene ExpressionStatistical GeneticsGene ExpressionFunctional GenomicsBioinformaticsComputational BiologyOutlier SumsCancer GenomicsSystems Biology
We propose a method for detecting genes that, in a disease group, exhibit unusually high gene expression in some but not all samples. This can be particularly useful in cancer studies, where mutations that can amplify or turn off gene expression often occur in only a minority of samples. In real and simulated examples, the new method often exhibits lower false discovery rates than simple t-statistic thresholding. We also compare our approach to the recent cancer profile outlier analysis proposal of Tomlins and others (2005).
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