Transcription of Lecture 10: Multiple Testing - UW Genome Sciences
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Lecture 10: Multiple TestingGoals Correcting for Multiple Testing in R Methods for addressing Multiple Testing (FWERand FDR) Define the Multiple Testing problem and relatedconceptsType I and II ErrorsCorrect Decision1 - Correct Decision1 - Incorrect Decision Incorrect Decision H0 TrueH0 FalseDo NotReject H0 Rejct H0 Actual Situation Truth DecisionType II ErrorType I Error)()(ErrorIITypePErrorITypeP==!"Why Multiple Testing MattersGenomics = Lots of Data = Lots of hypothesis TestsA typical microarray experiment might result in performing10000 separate hypothesis tests . If we use a standard p-valuecut-off of , we d expect 500 genes to be deemed significant by chance. In general, if we perform m hypothesis tests , what is theprobability of at least 1 false positive?
Why Multiple Testing Matters Genomics = Lots of Data = Lots of Hypothesis Tests A typical microarray experiment might result in performing 10000 separate hypothesis tests.
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