Publication | Open Access
A study of pre-validation
28
Citations
13
References
2008
Year
EngineeringVerificationVerification And ValidationClinical PredictorsLanguage TestingBiomedical Data ScienceStatistical ComputingBiostatisticsPublic HealthMolecular DiagnosticsMicroarray Data AnalysisStatisticsReliabilityPermutation TestSoftware ValidationComputational PathologyStatistical GeneticsClinical Decision SupportBiomedical AnalysisBioinformaticsData ValidationAutomated ReasoningSoftware TestingAnalytical TestBiomedical Data Analysis
Given a predictor of outcome derived from a high-dimensional dataset, pre-validation is a useful technique for comparing it to competing predictors on the same dataset. For microarray data, it allows one to compare a newly derived predictor for disease outcome to standard clinical predictors on the same dataset. We study pre-validation analytically to determine if the inferences drawn from it are valid. We show that while pre-validation generally works well, the straightforward “one degree of freedom” analytical test from pre-validation can be biased and we propose a permutation test to remedy this problem. In simulation studies, we show that the permutation test has the nominal level and achieves roughly the same power as the analytical test.
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