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Controlling false discovery proportion in identification of drug-related adverse events from multiple system organ classes
Authors:Xianming Tan  Guanghan F. Liu  Donglin Zeng  William Wang  Guoqing Diao  Joseph F. Heyse  Joseph G. Ibrahim
Affiliation:1. Department of Biostatistics, UNC at Chapel Hill, Chapel Hill, North Carolina;2. Merck & Co., Inc., North Wales, Pennsylvania;3. Department of Statistics, The Volgenau School of Engineering, George Mason University, Fairfax, Virginia
Abstract:Analyzing safety data from clinical trials to detect safety signals worth further examination involves testing multiple hypotheses, one for each observed adverse event (AE) type. There exists certain hierarchical structure for these hypotheses due to the classification of the AEs into system organ classes, and these AEs are also likely correlated. Many approaches have been proposed to identify safety signals under the multiple testing framework and tried to achieve control of false discovery rate (FDR). The FDR control concerns the expectation of the false discovery proportion (FDP). In practice, the control of the actual random variable FDP could be more relevant and has recently drawn much attention. In this paper, we proposed a two-stage procedure for safety signal detection with direct control of FDP, through a permutation-based approach for screening groups of AEs and a permutation-based approach of constructing simultaneous upper bounds for false discovery proportion. Our simulation studies showed that this new approach has controlled FDP. We demonstrate our approach using data sets derived from a drug clinical trial.
Keywords:drug safety  false discovery proportion  hierarchical testing  multiplicity  permutation  signal detection  two-stage approach
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