False discovery rate control for grouped or discretely supported p-values with application to a neuroimaging study
DOI10.2436/20.8080.02.87zbMath1428.62346OpenAlexW3005761503MaRDI QIDQ5212097
Yohan Yee, Jason Lerch, Geoffrey J. McLachlan, Hien Duy Nguyen
Publication date: 24 January 2020
Full work available at URL: https://espace.library.uq.edu.au/view/UQ:2d32f46/UQ2d32f46_OA.pdf
grouped datacensored datamixture modelempirical-Bayesdata quantizationdiscrete supportfalse discovery rate controlincompletely observed data
Applications of statistics to biology and medical sciences; meta analysis (62P10) Parametric hypothesis testing (62F03) Robustness and adaptive procedures (parametric inference) (62F35) Testing in survival analysis and censored data (62N03) Paired and multiple comparisons; multiple testing (62J15)
Uses Software
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