Optimal Methods for DetectingWeak and Sparse Signals Based on Correlated Features in Genetic Associa

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  Optimal tests of detecting weak and sparse signals in big data,such as the Higher Criticism test(HC),Berk-Jones test(B-J),(o) -divergence tests have been shown extra statistical power in detecting novel disease genes in genome-wide sequencing association studies.
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