MixTwice - Large-Scale Hypothesis Testing by Variance Mixing
Implements large-scale hypothesis testing by variance
mixing. It takes two statistics per testing unit -- an
estimated effect and its associated squared standard error --
and fits a nonparametric, shape-constrained mixture separately
on two latent parameters. It reports local false discovery
rates (lfdr) and local false sign rates (lfsr). Manuscript
describing algorithm of MixTwice: Zheng et al(2021) <doi:
10.1093/bioinformatics/btab162>.