DFDR2.p.adjust: Adjusted P-Values for the Modified Double FDR Procedure

Description Usage Arguments Value Author(s) References See Also Examples

View source: R/DFDR_adjP.R

Description

Given a list/data frame of grouped p-values, retruns adjusted p-values to make decisions

Usage

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DFDR2.p.adjust(pval, t, make.decision)

Arguments

pval

the structural p-values, the type should be "list".

t

the threshold selecting significant families and testing hypotheses.

make.decision

logical; if TRUE, then the output include the decision rules compared adjusted p-values with significant level α.

Value

A list of the adjusted p-values, a list of NULL means the family is not selected to do the test in the second stage.

Author(s)

Yalin Zhu

References

Mehrotra, D. V., & Adewale, A. J. (2012). Flagging clinical adverse experiences: reducing false discoveries without materially compromising power for detecting true signals. Statistics in medicine, 31: 1918-1930.

See Also

DFDR.p.adjust, p.adjust.

Examples

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# data is from Example 4.1 in Mehrotra and Adewale (2012)
pval <- list(c(0.031,0.023,0.029,0.005,0.031,0.000,0.874,0.399,0.293,0.077),
             c(0.216,0.843,0.864),
             c(1,0.878,0.766,0.598,0.011,0.864),
             c(0.889,0.557,0.767,0.009,0.644),
             c(1,0.583,0.147,0.789,0.217,1,0.02,0.784,0.579,0.439),
             c(0.898,0.619,0.193,0.806,0.611,0.526,0.702,0.196))
DFDR2.p.adjust(pval = pval,t=0.1)
sum(unlist(DFDR2.p.adjust(pval = pval,t=0.1))<=0.1)

allenzhuaz/MHTmult documentation built on Nov. 4, 2021, 6:49 a.m.