Abstract

Rare-variant association testing usually requires some method of aggregation. The next important step is to pinpoint individual rare causal variants among a large number of variants within a genetic region. Recently Ionita-Laza et al. propose a backward elimination (BE) procedure that can identify individual causal variants among the many variants in a gene. The BE procedure removes a variant if excluding this variant can lead to a smaller P-value for the BURDEN test (referred to as “BE-BURDEN”) or the SKAT test (referred to as “BE-SKAT”). We here use the adaptive combination of P-values (ADA) method to pinpoint causal variants. Unlike most gene-based association tests, the ADA statistic is built upon per-site P-values of individual variants. It is straightforward to select important variants given the optimal P-value truncation threshold found by ADA. We performed comprehensive simulations to compare ADA with BE-SKAT and BE-BURDEN. Ranking these three approaches according to positive predictive values (PPVs), the percentage of truly causal variants among the total selected variants, we found ADA > BE-SKAT > BE-BURDEN across all simulation scenarios. We therefore recommend using ADA to pinpoint plausible rare causal variants in a gene.

Highlights

  • The BURDEN test is more powerful than SKAT when the proportion of causal variants in a region is large and all causal variants are deleterious/protective[13,14,27,28]

  • positive predictive values (PPVs) is defined as #(TP)/[#(TP) + #(FP)], which is the percentage of true positives out of all positives

  • We compare adaptive combination of P-values (ADA) with the backward elimination (BE) procedure based on the BURDEN test or the SKAT test[30]

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Summary

Introduction

The BURDEN test is more powerful than SKAT when the proportion of causal variants in a region is large and all causal variants are deleterious/protective[13,14,27,28]. Because many neutral variants may be included in an NGS analysis, it is worthwhile to truncate variants with larger P-values that are more likely to be neutral[13,26,29]. With this concept, one of the P-values combination methods[13,14,15,16,26], the “adaptive combination of P-values method” (abbreviated as “ADA”)[13], is applicable to NGS data analyses. The BURDEN tests and SKAT group the variants in a gene to form statistics, but it is not easy to pinpoint individual causal variants from the composite statistics. The BE procedure removes a variant if excluding it can lead to a smaller P-value for the BURDEN test (referred to as “BE-BURDEN”) or the SKAT test (referred to as “BE-SKAT”)

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