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Association analysis of mitochondrial DNA heteroplasmic variants: methods and application.

Xianbang SunKatia BulekovaJian YangMeng LaiAchilleas N PitsillidesXue LiuYuankai ZhangXiuqing GuoQian YongLaura M RaffieldJerome I RotterStephen S RichGoncalo AbecasisApril P CarsonRamachandran S VasanJoshua C BisBruce M PsatyEric BoerwinkleAnnette L FitzpatrickClaudia L SatizabalDan E ArkingJun DingDaniel Levynull nullChunyu Liu
Published in: medRxiv : the preprint server for health sciences (2024)
We rigorously assessed a comprehensive association testing framework for heteroplasmy, employing both simulated and real-world data. This framework employed a variant allele fraction (VAF) threshold and harnessed multiple gene-based tests for robust identification and association testing of heteroplasmy. Our simulation studies demonstrated that gene-based tests maintained an appropriate type I error rate at α=0.001. Notably, when 5% or more heteroplasmic variants within a target region were linked to an outcome, burden-extension tests (including the adaptive burden test, variable threshold burden test, and z-score weighting burden test) outperformed the sequence kernel association test (SKAT) and the original burden test. Applying this framework, we conducted association analyses on whole-blood derived heteroplasmy in 17,507 individuals of African and European ancestries (31% of African Ancestry, mean age of 62, with 58% women) with whole genome sequencing data. We performed both cohort- and ancestry-specific association analyses, followed by meta-analysis on bothpooled samples and within each ancestry group. Our results suggest that mtDNA-Enco ded genes/regions are likely to exhibit varying rates in somatic aging, with the notably strong associations observed between heteroplasmy in the RNR1 and RNR2 genes ( p <0.001) and advance aging by the Original Burden test. In contrast, SKAT identified significant associations ( p <0.001) between diabetes and the aggregated effects of heteroplasmy in several protein-coding genes. Further research is warranted to validate these findings. In summary, our proposed statistical framework represents a valuable tool for facilitating association testing of heteroplasmy with disease traits in large human populations.
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