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Improving the in silico assessment of pathogenicity for compensated variants

机译:改善硅对补偿变体的致病性评估

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摘要

Understanding the functional sequelae of amino-acid replacements is of fundamental importance in medical genetics. Perhaps, the most intuitive way to assess the potential pathogenicity of a given human missense variant is by measuring the degree of evolutionary conservation of the substituted amino-acid residue, a feature that generally serves as a good proxy metric for the functional/structural importance of that residue. However, the presence of putatively compensated variants as the wild-type alleles in orthologous proteins of other mammalian species not only challenges this classical view of amino-acid essentiality but also precludes the accurate evaluation of the functional impact of this type of missense variant using currently available bioinformatic prediction tools. Compensated variants constitute at least 4% of all known missense variants causing human-inherited disease and hence represent an important potential source of error in that they are likely to be disproportionately misclassified as benign variants. The consequent under-reporting of compensated variants is exacerbated in the context of next-generation sequencing where their inappropriate exclusion constitutes an unfortunate natural consequence of the filtering and prioritization of the very large number of variants generated. Here we demonstrate the reduced performance of currently available pathogenicity prediction tools when applied to compensated variants and propose an alternative machine-learning approach to assess likely pathogenicity for this particular type of variant.
机译:了解氨基酸置换的功能性后遗症在医学遗传学中具有基本重要性。也许,评估给定人类密码变体的潜在致病性的最直观的方法是通过测量取代的氨基酸残基的进化程度,这一般用作功能/结构重要性的良好代理度量的特征那残渣。然而,存在借助补偿的变体作为其他哺乳动物物种的野生型等位基因,这不仅挑战这种常态酸性本质的古典视图,而且禁止了目前使用这种类型的密码变种功能影响的准确评估可用的生物信息预测工具。补偿变体构成了所有已知的密码变体的至少4%,导致人类遗传性疾病,因此代表了一个重要的潜在误差来源,因为它们可能被错误地被错误分类为良性变异。在下一代测序的背景下加剧了所造的补偿变体的后续报道,其中不恰当的排除构成了滤波的不幸的自然后果,并产生了非常大量的变体的优先级。在这里,我们展示当应用于补偿变体时当前可用的致病性预测工具的性能降低,并提出了一种替代的机器学习方法来评估这种特殊类型的变体的可能致病性。

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  • 作者单位

    Univ Porto Populat Genet &

    Evolut Grp Inst Invest &

    Inovacao Saude Rua Alfredo Allen 208 P;

    Cardiff Univ Inst Med Genet Sch Med Heath Pk Cardiff S Glam Wales;

    Inst Super Engn Porto GECAD ISEP Res Grp Oporto Portugal;

    Univ Aveiro iBiMED Dept Med Sci Campus Univ Santiago Aveiro Portugal;

    Ctr Hosp Porto Ctr Genet Med Jacinto Magalhaes Biochem Genet Unit Oporto Portugal;

    Univ Porto Populat Genet &

    Evolut Grp Inst Invest &

    Inovacao Saude Rua Alfredo Allen 208 P;

    Cardiff Univ Inst Med Genet Sch Med Heath Pk Cardiff S Glam Wales;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医学遗传学;
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