Kurtovic-Kozaric Amina, Delalic Lejla, Mutapcic Belma, Comor Lejla, Siciliano Eric, Kiel Mark J
Genomenon, Ann Arbor, MI, United States.
Front Genet. 2024 Dec 10;15:1487608. doi: 10.3389/fgene.2024.1487608. eCollection 2024.
Accurate variant classification is critical for genetic diagnosis. Variants without clear classification, known as "variants of uncertain significance" (VUS), pose a significant diagnostic challenge. This study examines AlphaMissense performance in variant classification, specifically for VUS. A systematic comparison between AlphaMissense predictions and predictions based on curated evidence according to the ACMG/AMP classification guidelines was conducted for 5845 missense variants in 59 genes associated with representative Mendelian disorders. A framework for quantifying and modeling VUS pathogenicity was used to facilitate comparison. Manual reviewing classified 5845 variants as 4085 VUS, 1576 pathogenic/likely pathogenic, and 184 benign/likely benign. Pathogenicity predictions based on AlphaMissense and ACMG guidelines were concordant for 1887 variants (1352 pathogenic, 132 benign, and 403 VUS/ambiguous). The sensitivity and specificity of AlphaMissense predictions for pathogenicity were 92% and 78%. Moreover, the quantification of VUS evidence and heatmaps weakly correlated with the AlphaMissense score. For VUS without computational evidence, incorporating AlphaMissense changed the VUS quantification for 878 variants, while 56 were reclassified as likely pathogenic. When AlphaMissense replaced existing computational evidence for all VUS, 1709 variants changed quantified criteria while 63 were reclassified as likely pathogenic. Our research suggests that the augmentation of AlphaMissense with empirical evidence may improve performance by incorporating a quantitative framework to aid in VUS classification.
准确的变异分类对于基因诊断至关重要。没有明确分类的变异,即“意义未明的变异”(VUS),带来了重大的诊断挑战。本研究考察了AlphaMissense在变异分类中的表现,特别是针对VUS。针对与代表性孟德尔疾病相关的59个基因中的5845个错义变异,根据美国医学遗传学与基因组学学会(ACMG)/美国病理学家协会(AMP)分类指南,对AlphaMissense预测结果与基于精选证据的预测结果进行了系统比较。使用了一个量化和建模VUS致病性的框架来促进比较。人工审核将5845个变异分类为4085个VUS、1576个致病性/可能致病性变异以及184个良性/可能良性变异。基于AlphaMissense和ACMG指南的致病性预测在1887个变异(1352个致病性变异、132个良性变异以及403个VUS/意义不明确变异)上是一致的。AlphaMissense致病性预测的敏感性和特异性分别为92%和78%。此外,VUS证据的量化和热图与AlphaMissense评分的相关性较弱。对于没有计算证据的VUS,纳入AlphaMissense改变了878个变异的VUS量化结果,同时有56个被重新分类为可能致病性变异。当AlphaMissense取代所有VUS的现有计算证据时,1709个变异改变了量化标准,同时有63个被重新分类为可能致病性变异。我们的研究表明,通过纳入一个定量框架以辅助VUS分类,用经验证据增强AlphaMissense可能会提高其性能。