Montanucci Ludovica, Brünger Tobias, Boßelmann Christian M, Ivaniuk Alina, Pérez-Palma Eduardo, Lhatoo Samden, Leu Costin, Lal Dennis
Department of Neurology, McGovern Medical School at UTHealth, Houston, Texas, USA.
Center for Neurogenetics, UTHealth Houston, Houston, Texas, USA.
Epilepsia. 2024 Dec;65(12):3655-3663. doi: 10.1111/epi.18155. Epub 2024 Oct 23.
Determining the pathogenicity of missense variants in clinical genetic tests for individuals with epilepsy is crucial for guiding personalized treatment. However, achieving a definitive pathogenic classification remains challenging, with most missense variants still classified as variants of uncertain significance (VUS) and with the availability of many computational tools which may provide conflicting predictions. Here, we aim to evaluate the performance of state-of-the-art computational tools in pathogenicity prediction of missense variants in epilepsy-associated genes. This will assist in selecting the most appropriate tool and critically assess their use in clinical setting.
We assessed the performance of nine in silico pathogenicity prediction tools for missense variants in epilepsy-associated genes on three carefully curated data sets. The first two data sets comprise missense variants in epilepsy associated genes that have been uploaded to ClinVar in the last year and were, therefore, not part of the training set of any of the nine considered tools. These two data sets are based on two different lists of epilepsy-associated genes and comprise ~700 and ~ 250 missense variants, respectively. The third data set includes ~400 missense variants within epilepsy-associated genes for which the functional effects have been determined experimentally and are therefore used here to infer pathogenicity. These three data sets represent the best available approximation to blind and independent test sets.
Among the nine assessed tools, AlphaMissense (area under the curve [AUC]: .93, .88, and .95) and REVEL (AUC: .93, .88, and .93) showed the best classification performance, also outperforming other tools in the number of classified variants.
We show which recently developed prediction tools achieve higher performance in epilepsy-associated genes and should be integrated, therefore, into the American College of Medical Genetics and Genomics/Association of Molecular Pathology (AGMC/AMP) variant classification process. Periodic reevaluation of genetic test results with newly developed or updated tools should be incorporated into standard clinical practice to improve diagnostic yield and better inform precision medicine.
在癫痫患者的临床基因检测中确定错义变异的致病性对于指导个性化治疗至关重要。然而,要实现明确的致病性分类仍然具有挑战性,大多数错义变异仍被归类为意义未明的变异(VUS),并且有许多计算工具可供使用,这些工具可能会提供相互矛盾的预测。在此,我们旨在评估最先进的计算工具在癫痫相关基因错义变异致病性预测中的性能。这将有助于选择最合适的工具,并严格评估它们在临床环境中的使用。
我们在三个精心策划的数据集上评估了九种用于癫痫相关基因错义变异的计算机致病性预测工具的性能。前两个数据集包含去年上传到ClinVar的癫痫相关基因中的错义变异,因此不属于所考虑的九种工具中任何一种的训练集。这两个数据集基于两个不同的癫痫相关基因列表,分别包含约700个和约250个错义变异。第三个数据集包括癫痫相关基因内约400个错义变异,其功能效应已通过实验确定,因此在此用于推断致病性。这三个数据集代表了对盲法和独立测试集的最佳可用近似。
在评估的九种工具中,AlphaMissense(曲线下面积[AUC]:0.93、0.88和0.95)和REVEL(AUC:0.93、0.88和0.93)表现出最佳的分类性能,在分类变异的数量上也优于其他工具。
我们展示了哪些最近开发的预测工具在癫痫相关基因中具有更高的性能,因此应将其纳入美国医学遗传学与基因组学学会/分子病理学协会(ACMG/AMP)的变异分类过程。应将使用新开发或更新的工具定期重新评估基因检测结果纳入标准临床实践,以提高诊断率并更好地为精准医学提供信息。