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In-silico Analysis of NF1 Missense Variants in ClinVar: Translating Variant Predictions into Variant Interpretation and Classification

机译:ClinVar中NF1错义变体的计算机模拟分析:将变体预测转化为变体解释和分类

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摘要

: With the advent of next-generation sequencing in genetic testing, predicting the pathogenicity of missense variants represents a major challenge potentially leading to misdiagnoses in the clinical setting. In neurofibromatosis type 1 (NF1), where clinical criteria for diagnosis may not be fully present until late infancy, correct assessment of variant pathogenicity is fundamental for appropriate patients’ management. : Here, we analyzed three different computational methods, VEST3, REVEL and ClinPred, and after extracting predictions scores for 1585 missense variants listed in ClinVar, evaluated their performances and the score distribution throughout the neurofibromin protein. : For all the three methods, no significant differences were present between the scores of “likely benign”, “benign”, and “likely pathogenic”, “pathogenic” variants that were consequently collapsed into a single category. The cutoff values for pathogenicity were significantly different for the three methods and among benign and pathogenic variants for all methods. After training five different models with a subset of benign and pathogenic variants, we could reclassify variants in three sharply separated categories. : The recently developed metapredictors, which integrate information from multiple components, after gene-specific fine-tuning, could represent useful tools for variant interpretation, particularly in genetic diseases where a clinical diagnosis can be difficult.
机译::随着基因测试中下一代测序技术的出现,预测错义变体的致病性成为一项重大挑战,可能会导致临床环境中的误诊。在1型神经纤维瘤病(NF1)中,直到婴儿晚期才可能完全不具备诊断的临床标准,正确评估变异性致病性是适当治疗患者的基础。 :在这里,我们分析了三种不同的计算方法:VEST3,REVEL和ClinPred,并提取了ClinVar中列出的1585个错义变体的预测分数后,评估了它们的性能以及整个神经纤维蛋白的分数分布。 :对于这三种方法,在“可能是良性”,“良性”和“可能是致病性”,“致病性”变体的评分之间没有显着差异,因此变体被归为一类。三种方法的致病性截断值显着不同,所有方法的良性和致病性变异之间截然不同。在训练了带有良性和致病性变体子集的五个不同模型之后,我们可以将变体重新分类为三个明显分开的类别。 :最近开发的元预测器,在对基因进行特定的微调之后,可以整合来自多个组件的信息,可以代表有用的工具来进行变体解释,尤其是在临床上可能难以诊断的遗传疾病中。

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