The combination of SIFT, PROVEAN, and SNAP provided the best predictive performance for classifying long QT syndrome gene mutations, achieving 82.7% accuracy and an MCC of 0.44.
Do in silico prediction tools accurately classify long QT syndrome gene mutations compared to functional characterization?
In silico prediction tools can aid in assessing the pathogenicity of KCNQ1 and KCNH2 variants in Long QT syndrome, but their accuracy is gene-dependent and poor for SCN5A variants.
Effect estimate: MCC 0.44
BACKGROUND: Long QT syndrome (LQTS) is an autosomal dominant condition predisposing to sudden death from malignant arrhythmia. Genetic testing identifies many missense single nucleotide variants of uncertain pathogenicity. Establishing genetic pathogenicity is an essential prerequisite to family cascade screening. Many laboratories use in silico prediction tools, either alone or in combination, or metaservers, in order to predict pathogenicity; however, their accuracy in the context of LQTS is unknown. We evaluated the accuracy of five in silico programs and two metaservers in the analysis of LQTS 1-3 gene variants. METHODS: The in silico tools SIFT, PolyPhen-2, PROVEAN, SNPs however, they did not perform better than the best performing combination of in silico tools. CONCLUSIONS: The combination of in silico tools with the best performance is gene-dependent. The in silico tools reported here may have some value in assessing variants in the KCNQ1 and KCNH2 genes, but caution should be taken when the analysis is applied to SCN5A gene variants.
Leongら(火曜日)は、ロングQT症候群の遺伝子変異(n=312)に関する別の研究を実施しました。インシリコ予測ツール(SIFT、PROVEAN、SNAP)と機能的特性評価(グラウンドトゥルース)の予測精度が評価されました。全ての3つのLQT遺伝子の結合(MCC 0.44)に対する予測精度を評価しました。SIFT、PROVEAN、SNAPの組み合わせは、ロングQT症候群の遺伝子変異を分類するための予測性能が最も優れており、82.7%の精度とMCC 0.44を達成しました。