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Assessment of the predictive accuracy of five in silico prediction tools, alone or in combination, and two metaservers to classify long QT syndrome gene mutations

机译:评估五个计算机模拟预测工具(单独或组合使用)和两个元服务器对长QT综合征基因突变进行分类的预测准确性

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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&GO and SNAP, either alone or in all possible combinations, and the metaservers Meta-SNP and PredictSNP, were tested on 312 KCNQ1, KCNH2 and SCN5A gene variants that have previously been characterised by either in vitro or co-segregation studies as either “pathogenic” (283) or “benign” (29). The accuracy, sensitivity, specificity and Matthews Correlation Coefficient (MCC) were calculated to determine the best combination of in silico tools for each LQTS gene, and when all genes are combined. Results The best combination of in silico tools for KCNQ1 is PROVEAN, SNPs&GO and SIFT (accuracy 92.7%, sensitivity 93.1%, specificity 100% and MCC 0.70). The best combination of in silico tools for KCNH2 is SIFT and PROVEAN or PROVEAN, SNPs&GO and SIFT. Both combinations have the same scores for accuracy (91.1%), sensitivity (91.5%), specificity (87.5%) and MCC (0.62). In the case of SCN5A, SNAP and PROVEAN provided the best combination (accuracy 81.4%, sensitivity 86.9%, specificity 50.0%, and MCC 0.32). When all three LQT genes are combined, SIFT, PROVEAN and SNAP is the combination with the best performance (accuracy 82.7%, sensitivity 83.0%, specificity 80.0%, and MCC 0.44). Both metaservers performed better than the single in silico tools; 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.
机译:背景长QT综合征(LQTS)是常染色体显性疾病,易因恶性心律失常而猝死。遗传检测可以确定许多致病性不确定的错义单核苷酸变异体。建立遗传致病性是家庭级联筛选的必要前提。许多实验室单独或组合使用计算机模拟预测工具或元服务器,以预测致病性。但是,它们在LQTS中的准确性尚不清楚。我们在分析LQTS 1-3基因变异时评估了五个计算机程序和两个元服务器的准确性。方法单独或以所有可能的组合使用计算机模拟工具SIFT,PolyPhen-2,PROVEAN,SNPs&GO和SNAP以及元服务器Meta-SNP和PredictSNP,对312 KCNQ1,KCNH2和SCN5A基因变异进行了测试通过体外或共分离研究作为“致病性”(283)或“良性”(29)。计算准确性,敏感性,特异性和马修斯相关系数(MCC),以确定每个LQTS基因以及组合所有基因时计算机工具的最佳组合。结果KCNQ1的计算机软件最佳组合是PROVEAN,SNPs&GO和SIFT(准确度为92.7%,灵敏度为93.1%,特异性为100%,MCC为0.70)。用于KCNH2的计算机软件的最佳组合是SIFT和PROVEAN或PROVEAN,SNPs&GO和SIFT。两种组合在准确性(91.1%),敏感性(91.5%),特异性(87.5%)和MCC(0.62)方面得分均相同。对于SCN5A,SNAP和PROVEAN提供了最佳组合(准确性81.4%,敏感性86.9%,特异性50.0%和MCC 0.32)。当将所有三个LQT基因组合在一起时,SIFT,PROVEAN和SNAP是性能最佳的组合(准确性为82.7%,灵敏度为83.0%,特异性为80.0%,MCC为0.44)。两种元服务器的性能均优于单个in silico工具。但是,它们的性能没有比in silico工具的最佳性能组合更好。结论insilico工具与最佳性能的组合是基因依赖性的。此处报道的计算机软件工具可能在评估KCNQ1和KCNH2基因的变异中具有一定价值,但是在将分析应用于SCN5A基因变异时应格外小心。

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