Prado Mayara J, Ligabue-Braun Rodrigo, Zaha Arnaldo, Rossetti Maria Lucia Rosa, Pandey Amit V
Graduate Program in Cell and Molecular Biology, Universidade Federal do Rio Grande do Sul (UFRGS), Porto Alegre, Brazil.
Center for Biotechnology, Universidade Federal do Rio Grande do Sul (UFRGS), Porto Alegre, Brazil.
Front Pharmacol. 2022 Oct 5;13:931089. doi: 10.3389/fphar.2022.931089. eCollection 2022.
CYP21A2 deficiency represents 95% of congenital adrenal hyperplasia (CAH) cases, a group of genetic disorders that affect steroid biosynthesis. The genetic and functional analysis provide critical tools to elucidate complex CAH cases. One of the most accessible tools to infer the pathogenicity of new variants is prediction. Here, we analyzed the performance of prediction tools to categorize missense single nucleotide variants (SNVs) of . SNVs of characterized by functional assays were selected to assess the performance of online single and meta predictors. SNVs were tested separately or in combination with the related phenotype (severe or mild CAH form). In total, 103 SNVs of (90 pathogenic and 13 neutral) were used to test the performance of 13 single-predictors and four meta-predictors. All SNVs associated with the severe phenotypes were well categorized by all tools, with an accuracy of between 0.69 (PredictSNP2) and 0.97 (CADD), and Matthews' correlation coefficient (MCC) between 0.49 (PoredicSNP2) and 0.90 (CADD). However, SNVs related to the mild phenotype had more variation, with the accuracy between 0.47 (S3Ds&GO and MAPP) and 0.88 (CADD), and MCC between 0.18 (MAPP) and 0.71 (CADD). From our analysis, we identified four predictors of variant pathogenicity with good performance, CADD, ConSurf, DANN, and PolyPhen2. These results can be used for future analysis to infer the impact of uncharacterized SNVs in .
CYP21A2缺乏症占先天性肾上腺皮质增生症(CAH)病例的95%,CAH是一组影响类固醇生物合成的遗传性疾病。基因和功能分析为阐明复杂的CAH病例提供了关键工具。推断新变异致病性的最容易获得的工具之一是预测。在此,我们分析了预测工具对CYP21A2错义单核苷酸变异(SNV)进行分类的性能。选择通过功能测定表征的CYP21A2的SNV来评估在线单预测器和元预测器的性能。SNV分别进行测试,或与相关表型(严重或轻度CAH形式)结合进行测试。总共使用了103个CYP21A2的SNV(90个致病性的和13个中性的)来测试13个单预测器和4个元预测器的性能。所有与严重表型相关的SNV都被所有工具很好地分类,准确率在0.69(PredictSNP2)至0.97(CADD)之间,马修斯相关系数(MCC)在0.49(PredictSNP2)至0.90(CADD)之间。然而,与轻度表型相关的SNV有更多变化,准确率在0.47(S3Ds&GO和MAPP)至0.88(CADD)之间,MCC在0.18(MAPP)至0.71(CADD)之间。通过我们的分析,我们确定了四个性能良好的CYP21A2变异致病性预测器,即CADD、ConSurf、DANN和PolyPhen2。这些结果可用于未来的分析,以推断未表征的SNV对CYP21A2的影响。