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Regression Modeling and Meta-Analysis of Diagnostic Accuracy of SNP-Based Pathogenicity Detection Tools for UGT1A1 Gene Mutation

机译:基于UGS1A1基因突变的基于SNP的致病性检测工具的回归建模和诊断准确性的Meta分析

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摘要

Aims. This review summarized all available evidence on the accuracy of SNP-based pathogenicity detection tools and introduced regression model based on functional scores, mutation score, and genomic variation degree. Materials and Methods. A comprehensive search was performed to find all mutations related to Crigler-Najjar syndrome. The pathogenicity prediction was done using SNP-based pathogenicity detection tools including SIFT, PHD-SNP, PolyPhen2, fathmm, Provean, and Mutpred. Overall, 59 different SNPs related to missense mutations in the UGT1A1 gene, were reviewed. Results. Comparing the diagnostic OR, our model showed high detection potential (diagnostic OR: 16.71, 95% CI: 3.38–82.69). The highest MCC and ACC belonged to our suggested model (46.8% and 73.3%), followed by SIFT (34.19% and 62.71%). The AUC analysis showed a significance overall performance of our suggested model compared to the selected SNP-based pathogenicity detection tool (P = 0.046). Conclusion. Our suggested model is comparable to the well-established SNP-based pathogenicity detection tools that can appropriately reflect the role of a disease-associated SNP in both local and global structures. Although the accuracy of our suggested model is not relatively high, the functional impact of the pathogenic mutations is highlighted at the protein level, which improves the understanding of the molecular basis of mutation pathogenesis.
机译:目的这篇综述总结了所有有关基于SNP的致病性检测工具准确性的现有证据,并介绍了基于功能评分,突变评分和基因组变异程度的回归模型。材料和方法。进行了全面的搜索,以查找与Crigler-Najjar综合征相关的所有突变。使用基于SNP的致病性检测工具(包括SIFT,PHD-SNP,PolyPhen2,fathmm,Provean和Mutpred)进行致病性预测。总体而言,审查了与UGT1A1基因错义突变相关的59种不同SNP。结果。与诊断性OR进行比较,我们的模型显示出较高的检测潜力(诊断性OR:16.71,95%CI:3.38–82.69)。最高的MCC和ACC属于我们建议的模型(46.8%和73.3%),其次是SIFT(34.19%和62.71%)。与选择的基于SNP的致病性检测工具相比,AUC分析表明我们建议的模型具有显着的总体性能(P = 0.046)。结论。我们建议的模型可以与完善的基于SNP的致病性检测工具相媲美,后者可以适当地反映与疾病相关的SNP在局部和全局结构中的作用。尽管我们提出的模型的准确性不是很高,但是在蛋白质水平上突出了致病突变的功能影响,从而提高了对突变发病机理的分子基础的了解。

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