Literature DB >> 23875061

Meta-analysis diagnostic accuracy of SNP-based pathogenicity detection tools: a case of UTG1A1 gene mutations.

Hamid Galehdari1, Najmaldin Saki, Javad Mohammadi-Asl, Fakher Rahim.   

Abstract

Crigler-Najjar syndrome (CNS) type I and type II are usually inherited as autosomal recessive conditions that result from mutations in the UGT1A1 gene. The main objective of the present review is to summarize results of all available evidence on the accuracy of SNP-based pathogenicity detection tools compared to published clinical result for the prediction of in nsSNPs that leads to disease using prediction performance method. A comprehensive search was performed to find all mutations related to CNS. Database searches included dbSNP, SNPdbe, HGMD, Swissvar, ensemble, and OMIM. All the mutation related to CNS was extracted. The pathogenicity prediction was done using SNP-based pathogenicity detection tools include SIFT, PHD-SNP, PolyPhen2, fathmm, Provean, and Mutpred. Overall, 59 different SNPs related to missense mutations in the UGT1A1 gene, were reviewed. Comparing the diagnostic OR, PolyPhen2 and Mutpred have the highest detection 4.983 (95% CI: 1.24 - 20.02) in both, following by SIFT (diagnostic OR: 3.25, 95% CI: 1.07 - 9.83). The highest MCC of SNP-based pathogenicity detection tools, was belong to SIFT (34.19%) followed by Provean, PolyPhen2, and Mutpred (29.99%, 29.89%, and 29.89%, respectively). Hence the highest SNP-based pathogenicity detection tools ACC, was fit to SIFT (62.71%) followed by PolyPhen2, and Mutpred (61.02%, in both). Our results suggest that some of the well-established SNP-based pathogenicity detection tools can appropriately reflect the role of a disease-associated SNP in both local and global structures.

Entities:  

Keywords:  Crigler-Najjar syndrome (CNS); Mutpred; PHD-SNP; PolyPhen2; Provean; SIFT; UGT1A1 gene; fathmm

Year:  2013        PMID: 23875061      PMCID: PMC3709112     

Source DB:  PubMed          Journal:  Int J Mol Epidemiol Genet        ISSN: 1948-1756


  21 in total

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4.  Risk prediction and marker selection in nonsynonymous single nucleotide polymorphisms using whole genome sequencing data.

Authors:  Young-Sup Lee; KyeongHye Won; Donghyun Shin; Jae-Don Oh
Journal:  Anim Cells Syst (Seoul)       Date:  2020-12-24       Impact factor: 1.815

  4 in total

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