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Evaluation of in silico predictors on short nucleotide variants in , , and associated with haemoglobinopathies. | LitMetric

AI Article Synopsis

  • - Haemoglobinopathies are the most common genetic diseases, caused by various mutations in globin genes, complicating their analysis according to ACMG/AMP guidelines.
  • - The study assesses 31 computational tools that predict the pathogenicity of 1627 variants, finding that CADD, Eigen-PC, and REVEL perform the best overall for different types of variants.
  • - Additionally, SpliceAI excels in predicting splicing issues, while GERP++ and phyloP are top tools for evaluating genetic conservation, providing insights for the effective use of these resources.

Article Abstract

Haemoglobinopathies are the commonest monogenic diseases worldwide and are caused by variants in the globin gene clusters. With over 2400 variants detected to date, their interpretation using the American College of Medical Genetics and Genomics (ACMG)/Association for Molecular Pathology (AMP) guidelines is challenging and computational evidence can provide valuable input about their functional annotation. While many in silico predictors have already been developed, their performance varies for different genes and diseases. In this study, we evaluate 31 in silico predictors using a dataset of 1627 variants in , and . By varying the decision threshold for each tool, we analyse their performance (a) as binary classifiers of pathogenicity and (b) by using different non-overlapping pathogenic and benign thresholds for their optimal use in the ACMG/AMP framework. Our results show that CADD, Eigen-PC, and REVEL are the overall top performers, with the former reaching moderate strength level for pathogenic prediction. Eigen-PC and REVEL achieve the highest accuracies for missense variants, while CADD is also a reliable predictor of non-missense variants. Moreover, SpliceAI is the top performing splicing predictor, reaching strong level of evidence, while GERP++ and phyloP are the most accurate conservation tools. This study provides evidence about the optimal use of computational tools in globin gene clusters under the ACMG/AMP framework.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9731569PMC
http://dx.doi.org/10.7554/eLife.79713DOI Listing

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