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    MED13L syndrome is a rare congenital disorder comprising moderate intellectual disability, hypotonia and facial dysmorphism. Whole exome or genome sequencing in patients with non-specific neurodevelopmental disorders leads to identification of an increasing number of MED13L missense variations of unknown signification. The aim of our study was to identify relevant annotation parameters enhancing discrimination between candidate pathogenic or neutral missense variations, and to assess the performance of seven meta-predictor algorithms: BayesDel, CADD, DANN, FATHMM-XF, M-CAP, MISTIC and REVEL for the classification of MED13L missense variants. Significant differences were identified for five parameters: global conservation through verPhyloP and verPhCons scores; physico-chemical difference between amino acids estimated by Grantham scores; conservation of residues between MED13L and MED13 protein; proximity to phosphorylation sites for pathogenic variations. Among the seven selected in-silico tools, BayesDel, REVEL, and MISTIC provided the most interesting performances to discriminate pathogenic from neutral missense variations. Individual gene parameter studies with MED13L have provided expertise on elements of annotation improving meta-predictor choices. The in-silico approach allows us to make valuable hypotheses to predict the involvement of these amino acids in MED13L pathogenic missense variations. Copyright © 2021. Published by Elsevier Masson SAS.

    Citation

    Thomas Smol, Frédéric Frénois, Sylvie Manouvrier-Hanu, Florence Petit, Jamal Ghoumid. Performance of meta-predictors for the classification of MED13L missense variations, implication of raw parameters. European journal of medical genetics. 2022 Jan;65(1):104398

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    PMID: 34798324

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