| Literature DB >> 23920358 |
Nobuko Hamasaki-Katagiri1, Raheleh Salari, Andrew Wu, Yini Qi, Tal Schiller, Amanda C Filiberto, Enrique F Schisterman, Anton A Komar, Teresa M Przytycka, Chava Kimchi-Sarfaty.
Abstract
A fundamental goal of medical genetics is the accurate prediction of genotype-phenotype correlations. As an approach to develop more accurate in silico tools for prediction of disease-causing mutations of structural proteins, we present a gene- and disease-specific prediction tool based on a large systematic analysis of missense mutations from hemophilia A (HA) patients. Our HA-specific prediction tool, HApredictor, showed disease prediction accuracy comparable to other publicly available prediction software. In contrast to those methods, its performance is not limited to non-synonymous mutations. Given the role of synonymous mutations in disease and drug codon optimization, we propose that utilizing a gene- and disease-specific method can be highly useful to make functional predictions possible even for synonymous mutations. Incorporating computational metrics at both nucleotide and amino acid levels along with multiple protein sequence/structure alignment significantly improved the predictive performance of our tool. HApredictor is freely available for download at http://www.ncbi.nlm.nih.gov/CBBresearch/Przytycka/HA_Predict/index.htm.Entities:
Keywords: HA; HB; NCBI; National Center for Biotechnology Information; RSCU; UniProt Knowledgebase; UniProtKB; coagulation factor IX; coagulation factor VIII; gene/disease-specific prediction tool; hemophilia A; hemophilia A/B; hemophilia B; relative synonymous codon usage; synonymous mutation
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Year: 2013 PMID: 23920358 PMCID: PMC4029106 DOI: 10.1016/j.jmb.2013.07.037
Source DB: PubMed Journal: J Mol Biol ISSN: 0022-2836 Impact factor: 5.469