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Bi-Directional SIFT Predicts a Subset of Activating Mutations
Authors:William Lee  Yan Zhang  Kiran Mukhyala  Robert A Lazarus  Zemin Zhang
Institution:1. Department of Bioinformatics, Genentech, Inc., South San Francisco, California, United States of America.; 2. Department of Protein Engineering, Genentech, Inc., South San Francisco, California, United States of America.;Washington University, United States of America
Abstract:Advancements in sequencing technologies have empowered recent efforts to identify polymorphisms and mutations on a global scale. The large number of variations and mutations found in these projects requires high-throughput tools to identify those that are most likely to have an impact on function. Numerous computational tools exist for predicting which mutations are likely to be functional, but none that specifically attempt to identify mutations that result in hyperactivation or gain-of-function. Here we present a modified version of the SIFT (Sorting Intolerant from Tolerant) algorithm that utilizes protein sequence alignments with homologous sequences to identify functional mutations based on evolutionary fitness. We show that this bi-directional SIFT (B-SIFT) is capable of identifying experimentally verified activating mutants from multiple datasets. B-SIFT analysis of large-scale cancer genotyping data identified potential activating mutations, some of which we have provided detailed structural evidence to support. B-SIFT could prove to be a valuable tool for efforts in protein engineering as well as in identification of functional mutations in cancer.
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