Comprehensive review of methods for prediction of intrinsic disorder and its molecular functions

被引:0
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作者
Fanchi Meng
Vladimir N. Uversky
Lukasz Kurgan
机构
[1] University of Alberta,Department of Electrical and Computer Engineering
[2] Morsani College of Medicine,Department of Molecular Medicine, USF Health Byrd Alzheimer’s Research Institute
[3] University of South Florida,Institute for Biological Instrumentation
[4] Russian Academy of Sciences,Department of Computer Science
[5] Virginia Commonwealth University,undefined
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关键词
Intrinsic disorder; Prediction; Function of disordered proteins; Protein–protein interactions; Protein–RNA interactions; Protein–DNA interactions; MoRF; SLiM;
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摘要
Computational prediction of intrinsic disorder in protein sequences dates back to late 1970 and has flourished in the last two decades. We provide a brief historical overview, and we review over 30 recent predictors of disorder. We are the first to also cover predictors of molecular functions of disorder, including 13 methods that focus on disordered linkers and disordered protein–protein, protein–RNA, and protein–DNA binding regions. We overview their predictive models, usability, and predictive performance. We highlight newest methods and predictors that offer strong predictive performance measured based on recent comparative assessments. We conclude that the modern predictors are relatively accurate, enjoy widespread use, and many of them are fast. Their predictions are conveniently accessible to the end users, via web servers and databases that store pre-computed predictions for millions of proteins. However, research into methods that predict many not yet addressed functions of intrinsic disorder remains an outstanding challenge.
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页码:3069 / 3090
页数:21
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