Prediction of protein-protein interaction sites in intrinsically disordered proteins

内在无序蛋白质 计算机科学 人工智能 领域(数学) 机器学习 计算生物学 现状 生物 数学 市场经济 生物化学 经济 纯数学
作者
Ranran Chen,Xinlu Li,Yaqing Yang,Xixi Song,Cheng Wang,Dan Qiao
出处
期刊:Frontiers in Molecular Biosciences [Frontiers Media SA]
卷期号:9 被引量:4
标识
DOI:10.3389/fmolb.2022.985022
摘要

Intrinsically disordered proteins (IDPs) participate in many biological processes by interacting with other proteins, including the regulation of transcription, translation, and the cell cycle. With the increasing amount of disorder sequence data available, it is thus crucial to identify the IDP binding sites for functional annotation of these proteins. Over the decades, many computational approaches have been developed to predict protein-protein binding sites of IDP (IDP-PPIS) based on protein sequence information. Moreover, there are new IDP-PPIS predictors developed every year with the rapid development of artificial intelligence. It is thus necessary to provide an up-to-date overview of these methods in this field. In this paper, we collected 30 representative predictors published recently and summarized the databases, features and algorithms. We described the procedure how the features were generated based on public data and used for the prediction of IDP-PPIS, along with the methods to generate the feature representations. All the predictors were divided into three categories: scoring functions, machine learning-based prediction, and consensus approaches. For each category, we described the details of algorithms and their performances. Hopefully, our manuscript will not only provide a full picture of the status quo of IDP binding prediction, but also a guide for selecting different methods. More importantly, it will shed light on the inspirations for future development trends and principles.
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