Two decades of advances in sequence-based prediction of MoRFs, disorder-to-order transitioning binding regions.

IF 3.8 3区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
Expert Review of Proteomics Pub Date : 2025-01-01 Epub Date: 2025-01-19 DOI:10.1080/14789450.2025.2451715
Jiangning Song, Lukasz Kurgan
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引用次数: 0

Abstract

Introduction: Molecular recognition features (MoRFs) are regions in protein sequences that undergo induced folding upon binding partner molecules. MoRFs are common in nature and can be predicted from sequences based on their distinctive sequence signatures.

Areas covered: We overview 20 years of progress in the sequence-based prediction of MoRFs which resulted in the development of 25 predictors of MoRFs that interact with proteins, peptides, and lipids. These methods range from simple discriminant analysis to sophisticated deep transformer networks that use protein language models. They generate relatively accurate predictions as evidenced by the results of a recently published community-driven assessment.

Expert opinion: MoRFs prediction is a mature field of research that is poised to continue at a steady pace in the foreseeable future. We anticipate further expansion of the scope of MoRF predictions to additional partner molecules, such as nucleic acids, and continued use of recent machine learning advances. Other future efforts should concentrate on improving availability of MoRF predictions by releasing, maintaining, and popularizing web servers and by depositing MoRF predictions to large databases of protein structure and function predictions. Furthermore, accurate MoRF predictions should be coupled with the equally accurate prediction and modeling of the resulting structures of complexes.

二十年来基于序列预测morf的进展,无序到有序过渡结合区。
分子识别特征(morf)是蛋白质序列中与结合伙伴分子发生诱导折叠的区域。morf在自然界中是常见的,可以根据其独特的序列特征从序列中预测。涵盖的领域:我们概述了二十年来基于序列的morf预测的进展,这导致了25个与蛋白质,肽和脂质相互作用的morf预测因子的发展。这些方法的范围从简单的判别分析到复杂的深层变压器网络,使用蛋白质语言模型。它们产生了相对准确的预测,最近发表的一项社区驱动的评估结果证明了这一点。专家意见:morf预测是一个成熟的研究领域,在可预见的未来将继续稳步发展。我们预计MoRF预测的范围将进一步扩大到其他伙伴分子,如核酸,并继续使用最近的机器学习进展。其他未来的努力应该集中在通过发布、维护和普及web服务器以及通过将MoRF预测存储到蛋白质结构和功能预测的大型数据库来提高MoRF预测的可用性。此外,准确的MoRF预测应该与同样准确的预测和模拟所得到的配合物结构相结合。
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来源期刊
Expert Review of Proteomics
Expert Review of Proteomics 生物-生化研究方法
CiteScore
7.60
自引率
0.00%
发文量
20
审稿时长
6-12 weeks
期刊介绍: Expert Review of Proteomics (ISSN 1478-9450) seeks to collect together technologies, methods and discoveries from the field of proteomics to advance scientific understanding of the many varied roles protein expression plays in human health and disease. The journal coverage includes, but is not limited to, overviews of specific technological advances in the development of protein arrays, interaction maps, data archives and biological assays, performance of new technologies and prospects for future drug discovery. The journal adopts the unique Expert Review article format, offering a complete overview of current thinking in a key technology area, research or clinical practice, augmented by the following sections: Expert Opinion - a personal view on the most effective or promising strategies and a clear perspective of future prospects within a realistic timescale Article highlights - an executive summary cutting to the author''s most critical points.
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