Comparative Analysis of Deep Learning-Based Algorithms for Peptide Structure Prediction.

IF 2.8 4区 生物学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Clément Sauvestre, Jean-François Zagury, Florent Langenfeld
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引用次数: 0

Abstract

While of primary importance in both the biomedical and therapeutic fields, peptides suffer from a relative lack of dedicated tools to predict efficiently and accurately their 3D structures despite being a crucial step in understanding their physio-pathological function or designing new drugs. In recent years, deep-learning methods have enabled a major breakthrough for the protein 3D structure prediction approaches, allowing to predict protein 3D structures with a near-experimental accuracy for nearly any protein sequence. This present study aims at confronting some of these new methods (AlphaFold2, RoseTTAFold2, and ESMFold) for the peptides' 3D structure prediction problem and evaluating their performance. All methods produced high-quality results, but their overall performance is lower as compared to the prediction of protein 3D structures. We also identified a few structural features that impede the ability to produce high-quality peptide structure predictions. These findings point out the discrepancy that still exists between the protein and peptide 3D structure prediction methods and underline a few cases where the generated peptide structures should be used very cautiously.

基于深度学习的多肽结构预测算法比较分析。
虽然肽在生物医学和治疗领域都具有重要意义,但尽管肽是理解其生理病理功能或设计新药的关键一步,但相对缺乏有效和准确预测其3D结构的专用工具。近年来,深度学习方法使蛋白质3D结构预测方法取得了重大突破,可以以接近实验的精度预测几乎任何蛋白质序列的蛋白质3D结构。本研究旨在针对这些新方法(AlphaFold2, RoseTTAFold2和ESMFold)中的一些肽的三维结构预测问题并评估它们的性能。所有方法都产生了高质量的结果,但与预测蛋白质3D结构相比,它们的整体性能较低。我们还确定了一些阻碍产生高质量肽结构预测能力的结构特征。这些发现指出了蛋白质和肽三维结构预测方法之间仍然存在的差异,并强调了在一些情况下,生成的肽结构应该非常谨慎地使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Proteins-Structure Function and Bioinformatics
Proteins-Structure Function and Bioinformatics 生物-生化与分子生物学
CiteScore
5.90
自引率
3.40%
发文量
172
审稿时长
3 months
期刊介绍: PROTEINS : Structure, Function, and Bioinformatics publishes original reports of significant experimental and analytic research in all areas of protein research: structure, function, computation, genetics, and design. The journal encourages reports that present new experimental or computational approaches for interpreting and understanding data from biophysical chemistry, structural studies of proteins and macromolecular assemblies, alterations of protein structure and function engineered through techniques of molecular biology and genetics, functional analyses under physiologic conditions, as well as the interactions of proteins with receptors, nucleic acids, or other specific ligands or substrates. Research in protein and peptide biochemistry directed toward synthesizing or characterizing molecules that simulate aspects of the activity of proteins, or that act as inhibitors of protein function, is also within the scope of PROTEINS. In addition to full-length reports, short communications (usually not more than 4 printed pages) and prediction reports are welcome. Reviews are typically by invitation; authors are encouraged to submit proposed topics for consideration.
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