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用于从头蛋白质结构预测的先进网络服务。

State-of-the-art web services for de novo protein structure prediction.

作者信息

Abriata Luciano A, Dal Peraro Matteo

机构信息

Institute of Bioengineering, School of Life Sciences, École Polytechnique Fédérale de Lausanne, CH-1015 Lausanne, Switzerland.

出版信息

Brief Bioinform. 2021 May 20;22(3). doi: 10.1093/bib/bbaa139.

Abstract

Residue coevolution estimations coupled to machine learning methods are revolutionizing the ability of protein structure prediction approaches to model proteins that lack clear homologous templates in the Protein Data Bank (PDB). This has been patent in the last round of the Critical Assessment of Structure Prediction (CASP), which presented several very good models for the hardest targets. Unfortunately, literature reporting on these advances often lacks digests tailored to lay end users; moreover, some of the top-ranking predictors do not provide webservers that can be used by nonexperts. How can then end users benefit from these advances and correctly interpret the predicted models? Here we review the web resources that biologists can use today to take advantage of these state-of-the-art methods in their research, including not only the best de novo modeling servers but also datasets of models precomputed by experts for structurally uncharacterized protein families. We highlight their features, advantages and pitfalls for predicting structures of proteins without clear templates. We present a broad number of applications that span from driving forward biochemical investigations that lack experimental structures to actually assisting experimental structure determination in X-ray diffraction, cryo-EM and other forms of integrative modeling. We also discuss issues that must be considered by users yet still require further developments, such as global and residue-wise model quality estimates and sources of residue coevolution other than monomeric tertiary structure.

摘要

与机器学习方法相结合的残基协同进化估计正在彻底改变蛋白质结构预测方法对蛋白质进行建模的能力,这些蛋白质在蛋白质数据库(PDB)中缺乏明确的同源模板。这在最近一轮的蛋白质结构预测关键评估(CASP)中已得到证实,该评估中针对最难的目标给出了几个非常好的模型。不幸的是,关于这些进展的文献报道往往缺乏为普通终端用户量身定制的摘要;此外,一些排名靠前的预测工具没有提供可供非专业人员使用的网络服务器。那么终端用户如何从这些进展中受益并正确解读预测模型呢?在这里,我们回顾了生物学家如今可以用来在其研究中利用这些前沿方法的网络资源,这不仅包括最佳的从头建模服务器,还包括专家针对结构未表征的蛋白质家族预先计算的模型数据集。我们强调了它们在预测没有明确模板的蛋白质结构时的特点、优势和缺陷。我们展示了大量的应用,从推动缺乏实验结构的生化研究到实际协助X射线衍射、冷冻电镜及其他形式的整合建模中的实验结构测定。我们还讨论了用户必须考虑但仍需进一步发展的问题,例如全局和残基水平的模型质量评估以及除单体三级结构之外的残基协同进化来源。

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