最新版 AlphaFold:彻底改变蛋白质结构预测,促进全面的生物分子洞察力和治疗进步

IF 2.5 Q2 MULTIDISCIPLINARY SCIENCES Beni-Suef University Journal of Basic and Applied Sciences Pub Date : 2024-05-17 DOI:10.1186/s43088-024-00503-y
Henrietta Onyinye Uzoeto, Samuel Cosmas, Toluwalope Temitope Bakare, Olanrewaju Ayodeji Durojaye
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引用次数: 0

摘要

最近,蛋白质结构预测领域取得了突破性成就,这主要归功于复杂的机器学习方法的出现和算法方法的重大进步。本文的主题是 AlphaFold 模型的最新版本,即 "AlphaFold-latest",它扩展了开创性的 AlphaFold2 的功能。这个新模型的目标是预测离子、蛋白质、核酸、小分子和非标准残基等各种生物大分子的三维结构。我们在多个领域(包括蛋白质与配体的相互作用、蛋白质与核酸的相互作用以及抗体与抗原的预测)展示了显著的精度提升,超越了专业工具。总之,这个 AlphaFold 框架有能力为各种生物分子相互作用提供原子精度的结构预测,从而促进药物发现的进步。
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AlphaFold-latest: revolutionizing protein structure prediction for comprehensive biomolecular insights and therapeutic advancements

Breakthrough achievements in protein structure prediction have occurred recently, mostly due to the advent of sophisticated machine learning methods and significant advancements in algorithmic approaches. The most recent version of the AlphaFold model, known as “AlphaFold-latest,” which expands the functionalities of the groundbreaking AlphaFold2, is the subject of this article. The goal of this novel model is to predict the three-dimensional structures of various biomolecules, such as ions, proteins, nucleic acids, small molecules, and non-standard residues. We demonstrate notable gains in precision, surpassing specialized tools across multiple domains, including protein–ligand interactions, protein–nucleic acid interactions, and antibody–antigen predictions. In conclusion, this AlphaFold framework has the ability to yield atomically-accurate structural predictions for a variety of biomolecular interactions, hence facilitating advancements in drug discovery.

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CiteScore
2.60
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0.00%
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期刊介绍: Beni-Suef University Journal of Basic and Applied Sciences (BJBAS) is a peer-reviewed, open-access journal. This journal welcomes submissions of original research, literature reviews, and editorials in its respected fields of fundamental science, applied science (with a particular focus on the fields of applied nanotechnology and biotechnology), medical sciences, pharmaceutical sciences, and engineering. The multidisciplinary aspects of the journal encourage global collaboration between researchers in multiple fields and provide cross-disciplinary dissemination of findings.
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