计算机辅助酶定向进化的研究进展。

IF 2.9 4区 医学 Q3 CHEMISTRY, MEDICINAL
Zhiming Hu, Yijie Liu, Yonghong Huang, Peng Yu
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引用次数: 0

摘要

实验驱动的定向进化在酶工程中取得了显著的成功。然而,它依赖于随机诱变和高通量筛选,这两者都有一定的局限性,特别是诱变的随机性和广泛的筛选工作量减慢了该方法的快速发展。相比之下,计算机辅助定向进化将计算模拟与实验技术相结合,为酶的合理设计和优化提供了有效而精确的方法。通过集成计算工具,研究人员可以简化酶设计过程,提高突变和筛选的准确性,从而加速酶的优化。本文全面介绍了计算机辅助定向进化的常用方法和应用,讨论了蛋白质序列分析和结构分析中常用的工具和技术。它还涵盖了计算模拟和预测策略,如同源建模,分子对接,分子动力学模拟,机器学习算法和虚拟筛选。这些工具在预测突变对酶功能的影响和优化酶性能方面发挥着关键作用。此外,本文还探讨了酶工程中广泛采用的半理性和理性设计策略,这些策略将计算预测与实验验证相结合,有效地提高了酶的性能。此外,本文还深入探讨了在定向进化中应用计算技术所遇到的挑战和瓶颈,包括与计算精度、数据质量和酶-底物相互作用的复杂性相关的问题。尽管存在这些挑战,但随着计算能力、机器学习和多组学数据集成的进步,计算机辅助定向进化的未来前景广阔,为克服当前的限制提供了巨大的潜力。综上所述,本文旨在为酶工程研究人员提供有价值的见解,帮助他们通过结合实验和计算方法开发新的高效酶。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advances in the Directed Evolution of Computer-aided Enzymes.

Experimental-driven directed evolution has achieved remarkable success in enzyme engineering. However, it relies on random mutagenesis and high-throughput screening, both of which have certain limitations, particularly the randomness of mutagenesis and the extensive screening workload that slows down the method's rapid development. In contrast, computer-aided directed evolution combines computational simulations with experimental techniques, providing an efficient and precise approach to enzyme rational design and optimization. By integrating computational tools, researchers can streamline the enzyme design process, improving the accuracy of mutations and screenings, which in turn accelerates enzyme optimization. This review comprehensively introduces the commonly used methods and applications of computer-aided directed evolution, discussing the tools and techniques frequently used in protein sequence analysis and structural analysis. It also covers computational simulation and prediction strategies such as homology modeling, molecular docking, molecular dynamics simulations, machine learning algorithms, and virtual screening. These tools play a critical role in predicting the effects of mutations on enzyme function and optimizing enzyme performance. Moreover, the review explores widely adopted semi-rational and rational design strategies in enzyme engineering, which combine computational predictions with experimental validation to effectively improve enzyme performance. Additionally, the article delves into the challenges and bottlenecks encountered in applying computational technologies in directed evolution, including issues related to computational precision, data quality, and the complexity of enzyme-substrate interactions. Despite these challenges, the future of computer-aided directed evolution holds great promise, with advancements in computational power, machine learning, and multi-omics data integration offering tremendous potential to overcome current limitations. In conclusion, this review aims to provide valuable insights for researchers in enzyme engineering, assisting them in developing new, efficient enzymes by integrating both experimental and computational approaches.

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来源期刊
CiteScore
6.40
自引率
2.90%
发文量
186
审稿时长
3-8 weeks
期刊介绍: Current Topics in Medicinal Chemistry is a forum for the review of areas of keen and topical interest to medicinal chemists and others in the allied disciplines. Each issue is solely devoted to a specific topic, containing six to nine reviews, which provide the reader a comprehensive survey of that area. A Guest Editor who is an expert in the topic under review, will assemble each issue. The scope of Current Topics in Medicinal Chemistry will cover all areas of medicinal chemistry, including current developments in rational drug design, synthetic chemistry, bioorganic chemistry, high-throughput screening, combinatorial chemistry, compound diversity measurements, drug absorption, drug distribution, metabolism, new and emerging drug targets, natural products, pharmacogenomics, and structure-activity relationships. Medicinal chemistry is a rapidly maturing discipline. The study of how structure and function are related is absolutely essential to understanding the molecular basis of life. Current Topics in Medicinal Chemistry aims to contribute to the growth of scientific knowledge and insight, and facilitate the discovery and development of new therapeutic agents to treat debilitating human disorders. The journal is essential for every medicinal chemist who wishes to be kept informed and up-to-date with the latest and most important advances.
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