在体外,通过机器学习和自动化实现持续的蛋白质进化。

IF 9 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Cell Systems Pub Date : 2023-08-16 DOI:10.1016/j.cels.2023.04.006
Tianhao Yu, Aashutosh Girish Boob, Nilmani Singh, Yufeng Su, Huimin Zhao
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引用次数: 3

摘要

定向进化已经成为蛋白质工程中最成功和最强大的工具之一。然而,设计、构造和筛选大型变体库所需的工作可能是费力的、耗时的和昂贵的。随着最近机器学习(ML)在蛋白质定向进化中的出现,研究人员现在可以在计算机上评估变异,并指导更有效的定向进化活动。此外,实验室自动化的最新进展使得在工业和学术环境中快速执行高通量数据采集的长时间复杂实验成为可能,从而为开发用于蛋白质工程的ML模型提供了收集大量数据所需的手段。从这个角度来看,我们提出了一个闭环体外连续蛋白质进化框架,它利用了机器学习和自动化的两全其美,并简要概述了该领域的最新发展。
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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In vitro continuous protein evolution empowered by machine learning and automation.

Directed evolution has become one of the most successful and powerful tools for protein engineering. However, the efforts required for designing, constructing, and screening a large library of variants can be laborious, time-consuming, and costly. With the recent advent of machine learning (ML) in the directed evolution of proteins, researchers can now evaluate variants in silico and guide a more efficient directed evolution campaign. Furthermore, recent advancements in laboratory automation have enabled the rapid execution of long, complex experiments for high-throughput data acquisition in both industrial and academic settings, thus providing the means to collect a large quantity of data required to develop ML models for protein engineering. In this perspective, we propose a closed-loop in vitro continuous protein evolution framework that leverages the best of both worlds, ML and automation, and provide a brief overview of the recent developments in the field.

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来源期刊
Cell Systems
Cell Systems Medicine-Pathology and Forensic Medicine
CiteScore
16.50
自引率
1.10%
发文量
84
审稿时长
42 days
期刊介绍: In 2015, Cell Systems was founded as a platform within Cell Press to showcase innovative research in systems biology. Our primary goal is to investigate complex biological phenomena that cannot be simply explained by basic mathematical principles. While the physical sciences have long successfully tackled such challenges, we have discovered that our most impactful publications often employ quantitative, inference-based methodologies borrowed from the fields of physics, engineering, mathematics, and computer science. We are committed to providing a home for elegant research that addresses fundamental questions in systems biology.
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