用创新的计算方法破译细菌蛋白质功能。

IF 14 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Shani Cheskis, Avital Akerman, Asaf Levy
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引用次数: 0

摘要

细菌寄居在地球上的每一个生态位,并在许多环境和宿主相关的过程中发挥关键作用。测序革命揭示了显著的细菌遗传和蛋白质组多样性以及培养和未培养细菌的基因组含量。然而,破译新蛋白质的功能仍然是一个很高的障碍,往往阻碍了对微生物生命及其与周围环境相互作用的深入了解。近年来,令人兴奋的新生物信息学工具,其中许多是基于机器学习,促进了在大基因组数据时代发现基因和蛋白质功能的挑战性任务,导致对细菌蛋白质功能产生可测试的假设。新的工具允许预测蛋白质结构和相互作用,并允许敏感和有效的基于序列和结构的搜索和聚类。在这里,我们总结了一些这些最近的工具,这些工具彻底改变了现代微生物学研究,并举例说明了它们的使用方法,强调了用户友好的、基于网络的工具。实验学家和计算生物学家采用这些功能可以节省资源并加速微生物学研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deciphering bacterial protein functions with innovative computational methods.

Bacteria colonize every niche on Earth and play key roles in many environmental and host-associated processes. The sequencing revolution revealed the remarkable bacterial genetic and proteomic diversity and the genomic content of cultured and uncultured bacteria. However, deciphering functions of novel proteins remains a high barrier, often preventing the deep understanding of microbial life and its interaction with the surrounding environment. In recent years, exciting new bioinformatic tools, many of which are based on machine learning, facilitate the challenging task of gene and protein function discovery in the era of big genomics data, leading to the generation of testable hypotheses for bacterial protein functions. The new tools allow prediction of protein structures and interactions and allow sensitive and efficient sequence- and structure-based searching and clustering. Here, we summarize some of these recent tools which revolutionize modern microbiology research, along with examples for their usage, emphasizing the user-friendly, web-based ones. Adoption of these capabilities by experimentalists and computational biologists could save resources and accelerate microbiology research.

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来源期刊
Trends in Microbiology
Trends in Microbiology 生物-生化与分子生物学
CiteScore
25.30
自引率
0.60%
发文量
193
审稿时长
6-12 weeks
期刊介绍: Trends in Microbiology serves as a comprehensive, multidisciplinary forum for discussing various aspects of microbiology, spanning cell biology, immunology, genetics, evolution, virology, bacteriology, protozoology, and mycology. In the rapidly evolving field of microbiology, technological advancements, especially in genome sequencing, impact prokaryote biology from pathogens to extremophiles, influencing developments in drugs, vaccines, and industrial enzyme research.
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