挖掘多功能阿魏酰酯酶:系统发育分类、结构特征和深度学习模型。

IF 4.3 3区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Liang Guo, Yuxin Dong, Deyong Zhang, Xinrong Pan, Xinjie Jin, Xinyu Yan, Yin Lu
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引用次数: 0

摘要

阿魏酰酯酶(FEs, EC 3.1.1.73)在生物合成和代谢中起重要作用。然而,鉴定能够催化多种底物的多功能FEs仍然是一个挑战。在这项研究中,我们从BRENDA数据库中获得了2085个FE序列,并开始进行酶相似性网络分析,揭示了三个主要的聚类(1-3)。值得注意的是,聚类1和聚类3均包含特征FEs,序列长度差异显著。随后对这些集群的系统发育分析揭示了系统发育分类与底物混杂之间的相关性,并且具有广泛底物范围的酶往往位于系统发育树的特定分支中。此外,利用分子动力学模拟和动态互相关矩阵分析探讨了混杂型和基质特异性FEs的结构动力学差异。最后,为了扩大多功能FEs的范围,我们使用深度学习模型来预测潜在的混杂酶,并从聚类1和聚类3中鉴定出38和75个潜在的多功能FEs,概率得分超过90%。我们的研究结果强调了将系统发育和结构特征与深度学习方法相结合的效用,以挖掘多功能FEs,揭示未开发的酶多样性,并扩大生物催化剂的合成应用范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining versatile feruloyl esterases: phylogenetic classification, structural features, and deep learning model.

Feruloyl esterases (FEs, EC 3.1.1.73) play a crucial role in biological synthesis and metabolism. However, the identification of versatile FEs, capable of catalyzing a wide range of substrates, remains a challenge. In this study, we obtained 2085 FE sequences from the BRENDA database and initiated with an enzyme similarity network analysis, revealing three main clusters (1-3). Notably, both cluster 1 and cluster 3 included the characterized FEs, which exhibited significant differences in sequence length. Subsequent phylogenetic analysis of these clusters unveiled a correlation between phylogenetic classification and substrate promiscuity, and enzymes with broad substrate scope tended to locate within specific branches of the phylogenetic tree. Further, molecular dynamics simulations and dynamical cross-correlation matrix analysis were employed to explore structural dynamics differences between promiscuous and substrate-specific FEs. Finally, to expand the repertoire of versatile FEs, we employed deep learning models to predict potentially promiscuous enzymes and identified 38 and 75 potential versatile FEs from cluster 1 and cluster 3 with a probability score exceeding 90%. Our findings underscore the utility of integrating phylogenetic and structural features with deep learning approaches for mining versatile FEs, shedding light on unexplored enzymatic diversity and expanding the repertoire of biocatalysts for synthetic applications.

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来源期刊
Bioresources and Bioprocessing
Bioresources and Bioprocessing BIOTECHNOLOGY & APPLIED MICROBIOLOGY-
CiteScore
7.20
自引率
8.70%
发文量
118
审稿时长
13 weeks
期刊介绍: Bioresources and Bioprocessing (BIOB) is a peer-reviewed open access journal published under the brand SpringerOpen. BIOB aims at providing an international academic platform for exchanging views on and promoting research to support bioresource development, processing and utilization in a sustainable manner. As an application-oriented research journal, BIOB covers not only the application and management of bioresource technology but also the design and development of bioprocesses that will lead to new and sustainable production processes. BIOB publishes original and review articles on most topics relating to bioresource and bioprocess engineering, including: -Biochemical and microbiological engineering -Biocatalysis and biotransformation -Biosynthesis and metabolic engineering -Bioprocess and biosystems engineering -Bioenergy and biorefinery -Cell culture and biomedical engineering -Food, agricultural and marine biotechnology -Bioseparation and biopurification engineering -Bioremediation and environmental biotechnology
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