Kim Chang-Ah, Wu Jiabin, Zhu Jun, Li Huaiguang, Ke Zhihai
School of Science and Engineering, Shenzhen Key Laboratory of Innovative Drug Synthesis, The Chinese University of Hong Kong, Shenzhen, Guangdong, 518172, P. R. China.
Adv Sci (Weinh). 2025 Jun;12(21):e2408297. doi: 10.1002/advs.202408297. Epub 2025 May 8.
Learning from nature has emerged as a promising strategy for catalyst development, wherein the remarkable performance of catalysts selected by nature over billions of years of evolution serves as a basis for the creative design of high-performance catalysts. Hydrogenases, with their exceptional catalytic activity in hydrogen oxidation and production, have been employed as prototypes for human learning to achieve better catalyst design. A comprehensive understanding of hydrogenases' structures and catalytic mechanisms is crucial to replicate and exceed their performance. Computational modeling has proven to be a powerful tool for elucidating the reduction chemistry of [FeFe]-hydrogenases. This review overviews recent computational and experimental efforts, focusing on density functional theory (DFT) calculations applied to [FeFe] hydrogenases. It summarizes current knowledge on identifying active sites in [FeFe] hydrogenases and the reaction cycles involved in hydrogen metabolism.
向自然学习已成为一种很有前景的催化剂开发策略,在这一策略中,自然在数十亿年进化过程中所选择的催化剂的卓越性能,为高性能催化剂的创新设计提供了基础。氢化酶在氢氧化和产氢方面具有卓越的催化活性,已被用作人类学习的原型,以实现更好的催化剂设计。全面了解氢化酶的结构和催化机制对于复制并超越其性能至关重要。计算建模已被证明是阐明[FeFe] -氢化酶还原化学的有力工具。本综述概述了最近的计算和实验工作,重点是应用于[FeFe] -氢化酶的密度泛函理论(DFT)计算。它总结了目前关于识别[FeFe] -氢化酶活性位点以及氢代谢所涉及的反应循环的知识。