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探索从丙酮酸到丙酸的从头代谢途径。

Exploring De Novo metabolic pathways from pyruvate to propionic acid.

作者信息

Stine Andrew, Zhang Miaomin, Ro Soo, Clendennen Stephanie, Shelton Michael C, Tyo Keith E J, Broadbelt Linda J

机构信息

Dept. of Chemical and Biological Engineering, Northwestern University, Evanston, IL.

Eastman Chemical Company, Kingsport, TN.

出版信息

Biotechnol Prog. 2016 Mar;32(2):303-11. doi: 10.1002/btpr.2233. Epub 2016 Mar 3.

Abstract

Industrial biotechnology provides an efficient, sustainable solution for chemical production. However, designing biochemical pathways based solely on known reactions does not exploit its full potential. Enzymes are known to accept non-native substrates, which may allow novel, advantageous reactions. We have previously developed a computational program named Biological Network Integrated Computational Explorer (BNICE) to predict promiscuous enzyme activities and design synthetic pathways, using generalized reaction rules curated from biochemical reaction databases. Here, we use BNICE to design pathways synthesizing propionic acid from pyruvate. The currently known natural pathways produce undesirable by-products lactic acid and succinic acid, reducing their economic viability. BNICE predicted seven pathways containing four reaction steps or less, five of which avoid these by-products. Among the 16 biochemical reactions comprising these pathways, 44% were validated by literature references. More than 28% of these known reactions were not in the BNICE training dataset, showing that BNICE was able to predict novel enzyme substrates. Most of the pathways included the intermediate acrylic acid. As acrylic acid bioproduction has been well advanced, we focused on the critical step of reducing acrylic acid to propionic acid. We experimentally validated that Oye2p from Saccharomyces cerevisiae can catalyze this reaction at a slow turnover rate (10(-3) s(-1) ), which was unknown to occur with this enzyme, and is an important finding for further propionic acid metabolic engineering. These results validate BNICE as a pathway-searching tool that can predict previously unknown promiscuous enzyme activities and show that computational methods can elucidate novel biochemical pathways for industrial applications. © 2016 American Institute of Chemical Engineers Biotechnol. Prog., 32:303-311, 2016.

摘要

工业生物技术为化学品生产提供了一种高效、可持续的解决方案。然而,仅基于已知反应来设计生化途径并不能充分发挥其潜力。已知酶能够接受非天然底物,这可能会引发新的、具有优势的反应。我们之前开发了一个名为生物网络综合计算探索器(BNICE)的计算程序,用于预测混杂酶活性并设计合成途径,该程序使用从生化反应数据库中整理出的通用反应规则。在此,我们使用BNICE来设计从丙酮酸合成丙酸的途径。目前已知的天然途径会产生不期望的副产物乳酸和琥珀酸,从而降低了它们的经济可行性。BNICE预测了七条包含四个或更少反应步骤的途径,其中五条避免了这些副产物。在构成这些途径的16个生化反应中,44%有文献参考进行验证。这些已知反应中超过28%不在BNICE训练数据集中,这表明BNICE能够预测新的酶底物。大多数途径都包含中间产物丙烯酸。由于丙烯酸的生物生产已经取得了很大进展,我们将重点放在将丙烯酸还原为丙酸的关键步骤上。我们通过实验验证了酿酒酵母中的Oye2p能够以较低的周转速率(10^(-3) s^(-1))催化该反应,而此前并不知道这种酶会发生这种反应,这对于进一步的丙酸代谢工程来说是一项重要发现。这些结果验证了BNICE作为一种途径搜索工具能够预测此前未知的混杂酶活性,并表明计算方法能够阐明用于工业应用的新生化途径。© 2016美国化学工程师学会 生物技术进展,32:303 - 311,2016。

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