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设计细菌信号相互作用的共进化景观。

Designing bacterial signaling interactions with coevolutionary landscapes.

机构信息

Center for Theoretical Biological Physics, Rice University, Houston, Texas, United States of America.

Department of Chemistry & Biochemistry, The University of California, San Diego, California, United States of America.

出版信息

PLoS One. 2018 Aug 20;13(8):e0201734. doi: 10.1371/journal.pone.0201734. eCollection 2018.

Abstract

Selecting amino acids to design novel protein-protein interactions that facilitate catalysis is a daunting challenge. We propose that a computational coevolutionary landscape based on sequence analysis alone offers a major advantage over expensive, time-consuming brute-force approaches currently employed. Our coevolutionary landscape allows prediction of single amino acid substitutions that produce functional interactions between non-cognate, interspecies signaling partners. In addition, it can also predict mutations that maintain segregation of signaling pathways across species. Specifically, predictions of phosphotransfer activity between the Escherichia coli histidine kinase EnvZ to the non-cognate receiver Spo0F from Bacillus subtilis were compiled. Twelve mutations designed to enhance, suppress, or have a neutral effect on kinase phosphotransfer activity to a non-cognate partner were selected. We experimentally tested the ability of the kinase to relay phosphate to the respective designed Spo0F receiver proteins against the theoretical predictions. Our key finding is that the coevolutionary landscape theory, with limited structural data, can significantly reduce the search-space for successful prediction of single amino acid substitutions that modulate phosphotransfer between the two-component His-Asp relay partners in a predicted fashion. This combined approach offers significant improvements over large-scale mutations studies currently used for protein engineering and design.

摘要

选择氨基酸来设计促进催化的新型蛋白质-蛋白质相互作用是一项艰巨的挑战。我们提出,仅基于序列分析的计算共进化景观提供了一个优于目前昂贵、耗时的暴力方法的主要优势。我们的共进化景观允许预测单个氨基酸取代,从而产生非同源种间信号伙伴之间的功能相互作用。此外,它还可以预测维持物种间信号通路分离的突变。具体来说,编译了大肠杆菌组氨酸激酶EnvZ 与枯草芽孢杆菌非同源受体 Spo0F 之间磷酸转移活性的预测。选择了 12 个旨在增强、抑制或对激酶磷酸转移活性对非同源伴侣具有中性影响的突变。我们实验测试了激酶将磷酸传递给各自设计的 Spo0F 受体蛋白的能力,以对抗理论预测。我们的主要发现是,共进化景观理论,具有有限的结构数据,可以大大减少搜索空间,成功预测在预测方式下调节两个组件 His-Asp 继电器伙伴之间磷酸转移的单个氨基酸取代。这种组合方法比目前用于蛋白质工程和设计的大规模突变研究有了显著的改进。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e6d3/6101370/af31a7cec283/pone.0201734.g001.jpg

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