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首页> 外文期刊>The Journal of Chemical Physics >Molecular system identification for enzyme directed evolution and design
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Molecular system identification for enzyme directed evolution and design

机译:用于酶的分子系统鉴定酶促和设计

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The rational design of chemical catalysts requires methods for the measurement of free energy differences in the catalytic mechanism for any given catalyst Hamiltonian. The scope of experimental learning algorithms that can be applied to catalyst design would also be expanded by the availability of such methods. Methods for catalyst characterization typically either estimate apparent kinetic parameters that do not necessarily correspond to free energy differences in the catalytic mechanism or measure individual free energy differences that are not sufficient for establishing the relationship between the potential energy surface and catalytic activity. Moreover, in order to enhance the duty cycle of catalyst design, statistically efficient methods for the estimation of the complete set of free energy differences relevant to the catalytic activity based on high-throughput measurements are preferred. In this paper, we present a theoretical and algorithmic system identification framework for the optimal estimation of free energy differences in solution phase catalysts, with a focus on one- and two-substrate enzymes. This framework, which can be automated using programmable logic, prescribes a choice of feasible experimental measurements and manipulated input variables that identify the complete set of free energy differences relevant to the catalytic activity and minimize the uncertainty in these free energy estimates for each successive Hamiltonian design. The framework also employs decision-theoretic logic to determine when model reduction can be applied to improve the duty cycle of high-throughput catalyst design. Automation of the algorithm using fluidic control systems is proposed, and applications of the framework to the problem of enzyme design are discussed. Published by AIP Publishing.
机译:化学催化剂的合理设计需要测量任何给定催化剂Hamiltonian的催化机制的自由能差。可以通过这种方法的可用性扩展可应用于催化剂设计的实验学习算法的范围。催化剂表征的方法通常是估计表观动力学参数,其不一定对应于催化机制的自由能差或测量不足以建立潜在能量表面和催化活性之间的关系的单独自由能差。此外,为了提高催化剂设计的占空比,优选基于高通量测量的催化活性估计与催化活性的完整自由能量差异的统计有效方法。在本文中,我们提出了一种理论和算法系统识别框架,用于溶液相催化剂的自由能差异的最佳估计,聚焦在单衬底和双衬底上。该框架可以使用可编程逻辑自动化,规定了可行的实验测量和操纵输入变量的选择,该测量识别与催化活动相关的完整自由能差,并最大限度地减少每个连续的哈密顿设计的这些自由能估算中的不确定性。该框架还采用决策定理逻辑来确定如何应用模型减少,以改善高通量催化剂设计的占空比。提出了使用流体控制系统的算法的自动化,讨论了框架对酶设计问题的应用。通过AIP发布发布。

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