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A machine learning approach for reliable prediction of amino acid interactions and its application in the directed evolution of enantioselective enzymes

机译:一种可靠预测氨基酸相互作用的机器学习方法及其在对映选择性酶的定向进化中的应用

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摘要

Directed evolution is an important research activity in synthetic biology and biotechnology. Numerous reports describe the application of tedious mutation/screening cycles for the improvement of proteins. Recently, knowledge-based approaches have facilitated the prediction of protein properties and the identification of improved mutants. However, epistatic phenomena constitute an obstacle which can impair the predictions in protein engineering. We present an innovative sequence-activity relationship (innov’SAR) methodology based on digital signal processing combining wet-lab experimentation and computational protein design. In our machine learning approach, a predictive model is developed to find the resulting property of the protein when the n single point mutations are permuted (2n combinations). The originality of our approach is that only sequence information and the fitness of mutants measured in the wet-lab are needed to build models. We illustrate the application of the approach in the case of improving the enantioselectivity of an epoxide hydrolase from Aspergillus niger. n = 9 single point mutants of the enzyme were experimentally assessed for their enantioselectivity and used as a learning dataset to build a model. Based on combinations of the 9 single point mutations (29), the enantioselectivity of these 512 variants were predicted, and candidates were experimentally checked: better mutants with higher enantioselectivity were indeed found.
机译:定向进化是合成生物学和生物技术领域的重要研究活动。许多报告描述了繁琐的突变/筛选循环在蛋白质改良中的应用。最近,基于知识的方法促进了蛋白质特性的预测和改进突变体的鉴定。但是,上位现象构成了障碍,可能会影响蛋白质工程的预测。我们提出了一种创新的序列-活性关系(innov'SAR)方法,该方法基于结合了湿实验室实验和蛋白质计算设计的数字信号处理。在我们的机器学习方法中,开发了一种预测模型来查找当排列n个单点突变(2 n 组合)时蛋白质的最终特性。我们方法的独创性是只需要序列信息和在湿实验室中测得的突变体适应性即可构建模型。我们举例说明了该方法在提高黑曲霉环氧化物水解酶的对映选择性的情况下的应用。实验评估了该酶的n = 9个单点突变体的对映选择性,并将其用作学习数据集以建立模型。基于9个单点突变(2 9 )的组合,预测了这512个变体的对映选择性,并通过实验检查了候选物:确实发现了具有更高对映选择性的更好的突变体。

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