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Revolutionizing enzyme engineering through artificial intelligence and machine learning

机译:通过人工智能和机器学习彻底改变酶工程

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摘要

The combinatorial space of an enzyme sequence has astronomical possibilities and exploring it with contemporary experimental techniques is arduous and often ineffective. Multi-target objectives such as concomitantly achieving improved selectivity, solubility and activity of an enzyme have narrow plausibility under approaches of restricted mutagenesis and combinatorial search. Traditional enzyme engineering approaches have a limited scope for complex optimization due to the requirement of a priori knowledge or experimental burden of screening huge protein libraries. The recent surge in high-throughput experimental methods including Next Generation Sequencing and automated screening has flooded the field of molecular biology with big-data, which requires us to re-think our concurrent approaches towards enzyme engineering. Artificial Intelligence (AI) and Machine Learning (ML) have great potential to revolutionize smart enzyme engineering without the explicit need for a complete understanding of the underlying molecular system. Here, we portray the role and position of AI techniques in the field of enzyme engineering along with their scope and limitations. In addition, we explain how the traditional approaches of directed evolution and rational design can be extended through AI tools. Recent successful examples of AI-assisted enzyme engineering projects and their deviation from traditional approaches are highlighted. A comprehensive picture of current challenges and future avenues for AI in enzyme engineering are also discussed.
机译:酶序列的组合空间具有天文学的可能性,并使用当代实验技术探索它是艰巨的,而且通常无效。在限制诱变和组合搜索的方法下,酶的选择性,溶解度和活性等多目标目标,酶的溶解度和活性具有狭窄的合理性。由于需要先验知识或筛选巨大蛋白质库的实验负担,传统的酶工程方法的复杂优化范围有限。最近在包括下一代测序和自动筛查在内的高通量实验方法的激增,用大数据淹没了分子生物学领域,这要求我们重新考虑我们的同时采用酶工程的方法。人工智能(AI)和机器学习(ML)具有巨大的潜力,可以彻底改变智能酶工程,而无需明确了解基础分子系统。在这里,我们描绘了AI技术在酶工程领域的作用和位置以及它们的范围和局限性。此外,我们解释了如何通过AI工具扩展有导向进化和理性设计的传统方法。强调了AI辅助酶工程项目及其与传统方法的偏差的最新成功示例。还讨论了当前挑战和未来在酶工程中的未来途径的全面了解。

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