稳健性(进化)
合理设计
共聚物
聚合物
计算机科学
蛋白质工程
合成生物学
生化工程
蛋白质设计
纳米技术
人工智能
材料科学
工程类
酶
化学
蛋白质结构
计算生物学
生物
生物化学
有机化学
基因
作者
Matthew Tamasi,Roshan Patel,Carlos H. Borca,Shashank Kosuri,Heloise Mugnier,Rahul Upadhya,N. Sanjeeva Murthy,Michael Webb,Adam J. Gormley
标识
DOI:10.26434/chemrxiv-2022-x2qdz
摘要
Polymer-protein hybrids are intriguing materials that can bolster protein stability in non-native environments, thereby enhancing their utility in diverse medicinal, commercial, and industrial applications. One stabilization strategy involves designing synthetic random copolymers with compositions attuned to the protein surface, but rational design is complicated by a vast chemical and composition space. Here, we report a strategy to design protein-stabilizing copolymers based on active machine learning, facilitated by automated material synthesis and characterization platforms. The versatility and robustness of the approach is demonstrated by the successful identification of copolymers that preserve, or even enhance, the activity of three chemically distinct enzymes following exposure to thermal denaturing conditions. Although systematic screening results in mixed success, active learning appropriately identifies unique chemistries for each enzyme. Overall, this work broadens our capabilities to design fit-for-purpose synthetic copolymers that promote or otherwise manipulate protein activity, with extensions towards the design of robust polymer-protein hybrid materials.
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