杠杆(统计)
人工智能
理论(学习稳定性)
计算机科学
生物信息学
深度学习
可扩展性
水准点(测量)
机器学习
人工神经网络
蛋白质稳定性
蛋白质结构预测
学习迁移
蛋白质结构
生物
生物化学
大地测量学
数据库
细胞生物学
基因
地理
作者
Henry Dieckhaus,Michael Brocidiacono,Nicholas Z. Randolph,Brian Kuhlman
标识
DOI:10.1101/2023.07.27.550881
摘要
Abstract Amino acid mutations that lower a protein’s thermodynamic stability are implicated in numerous diseases, and engineered proteins with enhanced stability are important in research and medicine. Computational methods for predicting how mutations perturb protein stability are therefore of great interest. Despite recent advancements in protein design using deep learning, in silico prediction of stability changes has remained challenging, in part due to a lack of large, high-quality training datasets for model development. Here we introduce ThermoMPNN, a deep neural network trained to predict stability changes for protein point mutations given an initial structure. In doing so, we demonstrate the utility of a newly released mega-scale stability dataset for training a robust stability model. We also employ transfer learning to leverage a second, larger dataset by using learned features extracted from a deep neural network trained to predict a protein’s amino acid sequence given its three-dimensional structure. We show that our method achieves competitive performance on established benchmark datasets using a lightweight model architecture that allows for rapid, scalable predictions. Finally, we make ThermoMPNN readily available as a tool for stability prediction and design.
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