Binding prediction of multi-domain cellulases with a dual-CNN
Binding prediction of multi-domain cellulases with a dual-CNN
Cellulases hold great promise for the production of biofuels and biochemicals. However, they are modular enzymes acting on a complex heterogeneous substrate. Because of this complexity, the computational prediction of their catalytic properties remains scarce, which restricts both enzyme discovery and enzyme design. Here, we present a dual-input convolutional neural network to predict the binding of multi-domain enzymes. This regression model outperformed previous molecular dynamics-based methods for binding prediction for cellulases in a fraction of the time. Also, we show that when changed to a classification problem, the same network can be back-propagated to suggest mutations to improve enzyme binding. A similar approach could increase our understanding of the structure-activity relationship of enzymes, and suggest new promising mutations for enzyme design using explainable artificial intelligence.
Peter Westh、Kim Borch、Jeppe Kari、G¨1nther H. J. Peters、Kay S. Schaller
生物工程学生物化学计算技术、计算机技术
Peter Westh,Kim Borch,Jeppe Kari,G¨1nther H. J. Peters,Kay S. Schaller.Binding prediction of multi-domain cellulases with a dual-CNN[EB/OL].(2022-07-06)[2025-08-04].https://arxiv.org/abs/2207.02698.点此复制
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