GraphKM: machine and deep learning for KM prediction of wildtype and mutant enzymes

被引:0
|
作者
He, Xiao [1 ]
Yan, Ming [1 ]
机构
[1] Nanjing Tech Univ, Coll Biotechnol & Pharmaceut Engn, Nanjing, Peoples R China
关键词
Neural networks; Tree boosting; Michaelis constant; Deep learning; Graph neural network; PARAMETER-ESTIMATION; PROTEIN-STRUCTURE; RESOURCE;
D O I
10.1186/s12859-024-05746-1
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Michaelis constant (K-M) is one of essential parameters for enzymes kinetics in the fields of protein engineering, enzyme engineering, and synthetic biology. As overwhelming experimental measurements of K-M are difficult and time-consuming, prediction of the K-M values from machine and deep learning models would increase the pace of the enzymes kinetics studies. Existing machine and deep learning models are limited to the specific enzymes, i.e., a minority of enzymes or wildtype enzymes. Here, we used a deep learning framework PaddlePaddle to implement a machine and deep learning approach (GraphKM) for K-M prediction of wildtype and mutant enzymes. GraphKM is composed by graph neural networks (GNN), fully connected layers and gradient boosting framework. We represented the substrates through molecular graph and the enzymes through a pretrained transformer-based language model to construct the model inputs. We compared the difference of the model results made by the different GNN (GIN, GAT, GCN, and GAT-GCN). The GAT-GCN-based model generally outperformed. To evaluate the prediction performance of the GraphKM and other reported K-M prediction models, we collected an independent K-M dataset (HXKm) from literatures.
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页数:12
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