ProS-GNN: Predicting effects of mutations on protein stability using graph neural networks

Comput Biol Chem. 2023 Aug 26;107:107952. doi: 10.1016/j.compbiolchem.2023.107952. Online ahead of print.ABSTRACTPredicting protein stability change upon variation through a computational approach is a valuable tool to unveil the mechanisms of mutation-induced drug failure and develop immunotherapy strategies. Some previous machine learning-based techniques exhibit anti-symmetric bias toward destabilizing situations, whereas others struggle with generalization to unseen examples. To address these issues, we propose a gated graph neural network-based approach to predict changes in protein stability upon mutation. The model uses message passing to encode the links between the molecular structure and property after eliminating the non-mutant structure and creating input feature vectors. While doing so, it also incorporates the coordinates of the raw atoms to provide spatial insights into the chemical systems. We test the model on the Ssym, Myoglobin, Broom, and p53 datasets to demonstrate the generalization performance. Compared to existing approaches, our proposed method achieves improved linearity with symmetry in less time. The code for this study is available at: https://github.com/HongzhouTang/Pros-GNN.PMID:37643501 | DOI:10.1016/j.compbiolchem.2023.107952
Source: Computational Biology and Chemistry - Category: Bioinformatics Authors: Source Type: research