Graph neural networks (GNNs) have been widely used in molecular property prediction, but explaining their black-box predictions is still a challenge. Most existing explanation methods for GNNs in chemistry focus on attributing model predictions to individual nodes, edges or fragments that are not necessarily derived from a chemically meaningful segmentation of molecules. To address this challenge, we propose a method named substructure mask explanation (SME). SME is based on well-established molecular segmentation methods and provides an interpretation that aligns with the understanding of chemists. We apply SME to elucidate how GNNs learn to predict aqueous solubility, genotoxicity, cardiotoxicity and blood-brain barrier permeation for small molecules. SME provides interpretation that is consistent with the understanding of chemists, alerts them to unreliable performance, and guides them in structural optimization for target properties. Hence, we believe that SME empowers chemists to confidently mine structure-activity relationship (SAR) from reliable GNNs through a transparent inspection on how GNNs pick up useful signals when learning from data.
Chemistry-intuitive explanation of graph neural networks for molecular property prediction with substructure masking.
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作者:Wu Zhenxing, Wang Jike, Du Hongyan, Jiang Dejun, Kang Yu, Li Dan, Pan Peichen, Deng Yafeng, Cao Dongsheng, Hsieh Chang-Yu, Hou Tingjun
| 期刊: | Nature Communications | 影响因子: | 15.700 |
| 时间: | 2023 | 起止号: | 2023 May 4; 14(1):2585 |
| doi: | 10.1038/s41467-023-38192-3 | ||
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