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Multimodal fused deep learning for drug property prediction: Integrating chemical language and molecular graph.
Lu, Xiaohua; Xie, Liangxu; Xu, Lei; Mao, Rongzhi; Xu, Xiaojun; Chang, Shan.
Afiliação
  • Lu X; Institute of Bioinformatics and Medical Engineering, Jiangsu University of Technology, Changzhou 213001, China.
  • Xie L; Institute of Bioinformatics and Medical Engineering, Jiangsu University of Technology, Changzhou 213001, China.
  • Xu L; Institute of Bioinformatics and Medical Engineering, Jiangsu University of Technology, Changzhou 213001, China.
  • Mao R; Institute of Bioinformatics and Medical Engineering, Jiangsu University of Technology, Changzhou 213001, China.
  • Xu X; Institute of Bioinformatics and Medical Engineering, Jiangsu University of Technology, Changzhou 213001, China.
  • Chang S; Institute of Bioinformatics and Medical Engineering, Jiangsu University of Technology, Changzhou 213001, China.
Comput Struct Biotechnol J ; 23: 1666-1679, 2024 Dec.
Article em En | MEDLINE | ID: mdl-38680871
ABSTRACT
Accurately predicting molecular properties is a challenging but essential task in drug discovery. Recently, many mono-modal deep learning methods have been successfully applied to molecular property prediction. However, mono-modal learning is inherently limited as it relies solely on a single modality of molecular representation, which restricts a comprehensive understanding of drug molecules. To overcome the limitations, we propose a multimodal fused deep learning (MMFDL) model to leverage information from different molecular representations. Specifically, we construct a triple-modal learning model by employing Transformer-Encoder, Bidirectional Gated Recurrent Unit (BiGRU), and graph convolutional network (GCN) to process three modalities of information from chemical language and molecular graph SMILES-encoded vectors, ECFP fingerprints, and molecular graphs, respectively. We evaluate the proposed triple-modal model using five fusion approaches on six molecule datasets, including Delaney, Llinas2020, Lipophilicity, SAMPL, BACE, and pKa from DataWarrior. The results show that the MMFDL model achieves the highest Pearson coefficients, and stable distribution of Pearson coefficients in the random splitting test, outperforming mono-modal models in accuracy and reliability. Furthermore, we validate the generalization ability of our model in the prediction of binding constants for protein-ligand complex molecules, and assess the resilience capability against noise. Through analysis of feature distributions in chemical space and the assigned contribution of each modal model, we demonstrate that the MMFDL model shows the ability to acquire complementary information by using proper models and suitable fusion approaches. By leveraging diverse sources of bioinformatics information, multimodal deep learning models hold the potential for successful drug discovery.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article