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Modality-DTA: Multimodality Fusion Strategy for Drug-Target Affinity Prediction

Yang, Xixi; Niu, Zhangming; Liu, Yuansheng*; Song, Bosheng; Lu, Weiqiang; Zeng, Li; Zeng, Xiangxiang
Science Citation Index Expanded
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摘要

Prediction of the drug-target affinity (DTA) plays an important role in drug discovery. Existing deep learning methods for DTA prediction typically leverage a single modality, namely simplified molecular input line entry specification (SMILES) or amino acid sequence to learn representations. SMILES or amino acid sequences can be encoded into different modalities. Multimodality data provide different kinds of information, with complementary roles for DTA prediction. We propose Modality-DTA, a novel deep learning method for DTA prediction that leverages the multimodality of drugs and targets. A group of backward propagation neural networks is applied to ensure the completeness of the reconstruction process from the latent feature representation to original multimodality data. The tag between the drug and target is used to reduce the noise information in the latent representation from multimodality data. Experiments on three benchmark datasets show that our Modality-DTA outperforms existing methods in all metrics. Modality-DTA reduces the mean square error by 15.7% and improves the area under the precisionrecall curve by 12.74% in the Davis dataset. We further find that the drug modality Morgan fingerprint and the target modality generated by one-hot-encoding play the most significant roles. To the best of our knowledge, Modality-DTA is the first method to explore multimodality for DTA prediction.

关键词

Drugs Encoding Amino acids Proteins Feature extraction Computational modeling Task analysis Deep learning drug modality drug-target affinity prediction multimodality target modality modality fusion