4.7 Article

Multi-TransDTI: Transformer for Drug-Target Interaction Prediction Based on Simple Universal Dictionaries with Multi-View Strategy

期刊

BIOMOLECULES
卷 12, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/biom12050644

关键词

DTI prediction; deep learning; transformer; multi-view strategy; embedding dictionary

资金

  1. National Key Research and Development Project of China [2021YFA1000102, 2021YFA1000103]
  2. Natural Science Foundation of China [61873280, 61972416]
  3. Taishan Scholarship [tsqn201812029]
  4. Foundation of Science and Technology Development of Jinan [201907116]
  5. Shandong Provincial Natural Science Foundation [ZR2021QF023]
  6. Fundamental Research Funds for the Central Universities [21CX06018A]
  7. Spanish project [PID2019-106960GB-I00]
  8. Juan de la Cierva [IJC2018-038539-I]

向作者/读者索取更多资源

A novel end-to-end learning model was proposed to encode drugs and proteins and was evaluated on the BindingDB dataset, outperforming other models.
Prediction on drug-target interaction has always been a crucial link for drug discovery and repositioning, which have witnessed tremendous progress in recent years. Despite many efforts made, the existing representation learning or feature generation approaches of both drugs and proteins remain complicated as well as in high dimension. In addition, it is difficult for current methods to extract local important residues from sequence information while remaining focused on global structure. At the same time, massive data is not always easily accessible, which makes model learning from small datasets imminent. As a result, we propose an end-to-end learning model with SUPD and SUDD methods to encode drugs and proteins, which not only leave out the complicated feature extraction process but also greatly reduce the dimension of the embedding matrix. Meanwhile, we use a multi-view strategy with a transformer to extract local important residues of proteins for better representation learning. Finally, we evaluate our model on the BindingDB dataset in comparisons with different state-of-the-art models from comprehensive indicators. In results of 100% BindingDB, our AUC, AUPR, ACC, and F1-score reached 90.9%, 89.8%, 84.2%, and 84.3% respectively, which successively exceed the average values of other models by 2.2%, 2.3%, 2.6%, and 2.6%. Moreover, our model also generally surpasses their performance on 30% and 50% BindingDB datasets.

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