SAM-DTA: a sequence-agnostic model for drug–target binding affinity prediction

Author:

Hu Zhiqiang1,Liu Wenfeng23,Zhang Chenbin1,Huang Jiawen23,Zhang Shaoting14,Yu Huiqun3,Xiong Yi5,Liu Hao26,Ke Song2,Hong Liang78645

Affiliation:

1. SenseTime Research , Shanghai, 201103, China

2. Shanghai Matwings Technology Co. , Ltd., Shanghai, 200240, China

3. Department of Computer Science and Engineering , East China University of Science and Technology, Shanghai 200237, China

4. Shanghai Artificial Intelligence Laboratory , Shanghai 200232, China

5. School of Life Sciences and Biotechnology , Shanghai Jiao Tong University, Shanghai 200240, China

6. Institute of Natural Sciences , Shanghai Jiao Tong University, Shanghai 200240, China

7. School of Pharmacy , Shanghai Jiao Tong University, Shanghai 200240, China

8. School of Physics and Astronomy , Shanghai Jiao Tong University, Shanghai 200240, China

Abstract

Abstract Drug–target binding affinity prediction is a fundamental task for drug discovery and has been studied for decades. Most methods follow the canonical paradigm that processes the inputs of the protein (target) and the ligand (drug) separately and then combines them together. In this study we demonstrate, surprisingly, that a model is able to achieve even superior performance without access to any protein-sequence-related information. Instead, a protein is characterized completely by the ligands that it interacts. Specifically, we treat different proteins separately, which are jointly trained in a multi-head manner, so as to learn a robust and universal representation of ligands that is generalizable across proteins. Empirical evidences show that the novel paradigm outperforms its competitive sequence-based counterpart, with the Mean Squared Error (MSE) of 0.4261 versus 0.7612 and the R-Square of 0.7984 versus 0.6570 compared with DeepAffinity. We also investigate the transfer learning scenario where unseen proteins are encountered after the initial training, and the cross-dataset evaluation for prospective studies. The results reveals the robustness of the proposed model in generalizing to unseen proteins as well as in predicting future data. Source codes and data are available at https://github.com/huzqatpku/SAM-DTA.

Funder

National Science Foundation of China

Innovation Program of Shanghai Municipal Education Commission

Shanghai Jiao Tong University

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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