TY - JOUR
T1 - Versatile Framework for Drug-Target Interaction Prediction by Considering Domain-Specific Features
AU - Liu, Shuo
AU - Yu, Jialiang
AU - Ni, Ningxi
AU - Wang, Zidong
AU - Chen, Mengyun
AU - Li, Yuquan
AU - Xu, Chen
AU - Ding, Yahao
AU - Zhang, Jun
AU - Yao, Xiaojun
AU - Liu, Huanxiang
N1 - Publisher Copyright:
© 2024 American Chemical Society.
PY - 2024/7/22
Y1 - 2024/7/22
N2 - Predicting drug-target interactions (DTIs) is one of the crucial tasks in drug discovery, but traditional wet-lab experiments are costly and time-consuming. Recently, deep learning has emerged as a promising tool for accelerating DTI prediction due to its powerful performance. However, the models trained on limited known DTI data struggle to generalize effectively to novel drug-target pairs. In this work, we propose a strategy to train an ensemble of models by capturing both domain-generic and domain-specific features (E-DIS) to learn diverse domain features and adapt them to out-of-distribution data. Multiple experts were trained on different domains to capture and align domain-specific information from various distributions without accessing any data from unseen domains. E-DIS provides a comprehensive representation of proteins and ligands by capturing diverse features. Experimental results on four benchmark data sets in both in-domain and cross-domain settings demonstrated that E-DIS significantly improved model performance and domain generalization compared to existing methods. Our approach presents a significant advancement in DTI prediction by combining domain-generic and domain-specific features, enhancing the generalization ability of the DTI prediction model.
AB - Predicting drug-target interactions (DTIs) is one of the crucial tasks in drug discovery, but traditional wet-lab experiments are costly and time-consuming. Recently, deep learning has emerged as a promising tool for accelerating DTI prediction due to its powerful performance. However, the models trained on limited known DTI data struggle to generalize effectively to novel drug-target pairs. In this work, we propose a strategy to train an ensemble of models by capturing both domain-generic and domain-specific features (E-DIS) to learn diverse domain features and adapt them to out-of-distribution data. Multiple experts were trained on different domains to capture and align domain-specific information from various distributions without accessing any data from unseen domains. E-DIS provides a comprehensive representation of proteins and ligands by capturing diverse features. Experimental results on four benchmark data sets in both in-domain and cross-domain settings demonstrated that E-DIS significantly improved model performance and domain generalization compared to existing methods. Our approach presents a significant advancement in DTI prediction by combining domain-generic and domain-specific features, enhancing the generalization ability of the DTI prediction model.
UR - http://www.scopus.com/inward/record.url?scp=85198100266&partnerID=8YFLogxK
U2 - 10.1021/acs.jcim.4c00403
DO - 10.1021/acs.jcim.4c00403
M3 - Article
AN - SCOPUS:85198100266
SN - 1549-9596
VL - 64
SP - 5646
EP - 5656
JO - Journal of Chemical Information and Modeling
JF - Journal of Chemical Information and Modeling
IS - 14
ER -