Jie Yu, Cheng Shi, Yiran Zhou, Ningfeng Liu, Xiaolin Zong, Zhenming Liu, Liangren Zhang. DTLCDR: A target-based multimodal fusion deep learning framework for cancer drug response prediction[J]. Journal of Pharmaceutical Analysis. doi: 10.1016/j.jpha.2025.101315
Citation:
Jie Yu, Cheng Shi, Yiran Zhou, Ningfeng Liu, Xiaolin Zong, Zhenming Liu, Liangren Zhang. DTLCDR: A target-based multimodal fusion deep learning framework for cancer drug response prediction[J]. Journal of Pharmaceutical Analysis. doi: 10.1016/j.jpha.2025.101315
Jie Yu, Cheng Shi, Yiran Zhou, Ningfeng Liu, Xiaolin Zong, Zhenming Liu, Liangren Zhang. DTLCDR: A target-based multimodal fusion deep learning framework for cancer drug response prediction[J]. Journal of Pharmaceutical Analysis. doi: 10.1016/j.jpha.2025.101315
Citation:
Jie Yu, Cheng Shi, Yiran Zhou, Ningfeng Liu, Xiaolin Zong, Zhenming Liu, Liangren Zhang. DTLCDR: A target-based multimodal fusion deep learning framework for cancer drug response prediction[J]. Journal of Pharmaceutical Analysis. doi: 10.1016/j.jpha.2025.101315
State Key Laboratory of Natural and Biomimetic Drugs, School of Pharmaceutical Sciences, Peking University, Beijing, 100191, China
Funds:
This research was supported by the National Key Research and Development Program of China (Grant No.: 2023YFC2605002), the National Key R&D Program of China (Grant No.: 2022YFF1203003), Beijing AI Health Cultivation Project, China (Grant No.: Z221100003522022), the National Natural Science Foundation of China (Grant No.: 82273772), and the Beijing Natural Science Foundation, China (Grant No.: 7212152).
Accurate prediction of drug responses in cancer cell lines (CCLs) and transferable prediction of clinical drug responses using CCLs are two major tasks in personalized medicine. Despite the rapid advancements in existing computational methods for preclinical and clinical cancer drug response (CDR) prediction, challenges remain regarding the generalization of new drugs that are unseen in the training set. Herein, we propose a multimodal fusion deep learning model called drug-target and single-cell language based CDR (DTLCDR) to predict preclinical and clinical CDRs. The model integrates chemical descriptors, molecular graph representations, predicted protein target profiles of drugs, and cell line expression profiles with general knowledge from single cells. Among these features, a well-trained drug-target interaction (DTI) prediction model is used to generate target profiles of drugs, and a pretrained singlecell language model is integrated to provide general genomic knowledge. Comparison experiments on the cell line drug sensitivity dataset demonstrated that DTLCDR exhibited improved generalizability and robustness in predicting unseen drugs compared with previous state-of-the-art baseline methods. Further ablation studies verified the effectiveness of each component of our model, highlighting the significant contribution of target information to generalizability. Subsequently, the ability of DTLCDR to predict novel molecules was validated through in vitro cell experiments, demonstrating its potential for real-world applications. Moreover, DTLCDR was transferred to the clinical datasets, demonstrating satisfactory performance in the clinical data, regardless of whether the drugs were included in the cell line dataset. Overall, our results suggest that the DTLCDR is a promising tool for personalized drug discovery.