DTLCDR:基于靶标的多模态融合深度学习框架,用于癌症药物反应预测。

IF 8.9
Journal of pharmaceutical analysis Pub Date : 2025-08-01 Epub Date: 2025-04-21 DOI:10.1016/j.jpha.2025.101315
Jie Yu, Cheng Shi, Yiran Zhou, Ningfeng Liu, Xiaolin Zong, Zhenming Liu, Liangren Zhang
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引用次数: 0

摘要

准确预测癌细胞系(ccl)的药物反应和利用ccl进行可转移的临床药物反应预测是个体化医疗的两大任务。尽管临床前和临床癌症药物反应(CDR)预测的现有计算方法取得了快速进展,但在训练集中看不见的新药的推广方面仍然存在挑战。在此,我们提出了一种多模式融合深度学习(DL)模型,称为基于药物靶点和单细胞语言的CDR (DTLCDR),以预测临床前和临床CDR。该模型集成了化学描述符、分子图表示、药物预测蛋白靶谱和细胞系表达谱以及单细胞的一般知识。在这些特征中,一个训练有素的药物-靶标相互作用(DTI)预测模型被用来生成药物的靶标谱,一个预训练的单细胞语言模型被集成来提供一般的基因组知识。细胞系药物敏感性数据集的对比实验表明,与之前最先进的基线方法相比,DTLCDR在预测未见药物方面表现出更高的通用性和稳健性。进一步的消融研究验证了我们模型的每个组成部分的有效性,突出了目标信息对泛化性的重要贡献。随后,通过体外细胞实验验证了DTLCDR预测新分子的能力,证明了其在现实世界中的应用潜力。此外,无论药物是否包含在细胞系数据集中,DTLCDR都被转移到临床数据集中,在临床数据中表现出令人满意的性能。总的来说,我们的研究结果表明,DTLCDR是一种很有前途的个性化药物发现工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DTLCDR: A target-based multimodal fusion deep learning framework for cancer drug response prediction.

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 (DL) 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 single-cell 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.

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