scDrugMap:对药物反应预测的大型基础模型进行基准测试

ArXiv Pub Date : 2025-05-08
Qing Wang, Yining Pan, Minghao Zhou, Zijia Tang, Yanfei Wang, Guangyu Wang, Qianqian Song
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引用次数: 0

摘要

耐药是癌症治疗的一大挑战。单细胞分析提供了对细胞异质性的深入了解,但在单细胞数据中预测药物反应的大规模基础模型的应用仍未得到充分探索。为了解决这个问题,我们开发了scDrugMap,这是一个集成框架,具有Python命令行界面和用于药物反应预测的web服务器。scDrugMap评估了广泛的基础模型,包括8个单细胞模型和2个大型语言模型,使用了一个精心策划的数据集,其中包括326,000多个细胞的初级收集和18800个细胞的验证集,跨越36个数据集和不同的组织和癌症类型。我们在混合数据和交叉数据评估设置下对模型性能进行基准测试,采用层冻结和低秩自适应(Low-Rank Adaptation, LoRA)微调策略。在数据池场景中,scFoundation获得了最好的性能,平均F1得分为0.971(层冻结)和0.947(微调),比表现最差的模型高出50%以上。在交叉数据设置中,UCE优于后微调(平均F1: 0.774),而scGPT领先于零射击学习(平均F1: 0.858)。总体而言,scDrugMap为单细胞数据中的药物反应预测提供了第一个大规模的基础模型基准,并作为一个用户友好的、灵活的平台,用于推进药物发现和转化研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
scDrugMap: Benchmarking Large Foundation Models for Drug Response Prediction.

Drug resistance remains a significant barrier to improving the effectiveness of cancer therapies. To better understand the biological mechanisms driving resistance, single-cell profiling has emerged as a powerful tool for characterizing cellular heterogeneity. Recent advancements in large-scale foundation models have demonstrated potential in enhancing single-cell analysis, yet their performance in drug response prediction remains underexplored. In this study, we developed scDrugMap, an integrated framework for drug response prediction that features both a Python command-line tool and an interactive web server. scDrugMap supports the evaluation of a wide range of foundation models, including eight single-cell foundation models and two large language models (LLMs), using large-scale single-cell datasets across diverse tissue types, cancer types, and treatment regimens. The framework incorporates a curated data resource consisting of a primary collection of 326,751 cells from 36 datasets across 23 studies, and a validation collection of 18,856 cells from 17 datasets across 6 studies. Using scDrugMap, we conducted comprehensive benchmarking under two evaluation scenarios: pooled-data evaluation and cross-data evaluation. In both settings, we implemented two model training strategies-layer freezing and fine-tuning using Low-Rank Adaptation (LoRA) of foundation models. In the pooled-data evaluation, scFoundation outperformed all others, while most models achieved competitive performance. Specifically, scFoundation achieved the highest mean F1 scores of 0.971 and 0.947 using layer-freezing and fine-tuning, outperforming the lowest-performing model by 54% and 57%, respectively. In the cross-data evaluation, UCE achieved the highest performance (mean F1 score: 0.774) after fine-tuning on tumor tissue, while scGPT demonstrated superior performance (mean F1 score: 0.858) in a zero-shot learning setting. Together, this study presents the first comprehensive benchmarking of large-scale foundation models for drug response prediction in single-cell data and introduces a user-friendly, flexible platform to support drug discovery and translational research.

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