From cell lines to cancer patients: personalized drug synergy prediction

药品 个性化医疗 抗癌药物 癌细胞系 计算生物学 癌症 计算机科学 药物反应 医学 生物信息学 药理学 内科学 生物 癌细胞
作者
Halil İbrahim Kuru,A. Ercüment Çiçek,Öznur Taştan
出处
期刊:Bioinformatics [Oxford University Press]
卷期号:40 (5) 被引量:3
标识
DOI:10.1093/bioinformatics/btae134
摘要

Abstract Motivation Combination drug therapies are effective treatments for cancer. However, the genetic heterogeneity of the patients and exponentially large space of drug pairings pose significant challenges for finding the right combination for a specific patient. Current in silico prediction methods can be instrumental in reducing the vast number of candidate drug combinations. However, existing powerful methods are trained with cancer cell line gene expression data, which limits their applicability in clinical settings. While synergy measurements on cell line models are available at large scale, patient-derived samples are too few to train a complex model. On the other hand, patient-specific single-drug response data are relatively more available. Results In this work, we propose a deep learning framework, Personalized Deep Synergy Predictor (PDSP), that enables us to use the patient-specific single drug response data for customizing patient drug synergy predictions. PDSP is first trained to learn synergy scores of drug pairs and their single drug responses for a given cell line using drug structures and large scale cell line gene expression data. Then, the model is fine-tuned for patients with their patient gene expression data and associated single drug response measured on the patient ex vivo samples. In this study, we evaluate PDSP on data from three leukemia patients and observe that it improves the prediction accuracy by 27% compared to models trained on cancer cell line data. Availability and implementation PDSP is available at https://github.com/hikuru/PDSP.
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