Litcius/Paper detail

Anticancer drug synergy prediction in understudied tissues using transfer learning

Yejin Kim, Shuyu Zheng, Jing Tang, Wenjin Zheng, Zhao Li, Xiaoqian Jiang

2020Journal of the American Medical Informatics Association96 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: Drug combination screening has advantages in identifying cancer treatment options with higher efficacy without degradation in terms of safety. A key challenge is that the accumulated number of observations in in-vitro drug responses varies greatly among different cancer types, where some tissues are more understudied than the others. Thus, we aim to develop a drug synergy prediction model for understudied tissues as a way of overcoming data scarcity problems. MATERIALS AND METHODS: We collected a comprehensive set of genetic, molecular, phenotypic features for cancer cell lines. We developed a drug synergy prediction model based on multitask deep neural networks to integrate multimodal input and multiple output. We also utilized transfer learning from data-rich tissues to data-poor tissues. RESULTS: We showed improved accuracy in predicting synergy in both data-rich tissues and understudied tissues. In data-rich tissue, the prediction model accuracy was 0.9577 AUROC for binarized classification task and 174.3 mean squared error for regression task. We observed that an adequate transfer learning strategy significantly increases accuracy in the understudied tissues. CONCLUSIONS: Our synergy prediction model can be used to rank synergistic drug combinations in understudied tissues and thus help to prioritize future in-vitro experiments. Code is available at https://github.com/yejinjkim/synergy-transfer.

Topics & Concepts

Transfer of learningComputer scienceMachine learningArtificial intelligenceDeep learningTask (project management)Multi-task learningDrugCode (set theory)Artificial neural networkRegressionSet (abstract data type)MedicinePharmacologyManagementPsychologyProgramming languageEconomicsPsychoanalysisComputational Drug Discovery MethodsMachine Learning in BioinformaticsCell Image Analysis Techniques