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Q-Rank: Reinforcement Learning for Recommending Algorithms to Predict Drug Sensitivity to Cancer Therapy

Salma Daoud, Afef Mdhaffar, Mohamed Jmaïel, Bernd Freisleben

2020IEEE Journal of Biomedical and Health Informatics29 citationsDOI

Abstract

In personalized medicine, a challenging task is to identify the most effective treatment for a patient. In oncology, several computational models have been developed to predict the response of drugs to therapy. However, the performance of these models depends on multiple factors. This paper presents a new approach, called Q-Rank, to predict the sensitivity of cell lines to anti-cancer drugs. Q-Rank integrates different prediction algorithms and identifies a suitable algorithm for a given application. Q-Rank is based on reinforcement learning methods to rank prediction algorithms on the basis of relevant features (e.g., omics characterization). The best-ranked algorithm is recommended and used to predict the response of drugs to therapy. Our experimental results indicate that Q-Rank outperforms the integrated models in predicting the sensitivity of cell lines to different drugs.

Topics & Concepts

Rank (graph theory)Reinforcement learningMachine learningComputer scienceSensitivity (control systems)Learning to rankArtificial intelligencePersonalized medicineTask (project management)Cancer therapyAlgorithmCancerBioinformaticsRanking (information retrieval)MathematicsMedicineInternal medicineBiologyElectronic engineeringEconomicsManagementEngineeringCombinatoricsComputational Drug Discovery MethodsBioinformatics and Genomic NetworksReceptor Mechanisms and Signaling
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