Litcius/Paper detail

Machine learning approaches for drug combination therapies

Betül Güvenç Paltun, Samuel Kaski, Hiroshi Mamitsuka

2021Briefings in Bioinformatics107 citationsDOIOpen Access PDF

Abstract

Drug combination therapy is a promising strategy to treat complex diseases such as cancer and infectious diseases. However, current knowledge of drug combination therapies, especially in cancer patients, is limited because of adverse drug effects, toxicity and cell line heterogeneity. Screening new drug combinations requires substantial efforts since considering all possible combinations between drugs is infeasible and expensive. Therefore, building computational approaches, particularly machine learning methods, could provide an effective strategy to overcome drug resistance and improve therapeutic efficacy. In this review, we group the state-of-the-art machine learning approaches to analyze personalized drug combination therapies into three categories and discuss each method in each category. We also present a short description of relevant databases used as a benchmark in drug combination therapies and provide a list of well-known, publicly available interactive data analysis portals. We highlight the importance of data integration on the identification of drug combinations. Finally, we address the advantages of combining multiple data sources on drug combination analysis by showing an experimental comparison.

Topics & Concepts

DrugComputer scienceDrug repositioningMachine learningBenchmark (surveying)Combination therapyArtificial intelligenceRisk analysis (engineering)MedicinePharmacologyGeodesyGeographyComputational Drug Discovery Methodsvaccines and immunoinformatics approachesMicrobial Natural Products and Biosynthesis