Litcius/Paper detail

Machine Learning: An Overview and Applications in Pharmacogenetics

Giovanna Cilluffo, Salvatore Fasola, Giuliana Ferrante, Velia Malizia, Laura Montalbano, Stefania La Grutta

2021Genes31 citationsDOIOpen Access PDF

Abstract

This narrative review aims to provide an overview of the main Machine Learning (ML) techniques and their applications in pharmacogenetics (such as antidepressant, anti-cancer and warfarin drugs) over the past 10 years. ML deals with the study, the design and the development of algorithms that give computers capability to learn without being explicitly programmed. ML is a sub-field of artificial intelligence, and to date, it has demonstrated satisfactory performance on a wide range of tasks in biomedicine. According to the final goal, ML can be defined as Supervised (SML) or as Unsupervised (UML). SML techniques are applied when prediction is the focus of the research. On the other hand, UML techniques are used when the outcome is not known, and the goal of the research is unveiling the underlying structure of the data. The increasing use of sophisticated ML algorithms will likely be instrumental in improving knowledge in pharmacogenetics.

Topics & Concepts

Computer scienceBiomedicinePharmacogeneticsArtificial intelligenceMachine learningField (mathematics)Focus (optics)Data scienceBioinformaticsBiologyBiochemistryGenePhysicsOpticsGenotypeMathematicsPure mathematicsComputational Drug Discovery MethodsMetabolomics and Mass Spectrometry StudiesPharmacogenetics and Drug Metabolism