Machine learning for antidepressant treatment selection in depression
Prehm I.M. Arnold, Joost Janzing, Arjen Hommersom
Abstract
Finding the right antidepressant for the individual patient with major depressive disorder can be a difficult endeavor and is mostly based on trial-and-error. Machine learning (ML) is a promising tool to personalize antidepressant prescription. In this review, we summarize the current evidence of ML in the selection of antidepressants and conclude that its value for clinical practice is still limited. Apart from the current focus on effectiveness, several other factors should be taken into account to make ML-based prediction models useful for clinical application.
Topics & Concepts
AntidepressantDepression (economics)Medical prescriptionSelection (genetic algorithm)Major depressive disorderMachine learningClinical trialMedicineArtificial intelligencePsychiatryPsychologyComputer scienceIntensive care medicinePharmacologyInternal medicineMacroeconomicsAnxietyEconomicsCognitionTreatment of Major DepressionFunctional Brain Connectivity StudiesMental Health Research Topics