Litcius/Paper detail

Integrating artificial intelligence into an ophthalmologist’s workflow: obstacles and opportunities

Priyal Taribagil, Henry David Jeffry Hogg, Konstantinos Balaskas, Pearse A. Keane

2023Expert Review of Ophthalmology26 citationsDOIOpen Access PDF

Abstract

Introduction Demand in clinical services within the field of ophthalmology is predicted to rise over the future years. Artificial intelligence, in particular, machine learning-based systems, have demonstrated significant potential in optimizing medical diagnostics, predictive analysis, and management of clinical conditions. Ophthalmology has been at the forefront of this digital revolution, setting precedents for integration of these systems into clinical workflows.Areas covered This review discusses integration of machine learning tools within ophthalmology clinical practices. We discuss key issues around ethical consideration, regulation, and clinical governance. We also highlight challenges associated with clinical adoption, sustainability, and discuss the importance of interoperability.Expert opinion Clinical integration is considered one of the most challenging stages within the implementation process. Successful integration necessitates a collaborative approach from multiple stakeholders around a structured governance framework, with emphasis on standardization across healthcare providers and equipment and software developers.

Topics & Concepts

WorkflowInteroperabilityStandardizationMedicineProcess (computing)Clinical governanceSoftware deploymentHealth careKnowledge managementProcess managementEngineeringComputer scienceSoftware engineeringEconomic growthEconomicsDatabaseOperating systemArtificial Intelligence in Healthcare and EducationRetinal Imaging and AnalysisRetinal and Optic Conditions