Litcius/Paper detail

Achieving large-scale clinician adoption of AI-enabled decision support

Ian Scott, Anton van der Vegt, Paul Lane, Steven McPhail, Farah Magrabi

2024BMJ Health & Care Informatics49 citationsDOIOpen Access PDF

Abstract

Computerised decision support (CDS) tools enabled by artificial intelligence (AI) seek to enhance accuracy and efficiency of clinician decision-making at the point of care. Statistical models developed using machine learning (ML) underpin most current tools. However, despite thousands of models and hundreds of regulator-approved tools internationally, large-scale uptake into routine clinical practice has proved elusive. While underdeveloped system readiness and investment in AI/ML within Australia and perhaps other countries are impediments, clinician ambivalence towards adopting these tools at scale could be a major inhibitor. We propose a set of principles and several strategic enablers for obtaining broad clinician acceptance of AI/ML-enabled CDS tools.

Topics & Concepts

Scale (ratio)Decision support systemAmbivalenceKnowledge managementInvestment (military)Clinical decision support systemArtificial intelligenceComputer scienceSet (abstract data type)Management scienceData scienceProcess managementEngineeringPsychologyPolitical scienceSocial psychologyLawProgramming languagePoliticsPhysicsQuantum mechanicsArtificial Intelligence in Healthcare and EducationAI in cancer detectionRadiomics and Machine Learning in Medical Imaging
Achieving large-scale clinician adoption of AI-enabled decision support | Litcius