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A Clinician's Guide to Artificial Intelligence: How to Critically Appraise Machine Learning Studies

Livia Faes, Xiaoxuan Liu, Siegfried K. Wagner, Dun Jack Fu, Konstantinos Balaskas, Dawn A. Sim, Lucas M. Bachmann, Pearse A. Keane, Alastair K. Denniston

2020Translational Vision Science & Technology159 citationsDOIOpen Access PDF

Abstract

In recent years, there has been considerable interest in the prospect of machine learning models demonstrating expert-level diagnosis in multiple disease contexts. However, there is concern that the excitement around this field may be associated with inadequate scrutiny of methodology and insufficient adoption of scientific good practice in the studies involving artificial intelligence in health care. This article aims to empower clinicians and researchers to critically appraise studies of clinical applications of machine learning, through: (1) introducing basic machine learning concepts and nomenclature; (2) outlining key applicable principles of evidence-based medicine; and (3) highlighting some of the potential pitfalls in the design and reporting of these studies.

Topics & Concepts

ScrutinyArtificial intelligenceComputer scienceField (mathematics)Management scienceCritically illMachine learningEngineering ethicsData scienceMedicineIntensive care medicineEngineeringLawMathematicsPure mathematicsPolitical scienceArtificial Intelligence in Healthcare and EducationMachine Learning in HealthcareClinical Reasoning and Diagnostic Skills
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