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Clinical artificial intelligence quality improvement: towards continual monitoring and updating of AI algorithms in healthcare

Jean Feng, Rachael V. Phillips, Ivana Malenica, Andrew Bishara, Alan Hubbard, Leo Anthony Celi, Romain Pirracchio

2022npj Digital Medicine367 citationsDOIOpen Access PDF

Abstract

Machine learning (ML) and artificial intelligence (AI) algorithms have the potential to derive insights from clinical data and improve patient outcomes. However, these highly complex systems are sensitive to changes in the environment and liable to performance decay. Even after their successful integration into clinical practice, ML/AI algorithms should be continuously monitored and updated to ensure their long-term safety and effectiveness. To bring AI into maturity in clinical care, we advocate for the creation of hospital units responsible for quality assurance and improvement of these algorithms, which we refer to as "AI-QI" units. We discuss how tools that have long been used in hospital quality assurance and quality improvement can be adapted to monitor static ML algorithms. On the other hand, procedures for continual model updating are still nascent. We highlight key considerations when choosing between existing methods and opportunities for methodological innovation.

Topics & Concepts

Quality assuranceComputer scienceArtificial intelligenceKey (lock)Quality managementHealth careMachine learningQuality (philosophy)Clinical PracticeAlgorithmEngineeringOperations managementMedicineEconomic growthEpistemologyPhilosophyExternal quality assessmentFamily medicineComputer securityEconomicsManagement systemMachine Learning in HealthcareArtificial Intelligence in Healthcare and EducationSepsis Diagnosis and Treatment
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