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Envisioning an artificial intelligence documentation assistant for future primary care consultations: A co-design study with general practitioners
journal contribution
posted on 2023-02-15, 04:53 authored by A Baki Kocaballi, K Ijaz, L Laranjo, JC Quiroz, D Rezazadegan, HL Tong, S Willcock, S Berkovsky, E CoieraObjective: The study sought to understand the potential roles of a future artificial intelligence (AI) documentation assistant in primary care consultations and to identify implications for doctors, patients, healthcare system, and technology design from the perspective of general practitioners. Materials and Methods: Co-design workshops with general practitioners were conducted. The workshops focused on (1) understanding the current consultation context and identifying existing problems, (2) ideating future solutions to these problems, and (3) discussing future roles for AI in primary care. The workshop activities included affinity diagramming, brainwriting, and video prototyping methods. The workshops were audio-recorded and transcribed verbatim. Inductive thematic analysis of the transcripts of conversations was performed. Results: Two researchers facilitated 3 co-design workshops with 16 general practitioners. Three main themes emerged: professional autonomy, human-AI collaboration, and new models of care. Major implications identified within these themes included (1) concerns with medico-legal aspects arising from constant recording and accessibility of full consultation records, (2) future consultations taking place out of the exam rooms in a distributed system involving empowered patients, (3) human conversation and empathy remaining the core tasks of doctors in any future AI-enabled consultations, and (4) questioning the current focus of AI initiatives on improved efficiency as opposed to patient care. Conclusions: AI documentation assistants will likely to be integral to the future primary care consultations. However, these technologies will still need to be supervised by a human until strong evidence for reliable autonomous performance is available. Therefore, different human-AI collaboration models will need to be designed and evaluated to ensure patient safety, quality of care, doctor safety, and doctor autonomy.
History
Journal
Journal of the American Medical Informatics AssociationVolume
27Pagination
1695-1704Location
EnglandPublisher DOI
ISSN
1067-5027eISSN
1527-974XLanguage
EnglishPublication classification
C1.1 Refereed article in a scholarly journalIssue
11Publisher
OXFORD UNIV PRESSUsage metrics
Categories
No categories selectedKeywords
Science & TechnologyTechnologyLife Sciences & BiomedicineComputer Science, Information SystemsComputer Science, Interdisciplinary ApplicationsHealth Care Sciences & ServicesInformation Science & Library ScienceMedical InformaticsComputer Scienceprimary health caregeneral practitionersmedical informaticsartificial intelligencequalitative studyDOCTOR-PATIENT COMMUNICATIONHEALTHCLASSIFICATIONPERCEPTIONSTRIPLEAIMArtificial IntelligenceAttitude of Health PersonnelAttitude to ComputersDecision Making, Computer-AssistedDocumentationElectronic Health RecordsForecastingGeneral PractitionersHumansPrimary Health CareProfessional AutonomyReferral and ConsultationUser-Computer Interface8 Health and social care services research8.1 Organisation and delivery of servicesGeneric health relevanceInformation and Computing SciencesEngineeringMedical and Health Sciences