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Cognitive task analysis of clinicians’ drug–drug interaction management during patient care and implications for alert design


Abstract Drug-drug interactions (DDIs) are common and can result in patient harm. Electronic health records warn clinicians about DDIs via alerts, but the clinical decision support they provide is inadequate. Little is known about clinicians' real-world DDI decision-making process to inform more effective alerts.Apply cognitive task analysis techniques to determine informational cues used by clinicians to manage DDIs and identify opportunities to improve alerts.Clinicians submitted incident forms involving DDIs, which were eligible for inclusion if there was potential for serious patient harm. For selected incidents, we met with the clinician for a 60 min interview. Each interview transcript was analysed to identify decision requirements and delineate clinicians' decision-making process. We then performed an inductive, qualitative analysis across incidents.Inpatient and outpatient care at a major, tertiary Veterans Affairs medical centre.Physicians, pharmacists and nurse practitioners.Themes to identify informational cues that clinicians used to manage DDIs.We conducted qualitative analyses of 20 incidents. Data informed a descriptive model of clinicians' decision-making process, consisting of four main steps: (1) detect a potential DDI; (2) DDI problem-solving, sensemaking and planning; (3) prescribing decision and (4) resolving actions. Within steps (1) and (2), we identified 19 information cues that clinicians used to manage DDIs for patients. These cues informed their subsequent decisions in steps (3) and (4). Our findings inform DDI alert recommendations to improve clinicians' decision-making efficiency, confidence and effectiveness.Our study provides three key contributions. Our study is the first to present an illustrative model of clinicians' real-world decision making for managing DDIs. Second, our findings add to scientific knowledge by identifying 19 cognitive cues that clinicians rely on for DDI management in clinical practice. Third, our results provide essential, foundational knowledge to inform more robust DDI clinical decision support in the future.
Authors Alissa L. Russ-Jara ORCID , Nervana Elkhadragy University of WyomingORCID , Karen J. Arthur , Julie Diiulio , Laura G. Militello ORCID , Amanda P. Ifeachor ORCID , Peter Glassman , Alan J. Zillich ORCID , Michael Weiner ORCID
Journal Info BMJ | BMJ Open , vol: 13 , iss: 12 , pages: e075512 - e075512
Publication Date 12/1/2023
ISSN 2044-6055
TypeKeyword Image article
Open Access gold Gold Access
DOI https://doi.org/10.1136/bmjopen-2023-075512
KeywordsKeyword Image Clinical Decision Support Systems (Score: 0.550298) , Clinical Reasoning (Score: 0.547068) , Medical Decision Making (Score: 0.531377) , Pharmacist Intervention (Score: 0.518114) , Uncertainty in Diagnosis (Score: 0.516406)