4.6 Review

Potentiality of algorithms and artificial intelligence adoption to improve medication management in primary care: a systematic review

Journal

BMJ OPEN
Volume 13, Issue 3, Pages -

Publisher

BMJ PUBLISHING GROUP
DOI: 10.1136/bmjopen-2022-065301

Keywords

PRIMARY CARE; Risk management; PUBLIC HEALTH; FORENSIC MEDICINE

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The study aimed to examine the impact of artificial intelligence (AI) and/or algorithms on drug management in primary care settings, comparing them with standard clinical practice. The most frequently reported type of medication error and the most commonly used AI machine type were also evaluated. A systematic review of literature was conducted, and the results showed that AI is an important tool for reducing medication errors and enhancing patient safety in primary care. This study highlights the potential of AI in supporting physicians with drug management in non-hospital environments.
Objectives The aim of this study is to investigate the effect of artificial intelligence (AI) and/or algorithms on drug management in primary care settings comparing AI and/or algorithms with standard clinical practice. Second, we evaluated what is the most frequently reported type of medication error and the most used AI machine type. Methods A systematic review of literature was conducted querying PubMed, Cochrane and ISI Web of Science until November 2021. The search strategy and the study selection were conducted according to the Preferred Reporting Items for Systematic Reviews and Meta-Analyses and the Population, Intervention, Comparator, Outcome framework. Specifically, the Population chosen was general population of all ages (ie, including paediatric patients) in primary care settings (ie, home setting, ambulatory and nursery homes); the Intervention considered was the analysis AI and/or algorithms (ie, intelligent programs or software) application in primary care for reducing medications errors, the Comparator was the general practice and, lastly, the Outcome was the reduction of preventable medication errors (eg, overprescribing, inappropriate medication, drug interaction, risk of injury, dosing errors or in an increase in adherence to therapy). The methodological quality of included studies was appraised adopting the Quality Assessment of Controlled Intervention Studies of the National Institute of Health for randomised controlled trials. Results Studies reported in different ways the effective reduction of medication error. Ten out of 14 included studies, corresponding to 71% of articles, reported a reduction of medication errors, supporting the hypothesis that AI is an important tool for patient safety. Conclusion This study highlights how a proper application of AI in primary care is possible, since it provides an important tool to support the physician with drug management in non-hospital environments.

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