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The Impact of AI Scribes on Streamlining Clinical Documentation: A Systematic Review

6/16/2025 • Healthcare • License: CC BY 4.0
Maxime Sasseville (Faculté des Sciences Infirmières, Université Laval) ; Farzaneh Yousefi (Faculté des Sciences Infirmières, Université Laval) ; Steven Ouellet (Faculté des Sciences Infirmières, Université Laval) ; Florian Naye (Faculty of Health Sciences, Université de Sherbrooke) ; Théo Stefan (VITAM-Centre de Recherche en Santé Durable) ; Valérie Carnovale (VITAM-Centre de Recherche en Santé Durable) ; Frédéric Bergeron (Faculté des Sciences Infirmières, Université Laval) ; Linda Ling (Canada Health Infoway) ; Bobby Gheorghiu (Canada Health Infoway) ; Simon Hagens (Canada Health Infoway) ; Samuel Gareau-Lajoie (Clinique Médical le Carrefour, Groupe de Médecine de Famille) ; Annie LeBlanc (Faculté des Sciences Infirmières, Université Laval)

Abstract

Burnout among clinicians, including physicians, is a growing concern in healthcare. An overwhelming burden of clinical documentation is a significant contributor. While medical scribes have been employed to mitigate this burden, they have limitations such as cost, training needs, and high turnover rates. Artificial intelligence (AI) scribe systems can transcribe, summarize, and even interpret clinical conversations, offering a potential solution for improving clinician well-being. We aimed to evaluate the effectiveness of AI scribes in streamlining clinical documentation, with a focus on clinician experience, healthcare system efficiency, and patient engagement. Methods: We conducted a systematic review following Cochrane methods and PRISMA guidelines. Two reviewers conducted the selection process independently. Eligible intervention studies included quantitative and mixed-methods studies evaluating AI scribe systems. We summarized the data narratively. Results: Eight studies were included. AI scribes demonstrated positive effects on healthcare provider engagement, with users reporting increased involvement in their workflows. The documentation burden showed signs of improvement, as AI scribes helped alleviate the workload for some participants. Many clinicians have found AI systems to be user-friendly and intuitive, although some have expressed concerns about scribe training and documentation quality. A limited impact on reducing burnout was found, although documentation time improved in some studies. Conclusions: Most of the studies reported in this review involved small sample sizes and specific healthcare settings, limiting the generalizability of the findings to other contexts. Accuracy and consistency can vary significantly depending on the specific technology, model training data, and implementation approach. AI scribes show promise in improving documentation efficiency and clinician workflow, although the evidence remains limited and heterogeneous. Broader and real-world evaluations are needed to confirm their effectiveness and inform responsible implementations.

Clinical implications

This systematic review evaluated 8 studies on AI scribe systems for clinical documentation. AI scribes demonstrated positive effects on healthcare provider engagement and showed signs of reducing documentation burden. However, the impact on burnout was limited despite improvements in documentation time. Accuracy and consistency varied significantly by technology and implementation. Most studies had small sample sizes and specific settings, limiting generalizability. AI scribes show promise for improving documentation efficiency and clinician workflow, but broader real-world evaluations are needed for responsible implementation.

This product uses publicly available data from the U.S. National Library of Medicine (NLM), National Institutes of Health, Department of Health and Human Services; NLM is not responsible for the product and does not endorse or recommend this or any other product. Links to third-party publications are provided for research discovery.
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