AI Scribes in Health Care: Balancing Transformative Potential With Responsible Integration.

dc.contributor.author

Leung, Tiffany I

dc.contributor.author

Coristine, Andrew J

dc.contributor.author

Benis, Arriel

dc.date.accessioned

2025-08-09T02:47:12Z

dc.date.available

2025-08-09T02:47:12Z

dc.date.issued

2025-08-01

dc.description.abstract

The administrative burden of clinical documentation contributes to health care practitioner burnout and diverts valuable time away from direct patient care. Ambient artificial intelligence (AI) scribes-also called "digital scribes" or "AI scribes"-are emerging as a promising solution, given their potential to automate clinical note generation and reduce clinician workload, and those specifically built on a large language model (LLM) are emerging as technologies for facilitating real-time clinical documentation tasks. This potentially transformative development has a foundation on longer-standing, AI-based transcription software, which uses automated speech recognition and/or natural language processing. Recent studies have highlighted the potential impact of ambient AI scribes on clinician well-being, workflow efficiency, documentation quality, user experience, and patient interaction. So far, limited evidence indicates that ambient AI scribes are associated with reduced clinician burnout, lower cognitive task load, and significant time savings in documentation, particularly in after-hours electronic health record (EHR) work. One consistently reported benefit is the improvement in the patient-physician interaction, as physicians feel more present during a clinical encounter. However, these benefits are counterbalanced by persisting concerns regarding the accuracy, consistency, language use, and style of AI-generated notes. Studies noting errors, omissions, or hallucinations caution that diligent clinician oversight is necessary. The user experience is also heterogeneous, with benefits varying by specialty and individual workflow. Further, there are concerns about ethical and legal issues, algorithmic bias, the potential for long-term "cognitive debt" from overreliance on AI, and even the potential loss of physician autonomy. Additional pragmatic concerns include security, privacy, integration, interoperability, user acceptance and training, and the cost-effectiveness of adoption at scale. Finally, limited studies describe adoption or evaluation of these technologies by nonphysician clinicians and health professionals. Although ambient AI scribes and AI-driven documentation technologies are promising as potentially practice-changing tools, there are many questions remaining. Key issues persist, including responsible deployment with the goal of ensuring that ambient AI scribes produce clinical documentation that supports more efficient, equitable, and patient-centered care. To advance our collective understanding and address key issues, JMIR Medical Informatics is launching a call for papers for a new section on "Ambient AI Scribes and AI-Driven Documentation Technologies." As editors, we look forward to the opportunity to advance the science and understanding of these fields through publishing high-quality and rigorous scholarly work in this new section of JMIR Medical Informatics.

dc.identifier

v13i1e80898

dc.identifier.issn

2291-9694

dc.identifier.uri

https://hdl.handle.net/10161/33093

dc.language

eng

dc.publisher

JMIR Publications Inc.

dc.relation.ispartof

JMIR Med Inform

dc.relation.isversionof

10.2196/80898

dc.rights.uri

https://creativecommons.org/licenses/by-nc/4.0

dc.subject

AI assistant

dc.subject

AI scribe

dc.subject

administrative burden

dc.subject

ambient AI scribe

dc.subject

ambient listening technology

dc.subject

artificial intelligence

dc.subject

clinical documentation

dc.subject

digital scribe

dc.subject

documentation assistant

dc.subject

electronic health records

dc.subject

virtual scribe

dc.subject

Humans

dc.subject

Artificial Intelligence

dc.subject

Documentation

dc.subject

Electronic Health Records

dc.subject

Natural Language Processing

dc.title

AI Scribes in Health Care: Balancing Transformative Potential With Responsible Integration.

dc.type

Journal article

duke.contributor.orcid

Benis, Arriel|0000-0002-9125-8300

pubs.begin-page

e80898

pubs.organisational-group

Duke

pubs.organisational-group

Pratt School of Engineering

pubs.organisational-group

Biomedical Engineering

pubs.publication-status

Published online

pubs.volume

13

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
medinform-2025-1-e80898.pdf
Size:
246.31 KB
Format:
Adobe Portable Document Format