Artificial Intelligence Scribe and Large Language Model Technology in Healthcare Documentation: Advantages, Limitations, and Recommendations.

IF 1.5 Q3 SURGERY
Plastic and Reconstructive Surgery Global Open Pub Date : 2025-01-16 eCollection Date: 2025-01-01 DOI:10.1097/GOX.0000000000006450
Sarah A Mess, Alison J Mackey, David E Yarowsky
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引用次数: 0

Abstract

Artificial intelligence (AI) scribe applications in the healthcare community are in the early adoption phase and offer unprecedented efficiency for medical documentation. They typically use an application programming interface with a large language model (LLM), for example, generative pretrained transformer 4. They use automatic speech recognition on the physician-patient interaction, generating a full medical note for the encounter, together with a draft follow-up e-mail for the patient and, often, recommendations, all within seconds or minutes. This provides physicians with increased cognitive freedom during medical encounters due to less time needed interfacing with electronic medical records. However, careful proofreading of the AI-generated language by the physician signing the note is essential. Insidious and potentially significant errors of omission, fabrication, or substitution may occur. The neural network algorithms of LLMs have unpredictable sensitivity to user input and inherent variability in their output. LLMs are unconstrained by established medical knowledge or rules. As they gain increasing levels of access to large corpora of medical records, the explosion of discovered knowledge comes with large potential risks, including to patient privacy, and potential bias in algorithms. Medical AI developers should use robust regulatory oversights, adhere to ethical guidelines, correct bias in algorithms, and improve detection and correction of deviations from the intended output.

医疗保健文档中的人工智能抄写员和大型语言模型技术:优势、局限性和建议。
医疗保健领域的人工智能(AI)抄写应用程序处于早期采用阶段,为医疗文档提供了前所未有的效率。它们通常使用带有大型语言模型(LLM)的应用程序编程接口,例如,生成预训练转换器4。他们在医患互动中使用自动语音识别,在几秒钟或几分钟内生成一份完整的医疗记录,连同患者的后续电子邮件草稿,以及通常的建议。这为医生在就医时提供了更多的认知自由,因为与电子医疗记录交互所需的时间更少。然而,医生对人工智能生成的语言进行仔细校对是至关重要的。遗漏、捏造或替代等潜在的重大错误可能会发生。llm的神经网络算法对用户输入具有不可预测的敏感性,其输出具有固有的可变性。法学硕士不受既定医学知识或规则的约束。随着他们越来越多地访问大型医疗记录语料库,发现知识的爆炸式增长带来了巨大的潜在风险,包括患者隐私和算法中的潜在偏见。医疗人工智能开发人员应该使用强有力的监管监督,遵守道德准则,纠正算法中的偏见,并改进对偏离预期输出的检测和纠正。
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来源期刊
CiteScore
2.20
自引率
13.30%
发文量
1584
审稿时长
10 weeks
期刊介绍: Plastic and Reconstructive Surgery—Global Open is an open access, peer reviewed, international journal focusing on global plastic and reconstructive surgery.Plastic and Reconstructive Surgery—Global Open publishes on all areas of plastic and reconstructive surgery, including basic science/experimental studies pertinent to the field and also clinical articles on such topics as: breast reconstruction, head and neck surgery, pediatric and craniofacial surgery, hand and microsurgery, wound healing, and cosmetic and aesthetic surgery. Clinical studies, experimental articles, ideas and innovations, and techniques and case reports are all welcome article types. Manuscript submission is open to all surgeons, researchers, and other health care providers world-wide who wish to communicate their research results on topics related to plastic and reconstructive surgery. Furthermore, Plastic and Reconstructive Surgery—Global Open, a complimentary journal to Plastic and Reconstructive Surgery, provides an open access venue for the publication of those research studies sponsored by private and public funding agencies that require open access publication of study results. Its mission is to disseminate high quality, peer reviewed research in plastic and reconstructive surgery to the widest possible global audience, through an open access platform. As an open access journal, Plastic and Reconstructive Surgery—Global Open offers its content for free to any viewer. Authors of articles retain their copyright to the materials published. Additionally, Plastic and Reconstructive Surgery—Global Open provides rapid review and publication of accepted papers.
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