IF 1.4 4区 医学 Q3 SURGERY
Rebecca Friedman, Rebecca Lisk, Katherine Cordero-Bermudez, Soniya Singh, Sofia Ghani, Brian M Gillette, Scott A Gorenstein, Ernest S Chiu
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引用次数: 0

摘要

简介:伤口护理是整形外科的一门重要学科,尤其是随着慢性伤口(如压伤)发病率的不断上升。患者数据量的不断增加以及影响伤口治疗效果的众多变量,使得传统的人工查看伤口护理和研究病历的工作变得日益复杂和繁重。基于大型语言模型(LLM)的自然语言处理(NLP)软件(如 ChatGPT)的出现为数据提取过程的自动化提供了机会。本研究利用由我们医疗中心的安全、私有 Azure OpenAI 服务托管的 ChatGPT 的功能,自动提取和处理骶骨伤口就诊后患者病历中的变量。我们评估了 ChatGPT 通过提高数据检索准确性和效率彻底改变病历审查的潜力:我们评估了医疗中心内部 ChatGPT 在病历审查中的使用情况。我们将 ChatGPT 和 Python 脚本整合到现有的病历审核流程中,对来自两家医院队列的骶骨伤口患者进行伤口护理相关变量的提取和格式化。衡量标准包括审阅时间、提取信息的准确性以及对 ChatGPT 生成的见解的评估:结果:使用 ChatGPT,每次病历审查的平均时间从人工方法的 7.56 分钟减少到 1.03 分钟。此外,与人工审阅病历相比,ChatGPT 的总体准确率达到了 0.957,提取数据元素的准确率从 0.747 到 0.986 不等。ChatGPT 还能对患者伤口进行准确的叙述性综合描述:我们强调了 ChatGPT 在临床护理和伤口护理研究中提高病历审查速度和准确性的潜力,为将人工智能整合到医疗保健工作流程中提供了有价值的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Chart Review Efficiency in Pressure Injury Evaluation Using ChatGPT.

Introduction: Wound care is an essential discipline in plastic surgery, especially as the prevalence of chronic wounds, such as pressure injuries, is increasing. The escalating volume of patient data and the numerous variables influencing wound outcomes are making traditional manual chart reviews in wound care and research increasingly complex and burdensome. The emergence of Natural Language Processing (NLP) software based on large language models (LLMs) such as ChatGPT presents an opportunity to automate the data extraction process. This study harnesses the capabilities of ChatGPT, hosted by our medical center's secure, private Azure OpenAI service, to automatically extract and process variables from patient charts following sacral wound visits. We assess ChatGPT's potential to revolutionize chart review through improved data retrieval accuracy and efficiency.

Methods: We evaluated the use of the medical center's internal ChatGPT in chart review. ChatGPT and a Python script were integrated into the existing chart review process for patients with sacral wounds from 2 hospital cohorts to extract and format variables related to wound care. Metrics include time taken for review, accuracy of extracted information, and assessment of ChatGPT-generated insights.

Results: ChatGPT reduced the average time per chart review from 7.56 minutes with the manual method to 1.03 minutes using ChatGPT. Furthermore, it achieved a 0.957 overall accuracy rate compared to manual chart review, ranging from 0.747 to 0.986 across extracted data elements. ChatGPT was also able to synthesize accurate narrative descriptions of patient wounds.

Conclusions: We highlight ChatGPT's potential to enhance speed and precision of chart review in the context of both clinical care and wound care research, offering valuable implications for integration of artificial intelligence in healthcare workflows.

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来源期刊
CiteScore
2.70
自引率
13.30%
发文量
584
审稿时长
6 months
期刊介绍: The only independent journal devoted to general plastic and reconstructive surgery, Annals of Plastic Surgery serves as a forum for current scientific and clinical advances in the field and a sounding board for ideas and perspectives on its future. The journal publishes peer-reviewed original articles, brief communications, case reports, and notes in all areas of interest to the practicing plastic surgeon. There are also historical and current reviews, descriptions of surgical technique, and lively editorials and letters to the editor.
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