人工智能驱动的妇科肿瘤手术报告简化:一种潜在的患者教育工具。

IF 3.5 2区 医学 Q1 OBSTETRICS & GYNECOLOGY
Maximilian Riedel, Bastian Meyer, Raphael Kfuri Rubens, Caroline Riedel, Niklas Amann, Marion Kiechle, Fabian Riedel
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引用次数: 0

摘要

大型语言模型的出现预示着自然语言处理的新篇章,在改善医疗保健,特别是医学肿瘤学方面具有巨大的潜力。一个最近公开的例子是生成预训练转换器4 (GPT-4)。我们的目的是评估其将原始手术报告改写为简化版本的能力,使患者更容易理解。具体来说,我们的目的是调查和讨论使用这些简化报告作为妇科肿瘤患者教育和信息的潜力、局限性和相关风险。材料和方法:我们要求GPT-4从n = 20份原始妇科手术报告中生成简化版本。给患者提供原始报告和GPT-4生成的相应简化版本。除了这些报告外,患者还收到了旨在促进原始和简化手术报告之间比较评估的问卷。此外,临床专家对人工智能(AI)生成的报告的准确性和临床质量进行了评估。结果:GPT-4生成的简化手术报告显著提高了患者的理解,特别是对手术过程、结果和潜在风险的理解。然而,尽管这些报告更易于获取和相关,但临床专家强调了对其缺乏医疗准确性的担忧。结论:GPT-4等先进的语言模型可以转换未经编辑的手术报告,提高手术过程和结果的清晰度。它为加强患者教育提供了相当大的希望。然而,对医疗精度的担忧强调了将人工智能安全地整合到患者教育中的严格监督的必要性。从中期来看,人工智能生成的这些报告和其他医疗记录的简化版本可以毫不费力地集成到标准的自动化术后护理和数字出院系统中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-driven simplification of surgical reports in gynecologic oncology: A potential tool for patient education.

Introduction: The emergence of large language models heralds a new chapter in natural language processing, with immense potential for improving medical care and especially medical oncology. One recent and publicly available example is Generative Pretraining Transformer 4 (GPT-4). Our objective was to evaluate its ability to rephrase original surgical reports into simplified versions that are more comprehensible to patients. Specifically, we aimed to investigate and discuss the potential, limitations, and associated risks of using these simplified reports for patient education and information in gynecologic oncology.

Material and methods: We tasked GPT-4 with generating simplified versions from n = 20 original gynecologic surgical reports. Patients were provided with both their original report and the corresponding simplified version generated by GPT-4. Alongside these reports, patients received questionnaires designed to facilitate a comparative assessment between the original and simplified surgical reports. Furthermore, clinical experts evaluated the artificial intelligence (AI)-generated reports with regard to their accuracy and clinical quality.

Results: The simplified surgical reports generated by GPT-4 significantly improved our patients' understanding, particularly with regard to the surgical procedure, its outcome, and potential risks. However, despite the reports being more accessible and relevant, clinical experts highlighted concerns about their lack of medical precision.

Conclusions: Advanced language models like GPT-4 can transform unedited surgical reports to improve clarity about the procedure and its outcomes. It offers considerable promise for enhancing patient education. However, concerns about medical precision underscore the need for rigorous oversight to safely integrate AI into patient education. Over the medium term, AI-generated, simplified versions of these reports-and other medical records-could be effortlessly integrated into standard automated postoperative care and digital discharge systems.

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来源期刊
CiteScore
8.00
自引率
4.70%
发文量
180
审稿时长
3-6 weeks
期刊介绍: Published monthly, Acta Obstetricia et Gynecologica Scandinavica is an international journal dedicated to providing the very latest information on the results of both clinical, basic and translational research work related to all aspects of women’s health from around the globe. The journal regularly publishes commentaries, reviews, and original articles on a wide variety of topics including: gynecology, pregnancy, birth, female urology, gynecologic oncology, fertility and reproductive biology.
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