Enhancing patient understanding in obstetrics: The role of generative AI in simplifying informed consent for labor induction with oxytocin.

IF 1.7 4区 医学 Q3 OBSTETRICS & GYNECOLOGY Journal of Perinatal Medicine Pub Date : 2024-10-30 DOI:10.1515/jpm-2024-0428
Amos Grünebaum, Joachim Dudenhausen, Frank A Chervenak
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Abstract

Informed consent is a cornerstone of ethical medical practice, particularly in obstetrics where procedures like labor induction carry significant risks and require clear patient understanding. Despite legal mandates for patient materials to be accessible, many consent forms remain too complex, resulting in patient confusion and dissatisfaction. This study explores the use of Generative Artificial Intelligence (GAI) to simplify informed consent for labor induction with oxytocin, ensuring content is both medically accurate and comprehensible at an 8th-grade readability level. GAI-generated consent forms streamline the process, automatically tailoring content to meet readability standards while retaining essential details such as the procedure's nature, risks, benefits, and alternatives. Through iterative prompts and expert refinement, the AI produces clear, patient-friendly language that bridges the gap between medical jargon and patient comprehension. Flesch Reading Ease scores show improved readability, meeting recommended levels for health literacy. GAI has the potential to revolutionize healthcare communication by enhancing patient understanding, promoting shared decision-making, and improving satisfaction with the consent process. However, human oversight remains critical to ensure that AI-generated content adheres to legal and ethical standards. This case study demonstrates that GAI can be an effective tool in creating accessible, standardized, yet personalized consent documents, contributing to better-informed patients and potentially reducing malpractice claims.

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加强产科患者的理解:生成式人工智能在简化催产素引产知情同意书中的作用。
知情同意是医疗实践道德的基石,尤其是在产科,引产等手术具有重大风险,需要患者明确理解。尽管法律规定患者材料必须易于获取,但许多同意书仍然过于复杂,导致患者困惑和不满。本研究探讨了使用生成人工智能(GAI)来简化催产素引产的知情同意书,确保内容既符合医学要求,又能以八年级的可读性水平来理解。GAI 生成的同意书可简化流程,自动调整内容以符合可读性标准,同时保留手术性质、风险、益处和替代方案等重要细节。通过反复提示和专家改进,人工智能生成了清晰、患者友好的语言,缩小了医学术语与患者理解之间的差距。Flesch Reading Ease 分数显示可读性有所提高,达到了建议的健康素养水平。GAI 有可能通过加强患者理解、促进共同决策和提高对同意过程的满意度,彻底改变医疗保健沟通方式。然而,人为监督对于确保人工智能生成的内容符合法律和道德标准仍然至关重要。本案例研究表明,GAI 可以成为一种有效的工具,用于创建可访问的、标准化的、个性化的同意文件,从而帮助患者更好地了解情况,并有可能减少渎职索赔。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Perinatal Medicine
Journal of Perinatal Medicine 医学-妇产科学
CiteScore
4.40
自引率
8.30%
发文量
183
审稿时长
4-8 weeks
期刊介绍: The Journal of Perinatal Medicine (JPM) is a truly international forum covering the entire field of perinatal medicine. It is an essential news source for all those obstetricians, neonatologists, perinatologists and allied health professionals who wish to keep abreast of progress in perinatal and related research. Ahead-of-print publishing ensures fastest possible knowledge transfer. The Journal provides statements on themes of topical interest as well as information and different views on controversial topics. It also informs about the academic, organisational and political aims and objectives of the World Association of Perinatal Medicine.
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