[MANAGEMENT OF LABOR ANESTHESIA IN A PATIENT WITH EHLERS-DANLOS SYNDROME WHY DOES CHATGPT ERR IN SOURCE REFERENCING?]

Harefuah Pub Date : 2025-02-01
Daphna Idan, Rotem Sisso-Avron, Or Degany
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Abstract

Introduction: Ehlers-Danlos Syndrome (EDS) encompasses a spectrum of inherited disorders, characterized by joint hypermobility, skin hyperextensibility, and other features. In some patients, EDS involves the vascular walls, posing a significant clinical challenge due to the resultant propensity for rupture with hemorrhagic complications. Such complications, among others that often occur with EDS, may carry particular importance in the context of pregnancy and labor. This paper presents a patient diagnosed with Ehlers-Danlos Syndrome during her first pregnancy. The patient was planned for elective Cesarean delivery and expressed an interest in regional anesthesia. A literature review was conducted to identify similar cases in which the anesthesia techniques and their potential complications were described, as well as additional risks for EDS patients associated with various anesthesia methods. The review identified only low-quality data, which suggested a higher pain threshold in patients with EDS and an increased risk of bleeding. This case was used to assess the ability of ChatGPT to present a literature review based on reliable sources when the evidence is sparse. The model generated a well-worded response using correct medical terminology, but the report was superficial and provided no data to support clinical decision-making. The model also suggested a different anesthetic approach than the human-generated literature review and supported its findings with links to cited sources. These sources were examined, and concerns regarding their reliability were raised. Lack of reliability remains a major challenge for developers and users of large language models. Fine-tuning (i.e. training the model with examples relevant to specific tasks) which may enhance model output accuracy is discussed in this context.

1例埃勒-丹洛斯综合征患者的分娩麻醉处理:为什么资料参考中出现错误?]
简介:ehers - danlos综合征(EDS)包括一系列遗传性疾病,以关节过度活动、皮肤过度伸展和其他特征为特征。在一些患者中,EDS累及血管壁,由于导致出血并发症的破裂倾向,对临床构成重大挑战。这些并发症,以及其他常见于EDS的并发症,在妊娠和分娩时可能具有特别重要的意义。这篇论文提出了一个病人诊断为埃勒斯-丹洛斯综合征在她的第一次怀孕。患者计划择期剖宫产,并表示对区域麻醉感兴趣。我们进行了一项文献综述,以确定类似的病例,其中描述了麻醉技术及其潜在的并发症,以及与各种麻醉方法相关的EDS患者的额外风险。该综述只发现了低质量的数据,这些数据表明EDS患者的疼痛阈值更高,出血风险增加。本案例用于评估ChatGPT在证据稀少时基于可靠来源进行文献综述的能力。该模型使用正确的医学术语产生了措辞良好的回应,但报告是肤浅的,没有提供数据来支持临床决策。该模型还提出了一种不同于人类产生的文献综述的麻醉方法,并通过引用来源的链接来支持其发现。对这些来源进行了审查,并对其可靠性提出了关切。缺乏可靠性仍然是大型语言模型的开发人员和用户面临的主要挑战。本文讨论了可以提高模型输出精度的微调(即使用与特定任务相关的示例训练模型)。
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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