ChatGPT-4

ChatGPT - 4
  • 文章类型: Journal Article
    背景:随着人工智能(AI)在医疗保健中的日益融合,像ChatGPT-4这样的人工智能聊天机器人正被用来提供健康信息。
    目的:本研究旨在评估ChatGPT-4在回答与腹部成形术相关的常见问题方面的能力,评估其作为患者教育和术前咨询辅助工具的潜力。
    方法:对ChatGPT-4提交了关于腹部成形术的各种常见问题。这些问题来自美国整形外科学会提供的问题列表,以确保它们的相关性和全面性。一位经验丰富的整形外科医生仔细评估了ChatGPT-4在信息深度方面产生的反应,反应衔接,和能力,以确定人工智能在提供以患者为中心的信息方面的熟练程度。
    结果:研究表明ChatGPT-4可以给出明确的答案,使其对回答常见的查询有用。然而,它挣扎着个性化的建议,有时提供不正确或过时的参考。总的来说,ChatGPT-4可以有效地共享腹部成形术信息,这可以帮助患者更好地理解手术。尽管有这些积极的发现,人工智能需要更多的改进,特别是在提供个性化和准确的信息方面,充分满足整形外科患者的教育需求。
    结论:尽管ChatGPT-4有望成为患者教育的资源,持续的改进和严格的检查对于将其有利地融入医疗保健环境至关重要。研究强调需要进一步研究,特别侧重于提高人工智能响应的个性化和准确性。
    方法:本期刊要求作者为每篇文章分配一定程度的证据。对于这些循证医学评级的完整描述,请参阅目录或在线作者说明www。springer.com/00266.
    BACKGROUND: With the increasing integration of artificial intelligence (AI) in health care, AI chatbots like ChatGPT-4 are being used to deliver health information.
    OBJECTIVE: This study aimed to assess the capability of ChatGPT-4 in answering common questions related to abdominoplasty, evaluating its potential as an adjunctive tool in patient education and preoperative consultation.
    METHODS: A variety of common questions about abdominoplasty were submitted to ChatGPT-4. These questions were sourced from a question list provided by the American Society of Plastic Surgery to ensure their relevance and comprehensiveness. An experienced plastic surgeon meticulously evaluated the responses generated by ChatGPT-4 in terms of informational depth, response articulation, and competency to determine the proficiency of the AI in providing patient-centered information.
    RESULTS: The study showed that ChatGPT-4 can give clear answers, making it useful for answering common queries. However, it struggled with personalized advice and sometimes provided incorrect or outdated references. Overall, ChatGPT-4 can effectively share abdominoplasty information, which may help patients better understand the procedure. Despite these positive findings, the AI needs more refinement, especially in providing personalized and accurate information, to fully meet patient education needs in plastic surgery.
    CONCLUSIONS: Although ChatGPT-4 shows promise as a resource for patient education, continuous improvements and rigorous checks are essential for its beneficial integration into healthcare settings. The study emphasizes the need for further research, particularly focused on improving the personalization and accuracy of AI responses.
    METHODS: This journal requires that authors assign a level of evidence to each article. For a full description of these Evidence-Based Medicine ratings, please refer to the Table of Contents or the online Instructions to Authors www.springer.com/00266 .
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  • 文章类型: Journal Article
    简介本案例研究旨在通过采用逐步的系统方法来提高医学文本中ChatGPT-4的可追溯性和检索准确性。重点是从三个关于糖尿病酮症酸中毒(DKA)的国际指南中检索临床答案。方法建立了系统的方法来指导检索过程。每个指南都提出了一个问题,以确保准确性并保持引用。ChatGPT-4被用来检索答案,并集成了“链接阅读器”插件,以方便直接访问包含指南的网页。随后,ChatGPT-4用于编译答案,同时提供对来源的引用。每个问题重复这个过程30次,以确保一致性。在这份报告中,我们介绍了我们对检索准确性的观察,反应的一致性,以及在此过程中遇到的挑战。结果将ChatGPT-4与“链接阅读器”插件集成在一起显示了显着的可追溯性和检索准确性优势。根据分析的指南,AI模型成功提供了相关且准确的临床答案。尽管偶尔会遇到网页访问和轻微的内存漂移的挑战,集成系统的整体性能是有希望的。答案的汇编也令人印象深刻,并为进一步的审判带来了巨大的希望。结论本案例研究的结果有助于利用AI文本生成模型作为医学专业人员和研究人员的有价值的工具。本案例研究中采用的系统方法和“链接阅读器”插件的集成为自动化医学文本合成提供了一个框架,在从不同来源编译之前一次问一个问题,这提高了人工智能模型的可追溯性和检索准确性。AI模型的进一步改进和完善以及与其他软件实用程序的集成有望增强AI生成的建议在医学和科学学术界的实用性和适用性。这些进步有可能推动日常医疗实践的重大改进。
    Introduction This case study aimed to enhance the traceability and retrieval accuracy of ChatGPT-4 in medical text by employing a step-by-step systematic approach. The focus was on retrieving clinical answers from three international guidelines on diabetic ketoacidosis (DKA). Methods A systematic methodology was developed to guide the retrieval process. One question was asked per guideline to ensure accuracy and maintain referencing. ChatGPT-4 was utilized to retrieve answers, and the \'Link Reader\' plug-in was integrated to facilitate direct access to webpages containing the guidelines. Subsequently, ChatGPT-4 was employed to compile answers while providing citations to the sources. This process was iterated 30 times per question to ensure consistency. In this report, we present our observations regarding the retrieval accuracy, consistency of responses, and the challenges encountered during the process. Results Integrating ChatGPT-4 with the \'Link Reader\' plug-in demonstrated notable traceability and retrieval accuracy benefits. The AI model successfully provided relevant and accurate clinical answers based on the analyzed guidelines. Despite occasional challenges with webpage access and minor memory drift, the overall performance of the integrated system was promising. The compilation of the answers was also impressive and held significant promise for further trials. Conclusion The findings of this case study contribute to the utilization of AI text-generation models as valuable tools for medical professionals and researchers. The systematic approach employed in this case study and the integration of the \'Link Reader\' plug-in offer a framework for automating medical text synthesis, asking one question at a time before compilation from different sources, which has led to improving AI models\' traceability and retrieval accuracy. Further advancements and refinement of AI models and integration with other software utilities hold promise for enhancing the utility and applicability of AI-generated recommendations in medicine and scientific academia. These advancements have the potential to drive significant improvements in everyday medical practice.
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