使用ChatGPT-4的足镜自动足部接触面积测量程序的开发:一个案例报告。

IF 1 Q3 MEDICINE, GENERAL & INTERNAL
Journal of Yeungnam medical science Pub Date : 2025-01-01 Epub Date: 2024-12-03 DOI:10.12701/jyms.2024.01326
Min Cheol Chang
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引用次数: 0

摘要

足部接触面积的准确测量对于诊断足扁平足和足弓足是至关重要的,这两种疾病会显著影响足底表面的压力分布。本研究旨在开发一个使用ChatGPT-4的程序,使用足镜自动测量足部接触面积,从而提高诊断精度。一位53岁的女性志愿者站在足镜上拍摄她的脚的图像,这些图像经过处理后分离出足部轮廓并测量接触面积。利用ChatCPT-4开发的程序设计了脚的轮廓,检测接触区域,并计算它们的大小和比例。结果表明,通过自动计算接触面积及其与总足面积的比率,可以清晰地可视化足部轮廓。整个足部面积测量为1,091,381.00像素,接触面积为604,252.50像素。地面接触面积占整个足部面积的比例计算为55.37%。这种方法采用了由ChatGPT-4驱动的先进图像处理技术,展示了将人工智能集成到临床应用中的潜力。这种方法可以通过个性化治疗策略提高诊断精度和患者预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of an automated foot contact area measurement program for podoscopes using ChatGPT-4: a case report.

Accurate measurement of the foot contact area is crucial for diagnosing pes planus (flatfoot) and pes cavus (high arch), which significantly affect pressure distribution across the plantar surface. This study aimed to develop a program using ChatGPT-4 to automate foot contact area measurements using a podoscope, thereby enhancing diagnostic precision. A 53-year-old female volunteer stood on a podoscope to capture images of her feet, which were processed to isolate the foot contours and measure the contact areas. A program developed utilizing ChatCPT-4 was designed to outline the feet, detect contact areas, and calculate their sizes and ratios. The results demonstrated clear visualization of foot contours with automated calculation of the contact area and its ratio to the total foot area. The entire foot area measured 1,091,381.00 pixels, with a contact area of 604,252.50 pixels. The ratio of the ground contact area to the entire foot area was calculated as 55.37%. This method, which employs advanced image-processing techniques powered by ChatGPT-4, demonstrates the potential for integrating artificial intelligence into clinical applications. This approach could improve diagnostic precision and patient outcomes through personalized treatment strategies.

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