超越表面:评估GPT-4在皮肤镜图像中检测黑色素瘤和可疑皮肤病变的准确性。

IF 0.7 4区 医学 Q4 SURGERY
Jonah W Perlmutter, John Milkovich, Sierra Fremont, Shaishav Datta, Adam Mosa
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引用次数: 0

摘要

导读:自检检测皮肤癌受到敏感性的限制。ChatGPT-4具有图像识别功能,可作为筛查癌症和远程保健应用程序的有用辅助。本研究探讨了ChatGPT-4在识别皮肤病变中的作用。方法:回顾性地从PH2数据集中选择皮肤镜图像,根据临床诊断进行分类,并以预先设计的提示上传至ChatGPT-4。将反应与临床诊断进行比较。采用自举法计算置信区间,采用McNemar检验计算显著性。使用Jupyter Notebook和Python进行分析。结果:GPT-4模型在黑色素瘤检测中表现中等,准确率为68.5%,灵敏度为52.5%,特异性为72.5%,与临床标准差异显著(P = 0.002)。对于可疑病变的检测,准确率为68.0%,精密度为78.0%,F-measure值为70.0%,但与非典型痣和黑色素瘤的临床诊断仍不吻合(P = 0.0169)。结论:ChatGPT-4对黑色素瘤及可疑病变的诊断与临床诊断及其他AI模型相比存在统计学差异,提示ChatGPT-4算法有待改进。本研究的局限性包括:使用的是黑色素瘤发病率较高的二级护理数据库,高质量的皮肤镜图像限制了通用性,样本量小,缺乏多样性,需要更大的数据集来验证更广泛背景下的发现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Beyond the Surface: Assessing GPT-4's Accuracy in Detecting Melanoma and Suspicious Skin Lesions From Dermoscopic Images.

Introduction: Self-examinations for skin cancer detection are limited by sensitivity. ChatGPT-4 has image recognition capabilities that can be a useful adjunct for screening cancers and tele-health applications. This study investigated the efficacy of ChatGPT-4 in identifying skin lesions. Methods: Dermoscopic images were retrospectively selected from the PH2 dataset, categorized by clinical diagnosis, and uploaded to ChatGPT-4 with a predesigned prompt. Responses were compared against clinical diagnoses. Confidence intervals were calculated using the bootstrap method assessing precision and significance was calculated using McNemar's test. Analyses were performed using Jupyter Notebook and Python. Results: The GPT-4 model showed moderate performance in melanoma detection with 68.5% accuracy, 52.5% sensitivity, and 72.5% specificity, significantly differing from the clinical standard (P = .002). For suspicious lesion detection, it performed better with 68.0% accuracy, 78.0% precision, and 70.0% F-measure, still not closely matching clinical diagnosis for atypical nevi and melanoma (P = .0169). Conclusion: The statistical difference between ChatGPT-4 diagnosis of melanoma and suspicious lesions compared with clinical diagnoses and other AI models suggests the need for improvement in ChatGPT-4 algorithms. This study's limitations included the use of a secondary care database with a higher melanoma incidence, high-quality dermoscopic images that limit generalizability, a small sample size lacking diversity, and the need for larger datasets to validate findings in broader contexts.

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来源期刊
Plastic surgery
Plastic surgery Medicine-Surgery
CiteScore
1.70
自引率
0.00%
发文量
73
期刊介绍: Plastic Surgery (Chirurgie Plastique) is the official journal of the Canadian Society of Plastic Surgeons, the Canadian Society for Aesthetic Plastic Surgery, Group for the Advancement of Microsurgery, and the Canadian Society for Surgery of the Hand. It serves as a major venue for Canadian research, society guidelines, and continuing medical education.
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