人工智能辅助诊断皮肤红斑斑试验的评价。

IF 4.6 1区 医学 Q2 ALLERGY
Seoyoung Kim, Hyunsik Hwang, Mihyun Oh, Jieun Han, Sodam Park, Soyoung Lee, Goun Kim, Sungwon Cho, Dong Hun Lee, Jae Youl Cho
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引用次数: 0

摘要

背景:斑贴试验评估皮肤红斑、浸润、丘疹和囊泡暴露于各种物质后,包括金属、化妆品和药物。准确评估这些情况需要一致的皮肤评分评估,精确的视觉分级和最小的专家间差异。目的:本研究旨在开发基于YOLOv5x物体检测框架的皮肤刺激人工智能模型,从多种测试物质的贴片测试图像中自动检测皮肤刺激。方法:采集斑片试验图像,标记试验部位,利用YOLOv5x算法定位样品。专家给每个样本打分(0-4分),用于训练和验证。该模型使用83 629个数据点进行训练。分别用1312和1536个数据点进行评估和验证。结果:模型在24和48 h的总体准确率为0.983,F1得分(召回率和精度的调和平均值)为0.982。得分0、1和2的曲线下面积(auc)分别为0.914、0.838和0.865。当分值为0时,灵敏度为0.997。结论:本研究结果表明,该AI模型能够有效支持和分类皮肤刺激,从而实现更快、更准确的皮肤病学评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of Artificial Intelligence-Assisted Diagnosis of Skin Erythema in a Patch Test.

Background: The patch test evaluates skin erythema, infiltration, papules and vesicles following exposure to various substances, including metals, cosmetics and medicines. Accurate evaluation of these conditions requires consistent skin score assessments, precise visual grading and minimal inter-expert variability.

Objectives: This study aimed to develop a skin irritation artificial intelligence model based on the YOLOv5x object detection framework to automatically detect skin irritation from the patch test images for multiple test substances.

Methods: Patch test images were collected with test sites marked to enable the YOLOv5x algorithm to locate the samples. An expert assigned a score to each sample (0-4) for training and validation. The model was trained using 83 629 data points. Evaluation and validation were performed with 1312 and 1536 data points, respectively.

Results: The model achieved an overall accuracy of 0.983 at both 24 and 48 h, with an F1 score (harmonic mean of recall and precision) of 0.982. The areas under the curve (AUCs) for scores 0, 1 and 2 were 0.914, 0.838 and 0.865, respectively. The sensitivity for a score of 0 was 0.997.

Conclusion: These findings suggest that this AI model effectively supports and classifies skin irritation, thereby facilitating faster and more accurate dermatological evaluations.

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来源期刊
Contact Dermatitis
Contact Dermatitis 医学-过敏
CiteScore
4.60
自引率
30.90%
发文量
227
审稿时长
4-8 weeks
期刊介绍: Contact Dermatitis is designed primarily as a journal for clinicians who are interested in various aspects of environmental dermatitis. This includes both allergic and irritant (toxic) types of contact dermatitis, occupational (industrial) dermatitis and consumers" dermatitis from such products as cosmetics and toiletries. The journal aims at promoting and maintaining communication among dermatologists, industrial physicians, allergists and clinical immunologists, as well as chemists and research workers involved in industry and the production of consumer goods. Papers are invited on clinical observations, diagnosis and methods of investigation of patients, therapeutic measures, organisation and legislation relating to the control of occupational and consumers".
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