基于深度学习的色素减退性皮肤病智能诊断和白癜风严重程度智能评估。

IF 3.5 3区 医学 Q1 DERMATOLOGY
Hequn Huang, Changqing Wang, Geng Gao, Zhuangzhuang Fan, Lulu Ren, Rui Wang, Zhu Chen, Maoxin Huang, Mei Li, Fei Yang, Fengli Xiao
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引用次数: 0

摘要

导言:色素减退性皮肤病(HD)的分类诊断和白癜风的严重程度评估缺乏客观、准确、便捷的方法。利用基于深度学习的方法,实现准确、智能的色素减退性皮肤病分类诊断模型和白癜风严重程度评估模型:本研究共纳入了来自 4744 名 HD 患者的 11,483 张图像。通过将挤压激发(SE)模块与候选模型合并,构建了最佳诊断模型,并将其诊断效率与98名皮肤科医生的诊断效率进行了比较。通过加权法提出了一个客观的严重程度评价指标,并与分割模型相结合形成了一个严重程度评价模型,然后与三位经验丰富的皮肤科医生用肉眼进行的评估进行了比较:结果:改进后的诊断模型 SE_ResNet-18 的准确度为 0.9389,宏观特异性为 0.9878,宏观-f1 得分为 0.9395,优于其他 11 个经典模型,并优于 98 位皮肤科医生的不同分类(P v)和 VASIchange(K = 0.567,P 结论:SE_ResNet-18 是一种新的诊断模型,其准确度为 0.9389,宏观特异性为 0.9878,宏观-f1 得分为 0.9395,优于其他 11 个经典模型:本研究提出了一种客观、准确、便捷的混合模型,用于诊断HD和评估白癜风的严重程度,为皮肤科医生尤其是基层医院的皮肤科医生提供了一种方法,并为远程医疗提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Diagnosis of Hypopigmented Dermatoses and Intelligent Evaluation of Vitiligo Severity on the Basis of Deep Learning.

Introduction: There is a lack of objective, accurate, and convenient methods for classification diagnostic hypopigmented dermatoses (HD) and severity evaluation of vitiligo. To achieve an accurate and intelligent classification diagnostic model of HD and severity evaluation model of vitiligo using a deep learning-based method.

Methods: A total of 11,483 images from 4744 patients with HD were included in this study. An optimal diagnostic model was constructed by merging the squeeze-and-excitation (SE) module with the candidate model, its diagnostic efficiency was compared with that of 98 dermatologists. An objective severity evaluation indicator was proposed through weighting method and combined with a segmentation model to form a severity evaluation model, which was then compared with the assessments conducted by three experienced dermatologists using the naked eye.

Results: The improved diagnosis model SE_ResNet-18 outperformed the other 11 classic models with an accuracy of 0.9389, macro-specificity of 0.9878, and macro-f1 score of 0.9395, and outperformed the different categories of 98 dermatologists (P < 0.001). The weighted Kappa test indicated medium consistency between the Indicatorv and the VASIchange (K = 0.567, P < 0.05). The optimal segmented model, HR-Net, had 0.8421 mIOU. The model-based severity evaluation results were not significantly different among the three experienced dermatologists.

Conclusions: This study proposes an objective, accurate, and convenient hybrid model for diagnosing HD and evaluating the severity of vitiligo, providing a method for dermatologists especially in grassroots hospitals, and provides a foundation for telemedicine.

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来源期刊
Dermatology and Therapy
Dermatology and Therapy Medicine-Dermatology
CiteScore
6.00
自引率
8.80%
发文量
187
审稿时长
6 weeks
期刊介绍: Dermatology and Therapy is an international, open access, peer-reviewed, rapid publication journal (peer review in 2 weeks, published 3–4 weeks from acceptance). The journal is dedicated to the publication of high-quality clinical (all phases), observational, real-world, and health outcomes research around the discovery, development, and use of dermatological therapies. Studies relating to diagnosis, pharmacoeconomics, public health and epidemiology, quality of life, and patient care, management, and education are also encouraged. Areas of focus include, but are not limited to all clinical aspects of dermatology, such as skin pharmacology; skin development and aging; prevention, diagnosis, and management of skin disorders and melanomas; research into dermal structures and pathology; and all areas of aesthetic dermatology, including skin maintenance, dermatological surgery, and lasers. The journal is of interest to a broad audience of pharmaceutical and healthcare professionals and publishes original research, reviews, case reports/case series, trial protocols, and short communications. Dermatology and Therapy will consider all scientifically sound research be it positive, confirmatory or negative data. Submissions are welcomed whether they relate to an International and/or a country-specific audience, something that is crucially important when researchers are trying to target more specific patient populations. This inclusive approach allows the journal to assist in the dissemination of quality research, which may be considered of insufficient interest by other journals. The journal appeals to a global audience and receives submissions from all over the world.
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