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使用ResNet和Swin变压器深度学习模型优化白癜风诊断:性能与可解释性研究

Optimizing vitiligo diagnosis with ResNet and Swin transformer deep learning models: a study on performance and interpretability.

作者信息

Zhong Fan, He Kaiqiao, Ji Mengqi, Chen Jianru, Gao Tianwen, Li Shuli, Zhang Junpeng, Li Chunying

机构信息

College of Electrical Engineering, Sichuan University, Chengdu, China.

Department of Dermatology, Xijing Hospital, Fourth Military Medical University, Xi'an, China.

出版信息

Sci Rep. 2024 Apr 21;14(1):9127. doi: 10.1038/s41598-024-59436-2.

DOI:10.1038/s41598-024-59436-2
PMID:38644396
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11033269/
Abstract

Vitiligo is a hypopigmented skin disease characterized by the loss of melanin. The progressive nature and widespread incidence of vitiligo necessitate timely and accurate detection. Usually, a single diagnostic test often falls short of providing definitive confirmation of the condition, necessitating the assessment by dermatologists who specialize in vitiligo. However, the current scarcity of such specialized medical professionals presents a significant challenge. To mitigate this issue and enhance diagnostic accuracy, it is essential to build deep learning models that can support and expedite the detection process. This study endeavors to establish a deep learning framework to enhance the diagnostic accuracy of vitiligo. To this end, a comparative analysis of five models including ResNet (ResNet34, ResNet50, and ResNet101 models) and Swin Transformer series (Swin Transformer Base, and Swin Transformer Large models), were conducted under the uniform condition to identify the model with superior classification capabilities. Moreover, the study sought to augment the interpretability of these models by selecting one that not only provides accurate diagnostic outcomes but also offers visual cues highlighting the regions pertinent to vitiligo. The empirical findings reveal that the Swin Transformer Large model achieved the best performance in classification, whose AUC, accuracy, sensitivity, and specificity are 0.94, 93.82%, 94.02%, and 93.5%, respectively. In terms of interpretability, the highlighted regions in the class activation map correspond to the lesion regions of the vitiligo images, which shows that it effectively indicates the specific category regions associated with the decision-making of dermatological diagnosis. Additionally, the visualization of feature maps generated in the middle layer of the deep learning model provides insights into the internal mechanisms of the model, which is valuable for improving the interpretability of the model, tuning performance, and enhancing clinical applicability. The outcomes of this study underscore the significant potential of deep learning models to revolutionize medical diagnosis by improving diagnostic accuracy and operational efficiency. The research highlights the necessity for ongoing exploration in this domain to fully leverage the capabilities of deep learning technologies in medical diagnostics.

摘要

白癜风是一种以黑色素缺失为特征的色素减退性皮肤病。白癜风的进行性本质和广泛发病率使得及时准确的检测成为必要。通常,单一的诊断测试往往不足以提供对该病的确切确诊,因此需要由专门研究白癜风的皮肤科医生进行评估。然而,目前此类专业医学专业人员的稀缺构成了重大挑战。为了缓解这一问题并提高诊断准确性,构建能够支持并加快检测过程的深度学习模型至关重要。本研究致力于建立一个深度学习框架以提高白癜风的诊断准确性。为此,在统一条件下对包括ResNet(ResNet34、ResNet50和ResNet101模型)和Swin Transformer系列(Swin Transformer Base和Swin Transformer Large模型)在内的五个模型进行了比较分析,以确定具有卓越分类能力的模型。此外,该研究试图通过选择一个不仅能提供准确诊断结果,还能提供突出显示与白癜风相关区域的视觉线索的模型来增强这些模型的可解释性。实证结果表明,Swin Transformer Large模型在分类方面表现最佳,其AUC、准确率、灵敏度和特异性分别为0.94、93.82%、94.02%和93.5%。在可解释性方面,类激活图中突出显示的区域与白癜风图像的病变区域相对应,这表明它有效地指示了与皮肤科诊断决策相关的特定类别区域。此外,深度学习模型中层生成的特征图的可视化提供了对模型内部机制的洞察,这对于提高模型的可解释性、调整性能和增强临床适用性具有重要价值。本研究的结果强调了深度学习模型通过提高诊断准确性和运营效率来彻底改变医学诊断的巨大潜力。该研究突出了在这一领域持续探索的必要性,以充分利用深度学习技术在医学诊断中的能力。

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