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基于深度学习的糖尿病足分割与分类诊断模型的构建与验证

Construction and validation of a deep learning-based diagnostic model for segmentation and classification of diabetic foot.

作者信息

Zhou Guang-Xin, Tao Yu-Kun, Hou Jin-Zheng, Zhu Hui-Juan, Xiao Li, Zhao Na, Wang Xiao-Wen, Du Bao-Lin, Zhang Da

机构信息

Department of Endocrinology, Air Force Medical Center, Air Force Medical University, Beijing, China.

Chongqing Zhijian Life Technology Co., Ltd, Chongqing, China.

出版信息

Front Endocrinol (Lausanne). 2025 Apr 9;16:1543192. doi: 10.3389/fendo.2025.1543192. eCollection 2025.

Abstract

OBJECTIVE

This study aims to conduct an in-depth analysis of diabetic foot ulcer (DFU) images using deep learning models, achieving automated segmentation and classification of the wounds, with the goal of exploring the application of artificial intelligence in the field of diabetic foot care.

METHODS

A total of 671 images of DFU were selected for manual annotation of the periwound erythema, ulcer boundaries, and various components within the wounds (granulation tissue, necrotic tissue, tendons, bone tissue, and gangrene). Three instance segmentation models (Mask2former, Deeplabv3plus, and Swin-Transformer) were constructed to identify DFU, and the segmentation and classification results of the three models were compared.

RESULTS

Among the three models, Mask2former exhibited the best recognition performance, with a mean Intersection over Union of 65%, surpassing Deeplabv3's 62% and Swin-Transformer's 52%. The Intersection over Union value of Mask2former for wound recognition reached 85.9%, with IoU values of 80%, 78%, 62%, 61%, 47%, and 39% for granulation tissue, gangrene, bone tissue, necrotic tissue, tendons, and periwound erythema, respectively. In the wound classification task, the Mask2former model achieved an accuracy of 0.9185 and an Area Under the Curve of 0.9429 for the classification of Wagner grade 1-2, grade 3, and grade 4 wounds.

CONCLUSION

Among the three deep learning models, the Mask2former model demonstrated the best overall performance. This method can effectively assist clinicians in recognizing DFU and segmenting the tissues within the wounds.

摘要

目的

本研究旨在使用深度学习模型对糖尿病足溃疡(DFU)图像进行深入分析,实现伤口的自动分割和分类,以探索人工智能在糖尿病足护理领域的应用。

方法

共选取671张DFU图像,对伤口周围红斑、溃疡边界以及伤口内的各种成分(肉芽组织、坏死组织、肌腱、骨组织和坏疽)进行人工标注。构建了三个实例分割模型(Mask2former、Deeplabv3plus和Swin-Transformer)来识别DFU,并比较这三个模型的分割和分类结果。

结果

在这三个模型中,Mask2former表现出最佳的识别性能,平均交并比为65%,超过了Deeplabv3的62%和Swin-Transformer的52%。Mask2former用于伤口识别的交并比达到85.9%,对于肉芽组织、坏疽、骨组织、坏死组织、肌腱和伤口周围红斑的交并比分别为80%、78%、62%、61%、47%和39%。在伤口分类任务中,Mask2former模型对Wagner 1-2级、3级和4级伤口分类的准确率为0.9185,曲线下面积为0.9429。

结论

在这三个深度学习模型中,Mask2former模型表现出最佳的整体性能。该方法可以有效地协助临床医生识别DFU并分割伤口内的组织。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b891/12014428/01d39727e5ea/fendo-16-1543192-g001.jpg

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