The Journal of Practical Medicine ›› 2026, Vol. 42 ›› Issue (3): 395-405.doi: 10.3969/j.issn.1006-5725.2026.03.006
• Chronic Disease Control • Previous Articles
Sokhan CHOI1,Dongning ZHU2,Haowei XU1,Jiaqi HUANG1,Xiaoyu LI1,Zhuohao LI2,Xiufeng LIU2,Yuhong YAN3(
)
Received:2025-10-15
Online:2026-02-10
Published:2026-02-09
Contact:
Yuhong YAN
E-mail:15920395608@139.com
CLC Number:
Sokhan CHOI,Dongning ZHU,Haowei XU,Jiaqi HUANG,Xiaoyu LI,Zhuohao LI,Xiufeng LIU,Yuhong YAN. Application of a deep learning-based tongue image classification system in TCM syndrome identification of psoriasis[J]. The Journal of Practical Medicine, 2026, 42(3): 395-405.
Tab.1
Performance comparison of segmentation models"
| 模型 | 优势 | 局限性 | Dice系数(x ± s)/% | 本研究中的表现 |
|---|---|---|---|---|
| 基线 U-Net | 简单有效,适用于多种图像分割任务 | 对复杂背景和光照变化敏感 | 0.85 ± 0.04 | 边缘定位精度不足 |
| DeepLabv3+ | 大感受野,适合语义分割 | 参数量较大,计算资源消耗高 | 0.87 ± 0.05 | 显存占用16 GB, 不适合实时应用 |
| Mask R-CNN | 高精度目标检测与分割 | 训练数据需求大(≥ 5 000样本), 小样本泛化能力差 | 0.83 ± 0.06 | 误分割率高达15% |
| 改进的U-Net | 结合局部特征与全局上下文,鲁棒性强 | 需要预训练权重初始化 | 0.98 ± 0.03 | 边缘定位精度高, 误分割率< 5% |
Tab.2
Results of 5-fold cross-validation"
| 模型类型 | 平均验证损失/% | 平均准确率/% | 平均F1分数/% | 平均AUC指数/% |
|---|---|---|---|---|
| EfficientNet-B3 | 0.267 9 ± 0.004 8 | 0.962 4 ± 0.004 1 | 0.927 0 ± 0.005 3 | 0.996 6 ± 0.001 3 |
| Swin-Tiny | 0.252 7 ± 0.009 0 | 0.965 4 ± 0.007 0 | 0.968 4 ± 0.007 2 | 0.997 6 ± 0.001 4 |
| Hybrid | 0.227 5 ± 0.008 6 | 0.981 6 ± 0.006 1 | 0.981 6 ± 0.006 7 | 0.999 3 ± 0.000 6 |
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