Jiang Tao, Lu Zhou, Hu Xiaojuan, Zeng Lingzhi, Ma Xuxiang, Huang Jingbin, Cui Ji, Tu Liping, Zhou Changle, Yao Xinghua, Xu Jiatuo
Basic Medical College, Shanghai University of Traditional Chinese Medicine, 1200 Cailun Road, Shanghai 201203, China.
Department of Acupuncture and Moxibustion, Huadong Hospital, Fudan University, 221 West Yanan Road, Shanghai 200040, China.
Evid Based Complement Alternat Med. 2022 Sep 29;2022:3384209. doi: 10.1155/2022/3384209. eCollection 2022.
Research on intelligent tongue diagnosis is a main direction in the modernization of tongue diagnosis technology. Identification of tongue shape and texture features is a difficult task for tongue diagnosis in traditional Chinese medicine (TCM). This study aimed to explore the application of deep learning techniques in tongue image analyses.
A total of 8676 tongue images were annotated by clinical experts, into seven categories, including the fissured tongue, tooth-marked tongue, stasis tongue, spotted tongue, greasy coating, peeled coating, and rotten coating. Based on the labeled tongue images, the deep learning model faster region-based convolutional neural networks (Faster R-CNN) was utilized to classify tongue images. Four performance indices, i.e., accuracy, recall, precision, and F1-score, were selected to evaluate the model. Also, we applied it to analyze tongue image features of 3601 medical checkup participants in order to explore gender and age factors and the correlations among tongue features in diseases through complex networks.
The average accuracy, recall, precision, and F1-score of our model achieved 90.67%, 91.25%, 99.28%, and 95.00%, respectively. Over the tongue images from the medical checkup population, the model Faster R-CNN detected 41.49% fissured tongue images, 37.16% tooth-marked tongue images, 29.66% greasy coating images, 18.66% spotted tongue images, 9.97% stasis tongue images, 3.97% peeled coating images, and 1.22% rotten coating images. There were significant differences in the incidence of the fissured tongue, tooth-marked tongue, spotted tongue, and greasy coating among age and gender. Complex networks revealed that fissured tongue and tooth-marked were closely related to hypertension, dyslipidemia, overweight and nonalcoholic fatty liver disease (NAFLD), and a greasy coating tongue was associated with hypertension and overweight.
The model Faster R-CNN shows good performance in the tongue image classification. And we have preliminarily revealed the relationship between tongue features and gender, age, and metabolic diseases in a medical checkup population.
智能舌诊研究是舌诊技术现代化的一个主要方向。舌形和纹理特征的识别是中医舌诊中的一项艰巨任务。本研究旨在探讨深度学习技术在舌图像分析中的应用。
临床专家对总共8676张舌图像进行标注,分为七类,包括裂纹舌、齿痕舌、瘀斑舌、点刺舌、腻苔、剥苔和腐苔。基于标记的舌图像,利用深度学习模型更快的基于区域的卷积神经网络(Faster R-CNN)对舌图像进行分类。选择四个性能指标,即准确率、召回率、精确率和F1分数来评估该模型。此外,我们将其应用于分析3601名体检参与者的舌图像特征,以通过复杂网络探索性别和年龄因素以及疾病中舌特征之间的相关性。
我们模型的平均准确率、召回率、精确率和F1分数分别达到90.67%、91.25%、99.28%和95.00%。在体检人群的舌图像中,Faster R-CNN模型检测到41.49%的裂纹舌图像、37.16%的齿痕舌图像、29.66%的腻苔图像、18.66%的点刺舌图像、9.97%的瘀斑舌图像、3.97%的剥苔图像和1.22%的腐苔图像。裂纹舌、齿痕舌、点刺舌和腻苔的发生率在年龄和性别上存在显著差异。复杂网络显示,裂纹舌和齿痕舌与高血压、血脂异常、超重和非酒精性脂肪性肝病(NAFLD)密切相关,腻苔舌与高血压和超重有关。
Faster R-CNN模型在舌图像分类中表现出良好的性能。并且我们初步揭示了体检人群中舌特征与性别、年龄和代谢性疾病之间的关系。