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利用多模态深度学习从舌象图像和临床信息预测2型糖尿病患者的糖尿病足

Predicting the diabetic foot in the population of type 2 diabetes mellitus from tongue images and clinical information using multi-modal deep learning.

作者信息

Tian Zhikui, Wang Dongjun, Sun Xuan, Cui Chuan, Wang Hongwu

机构信息

School of Rehabilitation Medicine, Qilu Medical University, Zibo, Shandong, China.

College of Traditional Chinese Medicine, North China University of Science and Technology, Tangshan, China.

出版信息

Front Physiol. 2024 Dec 3;15:1473659. doi: 10.3389/fphys.2024.1473659. eCollection 2024.

Abstract

AIMS

Based on the quantitative and qualitative fusion data of traditional Chinese medicine (TCM) and Western medicine, a diabetic foot (DF) prediction model was established through combining the objectified parameters of TCM and Western medicine.

METHODS

The ResNet-50 deep neural network (DNN) was used to extract depth features of tongue demonstration, and then a fully connected layer (FCL) was used for feature extraction to obtain aggregate features. Finally, a non-invasive DF prediction model based on tongue features was realized.

RESULTS

Among the 391 patients included, there were 267 DF patients, with their BMI (25.2 vs. 24.2) and waist-to-hip ratio (0.953 vs. 0.941) higher than those of type 2 diabetes mellitus (T2DM) group. The diabetes (15 years vs. 8 years) and hypertension durations (10 years vs. 7.5 years) in DF patients were significantly higher than those in T2DM group. Moreover, the plantar hardness in DF patients was higher than that in T2DM patients. The accuracy and sensitivity of the multi-mode DF prediction model reached 0.95 and 0.9286, respectively.

CONCLUSION

We established a DF prediction model based on clinical features and objectified tongue color, which showed the unique advantages and important role of objectified tongue demonstration in the DF risk prediction, thus further proving the scientific nature of TCM tongue diagnosis. Based on the qualitative and quantitative fusion data, we combined tongue images with DF indicators to establish a multi-mode DF prediction model, in which tongue demonstration and objectified foot data can correct the subjectivity of prior knowledge. The successful establishment of the feature fusion diagnosis model can demonstrate the clinical practical value of objectified tongue demonstration. According to the results, the model had better performance to distinguish between T2DM and DF, and by comparing the performance of the model with and without tongue images, it was found that the model with tongue images performed better.

摘要

目的

基于中医与西医的定量和定性融合数据,通过结合中医和西医的客观化参数,建立糖尿病足(DF)预测模型。

方法

采用ResNet-50深度神经网络(DNN)提取舌象的深度特征,然后使用全连接层(FCL)进行特征提取以获得聚合特征。最后,实现了基于舌象特征的无创DF预测模型。

结果

纳入的391例患者中,有267例DF患者,其体重指数(25.2对24.2)和腰臀比(0.953对0.941)高于2型糖尿病(T2DM)组。DF患者的糖尿病病程(15年对8年)和高血压病程(10年对7.5年)显著高于T2DM组。此外,DF患者的足底硬度高于T2DM患者。多模式DF预测模型的准确率和灵敏度分别达到0.95和0.9286。

结论

我们基于临床特征和客观化舌色建立了DF预测模型,该模型显示了客观化舌象在DF风险预测中的独特优势和重要作用,从而进一步证明了中医舌诊的科学性。基于定性和定量融合数据,我们将舌象图像与DF指标相结合,建立了多模式DF预测模型,其中舌象和客观化足部数据可以纠正先验知识的主观性。特征融合诊断模型的成功建立可以证明客观化舌象的临床实用价值。根据结果,该模型在区分T2DM和DF方面具有更好的性能,并且通过比较有无舌象图像的模型性能,发现有舌象图像的模型表现更好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/68eb/11649646/7450dda49934/fphys-15-1473659-g001.jpg

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