Diabetes foot ulceration (DFU) and amputation are a cause of significant morbidity. The prevention of DFU may be achieved by the identification of patients at risk of DFU and the institution of preventative measures through education and offloading. Several studies have reported that thermogram images may help to detect an increase in plantar temperature prior to DFU. However, the distribution of plantar temperature may be heterogeneous, making it difficult to quantify and utilize to predict outcomes. We have compared a machine learning-based scoring technique with feature selection and optimization techniques and learning classifiers to several state-of-the-art Convolutional Neural Networks (CNNs) on foot thermogram images and propose a robust solution to identify the diabetic foot. A comparatively shallow CNN model, MobilenetV2 achieved an F1 score of ~95% for a two-feet thermogram image-based classification and the AdaBoost Classifier used 10 features and achieved an F1 score of 97 %. A comparison of the inference time for the best-performing networks confirmed that the proposed algorithm can be deployed as a smartphone application to allow the user to monitor the progression of the DFU in a home setting.
翻译:糖尿病脚溃化和截肢是导致严重发病的一个原因。通过识别有DFU风险的病人以及通过教育和卸载来采取预防措施,可以预防DFU。一些研究报告说,温度图像可能有助于检测DFU之前计划温度升高的情况。然而,计划温度的分布可能各异,难以量化和利用预测结果。我们已经将基于机器学习的评分技术与特征选择和优化技术以及学习分级器比对了几个最先进的神经神经网络(CNNs)在步行温度图象上,并提出了确定糖尿病足部的可靠解决方案。相对浅的CNNM模型,MivenetV2在双脚热图象分类中达到了F1分~95%,AdaBoost分类器使用了10个特征,达到了F1分97。对最佳运行网络的推算时间进行比较后证实,拟议的算法可以作为一种智能手机应用程序,使用户能够监测D-FAS的进度。