Instituto Universitario de Investigaciones Biomédicas y Sanitarias (IUIBS), Universidad de Las Palmas de Gran Canaria, 35016 Las Palmas de Gran Canaria, Spain.
Instituto Universitario de Microelectrónica Aplicada (IUMA), Universidad de Las Palmas de Gran Canaria, 35017 Las Palmas de Gran Canaria, Spain.
Sensors (Basel). 2023 Jan 9;23(2):757. doi: 10.3390/s23020757.
Diabetes mellitus presents a high prevalence around the world. A common and long-term derived complication is diabetic foot ulcers (DFUs), which have a global prevalence of roughly 6.3%, and a lifetime incidence of up to 34%. Infrared thermograms, covering the entire plantar aspect of both feet, can be employed to monitor the risk of developing a foot ulcer, because diabetic patients exhibit an abnormal pattern that may indicate a foot disorder. In this study, the publicly available INAOE dataset composed of thermogram images of healthy and diabetic subjects was employed to extract relevant features aiming to establish a set of state-of-the-art features that efficiently classify DFU. This database was extended and balanced by fusing it with private local thermograms from healthy volunteers and generating synthetic data via synthetic minority oversampling technique (SMOTE). State-of-the-art features were extracted using two classical approaches, LASSO and random forest, as well as two variational deep learning (DL)-based ones: concrete and variational dropout. Then, the most relevant features were detected and ranked. Subsequently, the extracted features were employed to classify subjects at risk of developing an ulcer using as reference a support vector machine (SVM) classifier with a fixed hyperparameter configuration to evaluate the robustness of the selected features. The new set of features extracted considerably differed from those currently considered state-of-the-art but provided a fair performance. Among the implemented extraction approaches, the variational DL ones, particularly the concrete dropout, performed the best, reporting an F1 score of 90% using the aforementioned SVM classifier. In comparison with features previously considered as the state-of-the-art, approximately 15% better performance was achieved for classification.
糖尿病在全球范围内患病率很高。一种常见且长期衍生的并发症是糖尿病足溃疡(DFUs),其全球患病率约为 6.3%,终身发病率高达 34%。可以使用覆盖双脚整个足底的红外热图来监测发生足部溃疡的风险,因为糖尿病患者表现出的异常模式可能表明存在足部疾病。在这项研究中,使用了可公开获得的由健康和糖尿病患者的热图图像组成的 INAOE 数据集,以提取相关特征,旨在建立一组能够有效分类 DFU 的最先进特征。通过将其与来自健康志愿者的私人局部热图融合并通过合成少数过采样技术(SMOTE)生成合成数据,扩展和平衡了该数据库。使用两种经典方法(LASSO 和随机森林)以及两种基于变分深度学习(DL)的方法(具体和变分辍学)提取了最先进的特征。然后,检测并对最相关的特征进行了排序。随后,使用提取的特征使用支持向量机(SVM)分类器对有发生溃疡风险的患者进行分类,该分类器的超参数配置固定,以评估所选特征的稳健性。提取的新特征集与目前被认为是最先进的特征集有很大的不同,但提供了相当的性能。在所实施的提取方法中,变分 DL 方法,特别是具体辍学,使用上述 SVM 分类器报告了 90%的 F1 得分,表现最好。与之前被认为是最先进的特征相比,分类性能提高了约 15%。