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基于热成像图的糖尿病足溃疡早期检测的先进特征

State-of-the-Art Features for Early-Stage Detection of Diabetic Foot Ulcers Based on Thermograms.

作者信息

Arteaga-Marrero Natalia, Hernández-Guedes Abián, Ortega-Rodríguez Jordan, Ruiz-Alzola Juan

机构信息

Grupo Tecnología Médica IACTEC, Instituto de Astrofísica de Canarias (IAC), 38205 San Cristóbal de La Laguna, Spain.

Instituto Universitario de Investigaciones Biomédicas y Sanitarias (IUIBS), Universidad de Las Palmas de Gran Canaria, 35016 Las Palmas de Gran Canaria, Spain.

出版信息

Biomedicines. 2023 Dec 2;11(12):3209. doi: 10.3390/biomedicines11123209.

Abstract

Diabetic foot ulcers represent the most frequently recognized and highest risk factor among patients affected by diabetes mellitus. The associated recurrent rate is high, and amputation of the foot or lower limb is often required due to infection. Analysis of infrared thermograms covering the entire plantar aspect of both feet is considered an emerging area of research focused on identifying at an early stage the underlying conditions that sustain skin and tissue damage prior to the onset of superficial wounds. The identification of foot disorders at an early stage using thermography requires establishing a subset of relevant features to reduce decision variability and data misinterpretation and provide a better overall cost-performance for classification. The lack of standardization among thermograms as well as the unbalanced datasets towards diabetic cases hinder the establishment of this suitable subset of features. To date, most studies published are mainly based on the exploitation of the publicly available INAOE dataset, which is composed of thermogram images of healthy and diabetic subjects. However, a recently released dataset, STANDUP, provided data for extending the current state of the art. In this work, an extended and more generalized dataset was employed. A comparison was performed between the more relevant and robust features, previously extracted from the INAOE dataset, with the features extracted from the extended dataset. These features were obtained through state-of-the-art methodologies, including two classical approaches, lasso and random forest, and two variational deep learning-based methods. The extracted features were used as an input to a support vector machine classifier to distinguish between diabetic and healthy subjects. The performance metrics employed confirmed the effectiveness of both the methodology and the state-of-the-art features subsequently extracted. Most importantly, their performance was also demonstrated when considering the generalization achieved through the integration of input datasets. Notably, features associated with the MCA and LPA angiosomes seemed the most relevant.

摘要

糖尿病足溃疡是糖尿病患者中最常见且风险最高的因素。其相关复发率很高,由于感染,常常需要截肢足部或下肢。对覆盖双脚整个足底的红外热像图进行分析被认为是一个新兴的研究领域,其重点是在浅表伤口出现之前尽早识别出导致皮肤和组织损伤的潜在状况。使用热成像技术早期识别足部疾病需要建立一组相关特征,以减少决策的可变性和数据误解,并为分类提供更好的整体性价比。热像图之间缺乏标准化以及糖尿病病例数据集的不平衡阻碍了这一合适特征子集的建立。迄今为止,大多数已发表的研究主要基于对公开可用的伊达尔戈国立自治大学(INAOE)数据集的利用,该数据集由健康和糖尿病受试者的热像图组成。然而,最近发布的一个数据集——“站起来对抗糖尿病足(STANDUP)”,为扩展当前的技术水平提供了数据。在这项工作中,使用了一个扩展且更具通用性的数据集。对先前从INAOE数据集中提取的更相关、更稳健的特征与从扩展数据集中提取的特征进行了比较。这些特征是通过先进的方法获得的,包括两种经典方法——套索和随机森林,以及两种基于变分深度学习的方法。提取的特征被用作支持向量机分类器的输入,以区分糖尿病患者和健康受试者。所采用的性能指标证实了该方法以及随后提取的先进特征的有效性。最重要的是,在考虑通过整合输入数据集实现的泛化时,也证明了它们的性能。值得注意的是,与内侧足底动脉穿支(MCA)和外侧足底动脉穿支(LPA)血管体相关的特征似乎最为相关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3e57/10741214/56a10359ac2e/biomedicines-11-03209-g001.jpg

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