糖尿病足溃疡识别的最新进展和方法概述:一项调查

L. Jani Anbarasi, Malathy Jawahar, R. Beulah Jayakumari, Modigari Narendra, Vinayakumar Ravi, R. Neeraja
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引用次数: 0

摘要

糖尿病足溃疡(DFUs)给不同年龄段的人带来了巨大的健康风险,给医护人员的准确分类和分级带来了挑战。糖尿病足溃疡在自动健康监测和诊断系统中起着至关重要的作用,医学成像、计算机视觉、统计分析和步态信息的整合对于全面了解和有效管理至关重要。诊断 DFU 势在必行,因为它在自动健康监测和诊断系统的诊断、治疗计划和神经病变研究过程中发挥着重要作用。为此,文献中出现了各种基于机器学习和深度学习的方法,以支持医疗从业人员改进对 DFU 的诊断分析。本调查报告研究了各种 DFU 诊断方法,包括传统的统计方法和前沿的深度学习技术。它系统地回顾了糖尿病足溃疡分类(DFUC)方法所涉及的关键阶段,包括预处理、特征提取和分类,并解释了它们的优点和缺点。研究还扩展到探索为 DFUC 量身定制的最先进的卷积神经网络模型,涉及数据增强和迁移学习方法的广泛实验。综述还概述了用于评估 DFUC 方法的常用数据集。认识到下肢神经病变和血流减少可能是由动脉粥样硬化血管引起的,本文为研究人员和参与常规医疗的从业人员提供了预防重大并发症的建议。除了回顾之前的文献外,本调查还旨在通过概述前瞻性研究方向,尤其是个性化和智能医疗领域的研究方向,影响 DFU 诊断的未来。最后,本综述旨在促进 DFU 诊断的持续发展,以提供更有效的定制化医疗服务:应用领域> 医疗保健技术> 机器学习技术> 人工智能
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An overview of current developments and methods for identifying diabetic foot ulcers: A survey
Diabetic foot ulcers (DFUs) present a substantial health risk across diverse age groups, creating challenges for healthcare professionals in the accurate classification and grading. DFU plays a crucial role in automated health monitoring and diagnosis systems, where the integration of medical imaging, computer vision, statistical analysis, and gait information is essential for comprehensive understanding and effective management. Diagnosing DFU is imperative, as it plays a major role in the processes of diagnosis, treatment planning, and neuropathy research within automated health monitoring and diagnosis systems. To address this, various machine learning and deep learning‐based methodologies have emerged in the literature to support healthcare practitioners in achieving improved diagnostic analyses for DFU. This survey paper investigates various diagnostic methodologies for DFU, spanning traditional statistical approaches to cutting‐edge deep learning techniques. It systematically reviews key stages involved in diabetic foot ulcer classification (DFUC) methods, including preprocessing, feature extraction, and classification, explaining their benefits and drawbacks. The investigation extends to exploring state‐of‐the‐art convolutional neural network models tailored for DFUC, involving extensive experiments with data augmentation and transfer learning methods. The overview also outlines datasets commonly employed for evaluating DFUC methodologies. Recognizing that neuropathy and reduced blood flow in the lower limbs might be caused by atherosclerotic blood vessels, this paper provides recommendations to researchers and practitioners involved in routine medical therapy to prevent substantial complications. Apart from reviewing prior literature, this survey aims to influence the future of DFU diagnostics by outlining prospective research directions, particularly in the domains of personalized and intelligent healthcare. Finally, this overview is to contribute to the continual evolution of DFU diagnosis in order to provide more effective and customized medical care.This article is categorized under: Application Areas > Health Care Technologies > Machine Learning Technologies > Artificial Intelligence
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