Diyabetik Ayağın Derin Öğrenme Yöntemleriyle Ayırıcı Tanısı

Maide ÇAKIR BAYER, Hüseyin Canbolat, Gökalp Tulum
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Abstract

Diabetic foot complications, caused by prolonged hyperglycemia, are a significant health concern among diabetes patients. Majority of patients develop diabetic foot complications, contributing significantly to diabetes-related hospital admissions. These complications include foot ulcers, infections, ischemia, Charcot foot, and neuropathy. They also increase the risk of amputation, affecting quality of life and putting strain on healthcare systems. At this stage, early diagnosis plays a vital role. The process of diagnosing involves not only identifying the presence or absence of a disease, but also categorizing the disease. In this study, we examine the use of deep learning methods in the diagnosis of diabetic foot conditions. It explores various aspects such as predictive modeling and image analysis. The study discusses the progression of model designs, data sources, and interpretability methodologies, with a focus on improving accuracy and early detection. Overall, the study provides a comprehensive analysis of the current state of deep learning in diabetic foot problems with highlighting advancements.
利用深度学习方法对糖尿病足进行鉴别诊断
糖尿病足并发症是由长期高血糖引起的,是糖尿病患者的一个重大健康问题。大多数患者都会出现糖尿病足并发症,这也是导致糖尿病患者入院的重要原因。这些并发症包括足部溃疡、感染、缺血、夏科足和神经病变。这些并发症还会增加截肢的风险,影响生活质量,给医疗系统带来压力。在这一阶段,早期诊断起着至关重要的作用。诊断过程不仅包括确定疾病的存在与否,还包括对疾病进行分类。在本研究中,我们探讨了深度学习方法在糖尿病足疾病诊断中的应用。研究探讨了预测建模和图像分析等各个方面。研究讨论了模型设计、数据源和可解释性方法的进展,重点是提高准确性和早期检测。总之,该研究全面分析了深度学习在糖尿病足问题中的应用现状,并重点介绍了相关进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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