Verma Garima
School of Computing, DIT University, Dehradun, India.
Pol J Radiol. 2024 Jul 31;89:e368-e377. doi: 10.5114/pjr/189412. eCollection 2024.
To detect foot ulcers in diabetic patients by analysing thermal images of the foot using a deep learning model and estimate the effectiveness of the proposed model by comparing it with some existing studies.
Open-source thermal images were used for the study. The dataset consists of two types of images of the feet of diabetic patients: normal and abnormal foot images. The dataset contains 1055 total images; among these, 543 are normal foot images, and the others are images of abnormal feet of the patient. The study's dataset was converted into a new and pre-processed dataset by applying canny edge detection and watershed segmentation. This pre-processed dataset was then balanced and enlarged using data augmentation, and after that, for prediction, a deep learning model was applied for the diagnosis of an ulcer in the foot. After applying canny edge detection and segmentation, the pre-processed dataset can enhance the model's performance for correct predictions and reduce the computational cost.
Our proposed model, utilizing ResNet50 and EfficientNetB0, was tested on both the original dataset and the pre-processed dataset after applying edge detection and segmentation. The results were highly promising, with ResNet50 achieving 89% and 89.1% accuracy for the two datasets, respectively, and EfficientNetB0 surpassing this with 96.1% and 99.4% accuracy for the two datasets, respectively.
Our study offers a practical solution for foot ulcer detection, particularly in situations where expert analysis is not readily available. The efficacy of our models was tested using real images, and they outperformed other available models, demonstrating their potential for real-world application.
通过使用深度学习模型分析足部热图像来检测糖尿病患者的足部溃疡,并通过与一些现有研究进行比较来评估所提出模型的有效性。
本研究使用开源热图像。数据集由糖尿病患者足部的两种类型图像组成:正常足部图像和异常足部图像。该数据集总共包含1055张图像;其中,543张是正常足部图像,其余是患者异常足部的图像。通过应用Canny边缘检测和分水岭分割,将研究数据集转换为一个新的预处理数据集。然后使用数据增强对这个预处理数据集进行平衡和扩充,之后,为了进行预测,应用深度学习模型来诊断足部溃疡。在应用Canny边缘检测和分割之后,预处理数据集可以提高模型正确预测的性能并降低计算成本。
我们提出的使用ResNet50和EfficientNetB0的模型,在应用边缘检测和分割后的原始数据集和预处理数据集上都进行了测试。结果非常有前景,ResNet50在两个数据集上的准确率分别达到89%和89.1%,而EfficientNetB0在两个数据集上的准确率分别超过了这一结果,达到96.1%和99.4%。
我们的研究为足部溃疡检测提供了一种实用的解决方案,特别是在难以获得专家分析的情况下。我们模型的有效性通过真实图像进行了测试,并且它们优于其他现有模型,证明了其在实际应用中的潜力。