Sundar Sumod, Subramanian Sumathy, Mahmud Mufti
School of Computer Science and Engineering, VIT Vellore, Vellore 632 014, India.
School of Computer Science Engineering and Information Systems, VIT Vellore, Vellore 632 014, India.
Diagnostics (Basel). 2024 May 24;14(11):1093. doi: 10.3390/diagnostics14111093.
Diabetic retinopathy (DR) arises from blood vessel damage and is a leading cause of blindness on a global scale. Clinical professionals rely on examining fundus images to diagnose the disease, but this process is frequently prone to errors and is tedious. The usage of computer-assisted techniques offers assistance to clinicians in detecting the severity levels of the disease. Experiments involving automated diagnosis employing convolutional neural networks (CNNs) have produced impressive outcomes in medical imaging. At the same time, retinal image grading for detecting DR severity levels has predominantly focused on spatial features. More spectral features must be explored for a more efficient performance of this task. Analysing spectral features plays a vital role in various tasks, including identifying specific objects or materials, anomaly detection, and differentiation between different classes or categories within an image. In this context, a model incorporating Wavelet CNN and Support Vector Machine has been introduced and assessed to classify clinically significant grades of DR from retinal fundus images. The experiments were conducted on the EyePACS dataset and the performance of the proposed model was evaluated on the following metrics: precision, recall, F1-score, accuracy, and AUC score. The results obtained demonstrate better performance compared to other state-of-the-art techniques.
糖尿病视网膜病变(DR)源于血管损伤,是全球范围内导致失明的主要原因。临床专业人员依靠检查眼底图像来诊断该疾病,但这个过程经常容易出错且繁琐。计算机辅助技术的使用为临床医生检测疾病的严重程度提供了帮助。涉及使用卷积神经网络(CNN)进行自动诊断的实验在医学成像方面取得了令人瞩目的成果。同时,用于检测DR严重程度的视网膜图像分级主要集中在空间特征上。为了更高效地完成这项任务,必须探索更多的光谱特征。分析光谱特征在各种任务中起着至关重要的作用,包括识别特定物体或材料、异常检测以及区分图像中的不同类别。在这种背景下,一种结合小波卷积神经网络和支持向量机的模型被引入并进行评估,以从视网膜眼底图像中对具有临床意义的DR等级进行分类。实验在EyePACS数据集上进行,并根据以下指标评估所提出模型的性能:精度、召回率、F1分数、准确率和AUC分数。与其他现有技术相比,获得的结果显示出更好的性能。