Saproo Dimple, Mahajan Aparna N, Narwal Seema
Maharaja Agrasen University Baddi, Baddi, Himachal Pradesh 173205 India.
Maharaja Agrasen Institute of Technology (MAIT), Maharaja Agrasen University Baddi, Baddi, Himachal Pradesh 173205 India.
J Diabetes Metab Disord. 2024 Sep 20;23(2):2289-2314. doi: 10.1007/s40200-024-01497-1. eCollection 2024 Dec.
Diabetic retinopathy (DR) is a common problem of diabetes, and it is the cause of blindness worldwide. Detection of diabetic radiology disease in the early detection stage is crucial for preventing vision loss. In this work, a deep learning-based binary classification of DR images has been proposed to classify DR images into healthy and unhealthy. Transfer learning-based 20 pre-trained networks have been fine-tuned using a robust dataset of diabetic radiology images. The combined dataset has been collected from three robust databases of diabetic patients annotated by experienced ophthalmologists indicating healthy or non-healthy diabetic retina images.
This work has improved robust models by pre-processing the DR images by applying a denoising algorithm, normalization, and data augmentation. In this work, three rubout datasets of diabetic retinopathy images have been selected, named DRD- EyePACS, IDRiD, and APTOS-2019, for the extensive experiments, and a combined diabetic retinopathy image dataset has been generated for the exhaustive experiments. The datasets have been divided into training, testing, and validation sets, and the models use classification accuracy, sensitivity, specificity, precision, F1-score, and ROC-AUC to assess the model's efficiency for evaluating network performance. The present work has selected 20 different pre-trained networks based on three categories: Series, DAG, and lightweight.
This study uses pre-processed data augmentation and normalization of data to solve overfitting problems. From the exhaustive experiments, the three best pre-trained have been selected based on the best classification accuracy from each category. It is concluded that the trained model ResNet101 based on the DAG category effectively identifies diabetic retinopathy disease accurately from radiological images from all cases. It is noted that 97.33% accuracy has been achieved using ResNet101 in the category of DAG network.
Based on the experiment results, the proposed model ResNet101 helps healthcare professionals detect retina diseases early and provides practical solutions to diabetes patients. It also gives patients and experts a second opinion for early detection of diabetic retinopathy.
糖尿病视网膜病变(DR)是糖尿病的常见问题,也是全球失明的原因。在早期检测阶段检测糖尿病放射学疾病对于预防视力丧失至关重要。在这项工作中,提出了一种基于深度学习的DR图像二分类方法,将DR图像分为健康和不健康两类。使用强大的糖尿病放射学图像数据集对基于迁移学习的20个预训练网络进行了微调。该组合数据集是从三个由经验丰富的眼科医生标注的糖尿病患者强大数据库中收集的,这些数据库表明了健康或不健康的糖尿病视网膜图像。
这项工作通过应用去噪算法、归一化和数据增强对DR图像进行预处理,从而改进了强大的模型。在这项工作中,选择了三个糖尿病视网膜病变图像的擦除数据集,分别命名为DRD-EyePACS、IDRiD和APTOS-2019,用于广泛的实验,并生成了一个组合糖尿病视网膜病变图像数据集用于详尽的实验。这些数据集被分为训练集、测试集和验证集,模型使用分类准确率、灵敏度、特异性、精确率、F1分数和ROC-AUC来评估模型评估网络性能的效率。本工作基于系列、有向无环图(DAG)和轻量级三类选择了20个不同的预训练网络。
本研究使用预处理的数据增强和数据归一化来解决过拟合问题。从详尽的实验中,根据每个类别的最佳分类准确率选择了三个最佳的预训练模型。得出的结论是,基于DAG类别的训练模型ResNet101能够有效地从所有病例的放射图像中准确识别糖尿病视网膜病变疾病。值得注意的是,在DAG网络类别中使用ResNet101实现了97.33%的准确率。
基于实验结果,所提出的模型ResNet101有助于医疗保健专业人员早期检测视网膜疾病,并为糖尿病患者提供实际解决方案。它还为患者和专家提供了早期检测糖尿病视网膜病变的第二种观点。