Optimized Ensemble Machine Learning-Based Diabetic Retinopathy Grading Using Multiple Region of Interest Analysis and Bayesian Approach

W. Nancy, A. C. Kavida
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引用次数: 3

Abstract

Diabetic Retinopathy (DR) is a critical abnormality in the retina mainly caused by diabetes. The early diagnosis of DR is essential to avoid painless blindness. The conventional DR diagnosis is manual and requires skilled Ophthalmologists. The Ophthalmologist’s analyses are subjective to inconsistency and record maintenance issues. Hence, there is a need for other DR diagnosis methods. In this paper, we proposed an AdaBoost algorithm-based ensemble classification approach to classify DR grades. The major objective of the proposed approach is an enhancement of DR classification performance by using optimized features and ensemble machine learning techniques. The proposed method classifies different grades of DR using the Meyer wavelet and retinal vessel-based features extracted from multiple regions of interest of the retina. To improve the predictive accuracy, we used a Bayesian algorithm to optimize the hyper-parameters of the proposed ensemble classifier. The proposed DR grading model was constructed and evaluated by using the MESSIDOR fundus image dataset. In evaluation experiment, the classification outcome of the proposed approach was evaluated by the confusion matrix and receiver operating characteristic (ROC) based metrics. The evaluation experiments show that the proposed approach attained 99.2% precision, 98.2% recall, 99% accuracy, and 0.99 AUC. The experimental findings also indicate that the proposed approach’s classification outcome is significantly better than that of state of art DR classification methods.
基于多兴趣区分析和贝叶斯方法的优化集成机器学习的糖尿病视网膜病变分级
糖尿病视网膜病变(DR)是一种主要由糖尿病引起的严重视网膜病变。DR的早期诊断对于避免无痛性失明至关重要。传统的DR诊断是手动的,需要熟练的眼科医生。眼科医生的分析是主观的不一致和记录维护问题。因此,需要其他DR诊断方法。在本文中,我们提出了一种基于AdaBoost算法的集成分类方法来对DR等级进行分类。提出的方法的主要目标是通过使用优化的特征和集成机器学习技术来增强DR分类性能。该方法利用Meyer小波和从视网膜的多个感兴趣区域提取的基于视网膜血管的特征对不同程度的DR进行分类。为了提高预测精度,我们使用贝叶斯算法来优化所提出的集成分类器的超参数。利用MESSIDOR眼底图像数据集构建DR分级模型并对其进行评价。在评价实验中,采用基于混淆矩阵和受试者工作特征(ROC)的指标对该方法的分类结果进行评价。评价实验表明,该方法的准确率为99.2%,召回率为98.2%,准确率为99%,AUC为0.99。实验结果还表明,该方法的分类结果明显优于目前最先进的DR分类方法。
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