DIAGNOSE EYES DISEASES USING VARIOUS FEATURES EXTRACTION APPROACHES AND MACHINE LEARNING ALGORITHMS

Zahraa Najm Abed, Abbas M Al-Bakry
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Abstract

Ophthalmic diseases like glaucoma, diabetic retinopathy, and cataracts are the main cause of visual impairment worldwide. With the use of the fundus images, it could be difficult for a clinician to detect eye diseases early enough. By other hand, the diagnoses of eye disease are prone to errors, challenging and labor-intensive. Thus, for the purpose of identifying various eye problems with the use of the fundus images, a system of automated ocular disease detection with computer-assisted tools is needed. Due to machine learning (ML) algorithms' advanced skills for image classification, this kind of system is feasible. An essential area of artificial intelligence)AI (is machine learning. Ophthalmologists will soon be able to deliver accurate diagnoses and support individualized healthcare thanks to the general capacity of machine learning to automatically identify, find, and grade pathological aspects in ocular disorders. This work presents a ML-based method for targeted ocular detection. The Ocular Disease Intelligent Recognition (ODIR) dataset, which includes 5,000 images of 8 different fundus types, was classified using machine learning methods. Various ocular diseases are represented by these classes. In this study, the dataset was divided into 70% training data and 30% test data, and preprocessing operations were performed on all images starting from color image conversion to grayscale, histogram equalization, BLUR, and resizing operation. The feature extraction represents the next phase in this study ,two algorithms are applied to perform the extraction of features which includes: SIFT(Scale-invariant feature transform) and GLCM(Gray Level Co-occurrence Matrix), ODIR dataset is then subjected to the classification techniques Naïve Bayes, Decision Tree, Random Forest, and K-nearest Neighbor. This study achieved the highest accuracy for binary classification (abnormal and normal) which is 75% (NB algorithm), 62% (RF algorithm), 53% (KNN algorithm), 51% (DT algorithm) and achieved the highest accuracy for multiclass classification (types of eye diseases) which is 88% (RF algorithm), 61% (KNN algorithm) 42% (NB algorithm), and 39% (DT algorithm).
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使用各种特征提取方法和机器学习算法诊断眼部疾病
青光眼、糖尿病视网膜病变和白内障等眼科疾病是全球视力损害的主要原因。由于使用眼底图像,临床医生可能很难及早发现眼部疾病。另一方面,眼病的诊断容易出错,具有挑战性和劳动密集型。因此,为了利用眼底图像识别各种眼部问题,需要一种带有计算机辅助工具的眼部疾病自动检测系统。由于机器学习(ML)算法在图像分类方面的先进技术,这种系统是可行的。人工智能的一个重要领域是机器学习。由于机器学习能够自动识别、发现和分级眼部疾病的病理方面,眼科医生将很快能够提供准确的诊断并支持个性化的医疗保健。本文提出了一种基于机器学习的眼部目标检测方法。眼部疾病智能识别(ODIR)数据集包括8种不同眼底类型的5000张图像,使用机器学习方法进行分类。这些类别代表了各种眼病。在本研究中,将数据集分为70%的训练数据和30%的测试数据,对所有图像进行预处理操作,从彩色图像转换到灰度、直方图均衡化、模糊和调整大小操作。特征提取是本研究的下一阶段,采用两种算法进行特征提取,分别是SIFT(Scale-invariant feature transform)和GLCM(Gray Level Co-occurrence Matrix),然后对ODIR数据集进行Naïve贝叶斯、决策树、随机森林和k近邻分类技术。本研究对二元分类(异常和正常)的准确率最高,分别为75% (NB算法)、62% (RF算法)、53% (KNN算法)、51% (DT算法);对多类分类(眼病类型)的准确率最高,分别为88% (RF算法)、61% (KNN算法)、42% (NB算法)、39% (DT算法)。
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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