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首页> 外文期刊>Irish journal of medical science >Investigations of severity level measurements for diabetic macular oedema using machine learning algorithms
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Investigations of severity level measurements for diabetic macular oedema using machine learning algorithms

机译:使用机器学习算法研究糖尿病黄斑水肿的严重程度测量

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摘要

Abstract Background The macula is an important part of the human visual system and is responsible for clear and colour vision. Macular oedema happens when fluid and protein deposit on or below the macula of the eye and cause the macula to thicken and swell. Normally, it occurs due to diabetes called diabetic macular oedema. Diabetic macular oedema (DME) is one of the main causes of visual impairment in patients. Aim The aims of the present study are to detect and localize abnormalities in blood vessels with respect to macula in order to prevent vision loss for the diabetic patients. Methods In this work, a novel fully computerized algorithm is used for the recognition of various diseases in macula using both fundus images and optical coherence tomography (OCT) images. Abnormal blood vessels are segmented using thresholding algorithm. The classification is performed by three different classifiers, namely, the support vector machine (SVM), cascade neural network (CNN) and partial least square (PLS) classifiers, which are employed to identify whether the image is normal or abnormal. Conclusion The results of all of the classifiers are compared based on their accuracy. The classifier accuracies of the SVM, cascade neural network and partial least square are 98.33, 97.16 and 94.34%, respectively. While analysing DME using both images, OCT produced efficient output than fundus images. Information about the severity of the disease and the localization of the pathologies is very useful to the ophthalmologist for diagnosing disease and choosing the proper treatment for a patient to prevent vision loss.
机译:摘要背景黄斑是人类视觉系统的重要组成部分,负责清晰和彩色视觉。当液体和蛋白质沉积在眼睛的黄斑或低于眼睛下方并导致黄斑加厚和膨胀时,发生黄斑水肿。通常,由于糖尿病称为糖尿病黄斑水肿。糖尿病黄斑水肿(DME)是患者视力障碍的主要原因之一。目的本研究的目的是检测和定位血管相对于斑块的异常,以防止糖尿病患者的视力丧失。方法在这项工作中,使用眼底图像和光学相干断层扫描(OCT)图像使用一种新型全电脑化算法用于识别MUCULA中的各种疾病。使用阈值算法分段异常血管。分类由三种不同的分类器执行,即,支持向量机(SVM),级联神经网络(CNN)和局部最小二乘(PLS)分类器,其用于识别图像是否正常或异常。结论基于其准确性比较所有分类器的结果。 SVM,级联神经网络和局部最小正方形的分类器精度分别为98.33,97.16和94.34%。在使用两个图像分析DME时,OCT产生的高效输出而不是眼底图像。关于疾病严重程度和病理定位的信息对眼科医生来说对于诊断疾病并选择患者的适当治疗,以防止视力丧失的适当治疗非常有用。

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