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Retinal images benchmark for the detection of diabetic retinopathy and clinically significant macular edema (CSME)

机译:视网膜图像基准检测糖尿病视网膜病变和临床显着的黄斑水肿(CSME)

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Diabetes mellitus is an enduring disease related with significant morbidity and mortality. The main pathogenesis behind this disease is its numerous micro- and macrovascular complications. In developing countries, diabetic retinopathy (DR) is one of the major sources of vision impairment in working age population. DR has been classified into two categories: proliferative diabetic retinopathy (PDR) and non-proliferative diabetic retinopathy (NPDR). NPDR is further classified into mild, moderate and severe, while PDR is further classified into early PDR, high risk PDR and advanced diabetic eye disease. DR is a disease caused due to high blood glucose levels which result in vision loss or permanent blindness. High-level advancements in the field of bio-medical image processing have speeded up the automated process of disease diagnoses and analysis. Much research has been conducted and computerized systems have been designed to detect and analyze retinal diseases through image processing. Similarly, a number of algorithms have been designed to detect and grade DR by analyzing different symptoms including microaneurysms, soft exudates, hard exudates, cotton wool spots, fibrotic bands, neovascularization on disc (NVD), neovascularization elsewhere (NVE), hemorrhages and tractional bands. The visual examination of the retina is a vital test to diagnose DR-related complications. However, all the DR computer-aided diagnostic systems require a standard dataset for the estimation of their efficiency, performance and accuracy. This research presents a benchmark for the evaluation of computer-based DR diagnostic systems. The existing DR benchmarks are small in size and do not cover all the DR stages and categories. The dataset contains 1445 high-quality fundus photographs of retinal images, acquired over 2 years from the records of the patients who presented to the Department of Ophthalmology, Holy Family Hospital, Rawal-pindi. This benchmark provides an evaluation platform for medical image analysis researchers. Furthermore, it provides evaluation data for all the stages of DR.
机译:糖尿病是一种持久的疾病,患有显着的发病率和死亡率。这种疾病背后的主要发病机制是其许多微血管并发症。在发展中国家,糖尿病视网膜病变(DR)是工作年龄人口中视力障碍的主要来源之一。 DR已被分为两类:增殖性糖尿病视网膜病变(PDR)和非增殖性糖尿病视网膜病变(NPDR)。 NPDR进一步分为轻度,中等和严重,而PDR进一步分为PDR早期的PDR,高危PDR和晚期糖尿病眼病。博士是由于高血糖水平导致的疾病,导致视力丧失或永久失明。生物医学图像处理领域的高级进展加速了疾病诊断的自动化过程。已经进行了许多研究,并设计了通过图像处理来检测和分析视网膜疾病的计算机化系统。类似地,已经设计了许多算法来通过分析不同的症状来检测和等级DR,包括微瘤,软渗滤物,硬渗漏物,棉花羊毛斑,纤维斑,圆盘(NVD),新生血管(NVE),出血和牵引乐队。视网膜的视觉检查是诊断博士相关并发症的重要测试。但是,所有DR计算机辅助诊断系统都需要标准数据集以估计其效率,性能和准确性。本研究提出了一种评估基于计算机的DR诊断系统的基准。现有的DR基准尺寸较小,不涵盖所有DR级和类别。该数据集包含1445张视网膜图像的高质量照片,从患者的记录中获取了2年,从给眼科,圣家族医院,Rawal-Pindi撰写。该基准测试为医学图像分析研究人员提供了评估平台。此外,它为博士的所有阶段提供评估数据。

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