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Automatic detection of diabetic retinopathy features in Ultra-Wide Field retinal images

机译:超宽场视网膜图像中的糖尿病视网膜病特征的自动检测

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Diabetic retinopathy (DR) is a major cause of irreversible vision loss. DR screening relies on retinal clinical signs (features). Opportunities for computer-aided DR feature detection have emerged with the development of Ultra-Wide-Field (UWF) digital scanning laser technology. UWF imaging covers 82% greater retinal area (200°), against 45° in conventional cameras3, allowing more clinically relevant retinopathy to be detected4. UWF images also provide a high resolution of 3078 x 2702 pixels. Currently DR screening uses 7 overlapping conventional fundus images, and the UWF images provide similar results1'4. However, in 40% of cases, more retinopathy was found outside the 7-field ETDRS) fields by UWF and in 10% of cases, retinopathy was reclassified as more severe4. This is because UWF imaging allows examination of both the central retina and more peripheral regions, with the latter implicated in DR6. We have developed an algorithm for automatic recognition of DR features, including bright (cotton wool spots and exudates) and dark lesions (microaneurysms and blot, dot and flame haemorrhages) in UWF images. The algorithm extracts features from grayscale (green "red-free" laser light) and colour-composite UWF images, including intensity, Histogram-of-Gradient and Local binary patterns. Pixel-based classification is performed with three different classifiers. The main contribution is the automatic detection of DR features in the peripheral retina. The method is evaluated by leave-one-out cross-validation on 25 UWF retinal images with 167 bright lesions, and 61 other images with 1089 dark lesions. The SVM classifier performs best with AUC of 94.4%/95.31% for bright/dark lesions.
机译:糖尿病视网膜病变(DR)是不可逆视力丧失的主要原因。 DR筛选依赖于视网膜临床症状(特征)。电脑辅助DR功能检测的机会随着超宽场(UWF)数字扫描激光技术的开发出现了。 UWF成像覆盖82%的视网膜区域(200°),在常规摄像机中以45°占45°,允许检测更多临床相关的视网膜病4。 UWF图像还提供3078×2702像素的高分辨率。目前DR筛选使用7重叠的传统眼底图像,并且UWF图像提供了类似的结果1.4。然而,在40%的病例中,通过UWF和10%的病例在7场ETDRS)领域中发现了更多的视网膜病变,视网膜病变重新分类为严重4。这是因为UWF成像允许检查中心视网膜和更多的外围区域,后者涉及DR6。我们开发了一种自动识别DR功能的算法,包括在UWF图像中的明亮(棉花羊毛斑点和渗出物)和暗病变(MicroNeureSmsms和Blot,Dot和Flame,Dot和Flames)。该算法从灰度(绿色“无线”激光)和彩色复合UWF图像中提取特征,包括强度,梯度直方图和局部二进制模式。基于像素的分类是用三个不同的分类器执行。主要贡献是自动检测外围视网膜中的DR功能。该方法通过留出25 UWF视网膜图像的左右交叉验证评估,具有167个明显病变,61个其他具有1089个暗病变的图像。 SVM分类器对于明亮/暗病变的AUC,AUC为94.4%/ 95.31%。

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