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Automated detection of retinal whitening in malarial retinopathy

机译:自动检测疟疾视网膜病变中的视网膜增白

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Cerebral malaria (CM) is a severe neurological complication associated with malarial infection. Malaria affects approximately 200 million people worldwide, and claims 600,000 lives annually, 75% of whom are African children under five years of age. Because most of these mortalities are caused by the high incidence of CM misdiagnosis, there is a need for an accurate diagnostic to confirm the presence of CM. The retinal lesions associated with malarial retinopathy (MR) such as retinal whitening, vessel discoloration, and hemorrhages, are highly specific to CM, and their detection can improve the accuracy of CM diagnosis. This paper will focus on development of an automated method for the detection of retinal whitening which is a unique sign of MR that manifests due to retinal ischemia resulting from CM. We propose to detect the whitening region in retinal color images based on multiple color and textural features. First, we preprocess the image using color and textural features of the CMYK and CIE-XYZ color spaces to minimize camera reflex. Next, we utilize color features of the HSL, CMYK, and CIE-XYZ channels, along with the structural features of difference of Gaussians. A watershed segmentation algorithm is used to assign each image region a probability of being inside the whitening, based on extracted features. The algorithm was applied to a dataset of 54 images (40 with whitening and 14 controls) that resulted in an image-based (binary) classification with an AUC of 0.80. This provides 88% sensitivity at a specificity of 65%. For a clinical application that requires a high specificity setting, the algorithm can be tuned to a specificity of 89% at a sensitivity of 82%. This is the first published method for retinal whitening detection and combining it with the detection methods for vessel discoloration and hemorrhages can further improve the detection accuracy for malarial retinopathy.
机译:脑疟疾(cm)是一种严重的神经系统并发症,与疟疾感染相关。疟疾影响全世界约2亿人,每年有60万人生命,其中75%是五岁以下的非洲儿童。由于大多数这些死亡率是由CM误诊的高发病率引起的,因此需要准确诊断以确认厘米的存在。与疟原虫视网膜病变(MR)相关的视网膜病变,例如视网膜增白,血管变色和出血,对CM具有高度特异性,并且它们的检测可以提高CM诊断的准确性。本文将侧重于开发检测视网膜白化的自动化方法,这是由于厘米导致的视网膜缺血而表现出MR的独特迹象。我们建议基于多种颜色和纹理特征检测视网膜彩色图像中的增白区域。首先,我们使用CMYK和CIE-XYZ颜色空间的颜色和纹理特征进行预处理,以最大限度地减少相机反射。接下来,我们利用HSL,CMYK和CIE-XYZ通道的颜色特征以及高斯的结构特征。流域分割算法用于基于提取的特征分配每个图像区域的概率。将该算法应用于54图像(具有美白和14个控制)的数据集,其导致基于图像的(二进制)分类,其中AUC为0.80。这为65%的特异性提供了88%的灵敏度。对于需要高特异性设定的临床应用,该算法可以以82%的灵敏度调谐到89%的特异性。这是第一种公开的视网膜白化检测方法,并将其与血管变色和出血的检测方法相结合,可以进一步提高疟疾视网膜病变的检测精度。

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