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Automated Detection of Malarial Retinopathy in Digital Fundus Images for Improved Diagnosis in Malawian Children with Clinically Defined Cerebral Malaria

机译:自动检测数字眼底图像中的疟疾视网膜病变以改善诊断为临床定义的脑疟疾的马拉维儿童的诊断。

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摘要

Cerebral malaria (CM), a complication of malaria infection, is the cause of the majority of malaria-associated deaths in African children. The standard clinical case definition for CM misclassifies ~25% of patients, but when malarial retinopathy (MR) is added to the clinical case definition, the specificity improves from 61% to 95%. Ocular fundoscopy requires expensive equipment and technical expertise not often available in malaria endemic settings, so we developed an automated software system to analyze retinal color images for MR lesions: retinal whitening, vessel discoloration, and white-centered hemorrhages. The individual lesion detection algorithms were combined using a partial least square classifier to determine the presence or absence of MR. We used a retrospective retinal image dataset of 86 pediatric patients with clinically defined CM (70 with MR and 16 without) to evaluate the algorithm performance. Our goal was to reduce the false positive rate of CM diagnosis, and so the algorithms were tuned at high specificity. This yielded sensitivity/specificity of 95%/100% for the detection of MR overall, and 65%/94% for retinal whitening, 62%/100% for vessel discoloration, and 73%/96% for hemorrhages. This automated system for detecting MR using retinal color images has the potential to improve the accuracy of CM diagnosis.
机译:在非洲儿童中,大多数与疟疾有关的死亡是由脑疟疾(一种引起疟疾感染的并发症)引起的。 CM的标准临床病例定义将约25%的患者误分类,但是将疟疾视网膜病变(MR)添加到临床病例定义中时,特异性从61%提高到95%。眼底镜检查需要昂贵的设备和技术专长,而疟疾流行环境中通常不具备这种技术,因此我们开发了一种自动化软件系统来分析MR病变的视网膜彩色图像:视网膜变白,血管变色和以白色为中心的出血。使用偏最小二乘分类器组合各个病变检测算法,以确定是否存在MR。我们使用回顾性视网膜图像数据集,对临床定义为CM(86名MR患者和16名无CM患者)的小儿患者进行评估,以评估算法的性能。我们的目标是减少CM诊断的假阳性率,因此对算法进行了高特异性调整。整体检测MR的敏感性/特异性为95%/ 100%,视网膜增白的敏感性/特异性为65%/ 94%,血管变色的敏感性/特异性为62%/ 100%,出血的敏感性/特异性为73%/ 96%。这种使用视网膜彩色图像检测MR的自动化系统具有提高CM诊断准确性的潜力。

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