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Automated Detection of Malarial Retinopathy in Retinal Fundus Images obtained in Clinical Settings

机译:在临床环境中自动检测视网膜眼底图像中的疟疾视网膜病变

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Cerebral malaria (CM) is a life-threatening clinical syndrome associated with 5-10% of malarial infection cases, most prevalent in Africa. About 23% of cerebral malaria cases are misdiagnosed as false positives, leading to inappropriate treatment and loss of lives. Malarial retinopathy (MR) is a retinal manifestation of CM that presents with a highly specific set of lesions. The detection of MR can reduce the false positive diagnosis of CM and alert physicians to investigate for other possible causes of the clinical symptoms and apply a more appropriate clinical intervention of underlying diseases. In order to facilitate easily accessible and affordable means of MR detection, we have developed an automated software system that detects the retinal lesions specific to MR, whitening and hemorrhages, using retinal color fundus images. The individual lesion detection algorithms were combined into an MR detection model using partial least square classifier. The classifier model was trained and tested on retinal image dataset obtained from 64 patients presenting with clinical signs of CM (44 with MR, 20 without MR). The MR detection model yielded specificity of 92% and sensitivity of 68%, with an AUC of 0.82. The proposed MR detection system demonstrates potential for broad screening of MR and can be integrated with a low-cost and portable retinal camera, to provide a bed-side tool for confirming CM diagnosis.
机译:脑型疟疾(CM)是一种威胁生命的临床综合征,与5-10%的疟疾感染病例相关,在非洲最为普遍。约23%的脑部疟疾病例被误诊为假阳性,导致治疗不当和生命损失。疟疾视网膜病变(MR)是CM的一种视网膜表现,表现为高度特异性的病变。 MR的检测可以减少CM的误报诊断,并提醒医生调查其他可能的临床症状原因,并针对潜在疾病进行更适当的临床干预。为了促进容易获得和负担得起的MR检测手段,我们开发了一种自动化软件系统,该系统可以使用视网膜彩色眼底图像检测特定于MR的视网膜病变,增白和出血。使用局部最小二乘分类器将单个病变检测算法组合到MR检测模型中。对分类器模型进行了训练,并在视网膜图像数据集上进行了测试,该数据集来自64例具有CM临床体征的患者(44例为MR,20例为无MR)。 MR检测模型的特异性为92%,灵敏度为68%,AUC为0.82。拟议的MR检测系统展示了广泛筛查MR的潜力,并且可以与低成本便携式视网膜摄像头集成在一起,以提供床边工具来确认CM诊断。

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