假阳性悖论
脑疟疾
视网膜
视网膜病变
视网膜
疟疾
医学
眼科
人工智能
病理
计算机科学
生物
恶性疟原虫
神经科学
内分泌学
糖尿病
作者
Aswathy Rajendra Kurup,Peter Solíz,Sheila C Nemeth,Vinayak Joshi
标识
DOI:10.1109/ssiai49293.2020.9094595
摘要
Cerebral Malaria (CM) is a severe neurological syndrome of malaria mainly found in children and is associated with highly specific retinal lesions. The manifestation of these indications of CM in the retina is called malarial retinopathy (MR). All patients showing clinical signs of CM are commonly diagnosed and treated accordingly; however, 23% of them are misdiagnosed as they suffer from another infection with identical clinical symptoms. Due to these underlying symptoms, the false positive cases may go untreated and could result in death of the patients. A diagnostic test is needed that is highly specific in order to reduce false positives. The purpose of this study to demonstrate a technique based on a transfer learning technique using images from three different retinal cameras to identify the hemorrhages and whitening lesions in the retina which can accurately identify the patients with MR. The MR detection model gives a specificity of 100% and a sensitivity of 90% with an AUC of 0.98. The algorithm demonstrates the potential of accurate MR detection with a low-cost retinal camera.
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