Automated Detection of COVID-19 Infected Lesion on Computed Tomography Images Using Faster-RCNNs

2020 
The gold standard of a definitive test for the 2019 novel Corona Virus (SARS-CoV-2) is reverse-transcription polymerase chain reaction (RT-PCR) However, its sensitivity ranged between 50% - 90% with high false negatives Currently, false negatives are real clinical problems, caused by the absence of antibodies formation during sampling (incubation period), impaired antibody formation in immunocompromised patients, apart from sample acquirement technique and transportation issue Thus, repeated RT-PCR testing is often needed at the early stage of the disease, which may prove to be difficult in a pandemic situation In some research, the chest computed tomography (CT) image was a rapid and reliable method to diagnose patients with suspected SARS-CoV-2 with higher sensitivity compared to RT-PCR test, particularly the lab test is negative In this study, 420 CT images with 2,697 features from seven patients infected by SARS-CoV-2 and 200 CT images from healthy individuals are used for analyzing The convolutional neural networks (CNNs) with Faster-RCNNs architecture is proposed to process the infected lesion detection As a result, the proposed model shows 90 41% mAP, 99% accuracy, 98% sensitivity, 100% specificity, and 100% precision of classifier performances All performance produces a 100% score when it tests on external data CT image It can be seen from the detection result that Ground-glass opacities (GGO)-principal lesions on CT images in the peripheral and posterior sections of the lungs should be strongly suspected of developing SARS-CoV-2 pneumonia On average, it took less than 0 3 seconds per image to detect the abnormalities from a CT image from data pre-processing to the output of the report For a frontline clinical doctor, the proposed model may be a promising, supplementary diagnostic process
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