Author: Zhang, XiaoQing; Wang, GuangYu; Zhao, Shuâ€Guang
Title: COVSegâ€NET: A deep convolution neural network for COVIDâ€19 lung CT image segmentation Cord-id: mv227uuk Document date: 2021_6_4
ID: mv227uuk
Snippet: COVIDâ€19 is a new type of respiratory infectious disease that poses a serious threat to the survival of human beings all over the world. Using artificial intelligence technology to analyze lung images of COVIDâ€19 patients can achieve rapid and effective detection. This study proposes a COVSegâ€NET model that can accurately segment ground glass opaque lesions in COVIDâ€19 lung CT images. The COVSegâ€NET model is based on the fully convolutional neural network model structure, which mainly
Document: COVIDâ€19 is a new type of respiratory infectious disease that poses a serious threat to the survival of human beings all over the world. Using artificial intelligence technology to analyze lung images of COVIDâ€19 patients can achieve rapid and effective detection. This study proposes a COVSegâ€NET model that can accurately segment ground glass opaque lesions in COVIDâ€19 lung CT images. The COVSegâ€NET model is based on the fully convolutional neural network model structure, which mainly includes convolutional layer, nonlinear unit activation function, maximum pooling layer, batch normalization layer, merge layer, flattening layer, sigmoid layer, and so forth. Through experiments and evaluation results, it can be seen that the dice coefficient, sensitivity, and specificity of the COVSegâ€NET model are 0.561, 0.447, and 0.996 respectively, which are more advanced than other deep learning methods. The COVSegâ€NET model can use a smaller training set and shorter test time to obtain better segmentation results.
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