Author: Yu, Fuli; Zhu, Yu; Qin, Xiangxiang; Xin, Ying; Yang, Dawei; Xu, Tao
Title: A multiâ€class COVIDâ€19 segmentation network with pyramid attention and edge loss in CT images Cord-id: ftiy45s8 Document date: 2021_5_4
ID: ftiy45s8
Snippet: At the end of 2019, a novel coronavirus COVIDâ€19 broke out. Due to its high contagiousness, more than 74 million people have been infected worldwide. Automatic segmentation of the COVIDâ€19 lesion area in CT images is an effective auxiliary medical technology which can quantitatively diagnose and judge the severity of the disease. In this paper, a multiâ€class COVIDâ€19 CT image segmentation network is proposed, which includes a pyramid attention module to extract multiâ€scale contextual a
Document: At the end of 2019, a novel coronavirus COVIDâ€19 broke out. Due to its high contagiousness, more than 74 million people have been infected worldwide. Automatic segmentation of the COVIDâ€19 lesion area in CT images is an effective auxiliary medical technology which can quantitatively diagnose and judge the severity of the disease. In this paper, a multiâ€class COVIDâ€19 CT image segmentation network is proposed, which includes a pyramid attention module to extract multiâ€scale contextual attention information, and a residual convolution module to improve the discriminative ability of the network. A wavelet edge loss function is also proposed to extract edge features of the lesion area to improve the segmentation accuracy. For the experiment, a dataset of 4369 CT slices is constructed, including three symptoms: ground glass opacities, interstitial infiltrates, and lung consolidation. The dice similarity coefficients of three symptoms of the model achieve 0.7704, 0.7900, 0.8241 respectively. The performance of the proposed network on public dataset COVIDâ€SemiSeg is also evaluated. The results demonstrate that this model outperforms other stateâ€ofâ€theâ€art methods and can be a powerful tool to assist in the diagnosis of positive infection cases, and promote the development of intelligent technology in the medical field.
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