Two-stage hybrid network for segmentation of COVID-19 pneumonia lesions in CT images: a multicenter study.
Yaxin ShangZechen WeiHui HuiXiaohu LiLiang LiYongqiang YuLigong LuLi LiHongjun LiQi YangMeiyun WangMeixiao ZhanWei WangGuanghao ZhangXiangjun WuLi WangJie LiuZhenyu ZhangYunfei ZhaPublished in: Medical & biological engineering & computing (2022)
COVID-19 has been spreading continuously since its outbreak, and the detection of its manifestations in the lung via chest computed tomography (CT) imaging is essential to investigate the diagnosis and prognosis of COVID-19 as an indispensable step. Automatic and accurate segmentation of infected lesions is highly required for fast and accurate diagnosis and further assessment of COVID-19 pneumonia. However, the two-dimensional methods generally neglect the intraslice context, while the three-dimensional methods usually have high GPU memory consumption and calculation cost. To address these limitations, we propose a two-stage hybrid UNet to automatically segment infected regions, which is evaluated on the multicenter data obtained from seven hospitals. Moreover, we train a 3D-ResNet for COVID-19 pneumonia screening. In segmentation tasks, the Dice coefficient reaches 97.23% for lung segmentation and 84.58% for lesion segmentation. In classification tasks, our model can identify COVID-19 pneumonia with an area under the receiver-operating characteristic curve value of 0.92, an accuracy of 92.44%, a sensitivity of 93.94%, and a specificity of 92.45%. In comparison with other state-of-the-art methods, the proposed approach could be implemented as an efficient assisting tool for radiologists in COVID-19 diagnosis from CT images.
Keyphrases
- coronavirus disease
- deep learning
- sars cov
- convolutional neural network
- computed tomography
- working memory
- positron emission tomography
- machine learning
- high resolution
- image quality
- respiratory syndrome coronavirus
- artificial intelligence
- clinical trial
- magnetic resonance imaging
- magnetic resonance
- photodynamic therapy
- intensive care unit
- optical coherence tomography
- clinical evaluation