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Computing infection distributions and longitudinal evolution patterns in lung CT images.

Dongdong GuLiyun ChenFei ShanLiming XiaJun LiuZhanhao MoFuhua YanBin SongYaozong GaoXiaohuan CaoYanbo ChenYing ShaoMiaofei HanBin WangGuocai LiuQian WangFeng ShiDinggang ShenZhong Xue
Published in: BMC medical imaging (2021)
By segmenting the infection regions with a VB-Net and registering all the CT images and the segmentation results onto a template, spatial distribution patterns of infections can be computed automatically. The algorithm provides an effective tool to visualize and quantify the spatial patterns of lung infection diseases and their changes during the disease course. Our results demonstrate different patterns between COVID-19 and CAP, between severe and critical COVID-19, as well as four subsequent disease course patterns of the severe COVID-19 patients studied, with remarkable concurrent HU patterns for GGO and consolidations.
Keyphrases
  • sars cov
  • deep learning
  • coronavirus disease
  • convolutional neural network
  • machine learning
  • early onset
  • radiation therapy
  • image quality
  • magnetic resonance
  • solid state