Literature DB >> 33757431

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

Dongdong Gu1,2, Liyun Chen3,2, Fei Shan4, Liming Xia5, Jun Liu6, Zhanhao Mo7, Fuhua Yan8, Bin Song9, Yaozong Gao2, Xiaohuan Cao2, Yanbo Chen2, Ying Shao2, Miaofei Han2, Bin Wang2, Guocai Liu1, Qian Wang3, Feng Shi2, Dinggang Shen2, Zhong Xue10.   

Abstract

BACKGROUND: Spatial and temporal lung infection distributions of coronavirus disease 2019 (COVID-19) and their changes could reveal important patterns to better understand the disease and its time course. This paper presents a pipeline to analyze statistically these patterns by automatically segmenting the infection regions and registering them onto a common template.
METHODS: A VB-Net is designed to automatically segment infection regions in CT images. After training and validating the model, we segmented all the CT images in the study. The segmentation results are then warped onto a pre-defined template CT image using deformable registration based on lung fields. Then, the spatial distributions of infection regions and those during the course of the disease are calculated at the voxel level. Visualization and quantitative comparison can be performed between different groups. We compared the distribution maps between COVID-19 and community acquired pneumonia (CAP), between severe and critical COVID-19, and across the time course of the disease.
RESULTS: For the performance of infection segmentation, comparing the segmentation results with manually annotated ground-truth, the average Dice is 91.6% ± 10.0%, which is close to the inter-rater difference between two radiologists (the Dice is 96.1% ± 3.5%). The distribution map of infection regions shows that high probability regions are in the peripheral subpleural (up to 35.1% in probability). COVID-19 GGO lesions are more widely spread than consolidations, and the latter are located more peripherally. Onset images of severe COVID-19 (inpatients) show similar lesion distributions but with smaller areas of significant difference in the right lower lobe compared to critical COVID-19 (intensive care unit patients). About the disease course, critical COVID-19 patients showed four subsequent patterns (progression, absorption, enlargement, and further absorption) in our collected dataset, with remarkable concurrent HU patterns for GGO and consolidations.
CONCLUSIONS: 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.

Entities:  

Keywords:  COVID-19; Coronavirus infections; Lung; Probability; Registration; Segmentation

Mesh:

Year:  2021        PMID: 33757431      PMCID: PMC7987127          DOI: 10.1186/s12880-021-00588-2

Source DB:  PubMed          Journal:  BMC Med Imaging        ISSN: 1471-2342            Impact factor:   1.930


  12 in total

1.  Diffeomorphic nonlinear transformations: a local parametric approach for image registration.

Authors:  R Narayanan; J A Fessler; H Park; C R Meyerl
Journal:  Inf Process Med Imaging       Date:  2005

2.  Coronavirus Disease 2019 (COVID-19): Role of Chest CT in Diagnosis and Management.

Authors:  Yan Li; Liming Xia
Journal:  AJR Am J Roentgenol       Date:  2020-03-04       Impact factor: 3.959

3.  Relation Between Chest CT Findings and Clinical Conditions of Coronavirus Disease (COVID-19) Pneumonia: A Multicenter Study.

Authors:  Wei Zhao; Zheng Zhong; Xingzhi Xie; Qizhi Yu; Jun Liu
Journal:  AJR Am J Roentgenol       Date:  2020-03-03       Impact factor: 3.959

4.  Diffeomorphic registration using B-splines.

Authors:  Daniel Rueckert; Paul Aljabar; Rolf A Heckemann; Joseph V Hajnal; Alexander Hammers
Journal:  Med Image Comput Comput Assist Interv       Date:  2006

5.  Time Course of Lung Changes at Chest CT during Recovery from Coronavirus Disease 2019 (COVID-19).

Authors:  Feng Pan; Tianhe Ye; Peng Sun; Shan Gui; Bo Liang; Lingli Li; Dandan Zheng; Jiazheng Wang; Richard L Hesketh; Lian Yang; Chuansheng Zheng
Journal:  Radiology       Date:  2020-02-13       Impact factor: 11.105

6.  Chest CT Findings in Coronavirus Disease-19 (COVID-19): Relationship to Duration of Infection.

Authors:  Adam Bernheim; Xueyan Mei; Mingqian Huang; Yang Yang; Zahi A Fayad; Ning Zhang; Kaiyue Diao; Bin Lin; Xiqi Zhu; Kunwei Li; Shaolin Li; Hong Shan; Adam Jacobi; Michael Chung
Journal:  Radiology       Date:  2020-02-20       Impact factor: 11.105

7.  Chest CT Features of COVID-19 in Rome, Italy.

Authors:  Damiano Caruso; Marta Zerunian; Michela Polici; Francesco Pucciarelli; Tiziano Polidori; Carlotta Rucci; Gisella Guido; Benedetta Bracci; Chiara De Dominicis; Andrea Laghi
Journal:  Radiology       Date:  2020-04-03       Impact factor: 11.105

8.  A case report of COVID-19 with false negative RT-PCR test: necessity of chest CT.

Authors:  Hao Feng; Yujian Liu; Minli Lv; Jianquan Zhong
Journal:  Jpn J Radiol       Date:  2020-04-07       Impact factor: 2.374

9.  Abnormal lung quantification in chest CT images of COVID-19 patients with deep learning and its application to severity prediction.

Authors:  Fei Shan; Yaozong Gao; Jun Wang; Weiya Shi; Nannan Shi; Miaofei Han; Zhong Xue; Dinggang Shen; Yuxin Shi
Journal:  Med Phys       Date:  2021-03-09       Impact factor: 4.506

10.  The Clinical and Chest CT Features Associated With Severe and Critical COVID-19 Pneumonia.

Authors:  Kunhua Li; Jiong Wu; Faqi Wu; Dajing Guo; Linli Chen; Zheng Fang; Chuanming Li
Journal:  Invest Radiol       Date:  2020-06       Impact factor: 10.065

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