Literature DB >> 35782269

Development and validation of bone-suppressed deep learning classification of COVID-19 presentation in chest radiographs.

Ngo Fung Daniel Lam1, Hongfei Sun1, Liming Song1, Dongrong Yang1, Shaohua Zhi1, Ge Ren1, Pak Hei Chou1, Shiu Bun Nelson Wan2, Man Fung Esther Wong2, King Kwong Chan3, Hoi Ching Hailey Tsang3, Feng-Ming Spring Kong4, Yì Xiáng J Wáng5, Jing Qin6, Lawrence Wing Chi Chan1, Michael Ying1, Jing Cai1.   

Abstract

Background: Coronavirus disease 2019 (COVID-19) is a pandemic disease. Fast and accurate diagnosis of COVID-19 from chest radiography may enable more efficient allocation of scarce medical resources and hence improved patient outcomes. Deep learning classification of chest radiographs may be a plausible step towards this. We hypothesize that bone suppression of chest radiographs may improve the performance of deep learning classification of COVID-19 phenomena in chest radiographs.
Methods: Two bone suppression methods (Gusarev et al. and Rajaraman et al.) were implemented. The Gusarev and Rajaraman methods were trained on 217 pairs of normal and bone-suppressed chest radiographs from the X-ray Bone Shadow Suppression dataset (https://www.kaggle.com/hmchuong/xray-bone-shadow-supression). Two classifier methods with different network architectures were implemented. Binary classifier models were trained on the public RICORD-1c and RSNA Pneumonia Challenge datasets. An external test dataset was created retrospectively from a set of 320 COVID-19 positive patients from Queen Elizabeth Hospital (Hong Kong, China) and a set of 518 non-COVID-19 patients from Pamela Youde Nethersole Eastern Hospital (Hong Kong, China), and used to evaluate the effect of bone suppression on classifier performance. Classification performance, quantified by sensitivity, specificity, negative predictive value (NPV), accuracy and area under the receiver operating curve (AUC), for non-suppressed radiographs was compared to that for bone suppressed radiographs. Some of the pre-trained models used in this study are published at (https://github.com/danielnflam).
Results: Bone suppression of external test data was found to significantly (P<0.05) improve AUC for one classifier architecture [from 0.698 (non-suppressed) to 0.732 (Rajaraman-suppressed)]. For the other classifier architecture, suppression did not significantly (P>0.05) improve or worsen classifier performance. Conclusions: Rajaraman suppression significantly improved classification performance in one classification architecture, and did not significantly worsen classifier performance in the other classifier architecture. This research could be extended to explore the impact of bone suppression on classification of different lung pathologies, and the effect of other image enhancement techniques on classifier performance. 2022 Quantitative Imaging in Medicine and Surgery. All rights reserved.

Entities:  

Keywords:  Classification; bone suppression; chest radiography; coronavirus disease 2019 (COVID-19); deep learning

Year:  2022        PMID: 35782269      PMCID: PMC9246721          DOI: 10.21037/qims-21-791

Source DB:  PubMed          Journal:  Quant Imaging Med Surg        ISSN: 2223-4306


  33 in total

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Authors:  J Shiraishi; S Katsuragawa; J Ikezoe; T Matsumoto; T Kobayashi; K Komatsu; M Matsui; H Fujita; Y Kodera; K Doi
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Authors:  Peter Vock; Zsolt Szucs-Farkas
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5.  Classification of COVID-19 in chest X-ray images using DeTraC deep convolutional neural network.

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6.  Clinical features of patients infected with 2019 novel coronavirus in Wuhan, China.

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Journal:  N Engl J Med       Date:  2020-02-28       Impact factor: 91.245

8.  Thoracic imaging tests for the diagnosis of COVID-19.

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Journal:  Cochrane Database Syst Rev       Date:  2021-03-16

Review 9.  Deep Learning for Computer Vision: A Brief Review.

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10.  Pathological findings of COVID-19 associated with acute respiratory distress syndrome.

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