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Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs

BACKGROUND: Whether the sensitivity of Deep Learning (DL) models to screen chest radiographs (CXR) for CoVID-19 can approximate that of radiologists, so that they can be adopted and used if real-time review of CXRs by radiologists is not possible, has not been explored before. OBJECTIVE: To evaluate...

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Autores principales: Krishnamoorthy, Sabitha, Ramakrishnan, Sudhakar, Colaco, Lanson Brijesh, Dias, Akshay, Gopi, Indu K, Gowda, Gautham A G, Aishwarya, KC, Ramanan, Veena, Chandran, Manju
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer - Medknow 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7996677/
https://www.ncbi.nlm.nih.gov/pubmed/33814762
http://dx.doi.org/10.4103/ijri.IJRI_914_20
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author Krishnamoorthy, Sabitha
Ramakrishnan, Sudhakar
Colaco, Lanson Brijesh
Dias, Akshay
Gopi, Indu K
Gowda, Gautham A G
Aishwarya, KC
Ramanan, Veena
Chandran, Manju
author_facet Krishnamoorthy, Sabitha
Ramakrishnan, Sudhakar
Colaco, Lanson Brijesh
Dias, Akshay
Gopi, Indu K
Gowda, Gautham A G
Aishwarya, KC
Ramanan, Veena
Chandran, Manju
author_sort Krishnamoorthy, Sabitha
collection PubMed
description BACKGROUND: Whether the sensitivity of Deep Learning (DL) models to screen chest radiographs (CXR) for CoVID-19 can approximate that of radiologists, so that they can be adopted and used if real-time review of CXRs by radiologists is not possible, has not been explored before. OBJECTIVE: To evaluate the diagnostic performance of a doctor-trained DL model (Svita_DL8) to screen for COVID-19 on CXR, and to compare the performance of the DL model with that of expert radiologists. MATERIALS AND METHODS: We used a pre-trained convolutional neural network to develop a publicly available online DL model to evaluate CXR examinations saved in .jpeg or .png format. The initial model was subsequently curated and trained by an internist and a radiologist using 1062 chest radiographs to classify a submitted CXR as either normal, COVID-19, or a non-COVID-19 abnormal. For validation, we collected a separate set of 430 CXR examinations from numerous publicly available datasets from 10 different countries, case presentations, and two hospital repositories. These examinations were assessed for COVID-19 by the DL model and by two independent radiologists. Diagnostic performance was compared between the model and the radiologists and the correlation coefficient calculated. RESULTS: For detecting COVID-19 on CXR, our DL model demonstrated sensitivity of 91.5%, specificity of 55.3%, PPV 60.9%, NPV 77.9%, accuracy 70.1%, and AUC 0.73 (95% CI: 0.86, 0.95). There was a significant correlation (r = 0.617, P = 0.000) between the results of the DL model and the radiologists’ interpretations. The sensitivity of the radiologists is 96% and their overall diagnostic accuracy is 90% in this study. CONCLUSIONS: The DL model demonstrated high sensitivity for detecting COVID-19 on CXR. CLINICAL IMPACT: The doctor trained DL tool Svita_DL8 can be used in resource-constrained settings to quickly triage patients with suspected COVID-19 for further in-depth review and testing.
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spelling pubmed-79966772021-04-01 Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs Krishnamoorthy, Sabitha Ramakrishnan, Sudhakar Colaco, Lanson Brijesh Dias, Akshay Gopi, Indu K Gowda, Gautham A G Aishwarya, KC Ramanan, Veena Chandran, Manju Indian J Radiol Imaging Original Article BACKGROUND: Whether the sensitivity of Deep Learning (DL) models to screen chest radiographs (CXR) for CoVID-19 can approximate that of radiologists, so that they can be adopted and used if real-time review of CXRs by radiologists is not possible, has not been explored before. OBJECTIVE: To evaluate the diagnostic performance of a doctor-trained DL model (Svita_DL8) to screen for COVID-19 on CXR, and to compare the performance of the DL model with that of expert radiologists. MATERIALS AND METHODS: We used a pre-trained convolutional neural network to develop a publicly available online DL model to evaluate CXR examinations saved in .jpeg or .png format. The initial model was subsequently curated and trained by an internist and a radiologist using 1062 chest radiographs to classify a submitted CXR as either normal, COVID-19, or a non-COVID-19 abnormal. For validation, we collected a separate set of 430 CXR examinations from numerous publicly available datasets from 10 different countries, case presentations, and two hospital repositories. These examinations were assessed for COVID-19 by the DL model and by two independent radiologists. Diagnostic performance was compared between the model and the radiologists and the correlation coefficient calculated. RESULTS: For detecting COVID-19 on CXR, our DL model demonstrated sensitivity of 91.5%, specificity of 55.3%, PPV 60.9%, NPV 77.9%, accuracy 70.1%, and AUC 0.73 (95% CI: 0.86, 0.95). There was a significant correlation (r = 0.617, P = 0.000) between the results of the DL model and the radiologists’ interpretations. The sensitivity of the radiologists is 96% and their overall diagnostic accuracy is 90% in this study. CONCLUSIONS: The DL model demonstrated high sensitivity for detecting COVID-19 on CXR. CLINICAL IMPACT: The doctor trained DL tool Svita_DL8 can be used in resource-constrained settings to quickly triage patients with suspected COVID-19 for further in-depth review and testing. Wolters Kluwer - Medknow 2021-01 2021-01-23 /pmc/articles/PMC7996677/ /pubmed/33814762 http://dx.doi.org/10.4103/ijri.IJRI_914_20 Text en Copyright: © 2021 Indian Journal of Radiology and Imaging http://creativecommons.org/licenses/by-nc-sa/4.0 This is an open access journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.
spellingShingle Original Article
Krishnamoorthy, Sabitha
Ramakrishnan, Sudhakar
Colaco, Lanson Brijesh
Dias, Akshay
Gopi, Indu K
Gowda, Gautham A G
Aishwarya, KC
Ramanan, Veena
Chandran, Manju
Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs
title Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs
title_full Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs
title_fullStr Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs
title_full_unstemmed Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs
title_short Comparing a deep learning model's diagnostic performance to that of radiologists to detect Covid -19 features on chest radiographs
title_sort comparing a deep learning model's diagnostic performance to that of radiologists to detect covid -19 features on chest radiographs
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7996677/
https://www.ncbi.nlm.nih.gov/pubmed/33814762
http://dx.doi.org/10.4103/ijri.IJRI_914_20
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