Cargando…

A novel abnormality annotation database for COVID-19 affected frontal lung X-rays

Consistent clinical observations of characteristic findings of COVID-19 pneumonia on chest X-rays have attracted the research community to strive to provide a fast and reliable method for screening suspected patients. Several machine learning algorithms have been proposed to find the abnormalities i...

Descripción completa

Detalles Bibliográficos
Autores principales: Mittal, Surbhi, Venugopal, Vasantha Kumar, Agarwal, Vikash Kumar, Malhotra, Manu, Chatha, Jagneet Singh, Kapur, Savinay, Gupta, Ankur, Batra, Vikas, Majumdar, Puspita, Malhotra, Aakarsh, Thakral, Kartik, Chhabra, Saheb, Vatsa, Mayank, Singh, Richa, Chaudhury, Santanu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9565456/
https://www.ncbi.nlm.nih.gov/pubmed/36240175
http://dx.doi.org/10.1371/journal.pone.0271931
_version_ 1784808894509350912
author Mittal, Surbhi
Venugopal, Vasantha Kumar
Agarwal, Vikash Kumar
Malhotra, Manu
Chatha, Jagneet Singh
Kapur, Savinay
Gupta, Ankur
Batra, Vikas
Majumdar, Puspita
Malhotra, Aakarsh
Thakral, Kartik
Chhabra, Saheb
Vatsa, Mayank
Singh, Richa
Chaudhury, Santanu
author_facet Mittal, Surbhi
Venugopal, Vasantha Kumar
Agarwal, Vikash Kumar
Malhotra, Manu
Chatha, Jagneet Singh
Kapur, Savinay
Gupta, Ankur
Batra, Vikas
Majumdar, Puspita
Malhotra, Aakarsh
Thakral, Kartik
Chhabra, Saheb
Vatsa, Mayank
Singh, Richa
Chaudhury, Santanu
author_sort Mittal, Surbhi
collection PubMed
description Consistent clinical observations of characteristic findings of COVID-19 pneumonia on chest X-rays have attracted the research community to strive to provide a fast and reliable method for screening suspected patients. Several machine learning algorithms have been proposed to find the abnormalities in the lungs using chest X-rays specific to COVID-19 pneumonia and distinguish them from other etiologies of pneumonia. However, despite the enormous magnitude of the pandemic, there are very few instances of public databases of COVID-19 pneumonia, and to the best of our knowledge, there is no database with annotation of abnormalities on the chest X-rays of COVID-19 affected patients. Annotated databases of X-rays can be of significant value in the design and development of algorithms for disease prediction. Further, explainability analysis for the performance of existing or new deep learning algorithms will be enhanced significantly with access to ground-truth abnormality annotations. The proposed COVID Abnormality Annotation for X-Rays (CAAXR) database is built upon the BIMCV-COVID19+ database which is a large-scale dataset containing COVID-19+ chest X-rays. The primary contribution of this study is the annotation of the abnormalities in over 1700 frontal chest X-rays. Further, we define protocols for semantic segmentation as well as classification for robust evaluation of algorithms. We provide benchmark results on the defined protocols using popular deep learning models such as DenseNet, ResNet, MobileNet, and VGG for classification, and UNet, SegNet, and Mask-RCNN for semantic segmentation. The classwise accuracy, sensitivity, and AUC-ROC scores are reported for the classification models, and the IoU and DICE scores are reported for the segmentation models.
format Online
Article
Text
id pubmed-9565456
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-95654562022-10-15 A novel abnormality annotation database for COVID-19 affected frontal lung X-rays Mittal, Surbhi Venugopal, Vasantha Kumar Agarwal, Vikash Kumar Malhotra, Manu Chatha, Jagneet Singh Kapur, Savinay Gupta, Ankur Batra, Vikas Majumdar, Puspita Malhotra, Aakarsh Thakral, Kartik Chhabra, Saheb Vatsa, Mayank Singh, Richa Chaudhury, Santanu PLoS One Research Article Consistent clinical observations of characteristic findings of COVID-19 pneumonia on chest X-rays have attracted the research community to strive to provide a fast and reliable method for screening suspected patients. Several machine learning algorithms have been proposed to find the abnormalities in the lungs using chest X-rays specific to COVID-19 pneumonia and distinguish them from other etiologies of pneumonia. However, despite the enormous magnitude of the pandemic, there are very few instances of public databases of COVID-19 pneumonia, and to the best of our knowledge, there is no database with annotation of abnormalities on the chest X-rays of COVID-19 affected patients. Annotated databases of X-rays can be of significant value in the design and development of algorithms for disease prediction. Further, explainability analysis for the performance of existing or new deep learning algorithms will be enhanced significantly with access to ground-truth abnormality annotations. The proposed COVID Abnormality Annotation for X-Rays (CAAXR) database is built upon the BIMCV-COVID19+ database which is a large-scale dataset containing COVID-19+ chest X-rays. The primary contribution of this study is the annotation of the abnormalities in over 1700 frontal chest X-rays. Further, we define protocols for semantic segmentation as well as classification for robust evaluation of algorithms. We provide benchmark results on the defined protocols using popular deep learning models such as DenseNet, ResNet, MobileNet, and VGG for classification, and UNet, SegNet, and Mask-RCNN for semantic segmentation. The classwise accuracy, sensitivity, and AUC-ROC scores are reported for the classification models, and the IoU and DICE scores are reported for the segmentation models. Public Library of Science 2022-10-14 /pmc/articles/PMC9565456/ /pubmed/36240175 http://dx.doi.org/10.1371/journal.pone.0271931 Text en © 2022 Mittal et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Mittal, Surbhi
Venugopal, Vasantha Kumar
Agarwal, Vikash Kumar
Malhotra, Manu
Chatha, Jagneet Singh
Kapur, Savinay
Gupta, Ankur
Batra, Vikas
Majumdar, Puspita
Malhotra, Aakarsh
Thakral, Kartik
Chhabra, Saheb
Vatsa, Mayank
Singh, Richa
Chaudhury, Santanu
A novel abnormality annotation database for COVID-19 affected frontal lung X-rays
title A novel abnormality annotation database for COVID-19 affected frontal lung X-rays
title_full A novel abnormality annotation database for COVID-19 affected frontal lung X-rays
title_fullStr A novel abnormality annotation database for COVID-19 affected frontal lung X-rays
title_full_unstemmed A novel abnormality annotation database for COVID-19 affected frontal lung X-rays
title_short A novel abnormality annotation database for COVID-19 affected frontal lung X-rays
title_sort novel abnormality annotation database for covid-19 affected frontal lung x-rays
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9565456/
https://www.ncbi.nlm.nih.gov/pubmed/36240175
http://dx.doi.org/10.1371/journal.pone.0271931
work_keys_str_mv AT mittalsurbhi anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT venugopalvasanthakumar anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT agarwalvikashkumar anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT malhotramanu anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT chathajagneetsingh anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT kapursavinay anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT guptaankur anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT batravikas anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT majumdarpuspita anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT malhotraaakarsh anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT thakralkartik anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT chhabrasaheb anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT vatsamayank anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT singhricha anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT chaudhurysantanu anovelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT mittalsurbhi novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT venugopalvasanthakumar novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT agarwalvikashkumar novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT malhotramanu novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT chathajagneetsingh novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT kapursavinay novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT guptaankur novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT batravikas novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT majumdarpuspita novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT malhotraaakarsh novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT thakralkartik novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT chhabrasaheb novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT vatsamayank novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT singhricha novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays
AT chaudhurysantanu novelabnormalityannotationdatabaseforcovid19affectedfrontallungxrays