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Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency

IMPORTANCE: The efficient and accurate interpretation of radiologic images is paramount. OBJECTIVE: To evaluate whether a deep learning–based artificial intelligence (AI) engine used concurrently can improve reader performance and efficiency in interpreting chest radiograph abnormalities. DESIGN, SE...

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Autores principales: Ahn, Jong Seok, Ebrahimian, Shadi, McDermott, Shaunagh, Lee, Sanghyup, Naccarato, Laura, Di Capua, John F., Wu, Markus Y., Zhang, Eric W., Muse, Victorine, Miller, Benjamin, Sabzalipour, Farid, Bizzo, Bernardo C., Dreyer, Keith J., Kaviani, Parisa, Digumarthy, Subba R., Kalra, Mannudeep K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Medical Association 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9434361/
https://www.ncbi.nlm.nih.gov/pubmed/36044215
http://dx.doi.org/10.1001/jamanetworkopen.2022.29289
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author Ahn, Jong Seok
Ebrahimian, Shadi
McDermott, Shaunagh
Lee, Sanghyup
Naccarato, Laura
Di Capua, John F.
Wu, Markus Y.
Zhang, Eric W.
Muse, Victorine
Miller, Benjamin
Sabzalipour, Farid
Bizzo, Bernardo C.
Dreyer, Keith J.
Kaviani, Parisa
Digumarthy, Subba R.
Kalra, Mannudeep K.
author_facet Ahn, Jong Seok
Ebrahimian, Shadi
McDermott, Shaunagh
Lee, Sanghyup
Naccarato, Laura
Di Capua, John F.
Wu, Markus Y.
Zhang, Eric W.
Muse, Victorine
Miller, Benjamin
Sabzalipour, Farid
Bizzo, Bernardo C.
Dreyer, Keith J.
Kaviani, Parisa
Digumarthy, Subba R.
Kalra, Mannudeep K.
author_sort Ahn, Jong Seok
collection PubMed
description IMPORTANCE: The efficient and accurate interpretation of radiologic images is paramount. OBJECTIVE: To evaluate whether a deep learning–based artificial intelligence (AI) engine used concurrently can improve reader performance and efficiency in interpreting chest radiograph abnormalities. DESIGN, SETTING, AND PARTICIPANTS: This multicenter cohort study was conducted from April to November 2021 and involved radiologists, including attending radiologists, thoracic radiology fellows, and residents, who independently participated in 2 observer performance test sessions. The sessions included a reading session with AI and a session without AI, in a randomized crossover manner with a 4-week washout period in between. The AI produced a heat map and the image-level probability of the presence of the referrable lesion. The data used were collected at 2 quaternary academic hospitals in Boston, Massachusetts: Beth Israel Deaconess Medical Center (The Medical Information Mart for Intensive Care Chest X-Ray [MIMIC-CXR]) and Massachusetts General Hospital (MGH). MAIN OUTCOMES AND MEASURES: The ground truths for the labels were created via consensual reading by 2 thoracic radiologists. Each reader documented their findings in a customized report template, in which the 4 target chest radiograph findings and the reader confidence of the presence of each finding was recorded. The time taken for reporting each chest radiograph was also recorded. Sensitivity, specificity, and area under the receiver operating characteristic curve (AUROC) were calculated for each target finding. RESULTS: A total of 6 radiologists (2 attending radiologists, 2 thoracic radiology fellows, and 2 residents) participated in the study. The study involved a total of 497 frontal chest radiographs—247 from the MIMIC-CXR data set (demographic data for patients were not available) and 250 chest radiographs from MGH (mean [SD] age, 63 [16] years; 133 men [53.2%])—from adult patients with and without 4 target findings (pneumonia, nodule, pneumothorax, and pleural effusion). The target findings were found in 351 of 497 chest radiographs. The AI was associated with higher sensitivity for all findings compared with the readers (nodule, 0.816 [95% CI, 0.732-0.882] vs 0.567 [95% CI, 0.524-0.611]; pneumonia, 0.887 [95% CI, 0.834-0.928] vs 0.673 [95% CI, 0.632-0.714]; pleural effusion, 0.872 [95% CI, 0.808-0.921] vs 0.889 [95% CI, 0.862-0.917]; pneumothorax, 0.988 [95% CI, 0.932-1.000] vs 0.792 [95% CI, 0.756-0.827]). AI-aided interpretation was associated with significantly improved reader sensitivities for all target findings, without negative impacts on the specificity. Overall, the AUROCs of readers improved for all 4 target findings, with significant improvements in detection of pneumothorax and nodule. The reporting time with AI was 10% lower than without AI (40.8 vs 36.9 seconds; difference, 3.9 seconds; 95% CI, 2.9-5.2 seconds; P < .001). CONCLUSIONS AND RELEVANCE: These findings suggest that AI-aided interpretation was associated with improved reader performance and efficiency for identifying major thoracic findings on a chest radiograph.
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spelling pubmed-94343612022-09-16 Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency Ahn, Jong Seok Ebrahimian, Shadi McDermott, Shaunagh Lee, Sanghyup Naccarato, Laura Di Capua, John F. Wu, Markus Y. Zhang, Eric W. Muse, Victorine Miller, Benjamin Sabzalipour, Farid Bizzo, Bernardo C. Dreyer, Keith J. Kaviani, Parisa Digumarthy, Subba R. Kalra, Mannudeep K. JAMA Netw Open Original Investigation IMPORTANCE: The efficient and accurate interpretation of radiologic images is paramount. OBJECTIVE: To evaluate whether a deep learning–based artificial intelligence (AI) engine used concurrently can improve reader performance and efficiency in interpreting chest radiograph abnormalities. DESIGN, SETTING, AND PARTICIPANTS: This multicenter cohort study was conducted from April to November 2021 and involved radiologists, including attending radiologists, thoracic radiology fellows, and residents, who independently participated in 2 observer performance test sessions. The sessions included a reading session with AI and a session without AI, in a randomized crossover manner with a 4-week washout period in between. The AI produced a heat map and the image-level probability of the presence of the referrable lesion. The data used were collected at 2 quaternary academic hospitals in Boston, Massachusetts: Beth Israel Deaconess Medical Center (The Medical Information Mart for Intensive Care Chest X-Ray [MIMIC-CXR]) and Massachusetts General Hospital (MGH). MAIN OUTCOMES AND MEASURES: The ground truths for the labels were created via consensual reading by 2 thoracic radiologists. Each reader documented their findings in a customized report template, in which the 4 target chest radiograph findings and the reader confidence of the presence of each finding was recorded. The time taken for reporting each chest radiograph was also recorded. Sensitivity, specificity, and area under the receiver operating characteristic curve (AUROC) were calculated for each target finding. RESULTS: A total of 6 radiologists (2 attending radiologists, 2 thoracic radiology fellows, and 2 residents) participated in the study. The study involved a total of 497 frontal chest radiographs—247 from the MIMIC-CXR data set (demographic data for patients were not available) and 250 chest radiographs from MGH (mean [SD] age, 63 [16] years; 133 men [53.2%])—from adult patients with and without 4 target findings (pneumonia, nodule, pneumothorax, and pleural effusion). The target findings were found in 351 of 497 chest radiographs. The AI was associated with higher sensitivity for all findings compared with the readers (nodule, 0.816 [95% CI, 0.732-0.882] vs 0.567 [95% CI, 0.524-0.611]; pneumonia, 0.887 [95% CI, 0.834-0.928] vs 0.673 [95% CI, 0.632-0.714]; pleural effusion, 0.872 [95% CI, 0.808-0.921] vs 0.889 [95% CI, 0.862-0.917]; pneumothorax, 0.988 [95% CI, 0.932-1.000] vs 0.792 [95% CI, 0.756-0.827]). AI-aided interpretation was associated with significantly improved reader sensitivities for all target findings, without negative impacts on the specificity. Overall, the AUROCs of readers improved for all 4 target findings, with significant improvements in detection of pneumothorax and nodule. The reporting time with AI was 10% lower than without AI (40.8 vs 36.9 seconds; difference, 3.9 seconds; 95% CI, 2.9-5.2 seconds; P < .001). CONCLUSIONS AND RELEVANCE: These findings suggest that AI-aided interpretation was associated with improved reader performance and efficiency for identifying major thoracic findings on a chest radiograph. American Medical Association 2022-08-31 /pmc/articles/PMC9434361/ /pubmed/36044215 http://dx.doi.org/10.1001/jamanetworkopen.2022.29289 Text en Copyright 2022 Ahn JS et al. JAMA Network Open. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article distributed under the terms of the CC-BY-NC-ND License.
spellingShingle Original Investigation
Ahn, Jong Seok
Ebrahimian, Shadi
McDermott, Shaunagh
Lee, Sanghyup
Naccarato, Laura
Di Capua, John F.
Wu, Markus Y.
Zhang, Eric W.
Muse, Victorine
Miller, Benjamin
Sabzalipour, Farid
Bizzo, Bernardo C.
Dreyer, Keith J.
Kaviani, Parisa
Digumarthy, Subba R.
Kalra, Mannudeep K.
Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency
title Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency
title_full Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency
title_fullStr Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency
title_full_unstemmed Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency
title_short Association of Artificial Intelligence–Aided Chest Radiograph Interpretation With Reader Performance and Efficiency
title_sort association of artificial intelligence–aided chest radiograph interpretation with reader performance and efficiency
topic Original Investigation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9434361/
https://www.ncbi.nlm.nih.gov/pubmed/36044215
http://dx.doi.org/10.1001/jamanetworkopen.2022.29289
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