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Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study

BACKGROUND: Atrial septal defect (ASD) increases the risk of adverse cardiovascular outcomes. Despite the potential for risk mitigation through minimally invasive percutaneous closure, ASD remains underdiagnosed due to subtle symptoms and examination findings. To bridge this diagnostic gap, we propo...

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Autores principales: Miura, Kotaro, Yagi, Ryuichiro, Miyama, Hiroshi, Kimura, Mai, Kanazawa, Hideaki, Hashimoto, Masahiro, Kobayashi, Sayuki, Nakahara, Shiro, Ishikawa, Tetsuya, Taguchi, Isao, Sano, Motoaki, Sato, Kazuki, Fukuda, Keiichi, Deo, Rahul C., MacRae, Calum A., Itabashi, Yuji, Katsumata, Yoshinori, Goto, Shinichi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10518511/
https://www.ncbi.nlm.nih.gov/pubmed/37753448
http://dx.doi.org/10.1016/j.eclinm.2023.102141
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author Miura, Kotaro
Yagi, Ryuichiro
Miyama, Hiroshi
Kimura, Mai
Kanazawa, Hideaki
Hashimoto, Masahiro
Kobayashi, Sayuki
Nakahara, Shiro
Ishikawa, Tetsuya
Taguchi, Isao
Sano, Motoaki
Sato, Kazuki
Fukuda, Keiichi
Deo, Rahul C.
MacRae, Calum A.
Itabashi, Yuji
Katsumata, Yoshinori
Goto, Shinichi
author_facet Miura, Kotaro
Yagi, Ryuichiro
Miyama, Hiroshi
Kimura, Mai
Kanazawa, Hideaki
Hashimoto, Masahiro
Kobayashi, Sayuki
Nakahara, Shiro
Ishikawa, Tetsuya
Taguchi, Isao
Sano, Motoaki
Sato, Kazuki
Fukuda, Keiichi
Deo, Rahul C.
MacRae, Calum A.
Itabashi, Yuji
Katsumata, Yoshinori
Goto, Shinichi
author_sort Miura, Kotaro
collection PubMed
description BACKGROUND: Atrial septal defect (ASD) increases the risk of adverse cardiovascular outcomes. Despite the potential for risk mitigation through minimally invasive percutaneous closure, ASD remains underdiagnosed due to subtle symptoms and examination findings. To bridge this diagnostic gap, we propose a novel screening strategy aimed at early detection and enhanced diagnosis through the implementation of a convolutional neural network (CNN) to identify ASD from 12-lead electrocardiography (ECG). METHODS: ECGs were collected from patients with at least one recorded echocardiogram at 3 hospitals from 2 continents (Keio University Hospital from July 2011 to December 2020, Brigham and Women’s Hospital from January 2015 to December 2020, and Dokkyo Medical University Saitama Medical Center from January 2010 and December 2021). ECGs from patients with a diagnosis of ASD were labeled as positive cases while the remainder were labeled as negative. ECGs after the closure of ASD were excluded. After randomly splitting the ECGs into 3 datasets (50% derivation, 20% validation, and 30% test) with no patient overlap, a CNN-based model was trained using the derivation datasets from 2 hospitals and was tested on held-out datasets along with an external validation on the 3rd hospital. All eligible ECGs were used for derivation and validation whereas the earliest ECG for each patient was used for the test and external validation. The discrimination of ASD was assessed by the area under the receiver operating characteristic curve (AUROC). Multiple subgroups were examined to identify any heterogeneity. FINDINGS: A total of 671,201 ECGs from 80,947 patients were collected from the 3 institutions. The AUROC for detecting ASD was 0.85–0.90 across the 3 hospitals. The subgroup analysis showed excellent performance across various characteristics Screening simulation using the model greatly increased sensitivity from 80.6% to 93.7% at specificity 33.6% when compared to using overt ECG abnormalities. INTERPRETATION: A CNN-based model using 12-lead ECG successfully identified the presence of ASD with excellent generalizability across institutions from 2 separate continents. FUNDING: This work was supported by research grants from JST (JPMJPF2101), JSR corporation, 10.13039/100016289Taiju Life Social Welfare Foundation, 10.13039/501100008658Kondou Kinen Medical Foundation, Research fund of Mitsukoshi health and welfare foundation, Tokai University School of Medicine Project Research and Internal Medicine Project Research, 10.13039/501100004298Secom Science and Technology Foundation, and Grants from 10.13039/100009619AMED (JP23hma922012 and JP23ym0126813). This work was partially supported by One Brave Idea, co-funded by the American Heart Association and Verily with significant support from 10.13039/100004325AstraZeneca and pillar support from 10.13039/100015627Quest Diagnostics.
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spelling pubmed-105185112023-09-26 Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study Miura, Kotaro Yagi, Ryuichiro Miyama, Hiroshi Kimura, Mai Kanazawa, Hideaki Hashimoto, Masahiro Kobayashi, Sayuki Nakahara, Shiro Ishikawa, Tetsuya Taguchi, Isao Sano, Motoaki Sato, Kazuki Fukuda, Keiichi Deo, Rahul C. MacRae, Calum A. Itabashi, Yuji Katsumata, Yoshinori Goto, Shinichi eClinicalMedicine Articles BACKGROUND: Atrial septal defect (ASD) increases the risk of adverse cardiovascular outcomes. Despite the potential for risk mitigation through minimally invasive percutaneous closure, ASD remains underdiagnosed due to subtle symptoms and examination findings. To bridge this diagnostic gap, we propose a novel screening strategy aimed at early detection and enhanced diagnosis through the implementation of a convolutional neural network (CNN) to identify ASD from 12-lead electrocardiography (ECG). METHODS: ECGs were collected from patients with at least one recorded echocardiogram at 3 hospitals from 2 continents (Keio University Hospital from July 2011 to December 2020, Brigham and Women’s Hospital from January 2015 to December 2020, and Dokkyo Medical University Saitama Medical Center from January 2010 and December 2021). ECGs from patients with a diagnosis of ASD were labeled as positive cases while the remainder were labeled as negative. ECGs after the closure of ASD were excluded. After randomly splitting the ECGs into 3 datasets (50% derivation, 20% validation, and 30% test) with no patient overlap, a CNN-based model was trained using the derivation datasets from 2 hospitals and was tested on held-out datasets along with an external validation on the 3rd hospital. All eligible ECGs were used for derivation and validation whereas the earliest ECG for each patient was used for the test and external validation. The discrimination of ASD was assessed by the area under the receiver operating characteristic curve (AUROC). Multiple subgroups were examined to identify any heterogeneity. FINDINGS: A total of 671,201 ECGs from 80,947 patients were collected from the 3 institutions. The AUROC for detecting ASD was 0.85–0.90 across the 3 hospitals. The subgroup analysis showed excellent performance across various characteristics Screening simulation using the model greatly increased sensitivity from 80.6% to 93.7% at specificity 33.6% when compared to using overt ECG abnormalities. INTERPRETATION: A CNN-based model using 12-lead ECG successfully identified the presence of ASD with excellent generalizability across institutions from 2 separate continents. FUNDING: This work was supported by research grants from JST (JPMJPF2101), JSR corporation, 10.13039/100016289Taiju Life Social Welfare Foundation, 10.13039/501100008658Kondou Kinen Medical Foundation, Research fund of Mitsukoshi health and welfare foundation, Tokai University School of Medicine Project Research and Internal Medicine Project Research, 10.13039/501100004298Secom Science and Technology Foundation, and Grants from 10.13039/100009619AMED (JP23hma922012 and JP23ym0126813). This work was partially supported by One Brave Idea, co-funded by the American Heart Association and Verily with significant support from 10.13039/100004325AstraZeneca and pillar support from 10.13039/100015627Quest Diagnostics. Elsevier 2023-08-17 /pmc/articles/PMC10518511/ /pubmed/37753448 http://dx.doi.org/10.1016/j.eclinm.2023.102141 Text en © 2023 The Author(s) https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Articles
Miura, Kotaro
Yagi, Ryuichiro
Miyama, Hiroshi
Kimura, Mai
Kanazawa, Hideaki
Hashimoto, Masahiro
Kobayashi, Sayuki
Nakahara, Shiro
Ishikawa, Tetsuya
Taguchi, Isao
Sano, Motoaki
Sato, Kazuki
Fukuda, Keiichi
Deo, Rahul C.
MacRae, Calum A.
Itabashi, Yuji
Katsumata, Yoshinori
Goto, Shinichi
Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study
title Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study
title_full Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study
title_fullStr Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study
title_full_unstemmed Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study
title_short Deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study
title_sort deep learning-based model detects atrial septal defects from electrocardiography: a cross-sectional multicenter hospital-based study
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10518511/
https://www.ncbi.nlm.nih.gov/pubmed/37753448
http://dx.doi.org/10.1016/j.eclinm.2023.102141
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