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Artificial intelligence-enhanced automation for M-mode echocardiographic analysis: ensuring fully automated, reliable, and reproducible measurements

Authors
 Dawun Jeong  ;  Sunghee Jung  ;  Yeonyee E Yoon  ;  Jaeik Jeon  ;  Yeonggul Jang  ;  Seongmin Ha  ;  Youngtaek Hong  ;  JunHeum Cho  ;  Seung-Ah Lee  ;  Hong-Mi Choi  ;  Hyuk-Jae Chang 
Citation
 INTERNATIONAL JOURNAL OF CARDIOVASCULAR IMAGING, Vol.40(6) : 1245-1256, 2024-06 
Journal Title
INTERNATIONAL JOURNAL OF CARDIOVASCULAR IMAGING
ISSN
 1569-5794 
Issue Date
2024-06
MeSH
Aged ; Aorta / diagnostic imaging ; Artificial Intelligence ; Atrial Fibrillation / diagnostic imaging ; Atrial Fibrillation / physiopathology ; Automation* ; Databases, Factual ; Datasets as Topic ; Deep Learning ; Echocardiography* ; Female ; Heart Atria / diagnostic imaging ; Heart Atria / physiopathology ; Heart Ventricles / diagnostic imaging ; Heart Ventricles / physiopathology ; Humans ; Image Interpretation, Computer-Assisted* ; Male ; Middle Aged ; Observer Variation ; Predictive Value of Tests* ; Reproducibility of Results
Keywords
Artificial Intelligence ; Automatic quantification ; Deep learning ; Echocardiography ; M-mode
Abstract
To enhance M-mode echocardiography's utility for measuring cardiac structures, we developed and evaluated an artificial intelligence (AI)-based automated analysis system for M-mode images through the aorta and left atrium [M-mode (Ao-LA)], and through the left ventricle [M-mode (LV)]. Our system, integrating two deep neural networks (DNN) for view classification and image segmentation, alongside an auto-measurement algorithm, was developed using 5,958 M-mode images [3,258 M-mode (LA-Ao), and 2,700 M-mode (LV)] drawn from a nationwide echocardiographic dataset collated from five tertiary hospitals. The performance of view classification and segmentation DNNs were evaluated on 594 M-mode images, while automatic measurement accuracy was tested on separate internal test set with 100 M-mode images as well as external test set with 280 images (140 sinus rhythm and 140 atrial fibrillation). Performance evaluation showed the view classification DNN's overall accuracy of 99.8% and segmentation DNN's Dice similarity coefficient of 94.3%. Within the internal test set, all automated measurements, including LA, Ao, and LV wall and cavity, resonated strongly with expert evaluations, exhibiting Pearson's correlation coefficients (PCCs) of 0.81-0.99. This performance persisted in the external test set for both sinus rhythm (PCC, 0.84-0.98) and atrial fibrillation (PCC, 0.70-0.97). Notably, automatic measurements, consistently offering multi-cardiac cycle readings, showcased a stronger correlation with the averaged multi-cycle manual measurements than with those of a single representative cycle. Our AI-based system for automatic M-mode echocardiographic analysis demonstrated excellent accuracy, reproducibility, and speed. This automated approach has the potential to improve efficiency and reduce variability in clinical practice.
Full Text
https://link.springer.com/article/10.1007/s10554-024-03095-x
DOI
10.1007/s10554-024-03095-x
Appears in Collections:
1. College of Medicine (의과대학) > Research Institute (부설연구소) > 1. Journal Papers
1. College of Medicine (의과대학) > Dept. of Internal Medicine (내과학교실) > 1. Journal Papers
Yonsei Authors
Chang, Hyuk-Jae(장혁재) ORCID logo https://orcid.org/0000-0002-6139-7545
Jung, Dawoon E.(정다운)
Jung, Sunghee(정성희)
Hong, Youngtaek(홍영택)
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/201570
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