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Automatic Detection of Secundum Atrial Septal Defect in Children Based on Color Doppler Echocardiographic Images Using Convolutional Neural Networks
by
Sheng, Qiuyang
, Yuan, Jiajun
, Zhang, Yuqi
, Wang, Hansong
, Zhu, Junxue
, Xie, Yixin
, Wu, Lanping
, Ge, Tong
, Liu, Yiqing
, Zhao, Liebin
, Dong, Bin
, Zhao, Leisheng
, Liu, Yiman
, Hong, Wenjing
, Chen, Lijun
, Yu, Yizhou
, Liu, Xiaoqing
in
Accuracy
/ Artificial intelligence
/ Auscultation
/ automatic detection
/ Cardiovascular disease
/ Cardiovascular Medicine
/ Congenital diseases
/ convolutional neural networks
/ Deep learning
/ echocardiogram
/ Heart
/ Neural networks
/ Patients
/ Pediatrics
/ secundum atrial septal defect
/ Ultrasonic imaging
2022
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Automatic Detection of Secundum Atrial Septal Defect in Children Based on Color Doppler Echocardiographic Images Using Convolutional Neural Networks
by
Sheng, Qiuyang
, Yuan, Jiajun
, Zhang, Yuqi
, Wang, Hansong
, Zhu, Junxue
, Xie, Yixin
, Wu, Lanping
, Ge, Tong
, Liu, Yiqing
, Zhao, Liebin
, Dong, Bin
, Zhao, Leisheng
, Liu, Yiman
, Hong, Wenjing
, Chen, Lijun
, Yu, Yizhou
, Liu, Xiaoqing
in
Accuracy
/ Artificial intelligence
/ Auscultation
/ automatic detection
/ Cardiovascular disease
/ Cardiovascular Medicine
/ Congenital diseases
/ convolutional neural networks
/ Deep learning
/ echocardiogram
/ Heart
/ Neural networks
/ Patients
/ Pediatrics
/ secundum atrial septal defect
/ Ultrasonic imaging
2022
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Automatic Detection of Secundum Atrial Septal Defect in Children Based on Color Doppler Echocardiographic Images Using Convolutional Neural Networks
by
Sheng, Qiuyang
, Yuan, Jiajun
, Zhang, Yuqi
, Wang, Hansong
, Zhu, Junxue
, Xie, Yixin
, Wu, Lanping
, Ge, Tong
, Liu, Yiqing
, Zhao, Liebin
, Dong, Bin
, Zhao, Leisheng
, Liu, Yiman
, Hong, Wenjing
, Chen, Lijun
, Yu, Yizhou
, Liu, Xiaoqing
in
Accuracy
/ Artificial intelligence
/ Auscultation
/ automatic detection
/ Cardiovascular disease
/ Cardiovascular Medicine
/ Congenital diseases
/ convolutional neural networks
/ Deep learning
/ echocardiogram
/ Heart
/ Neural networks
/ Patients
/ Pediatrics
/ secundum atrial septal defect
/ Ultrasonic imaging
2022
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Automatic Detection of Secundum Atrial Septal Defect in Children Based on Color Doppler Echocardiographic Images Using Convolutional Neural Networks
Journal Article
Automatic Detection of Secundum Atrial Septal Defect in Children Based on Color Doppler Echocardiographic Images Using Convolutional Neural Networks
2022
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Overview
Secundum atrial septal defect (ASD) is one of the most common congenital heart diseases (CHDs). This study aims to evaluate the feasibility and accuracy of automatic detection of ASD in children based on color Doppler echocardiographic images using convolutional neural networks. In this study, we propose a fully automatic detection system for ASD, which includes three stages. The first stage is used to identify four target echocardiographic views (that is, the subcostal view focusing on the atrium septum, the apical four-chamber view, the low parasternal four-chamber view, and the parasternal short-axis view). These four echocardiographic views are most useful for the diagnosis of ASD clinically. The second stage aims to segment the target cardiac structure and detect candidates for ASD. The third stage is to infer the final detection by utilizing the segmentation and detection results of the second stage. The proposed ASD detection system was developed and validated using a training set of 4,031 cases containing 370,057 echocardiographic images and an independent test set of 229 cases containing 203,619 images, of which 105 cases with ASD and 124 cases with intact atrial septum. Experimental results showed that the proposed ASD detection system achieved accuracy, recall, precision, specificity, and F1 score of 0.8833, 0.8545, 0.8577, 0.9136, and 0.8546, respectively on the image-level averages of the four most clinically useful echocardiographic views. The proposed system can automatically and accurately identify ASD, laying a good foundation for the subsequent artificial intelligence diagnosis of CHDs.
Publisher
Frontiers Media SA,Frontiers Media S.A
Subject
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