Javascript must be enabled to continue!
Deep learning-based analysis of 12-lead electrocardiograms in school-age children: a proof of concept study
View through CrossRef
IntroductionThe diagnostic performance of automated analysis of electrocardiograms for screening children with pediatric heart diseases at risk of sudden cardiac death is unknown. In this study, we aimed to develop and validate a deep learning-based model for automated analysis of ECGs in children.MethodsWave data of 12-lead electrocardiograms were transformed into a tensor sizing 2 × 12 × 400 using signal processing methods. A deep learning-based model to classify abnormal electrocardiograms based on age, sex, and the transformed wave data was developed using electrocardiograms performed in patients at the age of 6–18 years during 2003–2006 at a tertiary referral hospital in Japan. Eighty-three percent of the patients were assigned to a training group, and 17% to a test group. The diagnostic performance of the model and a conventional algorithm (ECAPS12C, Nihon Kohden, Japan) for classifying abnormal electrocardiograms were evaluated using the cross-tabulation, McNemar's test, and decision curve analysis.ResultsWe included 1,842 ECGs performed in 1,062 patients in this study, and 310 electrocardiograms performed in 177 patients were included in the test group. The specificity of the deep learning-based model for detecting abnormal electrocardiograms was not significantly different from that of the conventional algorithm. For detecting electrocardiograms with ST-T abnormality, complete right bundle branch block, QRS axis abnormality, left ventricular hypertrophy, incomplete right bundle branch block, WPW syndrome, supraventricular tachyarrhythmia, and Brugada-type electrocardiograms, the specificity of the deep learning-based model was higher than that of the conventional algorithm at the same sensitivity.ConclusionsThe present new deep learning-based method of screening for abnormal electrocardiograms in children showed at least a similar diagnostic performance compared to that of a conventional algorithm. Further studies are warranted to develop an automated analysis of electrocardiograms in school-age children.
Title: Deep learning-based analysis of 12-lead electrocardiograms in school-age children: a proof of concept study
Description:
IntroductionThe diagnostic performance of automated analysis of electrocardiograms for screening children with pediatric heart diseases at risk of sudden cardiac death is unknown.
In this study, we aimed to develop and validate a deep learning-based model for automated analysis of ECGs in children.
MethodsWave data of 12-lead electrocardiograms were transformed into a tensor sizing 2 × 12 × 400 using signal processing methods.
A deep learning-based model to classify abnormal electrocardiograms based on age, sex, and the transformed wave data was developed using electrocardiograms performed in patients at the age of 6–18 years during 2003–2006 at a tertiary referral hospital in Japan.
Eighty-three percent of the patients were assigned to a training group, and 17% to a test group.
The diagnostic performance of the model and a conventional algorithm (ECAPS12C, Nihon Kohden, Japan) for classifying abnormal electrocardiograms were evaluated using the cross-tabulation, McNemar's test, and decision curve analysis.
ResultsWe included 1,842 ECGs performed in 1,062 patients in this study, and 310 electrocardiograms performed in 177 patients were included in the test group.
The specificity of the deep learning-based model for detecting abnormal electrocardiograms was not significantly different from that of the conventional algorithm.
For detecting electrocardiograms with ST-T abnormality, complete right bundle branch block, QRS axis abnormality, left ventricular hypertrophy, incomplete right bundle branch block, WPW syndrome, supraventricular tachyarrhythmia, and Brugada-type electrocardiograms, the specificity of the deep learning-based model was higher than that of the conventional algorithm at the same sensitivity.
ConclusionsThe present new deep learning-based method of screening for abnormal electrocardiograms in children showed at least a similar diagnostic performance compared to that of a conventional algorithm.
Further studies are warranted to develop an automated analysis of electrocardiograms in school-age children.
Related Results
Wyniki badań 110 dziewcząt “nie uczących się i nie pracujących”
Wyniki badań 110 dziewcząt “nie uczących się i nie pracujących”
The publication presents the findings of an inquiry conducted among 110 girls aged 15 - 17 who had been directed, on the grounds of being “out of school and out of work”, to two on...
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Are Cervical Ribs Indicators of Childhood Cancer? A Narrative Review
Abstract
A cervical rib (CR), also known as a supernumerary or extra rib, is an additional rib that forms above the first rib, resulting from the overgrowth of the transverse proce...
Double Burden of Nutrition and some Eating Habits Characteristics of Preschool Children in Nam Hong Commune, Dong Anh district, Hanoi, 2018
Double Burden of Nutrition and some Eating Habits Characteristics of Preschool Children in Nam Hong Commune, Dong Anh district, Hanoi, 2018
Abstract: The study aims to provide evidence of double nutritional burden (including malnutrition and overweight/obesity) as well as the impact of eating habits on nutritional stat...
On free proof and regulated proof
On free proof and regulated proof
Free proof and regulated proof are two basic modes of judicial proof. The system of ‘legal proof’ established in France in the 16th century is a classical model of regulated proof....
Overnutrition in Indian Children: Challenges and Opportunities
Overnutrition in Indian Children: Challenges and Opportunities
Global and Indian data indicate that children from all the segments of population face dual nutrition burden and related health consequences. Long-term cohort studies have shown th...
Self-concept among school-age children with nephrotic syndrome
Self-concept among school-age children with nephrotic syndrome
Background
Nephrotic syndrome (NS) is a major chronic renal problem among children. The psychological aspect is highly important because children with chronic diseases ...
Improvement of Concept Understanding Through the Development of Interactive Multimedia on Integer Operation Material
Improvement of Concept Understanding Through the Development of Interactive Multimedia on Integer Operation Material
Understanding the concept is the ability expected in every learning process. But not all students can master the understanding of the concept well. Researchers are trying to provid...
Deep convolutional neural network and IoT technology for healthcare
Deep convolutional neural network and IoT technology for healthcare
Background Deep Learning is an AI technology that trains computers to analyze data in an approach similar to the human brain. Deep learning algorithms can find complex patterns in ...

