Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol
Introduction Rheumatic heart diseases (RHDs) contribute significant morbidity and mortality globally. To reduce the burden of RHD, timely initiation of secondary prophylaxis is important. The objectives of this study are to determine the frequency of subclinical RHD and to train a deep learning (DL)...
Main Authors: | , , , , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
BMJ Publishing Group
2021-08-01
|
Series: | BMJ Open |
Online Access: | https://bmjopen.bmj.com/content/11/8/e044070.full |
id |
doaj-29258cc4fd2740bea565e5cac5d71d50 |
---|---|
record_format |
Article |
spelling |
doaj-29258cc4fd2740bea565e5cac5d71d502021-08-10T11:01:00ZengBMJ Publishing GroupBMJ Open2044-60552021-08-0111810.1136/bmjopen-2020-044070Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocolFatima Ali0Babar Hasan1Zahra Hoodbhoy2Devyani Chowdhury3Huzaifa Ahmad4Zainab Bhuriwala5Muhammad Hanif6Shahab U Ansari72 Department of Pediatrics and Child Health, The Aga Khan University and Hospital, Karachi, Sindh, Pakistan 1 Department of Pediatrics and Child Health, The Aga Khan University Hospital, Karachi, Pakistan 2 Department of Pediatrics and Child Health, The Aga Khan University and Hospital, Karachi, Sindh, Pakistan 3 Cardiology Care for Children, Philadelphia, Pennsylvania, USA 2 Aga Khan University Medical College, Karachi, Pakistan Pediatrics and Child Health, Aga Khan University Hospital, Karachi, PakistanFaculty of Computer Science and Engineering, Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi, PakistanFaculty of Computer Science and Engineering, Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi, PakistanIntroduction Rheumatic heart diseases (RHDs) contribute significant morbidity and mortality globally. To reduce the burden of RHD, timely initiation of secondary prophylaxis is important. The objectives of this study are to determine the frequency of subclinical RHD and to train a deep learning (DL) algorithm using waveform data from the digital auscultatory stethoscope (DAS) in predicting subclinical RHD.Methods and analysis We aim to recruit 1700 children from a group of schools serving the underprivileged over a 12-month period in Karachi (Pakistan). All consenting students within the age of 5–15 years with no underlying congenital heart disease will be eligible for the study. We will gather information regarding sociodemographics, anthropometric data, history of symptoms or diagnosis of rheumatic fever, phonocardiogram (PCG) and electrocardiography (ECG) data obtained from DAS. Handheld echocardiogram will be performed on each study participant to assess the presence of a mitral regurgitation (MR) jet (>1.5 cm), or the presence of aortic regurgitation (AR) in any view. If any of these findings are present, a confirmatory standard echocardiogram using the World Heart Federation (WHF) will be performed to confirm the diagnosis of subclinical RHD. The auscultatory data from digital stethoscope will be used to train the deep neural network for the automatic identification of patients with subclinical RHD. The proposed neural network will be trained in a supervised manner using labels from standard echocardiogram of the participants. Once trained, the neural network will be able to automatically classify the DAS data in one of the three major categories—patient with definite RHD, patient with borderline RHD and normal subject. The significance of the results will be confirmed by standard statistical methods for hypothesis testing.Ethics and dissemination Ethics approval has been taken from the Aga Khan University, Pakistan. Findings will be disseminated through scientific publications and to collaborators.Article focus This study focuses on determining the frequency of subclinical RHD in school-going children in Karachi, Pakistan and developing a DL algorithm to screen for this condition using a digital stethoscope.https://bmjopen.bmj.com/content/11/8/e044070.full |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Fatima Ali Babar Hasan Zahra Hoodbhoy Devyani Chowdhury Huzaifa Ahmad Zainab Bhuriwala Muhammad Hanif Shahab U Ansari |
spellingShingle |
Fatima Ali Babar Hasan Zahra Hoodbhoy Devyani Chowdhury Huzaifa Ahmad Zainab Bhuriwala Muhammad Hanif Shahab U Ansari Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol BMJ Open |
author_facet |
Fatima Ali Babar Hasan Zahra Hoodbhoy Devyani Chowdhury Huzaifa Ahmad Zainab Bhuriwala Muhammad Hanif Shahab U Ansari |
author_sort |
Fatima Ali |
title |
Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol |
title_short |
Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol |
title_full |
Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol |
title_fullStr |
Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol |
title_full_unstemmed |
Detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol |
title_sort |
detection of subclinical rheumatic heart disease in children using a deep learning algorithm on digital stethoscope: a study protocol |
publisher |
BMJ Publishing Group |
series |
BMJ Open |
issn |
2044-6055 |
publishDate |
2021-08-01 |
description |
Introduction Rheumatic heart diseases (RHDs) contribute significant morbidity and mortality globally. To reduce the burden of RHD, timely initiation of secondary prophylaxis is important. The objectives of this study are to determine the frequency of subclinical RHD and to train a deep learning (DL) algorithm using waveform data from the digital auscultatory stethoscope (DAS) in predicting subclinical RHD.Methods and analysis We aim to recruit 1700 children from a group of schools serving the underprivileged over a 12-month period in Karachi (Pakistan). All consenting students within the age of 5–15 years with no underlying congenital heart disease will be eligible for the study. We will gather information regarding sociodemographics, anthropometric data, history of symptoms or diagnosis of rheumatic fever, phonocardiogram (PCG) and electrocardiography (ECG) data obtained from DAS. Handheld echocardiogram will be performed on each study participant to assess the presence of a mitral regurgitation (MR) jet (>1.5 cm), or the presence of aortic regurgitation (AR) in any view. If any of these findings are present, a confirmatory standard echocardiogram using the World Heart Federation (WHF) will be performed to confirm the diagnosis of subclinical RHD. The auscultatory data from digital stethoscope will be used to train the deep neural network for the automatic identification of patients with subclinical RHD. The proposed neural network will be trained in a supervised manner using labels from standard echocardiogram of the participants. Once trained, the neural network will be able to automatically classify the DAS data in one of the three major categories—patient with definite RHD, patient with borderline RHD and normal subject. The significance of the results will be confirmed by standard statistical methods for hypothesis testing.Ethics and dissemination Ethics approval has been taken from the Aga Khan University, Pakistan. Findings will be disseminated through scientific publications and to collaborators.Article focus This study focuses on determining the frequency of subclinical RHD in school-going children in Karachi, Pakistan and developing a DL algorithm to screen for this condition using a digital stethoscope. |
url |
https://bmjopen.bmj.com/content/11/8/e044070.full |
work_keys_str_mv |
AT fatimaali detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol AT babarhasan detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol AT zahrahoodbhoy detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol AT devyanichowdhury detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol AT huzaifaahmad detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol AT zainabbhuriwala detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol AT muhammadhanif detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol AT shahabuansari detectionofsubclinicalrheumaticheartdiseaseinchildrenusingadeeplearningalgorithmondigitalstethoscopeastudyprotocol |
_version_ |
1721212235952422912 |