2022
DOI: 10.1101/2022.11.28.22279153
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Algorithm for Predicting Valvular Heart Disease from Heart Sounds in an Unselected Cohort

Abstract: Background Although neural networks have shown promise in classifying pathological heart-sounds, algorithms have so far either been trained or tested on selected cohorts which can result in selection bias. Herein, the main objective is to explore the ability of neural networks to predict valvular heart disease (VHD) from heart sound (HS) recordings in an unselected cohort. Methods and results Using annotated HSs and echocardiogram data from 2124 subjects from the Tromso 7 study, we trained a recurrent neural n… Show more

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“…ResNets on linear and logarithmic spectrogram-image features were implemented in the Python code 6 of the study [147]. A study [148] released a Matlab code 7 for detecting valvular heart disease from heart sounds and echocardiograms.…”
Section: Published Algorithmsmentioning
confidence: 99%
“…ResNets on linear and logarithmic spectrogram-image features were implemented in the Python code 6 of the study [147]. A study [148] released a Matlab code 7 for detecting valvular heart disease from heart sounds and echocardiograms.…”
Section: Published Algorithmsmentioning
confidence: 99%