A4 Refereed article in a conference publication
Two-stage Classification for Detecting Murmurs from Phonocardiograms Using Deep and Expert Features
Authors: Summerton Sara, Wood Danny, Murphy Darcy, Redfern Oliver, Benatan Matt, Kaisti Matti, Wong David C
Editors: N/A
Conference name: Computing in Cardiology
Publication year: 2022
Journal: Computing in Cardiology
Book title : Computing in Cardiology 2022
Series title: Computing in Cardiology
Volume: 49
ISSN: 2325-8861
eISSN: 2325-887X
DOI: https://doi.org/10.22489/CinC.2022.322
Web address : https://cinc.org/archives/2022/pdf/CinC2022-322.pdf
Self-archived copy’s web address: https://research.utu.fi/converis/portal/detail/Publication/178544267
Detection of heart murmurs from stethoscope sounds is a key clinical technique used to identify cardiac abnormalities. We describe the creation of an ensemble classifier using both deep and hand-crafted features to screen for heart murmurs and clinical abnormality from phonocardiogram recordings over multiple auscultation locations. The model was created by the team Murmur Mia! for the George B. Moody PhysioNet Challenge 2022.
Methods: Recordings were first filtered through a gradient boosting algorithm to detect Unknown. We assume that these are related to poor quality recordings, and hence we use input features commonly used to assess audio quality. Two further models, a gradient boosting model and ensemble of convolutional neural networks, were trained using time-frequency features and the mel-frequency cepstral coefficients (MFCC) as inputs, respectively. The models were combined using logistic regression, with bespoke rules to convert individual recording outputs to patient predictions.
Results: On the hidden challenge test set, our classifier scored 0.755 for the weighted accuracy and 14228 for clinical outcome challenge metric. This placed 9/40 and 28/39 on the challenge leaderboard, for each scoring metric, respectively.
Downloadable publication This is an electronic reprint of the original article. |