This work considers the problem of segmenting heart sounds into their fundamental components. We unify statistical and data-driven solutions by introducing Markov-based Neural Networks (MNNs), a hybrid end-to-end framework that exploits Markov models as statistical inductive biases for an Artificial Neural Network (ANN) discriminator. We show that an MNN leveraging a simple one-dimensional Convolutional ANN significantly outperforms two recent purely data-driven solutions for this task in two publicly available datasets: PhysioNet 2016 (Sensitivity: 0.947 ± 0.02; Positive Predictive Value : 0.937 ± 0.025) and the CirCor DigiScope 2022 (Sensitivity: 0.950 ± 0.008; Positive Predictive Value: 0.943 ± 0.012). We also propose a novel gradient-based unsupervised learning algorithm that effectively makes the MNN adaptive to unseen datum sampled from unknown distributions. We perform a cross dataset analysis and show that an MNN pre-trained in the CirCor DigiScope 2022 can benefit from an average improvement of 3.90% Positive Predictive Value on unseen observations from the PhysioNet 2016 dataset using this method.
CITATION STYLE
Martins, M. L., Coimbra, M. T., & Renna, F. (2023). Markov-Based Neural Networks for Heart Sound Segmentation: Using Domain Knowledge in a Principled Way. IEEE Journal of Biomedical and Health Informatics, 27(11), 5357–5368. https://doi.org/10.1109/JBHI.2023.3312597
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