A Markov-Switching Model Approach to Heart Sound Segmentation and Classification
Fuad Noman, Sh-Hussain Salleh, Chee-Ming Ting, S. Balqis Samdin,, Hernando Ombao, Hadri Hussain

TL;DR
This paper introduces a Markov-switching autoregressive model for precise segmentation and classification of heart sounds, improving accuracy and enabling detection of abnormal and unclassifiable morphologies for better heart health monitoring.
Contribution
It presents a novel MSAR-based segmentation method combined with CD-HMM classification, outperforming existing techniques in heart sound analysis.
Findings
Segmentation accuracy improved from 71% to 84.2%.
Achieved up to 90.19% F1 score in classifying abnormal beats.
Effective detection of unclassifiable heart sound morphologies.
Abstract
Objective: This paper considers challenges in developing algorithms for accurate segmentation and classification of heart sound (HS) signals. Methods: We propose an approach based on Markov switching autoregressive model (MSAR) to segmenting the HS into four fundamental components each with distinct second-order structure. The identified boundaries are then utilized for automated classification of pathological HS using the continuous density hidden Markov model (CD-HMM). The MSAR formulated in a state-space form is able to capture simultaneously both the continuous hidden dynamics in HS, and the regime switching in the dynamics using a discrete Markov chain. This overcomes the limitation of HMM which uses a single-layer of discrete states. We introduce three schemes for model estimation: (1.) switching Kalman filter (SKF); (2.) refined SKF; (3.) fusion of SKF and the duration-dependent…
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