Robust Heartbeat Detection from Multimodal Data via CNN-based Generalizable Information Fusion
B S Chandra, C S Sastry, S Jana

TL;DR
This paper introduces a CNN-based method for directly fusing multimodal physiological signals to improve heartbeat detection accuracy and robustness across various clinical scenarios.
Contribution
It presents a novel CNN-based information fusion approach that learns from multiple signals without intermediate steps, enhancing robustness and generalizability in heartbeat detection.
Findings
Achieved 94% accuracy with ECG and BP signals on PhysioNet 2014
Scored 99.92% on MIT-BIH arrhythmia database
Performed well across diverse clinical conditions
Abstract
Objective: Heartbeat detection remains central to cardiac disease diagnosis and management, and is traditionally performed based on electrocardiogram (ECG). To improve robustness and accuracy of detection, especially, in certain critical-care scenarios, the use of additional physiological signals such as arterial blood pressure (BP) has recently been suggested. There, estimation of heartbeat location requires information fusion from multiple signals. However, reported efforts in this direction often obtain multimodal estimates somewhat indirectly, by voting among separately obtained signal-specific intermediate estimates. In contrast, we propose to directly fuse information from multiple signals without requiring intermediate estimates, and thence estimate heartbeat location in a robust manner. Method: We propose as a heartbeat detector, a convolutional neural network (CNN) that learns…
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Taxonomy
TopicsECG Monitoring and Analysis · Non-Invasive Vital Sign Monitoring · EEG and Brain-Computer Interfaces
