An automated ECG-PCG coupling analysis system demonstrated methodological feasibility and stable parameter extraction across resting, movement, and stress conditions for home-based monitoring.
An automated ECG-PCG coupling analysis system with LLM-assisted reporting demonstrates engineering feasibility for continuous cardiac monitoring in community and home settings.
Objective: Cardiac monitoring in community and home environments requires automated operation, cross-state robustness, and interpretable feedback under resource-constrained and uncontrolled conditions. Unlike accuracy-driven ECG–PCG studies focusing on diagnostic performance, this work emphasizes systematic modeling of cardiac electromechanical coupling for long-term monitoring and engineering feasibility validation. Methods: An automated ECG–PCG coupling analysis and semantic reporting framework is proposed, covering signal preprocessing, event detection and calibration, multimodal coupling feature construction, and rule-constrained LLM-assisted interpretation. Electrical events from ECG are used as global temporal references, while multi-stage consistency correction mechanisms are introduced to enhance the stability of mechanical event localization under noise and motion interference. A structured electromechanical feature set is constructed to support fully automated processing. Results: Experimental results demonstrate that the proposed system maintains coherent event sequences and stable coupling parameter extraction across resting, movement, and emotional stress conditions. The incorporated LLM module integrates precomputed multimodal metrics under strict constraints, improving report readability and consistency without performing autonomous medical interpretation. Conclusions: This study demonstrates the methodological feasibility of an ECG–PCG coupling analysis framework for long-term cardiac state monitoring in low-resource environments. By integrating end-to-end automation, electromechanical coupling features, and constrained semantic reporting, the proposed system provides an engineering-oriented reference for continuous cardiac monitoring in community and home settings rather than a clinical diagnostic solution.
Tang et al. (Mon,) conducted a other in Cardiac monitoring. Automated ECG-PCG coupling analysis system with LLM-assisted semantic reporting was evaluated on Engineering feasibility and stable coupling parameter extraction. An automated ECG-PCG coupling analysis system demonstrated methodological feasibility and stable parameter extraction across resting, movement, and stress conditions for home-based monitoring.