Eugenia Ipar, Leandro Javier Cymberknop, Ricardo Luis Armentano
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引用次数: 0
Abstract
Objective: Understanding Cardiac Hemodynamic Status (CHS) is essential for accurate cardiovascular health assessment, as it is governed by key parameters such as Cardiac Output (CO), Systemic Vascular Resistance (SVR), and Arterial Compliance (AC). This study aims to develop a non-invasive method using Digital Photoplethysmography (PPGD) signals and deep learning techniques to predict these biomarkers for a comprehensive CHS evaluation.
Approach: A dataset of 4374 virtual subjects was used. Nonlinear features were extracted from PPGD signals to capture their inherent complexity and irregularity. A Parallel Convolutional Neural Network (PCNN) was implemented to process both raw signals and nonlinear features concurrently. Model performance was evaluated using R², Root Mean Squared Error (RMSE), Mean Squared Error (MSE), and Mean Absolute Error (MAE).
Main results: The PCNN demonstrated satisfactory predictive performance with R², RMSE, MSE, and MAE values of 0.872, 0.086, 0.008, and 0.068 for CO; 0.851, 0.074, 0.006, and 0.058 for SVR; and 0.938, 0.049, 0.003, and 0.038 for AC. The proposed PCNN-based method offers a novel, non-invasive approach for predicting key cardiovascular biomarkers, providing an accurate CHS assessment.
Significance: This method advances non-invasive cardiovascular diagnostics by combining PPGD signals and deep learning. Future work will focus on validating this findings in real-world settings for improved clinical applicability.
期刊介绍:
Physiological Measurement publishes papers about the quantitative assessment and visualization of physiological function in clinical research and practice, with an emphasis on the development of new methods of measurement and their validation.
Papers are published on topics including:
applied physiology in illness and health
electrical bioimpedance, optical and acoustic measurement techniques
advanced methods of time series and other data analysis
biomedical and clinical engineering
in-patient and ambulatory monitoring
point-of-care technologies
novel clinical measurements of cardiovascular, neurological, and musculoskeletal systems.
measurements in molecular, cellular and organ physiology and electrophysiology
physiological modeling and simulation
novel biomedical sensors, instruments, devices and systems
measurement standards and guidelines.