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Heart rate variability (HRV) is an important metric in cardiovascular health monitoring. Spectral analysis of HRV provides essential insights into the functioning of the cardiac autonomic nervous system. However, data artefacts could degrade signal quality, potentially leading to unreliable assessments of cardiac activities. In this study, we introduced a novel approach for estimating uncertainties in HRV spectrum based on matrix completion. The proposed method utilises the low-rank characteristic of HRV spectrum matrix to efficiently estimate data uncertainties. In addition, we developed a refined matrix completion technique to enhance the estimation accuracy and computational cost. Benchmarking on five public datasets, our model shows effectiveness and reliability in estimating uncertainties in HRV spectrum, and has superior performance against five deep learning models. The results underscore the potential of our developed matrix completion-based statistical machine learning model in providing reliable HRV spectrum uncertainty estimation.

Original publication

DOI

10.3934/mbe.2024296

Type

Journal article

Journal

Math Biosci Eng

Publication Date

02/08/2024

Volume

21

Pages

6758 - 6782

Keywords

HRV modelling, heart rate variability, matrix completion, spectrum estimation, uncertainty, Heart Rate, Humans, Algorithms, Reproducibility of Results, Machine Learning, Autonomic Nervous System, Signal Processing, Computer-Assisted, Electrocardiography, Uncertainty, Deep Learning, Models, Cardiovascular, Models, Statistical