School of Life Course & Population Sciences, King's College London, London WC2R 2LS, UK.
Department of Engineering Science, University of Oxford, Oxford OX1 2JD, UK.
Math Biosci Eng. 2024 Aug 2;21(8):6758-6782. doi: 10.3934/mbe.2024296.
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.
心率变异性(HRV)是心血管健康监测的一个重要指标。HRV 的频谱分析提供了对心脏自主神经系统功能的重要见解。然而,数据伪影可能会降低信号质量,从而导致对心脏活动的评估不可靠。在这项研究中,我们引入了一种基于矩阵补全的 HRV 频谱不确定性估计的新方法。所提出的方法利用 HRV 频谱矩阵的低秩特性来有效地估计数据不确定性。此外,我们还开发了一种改进的矩阵补全技术来提高估计精度和计算成本。在五个公共数据集上的基准测试表明,我们的模型在估计 HRV 频谱不确定性方面具有有效性和可靠性,并且在性能上优于五个深度学习模型。研究结果强调了我们开发的基于矩阵补全的统计机器学习模型在提供可靠的 HRV 频谱不确定性估计方面的潜力。