论文标题
HKF:通过在线学习的Evolution先验进行自适应ECG DeNoising的分层Kalman过滤
HKF: Hierarchical Kalman Filtering with Online Learned Evolution Priors for Adaptive ECG Denoising
论文作者
论文摘要
心电图(ECG)信号在许多医疗保健应用中起关键作用,尤其是在家庭监测生命体征方面。这些应用通常取决于可穿戴技术,经常产生低质量的心电图信号。尽管存在几种用于增强信号质量和辅助临床解释的ECG的方法,但由于噪声耐受性有限或捕获ECG动力学的灵活性不足,它们通常在可穿戴技术的ECG数据中表现不佳。本文介绍了HKF,这是一种层次和自适应的卡尔曼滤波器,该滤波器使用专有状态空间模型有效地捕获心脏内部和中心互动动力学,用于ECG信号denoising。 HKF以在线方式学习了ECG信号心脏内部动力学的特定于患者的结构,从而导致过滤器适应每个患者的特定ECG信号特征。在一项实证研究中,HKF在保留波形的独特特性的同时,表现出优异的降解性能(均值误差降低)。在比较分析中,HKF的表现优于先前提出的ECG deoising方法,例如基于模型的Kalman滤波器和数据驱动的自动编码器。这使其成为在壁外医疗环境中申请的合适候选人。
Electrocardiography (ECG) signals play a pivotal role in many healthcare applications, especially in at-home monitoring of vital signs. Wearable technologies, which these applications often depend upon, frequently produce low-quality ECG signals. While several methods exist for ECG denoising to enhance signal quality and aid clinical interpretation, they often underperform with ECG data from wearable technology due to limited noise tolerance or inadequate flexibility in capturing ECG dynamics. This paper introduces HKF, a hierarchical and adaptive Kalman filter, which uses a proprietary state space model to effectively capture both intra- and inter-heartbeat dynamics for ECG signal denoising. HKF learns a patient-specific structured prior for the ECG signal's intra-heartbeat dynamics in an online manner, resulting in a filter that adapts to the specific ECG signal characteristics of each patient. In an empirical study, HKF demonstrated superior denoising performance (reduced mean-squared error) while preserving the unique properties of the waveform. In a comparative analysis, HKF outperformed previously proposed methods for ECG denoising, such as the model-based Kalman filter and data-driven autoencoders. This makes it a suitable candidate for applications in extramural healthcare settings.