IEEE J Biomed Health Inform. 2020 Mar;24(3):728-734. doi: 10.1109/JBHI.2019.2914211. Epub 2019 Apr 30.
This paper presents the Cardiorespiratory System Identification Lab (CRSIDLab), a MATLAB-based software tool for multivariate autonomic nervous system (ANS) evaluation through heart rate variability (HRV) analysis and cardiorespiratory system identification. Based on a graphical user interface, CRSIDLab provides a complete set of tools including pre-processing cardiorespiratory data (electrocardiogram, continuous blood pressure, airflow, and instantaneous lung volume), power spectral density estimation, and multivariable cardiorespiratory system model identification. Parametrized multivariate models can assess both HRV and baroreflex sensitivity (BRS) by considering the causal relationship from respiration to heart rate (or its reciprocal, R-to-R interval - RRI) and from systolic blood pressure to RRI, for instance. The impulse response, estimated from the model, is used as a mathematical tool to effectively open the inherently closed-loop nature of the cardiorespiratory system, allowing the investigation of the dynamic response between pairs of cardiorespiratory variables. This system modeling approach provides information on gain and temporal behavior regarding dynamics, such as the baroreflex, complementing traditional HRV, and BRS indices. The toolbox is presented and used to investigate autonomic function in sleep apnea. The results show that, while traditional HRV indices were unable to differentiate between apneic and non-apneic subjects, the autonomic descriptors obtained from the multivariate system identification techniques were able to show vagal impairment in apneic compared to non-apneic subjects. Thus, CRSIDLab can help promote the use of cardiorespiratory system identification as a potentially more sensitive measure of ANS activity than classical HRV analysis.
本文提出了心肺系统识别实验室(CRSIDLab),这是一个基于 MATLAB 的软件工具,用于通过心率变异性(HRV)分析和心肺系统识别来评估多变量自主神经系统(ANS)。基于图形用户界面,CRSIDLab 提供了一整套工具,包括预处理心肺数据(心电图、连续血压、气流和即时肺容积)、功率谱密度估计以及多变量心肺系统模型识别。参数化的多变量模型可以通过考虑呼吸对心率(或其倒数,R 到 R 间隔-RRI)以及收缩压对 RRI 的因果关系,来评估 HRV 和压力感受反射敏感性(BRS)等。从模型中估计的脉冲响应被用作一种数学工具,有效地打开心肺系统固有的闭环性质,允许研究一对心肺变量之间的动态响应。这种系统建模方法提供了有关增益和动态行为的信息,例如压力感受反射,补充了传统的 HRV 和 BRS 指数。本文介绍并使用该工具包研究了睡眠呼吸暂停中的自主功能。结果表明,虽然传统的 HRV 指数无法区分呼吸暂停和非呼吸暂停受试者,但从多变量系统识别技术获得的自主描述符能够显示呼吸暂停受试者与非呼吸暂停受试者相比存在迷走神经损伤。因此,CRSIDLab 可以帮助促进使用心肺系统识别作为一种比传统 HRV 分析更敏感的自主神经系统活动测量方法。