Neuroscience Statistics Research Laboratory, Massachusetts General Hospital, Harvard Medical School, Boston, MA 02114, USA.
Ann Biomed Eng. 2011 Jan;39(1):260-76. doi: 10.1007/s10439-010-0179-z. Epub 2010 Oct 13.
In this article, we present a point process method to assess dynamic baroreflex sensitivity (BRS) by estimating the baroreflex gain as focal component of a simplified closed-loop model of the cardiovascular system. Specifically, an inverse Gaussian probability distribution is used to model the heartbeat interval, whereas the instantaneous mean is identified by linear and bilinear bivariate regressions on both the previous R-R intervals (RR) and blood pressure (BP) beat-to-beat measures. The instantaneous baroreflex gain is estimated as the feedback branch of the loop with a point-process filter, while the RR-->BP feedforward transfer function representing heart contractility and vasculature effects is simultaneously estimated by a recursive least-squares filter. These two closed-loop gains provide a direct assessment of baroreflex control of heart rate (HR). In addition, the dynamic coherence, cross bispectrum, and their power ratio can also be estimated. All statistical indices provide a valuable quantitative assessment of the interaction between heartbeat dynamics and hemodynamics. To illustrate the application, we have applied the proposed point process model to experimental recordings from 11 healthy subjects in order to monitor cardiovascular regulation under propofol anesthesia. We present quantitative results during transient periods, as well as statistical analyses on steady-state epochs before and after propofol administration. Our findings validate the ability of the algorithm to provide a reliable and fast-tracking assessment of BRS, and show a clear overall reduction in baroreflex gain from the baseline period to the start of propofol anesthesia, confirming that instantaneous evaluation of arterial baroreflex control of HR may yield important implications in clinical practice, particularly during anesthesia and in postoperative care.
在本文中,我们提出了一种点过程方法来评估动态血压反射敏感性(BRS),方法是通过估计血压反射增益作为心血管系统简化闭环模型的焦点分量。具体来说,使用逆高斯概率分布来对心跳间隔进行建模,而瞬时均值则通过线性和双线性二元回归来确定,回归变量为前一个 R-R 间隔(RR)和血压(BP)逐拍测量值。瞬时血压反射增益通过点过程滤波器作为环路的反馈分支进行估计,而代表心脏收缩性和血管作用的 RR->BP 前馈传递函数则通过递归最小二乘滤波器同时进行估计。这两个闭环增益提供了心率(HR)的血压反射控制的直接评估。此外,还可以估计动态相干性、交叉双谱及其功率比。所有统计指标都为心跳动力学与血液动力学之间的相互作用提供了有价值的定量评估。为了说明该应用,我们已经将提出的点过程模型应用于 11 名健康受试者的实验记录,以监测异丙酚麻醉下的心血管调节。我们在瞬态期间呈现了定量结果,以及异丙酚给药前后稳态时期的统计分析。我们的研究结果验证了该算法提供可靠和快速跟踪 BRS 评估的能力,并表明从基线期到异丙酚麻醉开始时,血压反射对 HR 的控制整体明显降低,这证实了 HR 动脉血压反射控制的即时评估可能在临床实践中具有重要意义,特别是在麻醉和术后护理期间。