Montgomery Dean, Addison Paul S, Borg Ulf
Respiratory and Monitoring Solutions, Medtronic, Technopole Centre, Edinburgh, EH26 0PJ, UK.
Respiratory and Monitoring Solutions, Medtronic, 6135 Gunbarrel Avenue, Boulder, CO, 80301, USA.
J Clin Monit Comput. 2016 Oct;30(5):661-8. doi: 10.1007/s10877-015-9774-8. Epub 2015 Sep 16.
Cerebral blood flow is regulated over a range of systemic blood pressures through the cerebral autoregulation (CA) control mechanism. The COx measure based on near infrared spectroscopy (NIRS) has been proposed as a suitable technique for the analysis of CA as it is non-invasive and provides a simpler acquisition methodology than other methods. The COx method relies on data binning and thresholding to determine the change between intact and impaired autoregulation zones. In the work reported here we have developed a novel method of differentiating the intact and impaired CA blood pressure regimes using clustering methods on unbinned data. K-means and Gaussian mixture model algorithms were used to analyse a porcine data set. The determination of the lower limit of autoregulation (LLA) was compared to a traditional binned data approach. Good agreement was found between the methods. The work highlights the potential application of using data clustering tools in the monitoring of CA function.
脑血流量通过脑自动调节(CA)控制机制在一系列全身血压范围内进行调节。基于近红外光谱(NIRS)的COx测量方法已被提议作为一种适用于分析CA的技术,因为它是非侵入性的,并且比其他方法提供了更简单的采集方法。COx方法依靠数据分箱和阈值确定来判断自动调节完整区域和受损区域之间的变化。在本文报道的工作中,我们开发了一种新方法,通过对未分箱数据使用聚类方法来区分完整和受损的CA血压状态。使用K均值和高斯混合模型算法分析了一个猪数据集。将自动调节下限(LLA)的确定结果与传统的分箱数据方法进行了比较。发现两种方法之间具有良好的一致性。这项工作突出了使用数据聚类工具监测CA功能的潜在应用。