利用电图衍生相空间评估缺血性应激的新生物标志物。

Computing in cardiology Pub Date : 2016-09-01 Epub Date: 2017-03-02
Wilson W Good, Burak Erem, Jaume Coll-Font, Dana H Brooks, Rob S MacLeod
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引用次数: 0

摘要

缺血的潜在病理生理尚不清楚,导致该病的临床诊断不可靠。这种对潜在机制的有限了解提示了一种数据驱动的方法,该方法旨在识别ECG数据中的模式,这些模式可以在统计上与缺血性组织的潜在行为和状况联系起来。先前的研究表明,一种被称为拉普拉斯特征图(LE)的方法可以识别对缺血应激的不同时空后果敏感的轨迹或流形,因此可以作为潜在的临床相关生物标志物。我们应用LE方法测量了几种犬制剂的跨壁电位,在对照和缺血条件下记录,并在近似qrs衍生的流形上发现了对缺血敏感的区域。通过识别一个指向与缺血相关的流形变化的向量,并测量在缺血期间沿着该向量的轨迹位移,我们将其称为Mshift,也可以将该向量拉回信号空间,并确定哪些电极负责驱动流形中观察到的变化。我们把信号空间的变化称为流形微分(Mdiff)。Mdiff和Mshift指标对缺血变化的敏感性与ST段检测缺血区域的标准指标相似。新的指标也能够区分缺血的亚型。因此,我们的结果表明,可以使用Mshift和Mdiff指标以及ST衍生指标来确定心肌组织是否缺血。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Novel Biomarker for Evaluating Ischemic Stress Using an Electrogram Derived Phase Space.

Novel Biomarker for Evaluating Ischemic Stress Using an Electrogram Derived Phase Space.

Novel Biomarker for Evaluating Ischemic Stress Using an Electrogram Derived Phase Space.

The underlying pathophysiology of ischemia is poorly understood, resulting in unreliable clinical diagnosis of this disease. This limited knowledge of underlying mechanisms suggested a data driven approach, which seeks to identify patterns in the ECG data that can be linked statistically to underlying behavior and conditions of ischemic tissue. Previous studies have suggested that an approach known as Laplacian eigenmaps (LE) can identify trajectories, or manifolds, that are sensitive to different spatiotemporal consequences of ischemic stress, and thus serve as potential clinically relevant biomarkers. We applied the LE approach to measured transmural potentials in several canine preparations, recorded during control and ischemic conditions, and discovered regions on an approximated QRS-derived manifold that were sensitive to ischemia. By identifying a vector pointing to ischemia-associated changes to the manifold and measuring the shift in trajectories along that vector during ischemia, which we denote as Mshift, it was possible to also pull that vector back into signal space and determine which electrodes were responsible for driving the observed changes in the manifold. We refer to the signal space change as the manifold differential (Mdiff). Both the Mdiff and Mshift metrics show a similar degree of sensitivity to ischemic changes as standard metrics applied during the ST segment in detecting ischemic regions. The new metrics also were able to distinguish between sub-types of ischemia. Thus our results indicate that it may be possible to use the Mshift and Mdiff metrics along with ST derived metrics to determine whether tissue within the myocardium is ischemic or not.

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