Scientific Computing and Imaging Institute, University of Utah, Salt Lake City, UT, USA; Department of Biomedical Engineering, University of Utah, Salt Lake City, UT, USA; Nora Eccles Cardiovascular Research and Training Institute, University of Utah, Salt Lake City, UT, USA.
TrueMotion, Boston, MA, USA.
Comput Biol Med. 2020 Dec;127:104059. doi: 10.1016/j.compbiomed.2020.104059. Epub 2020 Oct 28.
Despite a long history of ECG-based monitoring of acute ischemia quantified by several widely used clinical markers, the diagnostic performance of these metrics is not yet satisfactory, motivating a data-driven approach to leverage underutilized information in the electrograms. This study introduces a novel metric for acute ischemia, created using a machine learning technique known as Laplacian eigenmaps (LE), and compares the diagnostic and temporal performance of the LE metric against traditional metrics.
The LE technique uses dimensionality reduction of simultaneously recorded time signals to map them into an abstract space in a manner that highlights the underlying signal behavior. To evaluate the performance of an electrogram-based LE metric compared to current standard approaches, we induced episodes of transient, acute ischemia in large animals and captured the electrocardiographic response using up to 600 electrodes within the intramural and epicardial domains.
The LE metric generally detected ischemia earlier than all other approaches and with greater accuracy. Unlike other metrics derived from specific features of parts of the signals, the LE approach uses the entire signal and provides a data-driven strategy to identify features that reflect ischemia.
The superior performance of the LE metric suggests there are underutilized features of electrograms that can be leveraged to detect the presence of acute myocardial ischemia earlier and more robustly than current methods.
The earlier detection capabilities of the LE metric on the epicardial surface provide compelling motivation to apply the same approach to ECGs recorded from the body surface.
尽管基于心电图的急性缺血监测已经有很长的历史,并且有几个广泛使用的临床标志物来量化缺血情况,但这些指标的诊断性能仍不尽如人意,这促使我们采用数据驱动的方法来利用心电图中未被充分利用的信息。本研究引入了一种新的急性缺血指标,该指标使用一种称为拉普拉斯特征映射(Laplacian eigenmaps,LE)的机器学习技术创建,并比较了 LE 指标与传统指标的诊断性能和时间性能。
LE 技术使用同时记录的时间信号的降维,以突出潜在信号行为的方式将它们映射到抽象空间中。为了评估基于心电图的 LE 指标与当前标准方法相比的性能,我们在大型动物中诱导短暂的急性缺血发作,并使用多达 600 个心内和心外电极捕获心电图响应。
LE 指标通常比其他所有方法更早地检测到缺血,并且具有更高的准确性。与其他从信号特定部分的特征中衍生的指标不同,LE 方法使用整个信号,并提供了一种数据驱动的策略来识别反映缺血的特征。
LE 指标的优异性能表明,心电图中存在未被充分利用的特征,可以利用这些特征更早、更稳健地检测到急性心肌缺血的存在。
LE 指标在心外膜表面的早期检测能力提供了令人信服的理由,促使我们将相同的方法应用于从体表记录的心电图。