Good Wilson W, Erem Burak, Coll-Font Jaume, Zenger Brian, Horáček B Milan, Brooks Dana H, MacLeod Rob S
Scientific Computing and Imaging Institute, Biomedical Engineering Dept, University of Utah, Salt Lake City, UT, USA.
TrueMotion, Boston, MA, USA.
Comput Cardiol (2010). 2018 Sep;45. doi: 10.22489/CinC.2018.351. Epub 2019 Jun 24.
The underlying pathophysiology of myocardial ischemia is incompletely understood, resulting in persistent difficulty of diagnosis. This limited understanding of underlying mechanisms encourages a data driven approach, which seeks to identify patterns in the ECG data that can be linked statistically to disease states. Laplacian Eigen-maps (LE) is a dimensionality reduction method popularized in machine learning that we have shown in large animal experiments to identify underlying ischemic stress both earlier in an ischemic episode, and more robustly, than typical clinical markers. We have now extended this approach to body surface potential mapping (BSPM) recordings acquired during acute, transient ischemia episodes from animal and human PTCA studies. Our previous studies, suggest that the LE approach is sensitive to the spatiotemporal electrocardiographic consequences of ischemia-induced stress within the heart and on the epicardial surface. In this study, we expand this technique to the body surface of animals and humans. Across 10 episodes of induced ischemia in animals and 200 human recordings during PTCA, the LE algorithm was able to detect ischemic events from BSPM as changes in the morphology of the resulting trajectories while maintaining the superior temporal performance the LE-metric has shown previously.
心肌缺血的潜在病理生理学尚未完全明确,导致诊断一直存在困难。对潜在机制的这种有限理解促使采用数据驱动的方法,该方法旨在识别心电图数据中可与疾病状态进行统计学关联的模式。拉普拉斯特征映射(LE)是机器学习中一种流行的降维方法,我们在大型动物实验中已证明,与典型临床指标相比,它能在缺血发作早期更可靠地识别潜在的缺血应激。我们现在已将此方法扩展到在动物和人类经皮冠状动脉腔内血管成形术(PTCA)研究的急性、短暂缺血发作期间获取的体表电位映射(BSPM)记录。我们之前的研究表明,LE方法对心脏内和心外膜表面缺血诱导应激的时空心电图后果敏感。在本研究中,我们将该技术扩展到动物和人类的体表。在动物的10次诱导缺血发作以及PTCA期间的200份人类记录中,LE算法能够从BSPM检测到缺血事件,表现为所得轨迹形态的变化,同时保持LE指标先前显示的卓越时间性能。