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引用本文的文献

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本文引用的文献

1
Novel Biomarker for Evaluating Ischemic Stress Using an Electrogram Derived Phase Space.使用心电图衍生相空间评估缺血应激的新型生物标志物。
Comput Cardiol (2010). 2016 Sep;43:1057-1060. Epub 2017 Mar 2.
2
Extensions to a manifold learning framework for time-series analysis on dynamic manifolds in bioelectric signals.生物电信号中动态流形上时间序列分析的流形学习框架的扩展。
Phys Rev E. 2016 Apr;93(4):042218. doi: 10.1103/PhysRevE.93.042218. Epub 2016 Apr 29.
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Techniques for automated local activation time annotation and conduction velocity estimation in cardiac mapping.心脏标测中自动局部激活时间标注和传导速度估计技术。
Comput Biol Med. 2015 Oct 1;65:229-42. doi: 10.1016/j.compbiomed.2015.04.027. Epub 2015 Apr 25.
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Sensitivity of epicardial electrical markers to acute ischemia detection.心外膜电标记物对急性缺血检测的敏感性。
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State of the art in stress testing and ischaemia monitoring.压力测试与缺血监测的技术现状。
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Changes in conduction velocity during acute ischemia in ventricular myocardium of the isolated porcine heart.离体猪心心室肌急性缺血期间传导速度的变化
Circulation. 1986 Jan;73(1):189-98. doi: 10.1161/01.cir.73.1.189.

使用拉普拉斯特征映射检测心肌缺血应激及传导速度变化

Detecting Ischemic Stress to the Myocardium Using Laplacian Eigenmaps and Changes to Conduction Velocity.

作者信息

Good Wilson W, Erem Burak, Coll-Font Jaume, Brooks Dana H, MacLeod Rob S

机构信息

Scientific Computing and Imaging Institute, Bioengineering, University of Utah, Salt Lake City, UT, USA.

Boston Children's Hospital and TrueMotion, Boston, MA, USA.

出版信息

Comput Cardiol (2010). 2017 Sep;44. doi: 10.22489/CinC.2017.269-417. Epub 2018 Apr 5.

DOI:10.22489/CinC.2017.269-417
PMID:29930952
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC6007991/
Abstract

The underlying pathophysiology of ischemia and its electrocardiographic consequences are poorly understood, resulting in unreliable diagnosis of this disease. This limited knowledge of underlying mechanisms suggests a data driven approach, which seeks to identify patterns in the ECG that can be linked statistically to underlying behavior and conditions of ischemic stress. The gold standard ECG metrics for evaluating ischemia monitor vertical deflections within the ST segment. However, ischemia influences all portions of the electrogram. Another metric that targets the QRS complex during ischemia is Conduction Velocity (CV). An even more inclusive, data driven approach is known as "Laplacian Eigenmaps" (LE), which can identify trajectories, or "manifolds", that respond to different spatiotemporal consequences of ischemic stress, and these changes to the trajectories on the manifold may serve as a clinically relevant biomarker. On this study, we compared the LE- and CV-based markers against two gold standards for detecting ischemic stress, both derived from the ST segment. We evaluated the response time and fidelity of each biomarker using a Time to Threshold (TTT) and Contrast Ratio (CR) measure, over 51 episodes recorded as cardiac electrograms from a canine model of controlled ischemia. The results show that metrics designed to monitor regions beyond the ST segment can perform at least as well, if not better, than traditional ST segment based metrics.

摘要

缺血的潜在病理生理学及其心电图后果目前仍知之甚少,导致对这种疾病的诊断不可靠。对潜在机制的了解有限表明需要一种数据驱动的方法,该方法旨在识别心电图中可以与缺血应激的潜在行为和状况进行统计关联的模式。评估缺血的金标准心电图指标监测ST段内的垂直偏转。然而,缺血会影响心电图的所有部分。另一个针对缺血期间QRS复合波的指标是传导速度(CV)。一种更具包容性的数据驱动方法称为“拉普拉斯特征映射”(LE),它可以识别对缺血应激的不同时空后果做出反应的轨迹或“流形”,而这些流形上轨迹的变化可能作为一种临床相关的生物标志物。在本研究中,我们将基于LE和CV的标志物与两种检测缺血应激的金标准进行了比较,这两种金标准均来自ST段。我们使用阈值时间(TTT)和对比度比(CR)测量方法,对从犬类可控缺血模型记录的51次心脏电描记图发作评估了每个生物标志物的响应时间和保真度。结果表明,旨在监测ST段以外区域的指标至少可以与基于传统ST段的指标表现相当,甚至更好。