动态心电监测中短暂ST段发作的检测

Franc Jager , George B. Moody , Roger G. Mark
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引用次数: 90

摘要

利用欧洲心脏病学会ST- t数据库,我们开发了一种基于karhunen - lo变换的算法,用于动态心电图监测期间瞬态ST段发作的鲁棒自动检测。我们回顾了当前检测瞬态ST段变化的方法和系统,并描述了我们的算法架构及其发展。该算法利用特征向量之间的Mahalanobis距离函数,在特征空间中结合了单扫描轨迹识别技术。该算法的主要特点是检测有噪声的心跳,校正参考ST段电平以校正缓慢的ST电平漂移,检测由于心脏平均电轴的移动而导致的ST偏差的突然显著变化,检测瞬态ST发作,并通过跟踪QRS复杂形态来区分由于轴移动而导致的缺血和非缺血ST发作。我们将该算法的性能与其他最近开发的算法进行了比较,并估计了其实际性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Transient ST Segment Episodes During Ambulatory ECG Monitoring

Using the European Society of Cardiology ST-T Database, we have developed a Karhunen–Loève transform-based algorithm for robust automated detection of transient ST segment episodes during ambulatory ECG monitoring. We review current approaches and systems to detect transient ST segment changes and describe the architecture of our algorithm and its development. The algorithm incorporates a single-scan trajectory-recognition technique in feature space using the Mahalanobis distance function between the feature vectors. The main characteristics of the algorithm are detection of noisy beats, correction of the reference ST segment level to correct for slow ST level drift, detection of sudden significant shifts of ST deviation due to shifts of the mean electrical axis of the heart, detection of transient ST episodes, and, by tracking the QRS complex morphology, differentiation between ischemic and nonischemic ST episodes as a result of axis shifts. We compared the algorithm's performance to other recently developed algorithms and estimated its real-world performance.

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