首页> 外文期刊>EURASIP journal on advances in signal processing >Clustering and Symbolic Analysis of Cardiovascular Signals: Discovery and Visualization of Medically Relevant Patterns in Long-Term Data Using Limited Prior Knowledge
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Clustering and Symbolic Analysis of Cardiovascular Signals: Discovery and Visualization of Medically Relevant Patterns in Long-Term Data Using Limited Prior Knowledge

机译:心血管信号的聚类和符号分析:使用有限的先验知识在长期数据中医学相关模式的发现和可视化

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This paper describes novel fully automated techniques for analyzing large amounts of cardiovascular data. In contrast to traditional medical expert systems our techniques incorporate no a priori knowledge about disease states. This facilitates the discovery of unexpected events. We start by transforming continuous waveform signals into symbolic strings derived directly from the data. Morphological features are used to partition heart beats into clusters by maximizing the dynamic time-warped sequence-aligned separation of clusters. Each cluster is assigned a symbol, and the original signal is replaced by the corresponding sequence of symbols. The symbolization process allows us to shift from the analysis of raw signals to the analysis of sequences of symbols. This discrete representation reduces the amount of data by several orders of magnitude, making the search space for discovering interesting activity more manageable. We describe techniques that operate in this symbolic domain to discover rhythms, transient patterns, abnormal changes in entropy, and clinically significant relationships among multiple streams of physiological data. We tested our techniques on cardiologist-annotated ECG data from forty-eight patients. Our process for labeling heart beats produced results that were consistent with the cardiologist supplied labels 98.6 of the time, and often provided relevant finer-grained distinctions. Our higher level analysis techniques proved effective at identifying clinically relevant activity not only from symbolized ECG streams, but also from multimodal data obtained by symbolizing ECG and other physiological data streams. Using no prior knowledge, our analysis techniques uncovered examples of ventricular bigeminy and trigeminy, ectopic atrial rhythms with aberrant ventricular conduction, paroxysmal atrial tachyarrhythmias, atrial fibrillation, and pulsus paradoxus.
机译:本文介绍了用于分析大量心血管数据的新型全自动技术。与传统医学专家系统相比,我们的技术没有包含关于疾病状态的先验知识。这有助于发现意外事件。我们首先将连续波形信号转换为直接从数据中导出的符号字符串。通过最大限度地利用动态时间扭曲序列对齐的群集分离,形态学特征可将心跳分成多个群集。每个簇被分配一个符号,并且原始信号被相应的符号序列代替。符号化过程使我们能够从原始信号的分析转向符号序列的分析。这种离散表示将数据量减少了几个数量级,从而使发现有趣活动的搜索空间更易于管理。我们描述了在该符号域中运行的技术,以发现节奏,瞬态模式,熵的异常变化以及生理数据的多个流之间的临床显着关系。我们在来自48位患者的心脏病医生注释的ECG数据上测试了我们的技术。我们为心跳贴标签的过程所产生的结果与心脏病专家提供的98.6倍的标签一致,并且经常提供相关的细粒度区别。我们的高级分析技术被证明不仅可以从符号化的ECG数据流中识别临床相关活动,而且还可以从通过符号化ECG和其他生理数据流而获得的多峰数据中识别出临床相关活性。在没有任何先验知识的情况下,我们的分析技术发现了一些例子,如心室重婚和三叉神经,异位性心律伴心室传导异常,阵发性房性心律失常,房颤和脉搏异常。

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