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Are 'Scaling Patterns' Useful Tools for Exploring Fractality in Heart Rate Variability Data?

机译:是“缩放模式”有用的工具,用于探索心率变异性数据中的快速性?

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Detrended fluctuation analysis (DFA) is becoming a widely used technique for exploring the structure of correlations in heart rate variability (HRV) data. This method provides a scaling or fractal exponent α derived from the behaviour of the root-mean-square fluctuations along different time scales n. Rather than just finding a single exponent, covering either short or long range, we recently suggested to track the local evolution of α as in this way scaling patterns (SP), which seem to provide more detailed characterisations of HRV data, are revealed. Here, we evaluate such potential advantage by classifying long-term data from 50 subjects in normal sinus rhythm and 29 congestive heart failure patients. Using the SP we achieved a significantly better classification of these data than using α, thereby confirming that the SP provide a useful assessment of the correlation structure in HRV data.
机译:减少波动分析(DFA)正成为一种广泛使用的技术,用于探索心率变异性(HRV)数据中的相关性的结构。该方法提供了从不同时间尺度的根均线波动的行为导出的缩放或分形指数α。我们最近建议跟踪α的局部演变,以这种方式追踪α的局部演变,似乎提供了HRV数据的更详细特征的α的本地演变。在这里,我们通过在正常窦性节律和29例充血性心力衰竭患者中分类50个受试者的长期数据来评估这些潜在的优势。使用SP,我们实现了这些数据的显着分类而不是使用α,从而确认SP在HRV数据中提供了对相关结构的有用评估。

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