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Suitability of multiscale entropy for complexity quantification of cardiac rhythms in chronic pathological conditions: a similarity patterns based investigation

机译:多尺度熵对慢性病病理条件中心力节律的复杂性定量的适用性:基于相似模式的调查

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In this paper, based upon the appearance of patterns derived from a time series, we have investigated the suitability of multiscale entropy (MSE) technique for complexity quantification of cardiac rhythms in chronic pathological conditions. MSE analysis was developed to quantify the complexity of a wide variety of biomedical signals. Here, sample entropy (SampEn) technique was evaluated across multiple spatio-temporal scales. In SampEn, to find the appearance of repetitive patterns in multi-dimensional phase space, the threshold value 's' is pre-fixed as 0.2. However, the cardiac rhythms of some pathologies are characterized with considerable erratic beat-to-beat fluctuations, and hence, in accordance with that, the patterns concealed in the pathologic cardiac rhythms spread across a wider region of multidimensional phase space. But, fixed threshold value 's' assigns a fewer similarity pattern inside a circle of fixed dimensions, and hence, the higher entropy rate is associated with the chronic pathologic cardiac rhythms when compared to healthy cardiac rhythms. This flaw of SampEn is present in MSE, which leads to the wrong estimation of complexity associated with a time series. The outcome of this issue is clearly visible at low time scales, where period-to-period fluctuations in chronic pathologic cardiac rhythms and in randomized time series are significantly increased. In this present study, MSE analysis was performed over synthetic simulated database comprising of (white noise) WN and (power noise) PN signals. Further, MSE analysis was performed on the RR-interval series collected from (normal sinus rhythm) NSR group, and patients affected by (Atrial Fibrillation) AF. A fixed number of data samples 'M' of 10,000 were considered for each type of time series. Here, it is being observed that at some time scales, MSE assigns higher entropy to the WN and AF group, rather than PN and NSR group respectively, which is a wrong estimation of complexity. However, both the groups are discriminated efficiently by this algorithm. Further, it is concluded that MSE measure both the entropy and short term variations associated with a time series, but unable to investigate the real complexity (meaning full structural organization) present in a signal.
机译:本文基于从时间序列衍生的图案的外观,我们研究了多尺度熵(MSE)技术在慢性病理条件下对心性节律的复杂性定量的适用性。开发了MSE分析,以量化各种生物医学信号的复杂性。这里,在多个时空尺度上评估样品熵(Sampen)技术。在唤醒中,为了在多维相空间中找到重复图案的外观,阈值的S'被预固定为0.2。然而,一些病理的心脏节律具有相当多的错误搏动波动,因此,根据此,隐藏在病理心脏节奏中的图案在多维相空间的更广泛的区域上传播。但是,固定阈值的'S'在固定尺寸的圆圈内分配较少的相似性模式,因此,与健康的心律节奏相比,更高的熵率与慢性病理心脏节律相关联。这种啜饮的缺陷存在于MSE中,这导致错误估计与时间序列相关的复杂性。该问题的结果在低时间尺度下清晰可见,其中慢性病理心律节奏和随机时间序列中的周期到周期波动显着增加。在本研究中,通过包括(白噪声)Wn和(功率噪声)PN信号的合成模拟数据库进行MSE分析。此外,对从(正常窦性量节律)NSR组收集的RR间序列和受(心房颤动)AF的患者进行MSE分析。每种类型时间序列都考虑了10,000的固定数量的数据样本“M”。这里,正在观察到,在某些时间尺度上,MSE分别为WN和AF组而不是PN和NSR组分配更高的熵,这是对复杂性的错误估计。但是,通过该算法有效地歧视两个组。此外,结论是MSE测量与时间序列相关的熵和短期变化,但无法调查信号中存在的真实复杂性(意味着完整的结构组织)。

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