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Parametric Estimation of Entropy Using High Order Markov Chains for Heart Rate Variability Analysis

机译:使用高阶马尔可夫链进行心率变异性分析的熵参数估计

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The aim of this study is to investigate the parametric estimation of entropy and entropy rate of Heart Rate Variability (HRV) series, through the usage of Higher Order Markov Chain (HOMC) models. In HOMCs, the dynamic depends on an arbitrary number of previous steps, and not just the present state as in traditional Markov chains. After obtaining the transition probabilities, entropy and entropy rate were derived in terms of the stationary distribution. First, we empirically confirmed the convergence of the estimated values to the theoretical ones, by creating synthetic signals from HOMCs with known characteristics. Then, we tested the methodology on HRV series derived from long-term recordings of 44 patients affected by congestive heart failure and 54 normal controls. After quantization of RR series with three different strategies, metrics were estimated varying the HOMC order (up to 7) and the number of samples. As no gold standard was available, we measured the capability of entropy and entropy rate of discriminating among the two populations considered, using a support vector machine model $(k = 5$ fold validation). On synthetic series, the estimation error was marginal when $N > 200$ and smaller when the MCs were tightly connected. The classification averagely scored an accuracy of about 80% in distinguishing normal and CHF patients, with a maximum value of 86.7% (AUC = 0.92).
机译:这项研究的目的是通过使用高阶马尔可夫链(HOMC)模型来研究心率变异性(HRV)序列的熵和熵率的参数估计。在HOMC中,动态过程取决于任意数量的先前步骤,而不仅仅是传统马尔可夫链中的当前状态。在获得转移概率之后,根据平稳分布推导熵和熵率。首先,我们通过从具有已知特征的HOMC生成合成信号,从经验上证实了估计值与理论值的收敛性。然后,我们测试了HRV系列的方法,该方法是从44名受充血性心力衰竭患者和54名正常对照的长期记录中得出的。在用三种不同的策略对RR系列进行量化之后,可以通过改变HOMC阶数(最多7个)和样本数量来评估指标。由于没有黄金标准可用,我们使用支持向量机模型测量了在考虑的两个总体之间进行区分的熵能力和熵率 $(k = 5 $ < / tex> 折叠验证)。在合成序列上,当 $ N> 200 $ 当MC紧密连接时,体积更小。在区分正常和CHF患者时,该分类的平均准确度约为80%,最大值为86.7%(AUC = 0.92)。

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