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How to Calculate Renyi Entropy from Heart Rate Variability and Why it Matters for Detecting Cardiac Autonomic Neuropathy

机译:如何从心率变异性计算Renyi熵以及为什么它对于检测心脏自主神经病变很重要

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摘要

Cardiac autonomic neuropathy (CAN) is a disease that involves nerve damage leading to an abnormal control of heart rate. An open question is to what extent this condition is detectable from heart rate variability (HRV), which provides information only on successive intervals between heart beats, yet is non-invasive and easy to obtain from a three-lead ECG recording. A variety of measures may be extracted from HRV, including time domain, frequency domain, and more complex non-linear measures. Among the latter, Renyi entropy has been proposed as a suitable measure that can be used to discriminate CAN from controls. However, all entropy methods require estimation of probabilities, and there are a number of ways in which this estimation can be made. In this work, we calculate Renyi entropy using several variations of the histogram method and a density method based on sequences of RR intervals. In all, we calculate Renyi entropy using nine methods and compare their effectiveness in separating the different classes of participants. We found that the histogram method using single RR intervals yields an entropy measure that is either incapable of discriminating CAN from controls, or that it provides little information that could not be gained from the SD of the RR intervals. In contrast, probabilities calculated using a density method based on sequences of RR intervals yield an entropy measure that provides good separation between groups of participants and provides information not available from the SD. The main contribution of this work is that different approaches to calculating probability may affect the success of detecting disease. Our results bring new clarity to the methods used to calculate the Renyi entropy in general, and in particular, to the successful detection of CAN.
机译:心脏自主神经病(CAN)是一种涉及神经损伤导致心率异常控制的疾病。一个悬而未决的问题是,从心率变异性(HRV)可以在多大程度上检测到这种情况,后者仅提供有关心跳之间连续间隔的信息,但它是非侵入性的,很容易从三导联心电图记录中获得。可以从HRV中提取各种度量,包括时域,频域和更复杂的非线性度量。在后者中,已经提出将Renyi熵作为一种可用于将CAN与控件区分开的合适方法。但是,所有熵方法都需要对概率进行估计,并且可以通过多种方式进行此估计。在这项工作中,我们使用基于RR间隔序列的直方图方法和密度方法的几种变化来计算Renyi熵。总之,我们使用9种方法来计算Renyi熵,并比较它们在分离不同类别的参与者中的有效性。我们发现,使用单个RR间隔的直方图方法产生的熵度量无法将CAN与控件区分开,或者它提供的信息很少,无法从RR间隔的SD中获得。相反,使用基于RR间隔序列的密度方法计算的概率会产生熵度量,该熵度量可在参与者组之间提供良好的分隔,并提供SD无法提供的信息。这项工作的主要贡献在于,不同的概率计算方法可能会影响疾病检测的成功。我们的结果使总体上用于计算Renyi熵的方法(尤其是对CAN的成功检测)具有新的清晰度。

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