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Comparison between K-nearest-neighbor approaches for conditional entropy estimation: Application to the assessment of the cardiac control in amyotrophic lateral sclerosis patients

机译:K离邻近邻近条件熵估算方法的比较:在肌营养的侧升患者中对心脏控制评估的应用

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The study evaluates the k-nearest-neighbor (KNN) strategy for the assessment of complexity of the cardiac neural control from spontaneous fluctuations of heart period (HP). Two different procedures were assessed: i) the KNN estimation of the conditional entropy (CE) proposed by Porta et al; ii) the KNN estimation of mutual information proposed by Kozachenko-Leonenko, refined by Kraskov-Sto?gbauer-Grassberger and here adapted for the CE estimation. The two procedures were compared over HP variability recordings obtained at rest in supine position and during head-up tilt (HUT) in amyotrophic lateral sclerosis patients and healthy subjects. We found that the indexes derived from the two procedures were significantly correlated and both methods were able to detect the effect of HUT on HP complexity within the same group and distinguish the two populations within the same experimental condition. We recommend the use of the KNN strategy to quantify the dynamical complexity of cardiac neural control in addition to more traditional approaches.
机译:该研究评估了K-Collecti-Eventional(KNN)策略,用于评估心脏神经控制的复杂性从心脏周期(HP)的自发波动。评估了两种不同的程序:i)Porta等人提出的条件熵(CE)的KNN估计; ii)Kozachenko-Leonenko提出的互信息的KNN估计,Kraskov-STO(kraskov-sto?gbauer-grassberger和这里适用于CE估计。将这两种程序与在仰卧位的HP可变性记录中,在仰卧位,在肌萎缩侧面硬化患者和健康受试者中的抬头倾斜(小屋)。我们发现,从两种方法衍生的指标显着相关,并且两种方法都能够检测到HUT对同一组内HP复杂性的影响,并区分两个群体在相同的实验条件下。我们建议使用KNN战略来量化心脏神经控制的动态复杂性,除了更传统的方法外。

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