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The appropriate use of approximate entropy and sample entropy with short data sets

机译:适当使用具有短数据集的近似熵和样本熵

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摘要

Approximate entropy (ApEn) and sample entropy (SampEn) are mathematical algorithms created to measure the repeatability or predictability within a time series. Both algorithms are extremely sensitive to their input parameters: m (length of the data segment being compared), r (similarity criterion) and N (length of data). There is no established consensus on parameter selection in short data sets, especially for biological data. Therefore, the purpose of this research was to examine the robustness of these two entropy algorithms by exploring the effect of changing parameter values on short data sets. Data with known theoretical entropy qualities as well as experimental data from both healthy young and older adults was utilized. Our results demonstrate that both ApEn and SampEn are extremely sensitive to parameter choices, especially for very short data sets, N≤200. We suggest using N larger than 200, an m of 2 and examine several r values before selecting your parameters. Extreme caution should be used when choosing parameters for experimental studies with both algorithms. Based on our current findings, it appears that SampEn is more reliable for short data sets. SampEn was less sensitive to changes in data length and demonstrated fewer problems with relative consistency.
机译:近似熵(ApEn)和样本熵(SampEn)是一种数学算法,用于测量时间序列内的可重复性或可预测性。两种算法对它们的输入参数都极为敏感:m(要比较的数据段的长度),r(相似性标准)和N(数据的长度)。对于短数据集中的参数选择,尚未建立共识,尤其是对于生物学数据。因此,本研究的目的是通过探讨更改参数值对短数据集的影响来检验这两种熵算法的鲁棒性。利用了具有已知理论熵质量的数据以及来自健康的年轻人和老年人的实验数据。我们的结果表明,ApEn和SampEn都对参数选择极为敏感,尤其是对于N≤200的非常短的数据集。我们建议使用大于200的N(m为2)并在选择参数之前检查几个r值。当使用两种算法选择用于实验研究的参数时,应格外小心。根据我们目前的发现,对于短数据集,SampEn似乎更可靠。 SampEn对数据长度的更改不太敏感,并且相对一致性方面的问题较少。

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