Kuntzelman Karl, Jack Rhodes L, Harrington Lillian N, Miskovic Vladimir
Department of Psychology, State University of New York at Binghamton, USA; Center for Brain, Biology and Behavior, University of Nebraska-Lincoln, USA.
Department of Psychology, State University of New York at Binghamton, USA.
Brain Cogn. 2018 Jun;123:126-135. doi: 10.1016/j.bandc.2018.03.010. Epub 2018 Mar 18.
There is a broad family of statistical methods for capturing time series regularity, with increasingly widespread adoption by the neuroscientific community. A common feature of these methods is that they permit investigators to quantify the entropy of brain signals - an index of unpredictability/complexity. Despite the proliferation of algorithms for computing entropy from neural time series data there is scant evidence concerning their relative stability and efficiency. Here we evaluated several different algorithmic implementations (sample, fuzzy, dispersion and permutation) of multiscale entropy in terms of their stability across sessions, internal consistency and computational speed, accuracy and precision using a combination of electroencephalogram (EEG) and synthetic 1/ƒ noise signals. Overall, we report fair to excellent internal consistency and longitudinal stability over a one-week period for the majority of entropy estimates, with several caveats. Computational timing estimates suggest distinct advantages for dispersion and permutation entropy over other entropy estimates. Considered alongside the psychometric evidence, we suggest several ways in which researchers can maximize computational resources (without sacrificing reliability), especially when working with high-density M/EEG data or multivoxel BOLD time series signals.
有一大类统计方法可用于捕捉时间序列的规律性,神经科学界对其采用越来越广泛。这些方法的一个共同特点是,它们允许研究人员量化脑信号的熵——一种不可预测性/复杂性的指标。尽管从神经时间序列数据计算熵的算法大量涌现,但关于它们的相对稳定性和效率的证据却很少。在这里,我们结合脑电图(EEG)和合成1/ƒ噪声信号,从跨会话的稳定性、内部一致性、计算速度、准确性和精确性方面,评估了多尺度熵的几种不同算法实现(样本熵、模糊熵、散布熵和排列熵)。总体而言,我们报告了大多数熵估计在一周时间内具有相当好到极好的内部一致性和纵向稳定性,但也有一些注意事项。计算时间估计表明,散布熵和排列熵相对于其他熵估计具有明显优势。结合心理测量学证据,我们提出了几种研究人员可以最大限度利用计算资源的方法(而不牺牲可靠性),特别是在处理高密度M/EEG数据或多体素BOLD时间序列信号时。