首页> 外文期刊>Journal of computational and graphical statistics: A joint publication of American Statistical Association, Institute of Mathematical Statistics, Interface Foundation of North America >Statistical Computations on Biological Rhythms I: Dissecting Variable Cycles and Computing Signature Phases in Activity-Event Time Series
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Statistical Computations on Biological Rhythms I: Dissecting Variable Cycles and Computing Signature Phases in Activity-Event Time Series

机译:生物节律的统计计算I:剖析变量-周期并计算活动-事件时间序列中的签名阶段

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摘要

We propose a computational methodology to compute and extract circadian rhythmic patterns from an individual animal's activity-event time series. This lengthy dataset, composed of a sequential event history, contains an unknown number of latent rhythmic cycles of varying duration and missing waveform information. Our computations aim at identifying the onset signature phase which individually indicates a sharp event intensity surge, where a subject-night ends and a brand new cycle's subject-day begins, and collectively induces a linearity manifesting the individual circadian rhythmicity and information about the average period. Based on the induced linearity, the least squares criterion is employed to choose an optimal sequence of computed onset signature phases among a finite collection derived from the hierarchical factor segmentation (HFS) algorithm. The multiple levels of coding schemes in the HFS algorithm are designed to extract contrasting patterns of aggregation against sparsity of activity events along the entire temporal axis. This optimal sequence dissects the whole time series into a sequence of rhythmic cycles without model assumptions or ad hoc behavioral definitions regarding the missing waveform information. The performance of our methodology is favorably compared with two popular approaches based on the periodogram in a simulation study and in real data analyses. The computer code and data used in this article are available on the JCGS webpage.
机译:我们提出了一种计算方法,可以从动物的活动-事件时间序列中计算和提取昼夜节律模式。这个冗长的数据集由连续的事件历史记录组成,包含未知数量的潜伏期有变化的持续时间和丢失的波形信息。我们的计算旨在确定发病特征阶段,该阶段分别表明事件强度急剧上升,其中一个主题夜晚结束,一个崭新的周期的主题一天开始,并共同诱导出线性关系,从而表明个体的昼夜节律和有关平均周期的信息。基于所引起的线性,采用最小二乘准则从由分层因子分段(HFS)算法得出的有限集合中选择计算的起始特征相的最佳序列。 HFS算法中的多级编码方案旨在提取针对整个时间轴上活动事件稀疏性的聚合对比模式。该最佳序列将整个时间序列分解为一个有节奏的周期序列,而无需模型假设或关于丢失波形信息的临时行为定义。在仿真研究和实际数据分析中,我们的方法论的性能与两种基于周期图的流行方法相比具有优势。本文使用的计算机代码和数据可在JCGS网页上找到。

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