生物节律研究中的长时间序列序列分析方法。

Q2 Biochemistry, Genetics and Molecular Biology
Antoni Díez-Noguera
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引用次数: 0

摘要

在对较长的时间序列进行分析时,人们往往会发现昼夜节律的特征在整个序列中随时间而变化。为了应对这种情况,可以将整个序列分割成连续的部分,一个接一个地进行分析,这就是序列分析。本文将讨论序列分析技术,首先介绍各部分必须具备的特征以及这些特征如何影响分析结果。在考虑了一些简单滤波器的影响之后,本文将根据所分析的变量或估算的参数,系统地讨论不同类型的序列分析:标量幅度、角度幅度(时间或相位)、与频率(或周期)相关的幅度、周期图以及派生和/或特殊幅度和变量。此外,还讨论了在长时间序列中使用小波分析和卷积的问题。在所有情况下,每种方法的基本原理都会结合实际考虑因素和图形示例进行阐述。最后一节介绍了可用于进行此类分析的软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Methods for serial analysis of long time series in the study of biological rhythms.

Methods for serial analysis of long time series in the study of biological rhythms.

Methods for serial analysis of long time series in the study of biological rhythms.

Methods for serial analysis of long time series in the study of biological rhythms.

When one is faced with the analysis of long time series, one often finds that the characteristics of circadian rhythms vary with time throughout the series. To cope with this situation, the whole series can be fragmented into successive sections which are analyzed one after the other, which constitutes a serial analysis. This article discusses serial analysis techniques, beginning with the characteristics that the sections must have and how they can affect the results. After consideration of the effects of some simple filters, different types of serial analysis are discussed systematically according to the variable analyzed or the estimated parameters: scalar magnitudes, angular magnitudes (time or phase), magnitudes related to frequencies (or periods), periodograms, and derived and / or special magnitudes and variables. The use of wavelet analysis and convolutions in long time series is also discussed. In all cases the fundamentals of each method are exposed, jointly with practical considerations and graphic examples. The final section provides information about software available to perform this type of analysis.

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来源期刊
Journal of Circadian Rhythms
Journal of Circadian Rhythms Biochemistry, Genetics and Molecular Biology-Physiology
CiteScore
7.10
自引率
0.00%
发文量
0
审稿时长
12 weeks
期刊介绍: Journal of Circadian Rhythms is an Open Access, peer-reviewed online journal that publishes research articles dealing with circadian and nycthemeral (daily) rhythms in living organisms, including processes associated with photoperiodism and daily torpor. Journal of Circadian Rhythms aims to include both basic and applied research at any level of biological organization (molecular, cellular, organic, organismal, and populational). Studies of daily rhythms in environmental factors that directly affect circadian rhythms are also pertinent to the journal"s mission.
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