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Wavelet analysis of circadian and ultradian behavioral rhythms

机译:昼夜节律和昼夜节律行为节奏的小波分析

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摘要

We review time-frequency methods that can be useful in quantifying circadian and ultradian patterns in behavioral records. These records typically exhibit details that may not be captured through commonly used measures such as activity onset and so may require alternative approaches. For instance, activity may involve multiple bouts that vary in duration and magnitude within a day, or may exhibit day-to-day changes in period and in ultradian activity patterns. The discrete Fourier transform and other types of periodograms can estimate the period of a circadian rhythm, but we show that they can fail to correctly assess ultradian periods. In addition, such methods cannot detect changes in the period over time. Time-frequency methods that can localize frequency estimates in time are more appropriate for analysis of ultradian periods and of fluctuations in the period. The continuous wavelet transform offers a method for determining instantaneous frequency with good resolution in both time and frequency, capable of detecting changes in circadian period over the course of several days and in ultradian period within a given day. The discrete wavelet transform decomposes a time series into components associated with distinct frequency bands, thereby facilitating the removal of noise and trend or the isolation of a particular frequency band of interest. To demonstrate the wavelet-based analysis, we apply the transforms to a numerically-generated example and also to a variety of hamster behavioral records. When used appropriately, wavelet transforms can reveal patterns that are not easily extracted using other methods of analysis in common use, but they must be applied and interpreted with care.
机译:我们回顾了时频方法,这些方法可用于量化行为记录中的昼夜节律和超昼夜节律。这些记录通常会显示一些细节,而这些细节可能无法通过诸如活动发作之类的常用手段捕获,因此可能需要其他方法。例如,活动可能涉及多次回合,这些回合在一天之内的持续时间和强度会有所不同,或者可能会表现出周期和超活动性活动模式的每日变化。离散傅里叶变换和其他类型的周期图可以估计昼夜节律的周期,但我们证明它们可能无法正确估计超周期。此外,此类方法无法检测到一段时间内的变化。可以及时定位频率估计值的时频方法更适合于分析超弧度周期和该周期的波动。连续小波变换提供了一种用于确定瞬时频率的方法,该方法在时间和频率上均具有良好的分辨率,能够检测到几天内昼夜节律周期的变化以及给定一天内超昼夜周期的变化。离散小波变换将时间序列分解为与不同频带关联的分量,从而有利于消除噪声和趋势或隔离特定目标频带。为了演示基于小波的分析,我们将转换应用于数字生成的示例以及各种仓鼠行为记录。如果使用得当,小波变换可以揭示使用其他常用分析方法不易提取的模式,但必须谨慎应用和解释它们。

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