Department of Psychology, Southern Methodist University, 6424 Hilltop Lane, Dallas, TX 75275, USA.
Biol Psychol. 2010 Apr;84(1):112-20. doi: 10.1016/j.biopsycho.2010.01.020. Epub 2010 Feb 6.
Statistical methods for detecting changes in longitudinal time series of psychophysiological data are limited. ANOVA and mixed models are not designed to detect the existence, timing, or duration of unknown changes in such data. Change point (CP) analysis was developed to detect distinct changes in time series data. Preliminary reports using CP analysis for fMRI data are promising. Here, we illustrate the application of CP analysis for detecting discrete changes in ambulatory, peripheral physiological data leading up to naturally occurring panic attacks (PAs). The CP method was successful in detecting cardio-respiratory changes that preceded the onset of reported PAs. Furthermore, the changes were unique to the pre-PA period, and were not detected in matched non-PA control periods. The efficacy of our CP method was further validated by detecting patterns of change that were consistent with prominent respiratory theories of panic positing a relation between aberrant respiration and panic etiology.
用于检测心理生理数据纵向时间序列变化的统计方法有限。方差分析和混合模型并非专门用于检测此类数据中未知变化的存在、时间或持续时间。变化点 (CP) 分析是为了检测时间序列数据中的明显变化而开发的。使用 CP 分析 fMRI 数据的初步报告很有希望。在这里,我们说明了 CP 分析在检测导致自然发生惊恐发作 (PA) 的周围生理数据中离散变化的应用。CP 方法成功地检测到了在报告的 PA 发作之前发生的心肺变化。此外,这些变化是 PA 前时期特有的,在匹配的非 PA 对照时期并未检测到。我们的 CP 方法的有效性还通过检测与惊恐病因假设呼吸异常与惊恐之间存在关系的突出呼吸理论一致的变化模式得到了进一步验证。