Department of Psychiatry, Chu-Tung Veterans Hospital, Hsin-Chu County, Taiwan.
PLoS One. 2011 Jan 31;6(1):e14612. doi: 10.1371/journal.pone.0014612.
Patients frequently report that weather changes trigger headache or worsen existing headache symptoms. Recently, the method of empirical mode decomposition (EMD) has been used to delineate temporal relationships in certain diseases, and we applied this technique to identify intrinsic weather components associated with headache incidence data derived from a large-scale epidemiological survey of headache in the Greater Taipei area.
METHODOLOGY/PRINCIPAL FINDINGS: The study sample consisted of 52 randomly selected headache patients. The weather time-series parameters were detrended by the EMD method into a set of embedded oscillatory components, i.e. intrinsic mode functions (IMFs). Multiple linear regression models with forward stepwise methods were used to analyze the temporal associations between weather and headaches. We found no associations between the raw time series of weather variables and headache incidence. For decomposed intrinsic weather IMFs, temperature, sunshine duration, humidity, pressure, and maximal wind speed were associated with headache incidence during the cold period, whereas only maximal wind speed was associated during the warm period. In analyses examining all significant weather variables, IMFs derived from temperature and sunshine duration data accounted for up to 33.3% of the variance in headache incidence during the cold period. The association of headache incidence and weather IMFs in the cold period coincided with the cold fronts.
CONCLUSIONS/SIGNIFICANCE: Using EMD analysis, we found a significant association between headache and intrinsic weather components, which was not detected by direct comparisons of raw weather data. Contributing weather parameters may vary in different geographic regions and different seasons.
患者经常报告天气变化引发头痛或使现有头痛症状恶化。最近,经验模态分解(EMD)方法已被用于描绘某些疾病中的时间关系,我们应用该技术来识别与大台北地区头痛大规模流行病学调查中得出的头痛发病率数据相关的内在天气成分。
方法/主要发现:研究样本包括 52 名随机选择的头痛患者。天气时间序列参数通过 EMD 方法去趋势化为一组嵌入式振荡成分,即固有模态函数(IMF)。采用逐步向前的多元线性回归模型来分析天气与头痛之间的时间关联。我们发现天气变量的原始时间序列与头痛发病率之间没有关联。对于分解后的内在天气 IMF,温度、日照时间、湿度、压力和最大风速与寒冷期的头痛发病率有关,而温暖期只有最大风速与头痛发病率有关。在分析所有显著天气变量时,来自温度和日照时间数据的 IMF 解释了寒冷期头痛发病率高达 33.3%的方差。寒冷期头痛发病率与天气 IMF 的关联与冷锋一致。
结论/意义:使用 EMD 分析,我们发现头痛与内在天气成分之间存在显著关联,而直接比较原始天气数据则无法检测到这种关联。在不同的地理区域和不同的季节,可能存在不同的天气参数。