首页> 外文期刊>Annals of epidemiology >Biased standard errors from complex survey analysis: an example from applying ordinary least squares to the national hospital ambulatory medical care survey.
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Biased standard errors from complex survey analysis: an example from applying ordinary least squares to the national hospital ambulatory medical care survey.

机译:复杂调查分析中的有偏标准误差:将普通最小二乘应用于国家医院门诊医疗调查的示例。

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PURPOSE: A common research interest is to identify whether there is an increasing or decreasing trend for various health-related conditions over time in national complex surveys. We examined whether standard errors from conventional regression approaches appear accurate for trend analysis of complex surveys. METHODS: We re-conducted a trend analysis of the national emergency department visit rate from 1997 through 2007 published recently in JAMA. We compared standard errors from classical weighted least squares (CWLS), generalized estimating equation (GEE), information-weighted least squares (IWLS) regression, and nonparametric bootstrapping. RESULTS: The standard errors of the slope estimates from CWLS regression (0.88 per 1000 person-years) and from GEE regression (0.87 per 1000 person-years) were less than half the standard error from IWLS regression (1.98 per 1000 person-years). Nonparametric bootstrapping replicated the IWLS result. The p-value for trend from CWLS was only .002 and the GEE p-value was .00002, both much smaller than the p-value of .09 from IWLS. CONCLUSIONS: In ecologic time-trend analyses, standard errors from CWLS and GEE can be much too small. For these settings, IWLS provides more reliable inferential statistics.
机译:目的:一个共同的研究兴趣是在国家复杂调查中确定各种与健康有关的状况随时间推移是呈上升还是下降趋势。我们检查了传统回归方法的标准误差对于复杂调查的趋势分析是否看起来准确。方法:我们对最近发表在《美国医学会杂志》上的1997年至2007年国家急诊科就诊率进行了趋势分析。我们比较了经典加权最小二乘(CWLS),广义估计方程(GEE),信息加权最小二乘(IWLS)回归和非参数自举的标准误差。结果:CWLS回归(每1000人年0.88)和GEE回归(每1000人年0.87)的斜率估计的标准误差小于IWLS回归(每1000人年1.98)的标准误差的一半。 。非参数引导复制了IWLS结果。来自CWLS的趋势的p值仅为0.002,而GEE的p值为.00002,两者都比IWLS的.09的p值小得多。结论:在生态时间趋势分析中,来自CWLS和GEE的标准误差可能太小。对于这些设置,IWLS提供了更可靠的推断统计信息。

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