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一项基于学校的吸烟预防研究中的组内相关估计。按性别和种族划分的结果变量和中介变量。

Intraclass correlation estimates in a school-based smoking prevention study. Outcome and mediating variables, by sex and ethnicity.

作者信息

Siddiqui O, Hedeker D, Flay B R, Hu F B

机构信息

Prevention Research Center, School of Public Health, University of Illinois, Chicago 60607-3025, USA.

出版信息

Am J Epidemiol. 1996 Aug 15;144(4):425-33. doi: 10.1093/oxfordjournals.aje.a008945.

Abstract

Most school-based smoking prevention studies employ designs in which schools or classrooms are assigned to different treatment conditions while observations are made on individual students. This design requires that the treatment effect be assessed against the between-school variance. However, the between-school variance is usually larger than the variance that would be obtained if students were individually randomized to different conditions. Consequently, the power of the test for a treatment effect is reduced, and it becomes difficult to detect important treatment effects. To assess the potential loss of power or to calculate appropriate sample sizes, investigators need good estimates of the intraclass correlations for the variables of interest. The authors calculated intraclass correlations for some common outcome variables in a school-based smoking prevention study, using a three-level model-i.e., students nested within classrooms and classrooms nested within schools. The authors present the intraclass correlation estimates for the entire data set, as well as separately by sex and ethnicity. They also illustrate the use of these estimates in the planning of future studies.

摘要

大多数基于学校的吸烟预防研究采用的设计是,将学校或班级分配到不同的治疗条件下,同时对个体学生进行观察。这种设计要求根据学校间的差异来评估治疗效果。然而,学校间的差异通常大于如果学生被个体随机分配到不同条件下所获得的差异。因此,治疗效果检验的功效会降低,并且难以检测到重要的治疗效果。为了评估潜在的功效损失或计算合适的样本量,研究人员需要对感兴趣变量的组内相关性有良好的估计。作者在一项基于学校的吸烟预防研究中,使用三级模型(即学生嵌套在班级中,班级嵌套在学校中)计算了一些常见结果变量的组内相关性。作者给出了整个数据集的组内相关性估计值,以及按性别和种族分别给出的估计值。他们还说明了这些估计值在未来研究规划中的应用。

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