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Sampling strategies for occupational exposure assessment under generalized linear model.

机译:广义线性模型下职业接触评估的抽样策略。

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OBJECTIVES: Occupational exposure assessment is a major task in industrial hygiene studies. Although statistical analyses for magnitudes and variations of exposures to various types of working populations based on existing data sets are extensive, relatively few discussions on study designs appear in the literature, especially for sample size determination and number of repeated measurements. METHODS: In this paper, we propose a general framework of sampling strategies on sample size requirement together with the number of repeated measurements using the mixed-effects generalized linear model (GLM). As illustrative examples, we discuss sampling strategies separately under the log-normal assumption for hypotheses testing on (i) mean exposure differences of multiple worker groups and (ii) presence of a long-term exposure trend. RESULTS: Given a specified alternative hypothesis, the desired significance level and statistical power, the number of repeated measurements, within-worker and between-worker variances, and a correlation structure, we have derived and tabulated an explicit sample size requirement of the two hypothetical cases under log-normal distribution assumption. CONCLUSIONS: On the basis of the tabulated outcomes, the sample size requirement is much more dominant than the number of repeated measurements for a group exposure comparison. Thus, in this case, recruiting more workers with fewer repeated measurements may be more economical than the opposite approach. For testing the presence of a long-term exposure trend, the sample size required decreases substantially with the number of repeated measurements. Also, equally spaced sampling times would be optimal because the effect of between-worker variance is algebraically cancelled out in sample size calculations.
机译:目的:职业接触评估是工业卫生研究的主要任务。尽管基于现有数据集对各种类型的工作人口的暴露程度和变化进行统计分析是广泛的,但文献中对研究设计的讨论相对较少,尤其是对于样本大小的确定和重复测量的次数。方法:在本文中,我们提出了一个基于样本量要求的抽样策略的通用框架,以及使用混合效应广义线性模型(GLM)进行重复测量的次数。作为说明性示例,我们在对数正态假设下分别讨论抽样策略,以进行以下假设检验:(i)多个工人群体的平均暴露差异和(ii)长期暴露趋势的存在。结果:给定特定的替代假设,所需的显着性水平和统计功效,重复测量的数量,工人内部和工人之间的差异以及相关结构,我们得出了两个假设的显式样本量要求并将其制成表格对数正态分布假设下的情况。结论:基于列表结果,样本量要求比群体暴露比较的重复测量次数要重要得多。因此,在这种情况下,以较少的重复测量来招募更多的工人可能比相反的方法更经济。为了测试长期暴露趋势的存在,所需的样本量随重复测量的次数而大大减少。同样,等间隔的采样时间将是最佳的,因为在样本数量计算中,代劳之间的差异被代数抵消。

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