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Optimizing Occupational Exposure Measurement Strategies When Estimating the Log-Scale Arithmetic Mean Value—An Example from the Reinforced Plastics Industry

机译:估计对数刻度算术平均值时的职业接触测量策略的优化-以增强塑料行业为例

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摘要

When assessing occupational exposures, repeated measurements are in most cases required. Repeated measurements are more resource intensive than a single measurement, so careful planning of the measurement strategy is necessary to assure that resources are spent wisely. The optimal strategy depends on the objectives of the measurements. Here, two different models of random effects analysis of variance (ANOVA) are proposed for the optimization of measurement strategies by the minimization of the variance of the estimated log-transformed arithmetic mean value of a worker group, i.e. the strategies are optimized for precise estimation of that value. The first model is a one-way random effects ANOVA model. For that model it is shown that the best precision in the estimated mean value is always obtained by including as many workers as possible in the sample while restricting the number of replicates to two or at most three regardless of the size of the variance components. The second model introduces the ‘shared temporal variation’ which accounts for those random temporal fluctuations of the exposure that the workers have in common. It is shown for that model that the optimal sample allocation depends on the relative sizes of the between-worker component and the shared temporal component, so that if the between-worker component is larger than the shared temporal component more workers should be included in the sample and vice versa. The results are illustrated graphically with an example from the reinforced plastics industry. If there exists a shared temporal variation at a workplace, that variability needs to be accounted for in the sampling design and the more complex model is recommended.
机译:在评估职业暴露时,大多数情况下需要重复测量。重复进行的测量比单次测量要消耗更多的资源,因此有必要仔细计划测量策略,以确保明智地使用资源。最佳策略取决于测量目标。在此,提出了两种不同的方差随机效应分析(ANOVA)模型,用于通过最小化工人组的对数转换后的算术平均值的方差来优化测量策略,即,针对精确估计对策略进行了优化。那个价值。第一个模型是单向随机效应方差分析模型。对于该模型,表明通过始终在样本中包含尽可能多的工作人员,同时将重复次数限制为两个或最多三个,而不考虑方差分量的大小,总是可以得到估计平均值的最佳精度。第二种模型引入了“共享的时间变化”,它解释了工人共同暴露的随机时间波动。对于该模型表明,最佳样本分配取决于工作人员之间的组件和共享的时间组件的相对大小,因此,如果工作人员之间的组件大于共享的时间组件,则应在其中包含更多工作人员。样本,反之亦然。结果以图形方式说明了增强塑料行业的例子。如果工作场所存在共同的时间变化,则在采样设计中需要考虑该变化,建议使用更复杂的模型。

著录项

  • 来源
    《Annals of Occupational Hygiene》 |2006年第4期|371-377|共7页
  • 作者单位

    Occupational Medicine Department of Public Health and Clinical Medicine Umeå University 901 87 Umeå Sweden;

    Department of Mathematical Statistics Umeå University 901 87 Umeå Sweden;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 01:11:27

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