Comparison of task-based estimates with full-shift measurements of noise exposure.

Noah S Seixas, Lianne Sheppard, Rick Neitzel
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Abstract

Using a large data set of noise exposure measurements on construction workers, task-based (TB) and full-shift (FS) exposure levels were compared and analyzed for the sources and magnitudes of the error associated with this methodology. Data-logging dosimeters recorded A-weighted sound pressure levels in decibels using Occupational Safety and Health Administration criteria for every minute of monitoring and were combined with information from task cards completed by subjects. Task-related information included trade, construction site type, location, activity, and tool. A total of 502 FS measurements were made, including 248,677 min of exposure on five construction trades. Six TB models of varying degrees of specificity were fit to the minute-level data and the results used to obtain TB estimates of the daily FS exposure levels. The TB estimates were derived using the predictions alone and also including subject and shift-specific residual means and variances. The predictions alone, which ignore within-task variability, produced a significant negative bias that was corrected by incorporation of the residual variance. This bias is only an issue in this setting in which the exposure of interest is noise, which follows a nonlinear averaging relationship. These estimates explained 10 to 60% of the variability in FS measures; adding the residual mean produced estimates that explained about 90% of the variability. In summary, TB estimates are important for exposure estimation when task time varies substantially. However, TB estimates include a substantial degree of error when there is large interindividual or intershift variability in exposure levels for a given task. Methods to improve the prediction of task-associated exposure, or adjusting for individual and shift differences, are needed.

基于任务的估计与噪声暴露的全位移测量的比较。
利用对建筑工人噪声暴露测量的大量数据集,对基于任务(TB)和全班次(FS)的暴露水平进行了比较和分析,以确定与该方法相关的误差来源和大小。数据记录剂量计使用职业安全与健康管理局的标准记录每分钟监测的a加权声压级(分贝),并结合受试者完成的任务卡上的信息。与任务相关的信息包括贸易、建筑工地类型、位置、活动和工具。总共进行了502次FS测量,包括在五个建筑行业的248,677分钟的暴露。六种不同特异性程度的结核病模型拟合到分钟水平的数据和结果,用于获得每日FS暴露水平的结核病估计。结核病估计值是单独使用预测得出的,还包括受试者和特定偏移的残差均值和方差。单独的预测,忽略了任务内的可变性,产生了显著的负偏差,通过合并剩余方差来纠正。这种偏差仅在下述情况下存在:感兴趣的暴露是噪声,它遵循非线性平均关系。这些估计解释了FS测量中10%至60%的变异性;加上残差均值产生的估计值解释了大约90%的变异性。总之,当任务时间变化很大时,结核估计对暴露估计很重要。然而,当某一特定任务的暴露水平存在较大的个体间或班次间差异时,结核病估计存在相当程度的误差。需要改进对任务相关暴露的预测,或调整个体和班次差异的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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