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历史队列死亡率研究中因失访导致疾病误分类的量化与调整

Quantifying and Adjusting for Disease Misclassification Due to Loss to Follow-Up in Historical Cohort Mortality Studies.

作者信息

Scott Laura L F, Maldonado George

机构信息

Division of Environmental Health Sciences, University of Minnesota School of Public Health, Minneapolis, MN 55455, USA.

出版信息

Int J Environ Res Public Health. 2015 Oct 15;12(10):12834-46. doi: 10.3390/ijerph121012834.

Abstract

The purpose of this analysis was to quantify and adjust for disease misclassification from loss to follow-up in a historical cohort mortality study of workers where exposure was categorized as a multi-level variable. Disease classification parameters were defined using 2008 mortality data for the New Zealand population and the proportions of known deaths observed for the cohort. The probability distributions for each classification parameter were constructed to account for potential differences in mortality due to exposure status, gender, and ethnicity. Probabilistic uncertainty analysis (bias analysis), which uses Monte Carlo techniques, was then used to sample each parameter distribution 50,000 times, calculating adjusted odds ratios (ORDM-LTF) that compared the mortality of workers with the highest cumulative exposure to those that were considered never-exposed. The geometric mean ORDM-LTF ranged between 1.65 (certainty interval (CI): 0.50-3.88) and 3.33 (CI: 1.21-10.48), and the geometric mean of the disease-misclassification error factor (εDM-LTF), which is the ratio of the observed odds ratio to the adjusted odds ratio, had a range of 0.91 (CI: 0.29-2.52) to 1.85 (CI: 0.78-6.07). Only when workers in the highest exposure category were more likely than those never-exposed to be misclassified as non-cases did the ORDM-LTF frequency distributions shift further away from the null. The application of uncertainty analysis to historical cohort mortality studies with multi-level exposures can provide valuable insight into the magnitude and direction of study error resulting from losses to follow-up.

摘要

本分析的目的是在一项针对工人的历史性队列死亡率研究中,对因失访导致的疾病误分类进行量化和调整,该研究中暴露被分类为一个多水平变量。疾病分类参数是根据新西兰人群的2008年死亡率数据以及该队列中观察到的已知死亡比例来定义的。构建每个分类参数的概率分布,以考虑由于暴露状态、性别和种族导致的死亡率潜在差异。然后使用概率不确定性分析(偏差分析),该分析采用蒙特卡罗技术,对每个参数分布进行50000次抽样,计算调整后的比值比(ORDM-LTF),用于比较累积暴露量最高的工人与被视为从未暴露的工人的死亡率。几何平均ORDM-LTF在1.65(可信区间(CI):0.50 - 3.88)至3.33(CI:1.21 - 10.48)之间,疾病误分类误差因子(εDM-LTF)的几何平均值(即观察到的比值比与调整后的比值比之比)范围为0.91(CI:0.29 - 2.52)至1.85(CI:0.78 - 6.07)。只有当最高暴露类别中的工人比从未暴露的工人更有可能被误分类为非病例时,ORDM-LTF频率分布才会进一步偏离无效值。将不确定性分析应用于具有多水平暴露的历史性队列死亡率研究,可以为因失访导致的研究误差的大小和方向提供有价值的见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9284/4627002/a365cb7b9cce/ijerph-12-12834-g001.jpg

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