首页> 外文学位 >Incident Cataracts Following Protracted Low-Dose Occupational Ionizing Radiation Exposures in United States Medical Radiologic Technologists: Statistical Methods for Exploring Heterogeneity of Effects And Improving Causal Inference.
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Incident Cataracts Following Protracted Low-Dose Occupational Ionizing Radiation Exposures in United States Medical Radiologic Technologists: Statistical Methods for Exploring Heterogeneity of Effects And Improving Causal Inference.

机译:美国医疗放射技术人员长期低剂量职业电离辐射照射后的事故白内障:探索效应异质性和改善因果关系的统计方法。

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Background: Medical radiologic technologists are routinely exposed to protracted low-dose occupational ionizing radiation. Ionizing radiation exposures have been associated with cataracts.;Methods that allow investigators to flexibly examine the extent of heterogeneity across many covariate strata are needed to help characterize the extent of any heterogeneity. One such potential method is boosted regression trees, a machine learning ensemble model that is particularly well suited to prediction while incorporating interactions. As prediction is becoming increasingly important for epidemiologic investigations, exploration of the utility of machine learning methods in epidemiology is warranted.;Occupational epidemiologic cohort studies are often susceptible to selection bias from the healthy worker survivor effect (HWSE), whereby less healthy individuals leave work and accrue less exposure compared to healthier individuals who stay at work and continue to accrue exposure. As a result, the association between exposure and an outcome may be attenuated, or even reversed in some cases. G-methods are a family of analytical tools that were developed to address situations that may be affected from time-varying confounding and structural bias as seen in the HWSE. One such method, the parametric g-formula, is a rigorous computational model that has been used to correct effects estimates for potential bias from the HWSE.;Objective: The overall objective of this research is to explore the relationship between protracted low-dose exposures to occupational ionizing radiation and the risk of cataracts in medical radiologic technologists in the United States and its territories, and to propose methodologic techniques to help estimate causal effects in such settings.;Manuscript 1: Aim: To estimate the overall association between protracted exposure to low-dose occupational ionizing radiation and incident cataracts in medical radiologic technologists. Methods: Cox regression models were used to model time to cataract predicted by ionizing radiation. Technologists were followed from year first worked as a radiologic technologist starting at age 18 or older, until report of cataracts or administrative censoring at the third survey. Results: After adjustment for birth year, sex, and race / ethnicity (N=69,798), ionizing radiation was significantly associated with increased hazard of cataracts with a time-varying effect (p<0.001) that while initially elevated, decreased over time. Hazard ratios of cataract per 10-mSv increment of radiation were statistically significant at age 20 [HR=1.09; 95% CI = (1.04, 1.14)] and age 30 [HR = 1.04; 95% CI = (1.00, 1.09)], but were not significant after age 30. Sensitivity analyses indicated strong evidence that selection bias from the HWSE were present and may have explained the time-varying effect. Additionally, a literature review found five population-based studies of cataract subtype prevalence over time, and indicated that there was potential for misclassification of cataracts in the USRT study that may have biased effect estimates.;Manuscript 2: Aim: Use boosted regression trees to fully characterize the distribution of the effect of occupational ionizing radiation on cataracts in medical radiologic technologists. Methods: A boosted regression tree model was used to build a prediction model of cataracts. The cohort was restricted to those ages 24--44 at baseline (N=43,513). Predictions from the model were used to calculate risk differences of cataracts between high dose (75th percentile of observed badge dose: 61.31 mSv) and low-dose (25th percentile of observed badge dose: 23.90 mSv) occupational ionizing radiation in strata of potential effect modifiers. Results: Overall, there was a significant population average effect [RD=0.002; 95% CI = (0.002, 0.015)]. Additionally, subgroups were found with larger risks than the population average including those born earliest, those with diabetes, macular degeneration, glaucoma, or were overweight (BMI > 25) at baseline. Those who were youngest and those without macular degeneration conversely had lower risk differences compared to the average.;Manuscript 3: Aim: Use the parametric G-formula to adjust effect estimates for the healthy worker survivor effect in the estimated risk of incident radiogenic cataracts in medical radiologic technologists. Methods: The parametric g-formula was used to estimate cataract risks under different hypothetical scenarios limiting badge dose in five-year periods to the 80th percentile (badge dose ≤ 18.38 mSv), 60th percentile (badge dose ≤ 9.06 mSv), 40th percentile (badge dose ≤ 4.47 mSv), and 20 th percentile (badge dose ≤ 2.08 mSv) of observed dose, and a 5-mSv reduction in dose estimates in each period over follow-up (N=69,798). Cumulative incidence risks and risks conditional on survival of cataracts from these treatment regimes were compared to the status quo (no intervention of dose) with risk differences and 95% confidence intervals. Substantively important differences in both cumulative incidence of cataracts and conditional risks of cataracts between the natural course and treatment regimes were found. There was evidence that decreasing the dose of radiation exposure could reduce the risk of cataracts, even at relatively early ages. (Abstract shortened by UMI.).
机译:背景:医学放射技术人员通常会长期暴露于低剂量的职业电离辐射下。电离辐射暴露与白内障有关。需要使研究人员灵活地检查许多协变量地层中异质性程度的方法,以帮助表征任何异质性程度。一种这样的潜在方法是增强回归树,这是一种机器学习集成模型,特别适合在合并交互的情况下进行预测。随着预测对于流行病学调查变得越来越重要,因此有必要探索机器学习方法在流行病学中的用途。;职业流行病学队列研究通常容易受到健康工人幸存者效应(HWSE)的选择偏见的影响,因此健康状况较差的人离开工作岗位与保持工作并继续累积曝光的健康个体相比,产生的接触较少。结果,在某些情况下,暴露与结果之间的关联可能会减弱,甚至逆转。 G方法是一类分析工具,旨在解决可能因时变的混杂因素和结构性偏见而受到影响的情况,如HWSE中所见。一种这样的方法,即参数g公式,是一种严格的计算模型,已用于校正HWSE潜在偏倚的效应估计。目的:本研究的总体目标是探讨长期低剂量暴露之间的关系。美国及其地区的医学放射技术人员的职业电离辐射和白内障的风险,并提出方法学技术以帮助估计在这种情况下的因果关系。;稿件1:目的:评估长期暴露于这种情况下的总体关联医疗放射技术人员的低剂量职业电离辐射和入射白内障。方法:使用Cox回归模型对电离辐射预测的白内障时间建模。从第一年开始从事放射技师工作的技术人员就从18岁开始,直到第三次调查报告白内障或行政检查。结果:在调整了出生年份,性别和种族/种族(N = 69,798)后,电离辐射与白内障的危险性显着相关,具有随时间变化的效应(p <0.001),该效应最初升高时随时间降低。在20岁时,每10-mSv辐射增加白内障的危险比在统计学上显着[HR = 1.09; 95%CI =(1.04,1.14)]和30岁[HR = 1.04; 95%CI =(1.00,1.09)],但在30岁以后并不显着。敏感性分析表明,有充分的证据表明存在来自HWSE的选择偏见,并且可能解释了随时间变化的影响。此外,一篇文献综述发现了五项基于人群的白内障亚型流行病随时间推移的研究,并指出在USRT研究中白内障存在分类错误的可能,可能对效果产生偏见。稿件2:目的:使用增强回归树充分表征了医学放射技术人员中职业电离辐射对白内障的影响分布。方法:采用增强回归树模型建立白内障预测模型。该研究组在基线时仅限于24--44岁(N = 43,513)。使用该模型的预测来计算潜在影响修正剂层中的高剂量(观察到的徽章剂量的第75个百分位数:61.31 mSv)和低剂量(观察到的徽章剂量的第25个百分位数:23.90 mSv)之间的白内障风险差异。结果:总体而言,有显着的人群平均效应[RD = 0.002; 95%CI =(0.002,0.015)]。此外,发现亚组的危险性比人口平均水平高,包括那些最早出生的人群,患有糖尿病,黄斑变性,青光眼或基线时超重(BMI> 25)的人群。相反,年龄最小的人和没有黄斑变性的人的风险差异低于平均值。;稿件3:目的:使用参数G公式调整健康工人幸存者效应的效应估计,以估计在该地区发生放射性白内障的风险。放射医学技师。方法:使用参数化g公式估算不同假设情景下的白内障风险,即在五年期间将徽章剂量限制在第80个百分位(徽章剂量≤18.38 mSv),第60个百分位(徽章剂量≤9.06 mSv),第40个百分点(徽章剂量≤4.47 mSv),观察到的剂量的百分之二十(徽章剂量≤2.08 mSv),并且在随访期间每个阶段的剂量估算值减少5 mSv(N = 69,798)。将累积的发病风险和以这些治疗方案的白内障生存为条件的风险与具有风险差异和95%置信区间的现状(不进行剂量干预)进行了比较。在自然病程和治疗方案之间,白内障的累积发生率和白内障的条件性风险均存在实质性重要差异。有证据表明,即使在相对较早的年龄,减少放射线照射的剂量也可以降低白内障的风险。 (摘要由UMI缩短。)。

著录项

  • 作者

    Meyer, Craig Steven.;

  • 作者单位

    University of Minnesota.;

  • 授予单位 University of Minnesota.;
  • 学科 Epidemiology.;Occupational safety.;Statistics.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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