Combining Decision Rules from Classification Tree Models and Expert Assessment to Estimate Occupational Exposure to Diesel Exhaust for a Case-Control Study.

M. Friesen, D. Wheeler, R. Vermeulen, Sarah J. Locke, D. Zaebst, Stella Koutros, A. Pronk, J. Colt, D. Baris, M. Karagas, N. Malats, M. Schwenn, Alison Johnson, Karla Armenti, N. Rothman, P. Stewart, M. Kogevinas, D. Silverman
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引用次数: 11

Abstract

OBJECTIVES To efficiently and reproducibly assess occupational diesel exhaust exposure in a Spanish case-control study, we examined the utility of applying decision rules that had been extracted from expert estimates and questionnaire response patterns using classification tree (CT) models from a similar US study. METHODS First, previously extracted CT decision rules were used to obtain initial ordinal (0-3) estimates of the probability, intensity, and frequency of occupational exposure to diesel exhaust for the 10 182 jobs reported in a Spanish case-control study of bladder cancer. Second, two experts reviewed the CT estimates for 350 jobs randomly selected from strata based on each CT rule's agreement with the expert ratings in the original study [agreement rate, from 0 (no agreement) to 1 (perfect agreement)]. Their agreement with each other and with the CT estimates was calculated using weighted kappa (κ w) and guided our choice of jobs for subsequent expert review. Third, an expert review comprised all jobs with lower confidence (low-to-moderate agreement rates or discordant assignments, n = 931) and a subset of jobs with a moderate to high CT probability rating and with moderately high agreement rates (n = 511). Logistic regression was used to examine the likelihood that an expert provided a different estimate than the CT estimate based on the CT rule agreement rates, the CT ordinal rating, and the availability of a module with diesel-related questions. RESULTS Agreement between estimates made by two experts and between estimates made by each of the experts and the CT estimates was very high for jobs with estimates that were determined by rules with high CT agreement rates (κ w: 0.81-0.90). For jobs with estimates based on rules with lower agreement rates, moderate agreement was observed between the two experts (κ w: 0.42-0.67) and poor-to-moderate agreement was observed between the experts and the CT estimates (κ w: 0.09-0.57). In total, the expert review of 1442 jobs changed 156 probability estimates, 128 intensity estimates, and 614 frequency estimates. The expert was more likely to provide a different estimate when the CT rule agreement rate was <0.8, when the CT ordinal ratings were low to moderate, or when a module with diesel questions was available. CONCLUSIONS Our reliability assessment provided important insight into where to prioritize additional expert review; as a result, only 14% of the jobs underwent expert review, substantially reducing the exposure assessment burden. Overall, we found that we could efficiently, reproducibly, and reliably apply CT decision rules from one study to assess exposure in another study.
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结合分类树模型决策规则与专家评估评估柴油机废气职业暴露的个案对照研究。
目的:在西班牙的一项病例对照研究中,为了有效和可重复地评估职业性柴油废气暴露,我们检查了应用决策规则的效用,这些决策规则是从专家估计中提取的,并使用来自美国类似研究的分类树(CT)模型的问卷回答模式。方法首先,利用先前提取的CT决策规则,获得西班牙膀胱癌病例对照研究中10182个职业暴露于柴油废气的概率、强度和频率的初始序数(0-3)估计值。其次,两位专家根据每个CT规则与原始研究中的专家评级的一致性,审查了从地层中随机选择的350个作业的CT估计[一致性率,从0(不一致)到1(完全一致)]。使用加权kappa (κ w)计算它们彼此之间以及与CT估计的一致性,并指导我们选择后续专家评审的工作。第三,专家评审包括所有置信度较低的作业(低至中等一致率或不一致分配,n = 931)和具有中等至高CT概率评级和中等高一致率的作业子集(n = 511)。使用逻辑回归来检验专家根据CT规则一致性率、CT序数评级和包含柴油相关问题的模块的可用性,提供与CT估计不同的估计的可能性。结果对于由高CT一致性率规则确定的工作,两位专家的估计之间以及每位专家的估计与CT估计之间的一致性非常高(κ w: 0.81-0.90)。对于基于一致性率较低的规则进行估计的作业,在两位专家之间观察到中度一致性(κ w: 0.42-0.67),在专家和CT估计之间观察到差至中度一致性(κ w: 0.09-0.57)。总的来说,1442个工作的专家评审改变了156个概率估计,128个强度估计和614个频率估计。当CT规则一致性率<0.8时,当CT序数评级从低到中等时,或者当具有柴油问题的模块可用时,专家更有可能提供不同的估计。结论:我们的可靠性评估提供了重要的见解,以确定在哪些方面优先考虑额外的专家评审;因此,只有14%的工作进行了专家审查,大大减少了暴露评估的负担。总的来说,我们发现我们可以有效地、可重复地、可靠地应用一项研究中的CT决策规则来评估另一项研究中的暴露。
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