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A method for detection of residual confounding in time-series and other observational studies.

机译:一种在时间序列和其他观察研究中检测残留混杂的方法。

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BACKGROUND: A difficult issue in observational studies is assessment of whether important confounders are omitted or misspecified. In this study, we present a method for assessing whether residual confounding is present. Our method depends on availability of an indicator with 2 key characteristics: first, it is conditionally independent (given measured exposures and covariates) of the outcome in the absence of confounding, misspecification, and measurement errors; second, it is associated with the exposure and, like the exposure, with any unmeasured confounders. METHODS: We demonstrate the method using a time-series study of the effects of ozone on emergency department visits for asthma in Atlanta. We argue that future air pollution may have the characteristics appropriate for an indicator, in part because future ozone cannot have caused yesterday's health events. Using directed acyclic graphs and specific causal relationships, we show that one can identify residual confounding using an indicator with the stated characteristics. We use simulations to assess the discriminatory ability of future ozone as an indicator of residual confounding in the association of ozone with asthma-related emergency department visits. Parameter choices are informed by observed data for ozone, meteorologic factors, and asthma. RESULTS: In simulations, we found that ozone concentrations 1 day after the emergency department visits had excellent discriminatory ability to detect residual confounding by some factors that were intentionally omitted from the model, but weaker ability for others. Although not the primary goal, the indicator can also signal other forms of modeling errors, including substantial measurement error, and does not distinguish between them. CONCLUSIONS: The simulations illustrate that the indicator based on future air pollution levels can have excellent discriminatory ability for residual confounding, although performance varied by situation. Application of the method should be evaluated by considering causal relationships for the intended application, and should be accompanied by other approaches, including evaluation of a priori knowledge.
机译:背景:观察研究中的一个难题是评估重要混杂因素是否被遗漏或指定错误。在这项研究中,我们提出了一种评估是否存在残留混杂的方法。我们的方法取决于具有2个关键特征的指标的可用性:首先,在没有混淆,错误指定和测量错误的情况下,它是有条件独立于结果的(给定的暴露度和协变量)。其次,它与风险敞口相关,并且与风险敞口一样,与任何无法衡量的混杂因素也相关。方法:我们使用时间序列研究方法证明了臭氧对亚特兰大急诊科就诊哮喘的影响。我们认为,未来的空气污染可能具有适合该指标的特征,部分原因是未来的臭氧不可能引起昨天的健康事件。使用有向无环图和特定的因果关系,我们表明,可以使用具有指定特征的指标来识别残余混杂。我们使用模拟来评估未来臭氧的区分能力,以此作为臭氧与哮喘相关急诊就诊相关的残余混杂指标。通过观察到的臭氧,气象因素和哮喘的数据来提供参数选择。结果:在模拟中,我们发现急诊室就诊后1天的臭氧浓度具有很好的判别能力,可以通过模型中有意省略的某些因素检测残留的混杂物,而对其他因素的检测能力却较弱。尽管不是主要目标,但指标还可以表示其他形式的建模误差,包括大量的测量误差,并且不能区分它们。结论:模拟表明,尽管性能因情况而异,但基于未来空气污染水平的指标可以具有出色的残留混杂辨别能力。该方法的应用应通过考虑预期应用的因果关系来评估,并应伴随其他方法,包括对先验知识的评估。

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