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首页> 外文期刊>Statistics in medicine >Controlling for seasonal patterns and time varying confounders in time-series epidemiological models: A simulation study
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Controlling for seasonal patterns and time varying confounders in time-series epidemiological models: A simulation study

机译:在时序流行病学模型中控制季节性模式和时变混杂因素:模拟研究

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摘要

An important topic when estimating the effect of air pollutants on human health is choosing the best method to control for seasonal patterns and time varying confounders, such as temperature and humidity. Semi-parametric Poisson time-series models include smooth functions of calendar time and weather effects to control for potential confounders. Case-crossover (CC) approaches are considered efficient alternatives that control seasonal confounding by design and allow inclusion of smooth functions of weather confounders through their equivalent Poisson representations. We evaluate both methodological designs with respect to seasonal control and compare spline-based approaches, using natural splines and penalized splines, and two time-stratified CC approaches. For the spline-based methods, we consider fixed degrees of freedom, minimization of the partial autocorrelation function, and general cross-validation as smoothing criteria. Issues of model misspecification with respect to weather confounding are investigated under simulation scenarios, which allow quantifying omitted, misspecified, and irrelevant-variable bias. The simulations are based on fully parametric mechanisms designed to replicate two datasets with different mortality and atmospheric patterns. Overall, minimum partial autocorrelation function approaches provide more stable results for high mortality counts and strong seasonal trends, whereas natural splines with fixed degrees of freedom perform better for low mortality counts and weak seasonal trends followed by the time-season-stratified CC model, which performs equally well in terms of bias but yields higher standard errors.
机译:估算空气污染物对人体健康的影响时,一个重要的话题是选择最佳方法来控制季节性变化和时变混杂因素,例如温度和湿度。半参数泊松时间序列模型包括日历时间和天气影响的平滑功能,以控制潜在的混杂因素。案例交叉(CC)方法被认为是有效的替代方法,可以通过设计来控制季节混杂,并通过等效的泊松表示允许包括天气混杂因素的平滑功能。我们评估与季节控制有关的两种方法设计,并比较基于样条的方法,使用自然样条和惩罚样条以及两种时间分层的CC方法。对于基于样条的方法,我们将固定的自由度,部分自相关函数的最小化和一般的交叉验证视为平滑标准。在模拟方案下研究了与天气混杂有关的模型错误指定问题,该问题可以量化遗漏,错误指定和无关变量偏差。模拟基于完全参数化的机制,旨在复制具有不同死亡率和大气模式的两个数据集。总体而言,最小的部分自相关函数方法为较高的死亡率计数和强烈的季节性趋势提供了更稳定的结果,而具有固定自由度的自然样条在较低的死亡率计数和较弱的季节性趋势下表现更好,其后是按季节分层的CC模型,在偏差方面的表现同样出色,但产生更高的标准误差。

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