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首页> 外文期刊>BMC Medical Research Methodology >Using logic regression to characterize extreme heat exposures and their health associations: a time-series study of emergency department visits in Atlanta
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Using logic regression to characterize extreme heat exposures and their health associations: a time-series study of emergency department visits in Atlanta

机译:使用逻辑回归来表征极端热曝光及其健康协会:亚特兰大急诊部门访问的时间序列研究

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Short-term associations between extreme heat events and adverse health outcomes are well-established in epidemiologic studies. However, the use of different exposure definitions across studies has limited our understanding of extreme heat characteristics that are most important for specific health outcomes or subpopulations. Logic regression is a statistical learning method for constructing decision trees based on Boolean combinations of binary predictors. We describe how logic regression can be utilized as a data-driven approach to identify extreme heat exposure definitions using health outcome data. We evaluated the performance of the proposed algorithm in a simulation study, as well as in a 20-year time-series analysis of extreme heat and emergency department visits for 12 outcomes in the Atlanta metropolitan area. For the Atlanta case study, our novel application of logic regression identified extreme heat exposure definitions that were associated with several heat-sensitive disease outcomes (e.g., fluid and electrolyte imbalance, renal diseases, ischemic stroke, and hypertension). Exposures were often characterized by extreme apparent minimum temperature or maximum temperature over multiple days. The simulation study also demonstrated that logic regression can successfully identify exposures of different lags and duration structures when statistical power is sufficient. Logic regression is a useful tool for identifying important characteristics of extreme heat exposures for adverse health outcomes, which may help improve future heat warning systems and response plans.
机译:极端热事件和不良健康结果之间的短期协会在流行病学研究中是良好的。然而,在研究中使用不同的曝光定义已经有限地了解对特定健康结果或群体最重要的极端热特性。逻辑回归是基于二元预测器的布尔组合构建决策树的统计学习方法。我们描述了如何利用逻辑回归作为数据驱动方法以识别使用健康结果数据来识别极端热曝光定义。我们评估了拟议算法在仿真研究中的表现,以及亚特兰大大都市地区的12个结果的20年序列分析。对于亚特兰大案例研究,我们对逻辑回归的新应用鉴定了与几种热敏疾病结果相关的极端热暴露定义(例如,流体和电解质不平衡,肾病,缺血性卒中和高血压)。曝光通常是在多天内极端明显的最小温度或最高温度的特征。仿真研究还证明,当统计功率足够时,逻辑回归可以成功识别不同滞后和持续时间结构的暴露。逻辑回归是一种有用的工具,用于识别不良健康结果的极端热暴露的重要特征,这可能有助于改善未来的热预警系统和响应计划。

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