Environmental surveillance modeling: A predictive respiratory alert model for the Shenandoah Valley, Virginia

Anne E. Hovland, Amanda M. Wagner, Katherine M. Pierce, John E. Drahos, Donald E. Brown
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引用次数: 2

Abstract

Chronic Obstructive Pulmonary Disease (COPD) is a serious respiratory ailment that affects millions of Americans. Several studies have shown that weather conditions and pollution can increase the occurrence of respiratory distress. The goal of the work described in this paper was to determine if the relationships between environmental variables and admissions rates for COPD were strong enough to enable the development of a surveillance system that could alert the population of potentially hazardous conditions. To conduct this study we obtained data on COPD admissions in the Shenandoah Valley of Virginia, an area of approximately 33,705 km<;sup>2<;/sup>. The data were coded at the zip code level (approximately 250 km<;sup>2<;/sup>). We obtained data for weather variables from 6 monitoring stations and used Kriging to estimate their values at the zip code level. We controlled for the effects of influenza in admission rates, although this required smoothing methods to impute missing values. We also controlled for different types of land use. To predict COPD admissions we developed three types of models: generalized linear models (GLM), multivariate adaptive regression splines (MARS), and random forests. All models showed that temperature or season was a significant (p <; 0.05) predictor for COPD admissions. In terms of predictive accuracy the random forest model provided the best performance measured by the receiver operations characteristic (ROC) and can provide the basis for strategic planning rather than tactical alerting.
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环境监测模型:一个预测呼吸警报模型的谢南多厄山谷,弗吉尼亚州
慢性阻塞性肺疾病(COPD)是一种严重的呼吸系统疾病,影响着数百万美国人。几项研究表明,天气状况和污染会增加呼吸窘迫的发生。本文所述工作的目标是确定环境变量与COPD入院率之间的关系是否足够强,从而能够开发一种监测系统,提醒人们注意潜在的危险状况。为了开展这项研究,我们获得了弗吉尼亚州谢南多厄山谷(面积约33,705平方公里)COPD入院数据。数据按邮政编码级别编码(约250平方公里)。我们从6个监测站获得了天气变量的数据,并使用克里格法在邮政编码水平上估计了它们的值。我们控制了流感对入院率的影响,尽管这需要平滑方法来计算缺失值。我们还控制了不同类型的土地利用。为了预测COPD住院,我们开发了三种类型的模型:广义线性模型(GLM)、多变量自适应回归样条(MARS)和随机森林。所有模型均表明,温度或季节显著(p <;0.05) COPD入院的预测因子。在预测精度方面,随机森林模型提供了由接收者操作特征(ROC)衡量的最佳性能,可以为战略规划而不是战术警报提供基础。
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