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Global and Geographically Weighted Quantile Regression for Modeling the Incident Rate of Children’s Lead Poisoning in Syracuse, NY, USA

机译:全球和地理加权分位数回归模型,用于模拟美国纽约州锡拉库扎儿童铅中毒的发生率

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Objective : The purpose of this study was to explore the full distribution of children’s lead poisoning and identify “high risk” locations or areas in the neighborhood of the inner city of Syracuse (NY, USA), using quantile regression models. Methods : Global quantile regression (QR) and geographically weighted quantile regression (GWQR) were applied to model the relationships between children’s lead poisoning and three environmental factors at different quantiles (25th, 50th, 75th, and 90th). The response variable was the incident rate of children’s blood lead level ≥ 5 μg/dL in each census block, and the three predictor variables included building year, town taxable values, and soil lead concentration. Results : At each quantile, the regression coefficients of both global QR and GWQR models were (1) negative for both building year and town taxable values, indicating that the incident rate of children lead poisoning reduced with newer buildings and/or higher taxable values of the houses; and (2) positive for the soil lead concentration, implying that higher soil lead concentration around the house may cause higher risks of children’s lead poisoning. Further, these negative or positive relationships between children’s lead poisoning and three environmental factors became stronger for larger quantiles (i.e., higher risks). Conclusions : The GWQR models enabled us to explore the full distribution of children’s lead poisoning and identify “high risk” locations or areas in the neighborhood of the inner city of Syracuse, which would provide useful information to assist the government agencies to make better decisions on where and what the lead hazard treatment should focus on.
机译:目的:本研究的目的是使用分位数回归模型探讨儿童铅中毒的全部分布,并在锡拉丘兹内城(纽约州,美国)附近确定“高风险”位置或区域。方法:采用全球分位数回归(QR)和地理加权分位数回归(GWQR)来模拟儿童铅中毒与不同分位数(第25、50、75和90岁)的三个环境因素之间的关系。响应变量是每个普查区中儿童血铅水平≥5μg/ dL的发生率,三个预测变量包括建筑年份,城镇应课税价值和土壤铅浓度。结果:在每个分位数上,全局QR模型和GWQR模型的回归系数对于建筑年份和城镇应税值均为(1)负值,这表明,随着建筑的更新和/或较高的应税值,儿童铅中毒的发生率降低了房子; (2)对土壤铅的浓度呈阳性,这意味着房屋周围较高的土壤铅浓度可能会导致儿童铅中毒的风险增加。此外,对于较大的分位数(即较高的风险),儿童的铅中毒与三个环境因素之间的这些负向或正向关系变得更强。结论:GWQR模型使我们能够探索儿童铅中毒的全部分布,并确定锡拉丘兹市内城区附近的“高风险”位置或区域,这将提供有用的信息,以帮助政府机构做出更好的决策铅危害治疗应重点关注的地方和重点。

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