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Community-engaged modeling of exposures to chemical and non-chemical stressors in a low-income community near a Superfund site

机译:在超级优惠网站附近的低收入社区中的社区与化学和非化学压力源的曝光建模

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Cumulative risk assessment requires models of exposures to chemical and non-chemical stressors at sufficient geographic and demographic resolution to accurately identify high-risk subpopulations. Many non-chemical stressors are of considerable interest to community stakeholders, above and beyond their connections to chemical-oriented risk assessments, but relevant exposure models have not been leveraged for these purposes. In this study, we developed a methodology to provide high resolution exposure estimates, constructing detailed synthetic demographic microdata, and using these data as predictors in regression models for multiple stressors in New Bedford, Massachusetts, a low income community located near a Superfund site. Chemical exposure regression models utilized biomarker measurements from a cohort study conducted in the New Bedford area, and non-chemical stressor models leveraged data from the Behavioral Risk Factor Surveillance System (BRFSS). Through a series of meetings with community partners, behavior and health questions of interest from the BRFSS were identified, including fruit and vegetable consumption, obesity, and diabetes. Paralleling the structure of our chemical stressor models, we constructed multivariable regression models of the probability of eating fruits and vegetables, body mass index (BMI), and diabetes prevalence. Regression models were applied to the synthetic microdata and results mapped across the community to identify census tracts at high risk for these behaviors and outcomes in adults. Comparisons of geographic patterns of these stressors of interest to community partners with geographic patterns of chemical stressors identified areas of common emphasis. The maps and modeled demographic patterns will be used by community partners for city planning and policy activities such as parent support programs for people living with chronic diseases, locating new farmers markets, expansion of the fresh food voucher program, and prioritizing selection of existing brownfields to be converted to community gardens. Our study emphasizes the value of multi-stressor exposure modeling in the context of cumulative risk assessment, the insights provided by community engagement, and the opportunity for innovative exposure modeling approaches to connect with broader community concerns.
机译:累积风险评估需要以足够的地理和人口解决方案对化学和非化学压力源进行曝光的模型,以准确地识别高风险的群体。许多非化学压力因素对社区利益相关者,以上和超出其与化学风险评估的联系相当兴趣,但没有针对这些目的利用相关的曝光模式。在本研究中,我们开发了一种提供高分辨率曝光估计,构建详细的合成人口统计学Microdata的方法,以及使用这些数据作为新贝德福德,马萨诸塞州的低收入社区的多元压力源的回归模型中的预测因素。化学曝光回归模型利用来自新贝德福德地区的群组研究的生物标志物测量,非化学压力源模型从行为风险因子监控系统(BRFSS)杠杆化。通过一系列与社区合作伙伴的会议,鉴定了BRFSS的兴趣的行为和健康问题,包括水果和蔬菜消费,肥胖和糖尿病。平行于化学压力源模型的结构,我们构建了多变量的回归模型,概率吃水果和蔬菜,体重指数(BMI)和糖尿病患病率。回归模型应用于合成微大数据,并在整个社区中映射的结果,以识别人口普查,以对成人的这些行为和结果的高风险。对社区合作伙伴感兴趣的这些压力园的地理模式的比较,化学压力源的地理模式确定了共同强调的领域。地图和建模的人口模式将由社区合作伙伴使用城市规划和政策活动,如父母支持患者患有慢性病的人,找到新的农民市场,扩大新鲜食品凭证计划,以及优先考虑选择现有的棕色地区被转换为社区花园。我们的研究强调了在累计风险评估的背景下的多压力乐队曝光建模的价值,社区参与提供的见解,以及创新曝光建模方法与更广泛的社区关注的机会。

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