Kim Dohyeong, Galeano M Alicia Overstreet, Hull Andrew, Miranda Marie Lynn
Nicholas School of the Environment, Duke University, Durham, NC 27708, USA.
Environ Health Perspect. 2008 Dec;116(12):1735-9. doi: 10.1289/ehp.11540. Epub 2008 Aug 14.
Preventive approaches to childhood lead poisoning are critical for addressing this longstanding environmental health concern. Moreover, increasing evidence of cognitive effects of blood lead levels < 10 microg/dL highlights the need for improved exposure prevention interventions.
Geographic information system-based childhood lead exposure risk models, especially if executed at highly resolved spatial scales, can help identify children most at risk of lead exposure, as well as prioritize and direct housing and health-protective intervention programs. However, developing highly resolved spatial data requires labor-and time-intensive geocoding and analytical processes. In this study we evaluated the benefit of increased effort spent geocoding in terms of improved performance of lead exposure risk models.
We constructed three childhood lead exposure risk models based on established methods but using different levels of geocoded data from blood lead surveillance, county tax assessors, and the 2000 U.S. Census for 18 counties in North Carolina. We used the results to predict lead exposure risk levels mapped at the individual tax parcel unit.
The models performed well enough to identify high-risk areas for targeted intervention, even with a relatively low level of effort on geocoding.
This study demonstrates the feasibility of widespread replication of highly spatially resolved childhood lead exposure risk models. The models guide resource-constrained local health and housing departments and community-based organizations on how best to expend their efforts in preventing and mitigating lead exposure risk in their communities.
儿童铅中毒的预防措施对于解决这一长期存在的环境卫生问题至关重要。此外,越来越多的证据表明,血铅水平<10微克/分升对认知有影响,这凸显了改进暴露预防干预措施的必要性。
基于地理信息系统的儿童铅暴露风险模型,特别是在高分辨率空间尺度上执行时,可以帮助识别铅暴露风险最高的儿童,并对住房和健康保护干预计划进行优先排序和指导。然而,开发高分辨率空间数据需要耗费大量人力和时间的地理编码和分析过程。在本研究中,我们评估了在地理编码上增加投入所带来的益处,即铅暴露风险模型性能的提升。
我们基于既定方法构建了三个儿童铅暴露风险模型,但使用了来自北卡罗来纳州18个县的血铅监测、县税务评估员和2000年美国人口普查的不同地理编码数据水平。我们用这些结果来预测在单个税务地块单元上绘制的铅暴露风险水平。
这些模型表现良好,足以识别出需要进行有针对性干预的高风险区域,即使在地理编码方面投入的精力相对较少。
本研究证明了广泛复制高空间分辨率儿童铅暴露风险模型的可行性。这些模型指导资源有限的地方卫生和住房部门以及社区组织如何最好地在其社区预防和减轻铅暴露风险方面投入精力。