Dignam Timothy, Hodge James, Chuke Stella, Mercado Carlos, Ettinger Adrienne S, Flanders W Dana
Division of Environmental Health Science and Practice, National Center for Environmental Health, Centers for Disease Control and Prevention, Atlanta, Georgia.
Lead Poisoning Prevention and Environmental Health Tracking Branch, Division of Environmental Health Science and Practice, National Center for Environmental Health, Centers for Disease Control and Prevention, Atlanta, Georgia.
Environ Epidemiol. 2020 Apr;4(2). doi: 10.1097/ee9.0000000000000090.
Local, state, and national childhood blood lead surveillance is based on healthcare providers and clinical laboratories reporting test results to public health departments. Increased interest in detecting blood lead level (BLL) patterns and changes of potential public health significance in a timely manner has highlighted the need for surveillance systems to rapidly detect and investigate these events.
Decrease the time to detect changes in surveillance patterns by using an alerting algorithm developed and assessed through historical child blood lead surveillance data analysis.
We applied geographic and temporal data-aggregation strategies on childhood blood lead surveillance data and developed a novel alerting algorithm. The alerting algorithm employed a modified cumulative summary/Shewhart algorithm, initially applied on 113 months of data from two jurisdictions with a known increase in the proportion of children <6 years of age with BLLs =>5 µg/dl.
Alert signals retrospectively identified time periods in two jurisdictions where a known change in the proportion of children <6 years of age with BLLs >=5 µg/dl occurred. Additionally, we identified alert signals among six of the 18 (33%) randomly selected counties assessed where no previously known or suspected pattern changes existed.
The modified cumulative summary/Shewhart algorithm provides a framework for enhanced blood lead surveillance by identifying changes in the proportion of children with BLLs >=5 µg/dl. The algorithm has the potential to alert public health officials to changes requiring further important public health investigation.
地方、州和国家层面的儿童血铅监测是基于医疗服务提供者和临床实验室向公共卫生部门报告检测结果。人们越来越希望及时发现具有潜在公共卫生意义的血铅水平(BLL)模式及变化,这凸显了监测系统迅速检测和调查这些事件的必要性。
通过使用经历史儿童血铅监测数据分析开发和评估的警报算法,缩短检测监测模式变化的时间。
我们对儿童血铅监测数据应用了地理和时间数据汇总策略,并开发了一种新型警报算法。该警报算法采用了改进的累积汇总/休哈特算法,最初应用于来自两个辖区的113个月的数据,这两个辖区中6岁以下儿童血铅水平≥5μg/dl的比例已知有所增加。
警报信号回顾性地识别出两个辖区中6岁以下儿童血铅水平≥5μg/dl的比例发生已知变化的时间段。此外,我们在随机选取评估的18个县中的6个(33%)发现了警报信号,这些县之前不存在已知或疑似的模式变化。
改进的累积汇总/休哈特算法通过识别血铅水平≥5μg/dl的儿童比例变化,为加强血铅监测提供了一个框架。该算法有可能提醒公共卫生官员注意需要进一步进行重要公共卫生调查的变化。