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Cognitive development Respiratory Tract Illness and Effects of eXposure (CORTEX) project: Data processing challenges in combining high spatial resolution pollution level data with individual level health and education data

机译:认知发育呼吸道疾病和曝光的影响(皮质)项目:数据处理挑战与个人级健康和教育数据相结合的高空间分辨率污染级别数据

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摘要

Background and ObjectivesThere is a lack of evidence of the adverse effects of air pollution and pollen on cognition for people with air quality-related health conditions. The CORTEX project combined routinely collected health and education data, high spatial resolution air pollution modelling, and daily pollen measurements for 18,241 pupils living in Cardiff, UK, between 2009 and 2015, to investigate the acute effects of air quality and respiratory conditions on education attainment.DatasetsAir pollutants PM2.5, PM10, NO2, and ozone levels were modelled for 157,361 home and school locations, anonymised into the Secure Anonymised Information Linkage (SAIL) Databank, and summarised into minimum, average and maximum readings for 4 daily time periods reflecting pupil home/school exposure. Adding a unique Residential Anonymised Linking Field (RALF) allowed linkage of pollution estimates to individual level data. Annual pollution datasets contained 369 columns and 472,083-rows, with one column per location, pollutant, daily time-period and day of year. Dataset transformation produced a 5 column, 3,446,205,900-row matrix per year.Methods and ConclusionsAn algorithm using Structured Query Language (SQL) to manage data held within a relational database management system, was designed to reduce dimensionality from 24 billion to 18,241 rows of data. The algorithm calculated average means for each pollutant (PM2.5, PM10, NO2, and ozone levels) over the revision and examination periods, and summarised data into one row per pupil. The algorithm adjusted for weekends, school, and bank holidays, it calculated daily pollutant exposure for each pupil, and successfully linked 95% of pupil pollution exposures to their health and education data.
机译:背景和客观性是缺乏空气污染和花粉对空气质量相关的健康状况的认知的不利影响的证据。 Cortex项目结合了常规收集的健康和教育数据,高空间分辨率的空气污染建模,以及居住在加卡迪夫,英国的18,241名学生的日常花粉测量,探讨了空气质量和呼吸状况对教育程度的急性影响。DataSetair污染物PM2.5,PM10,NO2和臭氧水平被建模为157,361个家庭和学校地点,匿名为安全匿名信息链接(SAIL)数据库,并概括为反映学生的4日每日时间段的最小,平均和最大读数家庭/学校曝光。添加一个独特的住宅匿名链接字段(RALF)允许污染估计的链接到各个级别数据。年度污染数据集包含369个列和472,083行,每个位置一列,污染物,每日时间和一年。数据集转换产生了5列,每年3,446,205,900行矩阵。使用结构化查询语言(SQL)来管理在关系数据库管理系统中管理数据的方法和结论,旨在将维度从240亿到18,241行减少到18,241行。该算法在修订和检查期间计算每个污染物(PM2.5,PM10,NO2和臭氧水平)的平均手段,并将数据汇总为每瞳的一行。为周末,学校和银行假期调整的算法,它计算了每个瞳孔的每日污染物暴露,并成功地将95%的瞳孔污染暴露联系起来给他们的健康和教育数据。

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