通过全科医生电子健康记录中的患者地址和唯一房产参考编号来确定家庭。

Determining households from patient addresses and unique property reference numbers in general practitioner electronic health records.

作者信息

Harper Gill, Firman Nicola, Wilk Marta, Marszalek Milena, Simon Paul, Stables David, Fry Richard, Smith Kelvin, Dezateux Carol

机构信息

Clinical Effectiveness Group, Wolfson Institute of Population Health, Queen Mary University of London, London, UK.

Endeavour Health Charity, UK.

出版信息

Int J Popul Data Sci. 2024 Apr 9;9(1):2379. doi: 10.23889/ijpds.v9i1.2379. eCollection 2024.

Abstract

INTRODUCTION

Households are increasingly studied in population health research as an important context for understanding health and social behaviours and outcomes. Identifying household units of analysis in routinely collected data rather than traditional surveys requires innovative and standardised tools, which do not currently exist.

OBJECTIVES

To design a utility that identifies households at a point in time from pseudonymised Unique Property Reference Numbers (UPRNs) known as Residential Anonymised Linkage Fields (RALFs) assigned to general practitioner (GP) patient addresses in electronic health records (EHRs) in north east London (NEL).

METHODS

Rule-based logic was developed to identify households based on GP registration, address date, and RALF validity. The logic was tested on a use case on the household clustering of childhood weight status, and bias in success of identifying households was examined in the use case cohort and in a full population cohort.

RESULTS

92.1% of the use case cohort was assigned a household. The most frequent dominant reason (55.3%) for a household not assigned was that a person had no valid household RALFs available across their patient registration address records. Other reasons are having none or multiple valid household RALFs, or not being alive at the event date.In the use case, children not assigned to a household were more likely to attend schools in City & Hackney and living in the third most deprived quintile of lower super output areas.88.9% of the population cohort was assigned a household. Patients not assigned to a household were more likely to be aged 18 to 45 years, living in City & Hackney, and living in the second quintile of most deprived lower super output areas.

CONCLUSIONS

We have developed a method for deriving households from primary care EHRs that can be implemented quickly and in real-time, providing timely data to support population health research on households.

摘要

引言

在人口健康研究中,家庭作为理解健康、社会行为及结果的重要背景,正受到越来越多的关注。在常规收集的数据而非传统调查中识别家庭分析单位,需要创新且标准化的工具,而目前此类工具并不存在。

目的

设计一种实用工具,该工具可根据分配给伦敦东北部(NEL)电子健康记录(EHR)中全科医生(GP)患者地址的匿名唯一房产参考编号(UPRN),即住宅匿名链接字段(RALF),在某个时间点识别家庭。

方法

开发了基于规则的逻辑,以根据全科医生注册信息、地址日期和RALF有效性来识别家庭。该逻辑在一个关于儿童体重状况家庭聚类的用例上进行了测试,并在用例队列和全人群队列中检查了识别家庭成功与否的偏差。

结果

92.1%的用例队列被分配到了一个家庭。未被分配家庭的最常见主要原因(55.3%)是一个人在其患者注册地址记录中没有有效的家庭RALF。其他原因包括没有有效的家庭RALF或有多个有效的家庭RALF,或者在事件发生日期时已不在世。在用例中,未被分配到家庭的儿童更有可能就读于伦敦市和哈克尼区的学校,且居住在较低超级输出区最贫困的五分之一区域。88.9%的人群队列被分配到了一个家庭。未被分配到家庭的患者更有可能年龄在18至45岁之间,居住在伦敦市和哈克尼区,且居住在最贫困的较低超级输出区的第二个五分之一区域。

结论

我们开发了一种从初级保健电子健康记录中推导家庭的方法,该方法可以快速实时实施,提供及时的数据以支持关于家庭的人口健康研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/478c/11626511/2cb7accf2423/ijpds-09-2379-g001.jpg

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