Exploring spatial patterns of vulnerability using linked health data

Abigail Brake, Daniel Birks, Mark Mon-Williams, Sam Relins
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 Objectives & ApproachThis study explored how routinely collected 999 data may reveal insights into how these services support potentially vulnerable populations. We argue that better understanding the nature and distribution of vulnerability-related calls may help to inform future preventative or harm reduction-based interventions. We analysed administrative data provided by Yorkshire Ambulance Service for the Bradford region through the Connected Bradford research database, posing the following questions: (1) can 999 call data provide insights into vulnerability-related incidents attended by ambulances?; (2) where and when are these incidents most prevalent?; and (3) what are the spatial patterns of calls and patient home locations associated with them?
 Relevance to Digital FootprintsWe first select calls associated with nine callout reasons indicative of vulnerability. Patients can choose to share their data with each healthcare service they use, so we harnessed this digital footprint to analyse the spatial distribution of call locations (at postcode sector level) and patient home location (at MSOA level).
 ResultsResults indicate substantial concentrations of vulnerability-related calls in multiple postcode sectors including the City Centre (where we estimate 18% of calls may be vulnerability-related) and several other areas which are associated with deprivation. Exploring flows of people from their home location to incident location we also see substantial spatial variation in the locations in which patients involved in these types of incidents reside.
 Conclusions & ImplicationsThese analyses represent initial efforts to better understand how vulnerable groups are supported by public services, and have the potential to inform future resource allocation and targeting of upstream interventions.","PeriodicalId":132937,"journal":{"name":"International Journal for Population Data Science","volume":"218 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-09-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal for Population Data Science","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.23889/ijpds.v8i3.2280","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

Introduction & BackgroundThe types of challenges police and ambulance services deal with often overlap, for instance supporting those who suffer from mental ill-health. Research has shown that emergency service problems often concentrate, but also that some individuals who come to the attention of one service may not be as visible to another despite their overlap in roles. Objectives & ApproachThis study explored how routinely collected 999 data may reveal insights into how these services support potentially vulnerable populations. We argue that better understanding the nature and distribution of vulnerability-related calls may help to inform future preventative or harm reduction-based interventions. We analysed administrative data provided by Yorkshire Ambulance Service for the Bradford region through the Connected Bradford research database, posing the following questions: (1) can 999 call data provide insights into vulnerability-related incidents attended by ambulances?; (2) where and when are these incidents most prevalent?; and (3) what are the spatial patterns of calls and patient home locations associated with them? Relevance to Digital FootprintsWe first select calls associated with nine callout reasons indicative of vulnerability. Patients can choose to share their data with each healthcare service they use, so we harnessed this digital footprint to analyse the spatial distribution of call locations (at postcode sector level) and patient home location (at MSOA level). ResultsResults indicate substantial concentrations of vulnerability-related calls in multiple postcode sectors including the City Centre (where we estimate 18% of calls may be vulnerability-related) and several other areas which are associated with deprivation. Exploring flows of people from their home location to incident location we also see substantial spatial variation in the locations in which patients involved in these types of incidents reside. Conclusions & ImplicationsThese analyses represent initial efforts to better understand how vulnerable groups are supported by public services, and have the potential to inform future resource allocation and targeting of upstream interventions.
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利用相关卫生数据探索脆弱性的空间格局
介绍,背景警察和救护车服务处理的挑战类型往往重叠,例如支持患有精神疾病的人。研究表明,紧急服务问题往往是集中的,但也表明,一些引起一个服务部门注意的个人,尽管他们的角色重叠,但对另一个服务部门来说,可能并不那么明显。目标,本研究探讨了常规收集的999数据如何揭示这些服务如何支持潜在弱势群体的见解。我们认为,更好地了解脆弱性相关呼叫的性质和分布可能有助于为未来的预防或减少伤害的干预提供信息。我们通过连接布拉德福德研究数据库分析了约克郡救护车服务为布拉德福德地区提供的行政数据,提出了以下问题:(1)999呼叫数据是否可以为救护车参与的漏洞相关事件提供见解?(2)这些事件在何时何地最普遍?(3)呼叫的空间模式和与之相关的患者家庭位置是什么? 与数字足迹的相关性我们首先选择与表明脆弱性的九个调出原因相关的呼叫。患者可以选择与他们使用的每个医疗保健服务共享他们的数据,因此我们利用这些数字足迹来分析呼叫位置(在邮政编码扇区级别)和患者家庭位置(在MSOA级别)的空间分布。结果表明,与脆弱性相关的电话大量集中在多个邮政编码部门,包括市中心(我们估计18%的电话可能与脆弱性有关)和其他几个与剥夺相关的地区。通过研究人们从他们的家到事件发生地的流动情况,我们还发现,涉及这类事件的患者所居住的地点存在很大的空间差异。结论,这些分析代表了更好地了解弱势群体如何得到公共服务支持的初步努力,并有可能为未来的资源分配和上游干预措施的目标提供信息。
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