The potential of data linkage for improving social care provision

Magdalena Rossetti, Rick Hood
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 MethodsThe study was a secondary quantitative analysis of administrative data from one local authority in England. After completing research ethics review and data governance procedures, monthly data on families receiving housing benefits and council tax benefits payments were linked to child-level data on referrals to CSC services over a two-year period. The match was carried out based on personal identifiers, and once the linkage process was complete, a pseudonymised linked dataset (containing no personal identifiers) was used for all subsequent analyses.
 ResultsWe find that it is feasible to link children’s social care and benefits data. Our findings demonstrate a significant overlap between households receiving means-tested benefits and those referred to CSC services, underscoring the fact that most referrals involve low-income families. Our study further indicates that the children referred to CSC services primarily reside in deprived areas characterized by limited access to housing and services, as well as poor housing conditions. Additionally, we observed that children in households experiencing financial strain are twice as likely to be referred to CSC services.
 ConclusionLinking benefits data with CSC referrals can shed light on important questions related to the relationship between poverty and demand for child welfare services. For example, mechanisms through which poverty drives demand for child welfare services, including the role of persistent poverty, financial precarity, reductions or disruptions to benefits payments, unemployment, overcrowding, rent increases, evictions, etc.","PeriodicalId":132937,"journal":{"name":"International Journal for Population Data Science","volume":"21 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-09-14","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.v8i2.2298","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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Abstract

ObjectivesThe main objective of the project was to link case-level data from Children’s Social Care (CSC) service with household-level data on means-tested benefits, in order to analyse the dynamic relationship between families’ financial situation and the demand for CSC services at the household level. MethodsThe study was a secondary quantitative analysis of administrative data from one local authority in England. After completing research ethics review and data governance procedures, monthly data on families receiving housing benefits and council tax benefits payments were linked to child-level data on referrals to CSC services over a two-year period. The match was carried out based on personal identifiers, and once the linkage process was complete, a pseudonymised linked dataset (containing no personal identifiers) was used for all subsequent analyses. ResultsWe find that it is feasible to link children’s social care and benefits data. Our findings demonstrate a significant overlap between households receiving means-tested benefits and those referred to CSC services, underscoring the fact that most referrals involve low-income families. Our study further indicates that the children referred to CSC services primarily reside in deprived areas characterized by limited access to housing and services, as well as poor housing conditions. Additionally, we observed that children in households experiencing financial strain are twice as likely to be referred to CSC services. ConclusionLinking benefits data with CSC referrals can shed light on important questions related to the relationship between poverty and demand for child welfare services. For example, mechanisms through which poverty drives demand for child welfare services, including the role of persistent poverty, financial precarity, reductions or disruptions to benefits payments, unemployment, overcrowding, rent increases, evictions, etc.
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数据联系改善社会护理提供的潜力
目的该项目的主要目的是将儿童社会照顾(CSC)服务的个案数据与家庭层面的经济情况调查数据联系起来,以分析家庭经济状况与家庭层面对CSC服务需求之间的动态关系。方法对英国某地方政府的行政数据进行二次定量分析。在完成研究伦理审查和数据管理程序后,每月接受住房福利和委员会税收福利支付的家庭数据与两年内转介到CSC服务的儿童数据相关联。匹配是基于个人标识符进行的,一旦链接过程完成,一个假名化的链接数据集(不包含个人标识符)被用于所有后续分析。 结果将儿童社会关怀与福利数据相结合是可行的。我们的研究结果表明,在接受经济状况调查的家庭和转介到CSC服务的家庭之间存在显著的重叠,强调了大多数转介涉及低收入家庭的事实。我们的研究进一步表明,转到CSC服务的儿童主要居住在以住房和服务有限以及住房条件差为特征的贫困地区。此外,我们观察到,在经历经济压力的家庭中,儿童被转到CSC服务的可能性是其他家庭的两倍。 结论将福利数据与CSC转诊联系起来可以揭示贫困与儿童福利服务需求之间关系的重要问题。例如,贫困推动儿童福利服务需求的机制,包括持续贫困、财政不稳定、福利支付减少或中断、失业、过度拥挤、租金上涨、驱逐等因素的作用。
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