Lessons learned from using linked administrative data to evaluate the Family Nurse Partnership in England and Scotland.

IF 1.6 Q3 HEALTH CARE SCIENCES & SERVICES
International Journal of Population Data Science Pub Date : 2023-05-11 eCollection Date: 2023-01-01 DOI:10.23889/ijpds.v8i1.2113
Francesca L Cavallaro, Rebecca Cannings-John, Fiona Lugg-Widger, Ruth Gilbert, Eilis Kennedy, Sally Kendall, Michael Robling, Katie L Harron
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引用次数: 0

Abstract

Introduction: "Big data" - including linked administrative data - can be exploited to evaluate interventions for maternal and child health, providing time- and cost-effective alternatives to randomised controlled trials. However, using these data to evaluate population-level interventions can be challenging.

Objectives: We aimed to inform future evaluations of complex interventions by describing sources of bias, lessons learned, and suggestions for improvements, based on two observational studies using linked administrative data from health, education and social care sectors to evaluate the Family Nurse Partnership (FNP) in England and Scotland.

Methods: We first considered how different sources of potential bias within the administrative data could affect results of the evaluations. We explored how each study design addressed these sources of bias using maternal confounders captured in the data. We then determined what additional information could be captured at each step of the complex intervention to enable analysts to minimise bias and maximise comparability between intervention and usual care groups, so that any observed differences can be attributed to the intervention.

Results: Lessons learned include the need for i) detailed data on intervention activity (dates/geography) and usual care; ii) improved information on data linkage quality to accurately characterise control groups; iii) more efficient provision of linked data to ensure timeliness of results; iv) better measurement of confounding characteristics affecting who is eligible, approached and enrolled.

Conclusions: Linked administrative data are a valuable resource for evaluations of the FNP national programme and other complex population-level interventions. However, information on local programme delivery and usual care are required to account for biases that characterise those who receive the intervention, and to inform understanding of mechanisms of effect. National, ongoing, robust evaluations of complex public health evaluations would be more achievable if programme implementation was integrated with improved national and local data collection, and robust quasi-experimental designs.

利用关联行政数据评估英格兰和苏格兰家庭护士伙伴关系的经验教训。
导言:"大数据"(包括关联的行政数据)可用于评估妇幼保健干预措施,为随机对照试验提供时间和成本效益上的替代方案。然而,利用这些数据来评估人口层面的干预措施可能具有挑战性:我们的目的是通过描述偏倚来源、经验教训和改进建议,为未来复杂干预措施的评估提供信息。我们基于两项观察性研究,使用来自卫生、教育和社会护理部门的关联行政数据,对英格兰和苏格兰的家庭护士伙伴关系(FNP)进行了评估:我们首先考虑了行政数据中不同来源的潜在偏差会如何影响评估结果。我们探讨了每项研究设计如何利用数据中的孕产妇混杂因素来解决这些偏差来源。然后,我们确定了在复杂干预的每个步骤中还可以获取哪些信息,以使分析人员能够最大限度地减少偏差,并最大限度地提高干预组和常规护理组之间的可比性,从而将观察到的任何差异归因于干预:总结出的经验包括:i) 需要有关干预活动(日期/地理位置)和常规护理的详细数据;ii) 改进有关数据链接质量的信息,以准确描述对照组的特征;iii) 更有效地提供链接数据,以确保结果的及时性;iv) 更好地测量影响合格者、接触者和注册者的混杂特征:链接的行政数据是评估 FNP 国家计划和其他复杂的人口干预措施的宝贵资源。然而,还需要有关当地计划实施和常规护理的信息,以考虑到接受干预者的特征偏差,并为了解效果机制提供信息。如果能将计划的实施与改进国家和地方数据收集工作以及稳健的准实验设计结合起来,就更有可能对复杂的公共卫生评价进行全国性的、持续的、稳健的评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.50
自引率
0.00%
发文量
386
审稿时长
20 weeks
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