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利用关联的行政数据模拟强化家庭访视的目标试验在政策相关人群中的应用。

Emulating a target trial of intensive nurse home visiting in the policy-relevant population using linked administrative data.

机构信息

Centre for Epidemiology and Biostatistics, Melbourne School of Population and Global Health, University of Melbourne, Parkville, VIC, Australia.

Clinical Epidemiology and Biostatistics Unit, Murdoch Children's Research Institute, Parkville, VIC, Australia.

出版信息

Int J Epidemiol. 2023 Feb 8;52(1):119-131. doi: 10.1093/ije/dyac092.

Abstract

BACKGROUND

Populations willing to participate in randomized trials may not correspond well to policy-relevant target populations. Evidence of effectiveness that is complementary to randomized trials may be obtained by combining the 'target trial' causal inference framework with whole-of-population linked administrative data.

METHODS

We demonstrate this approach in an evaluation of the South Australian Family Home Visiting Program, a nurse home visiting programme targeting socially disadvantaged families. Using de-identified data from 2004-10 in the ethics-approved Better Evidence Better Outcomes Linked Data (BEBOLD) platform, we characterized the policy-relevant population and emulated a trial evaluating effects on child developmental vulnerability at 5 years (n = 4160) and academic achievement at 9 years (n = 6370). Linkage to seven health, welfare and education data sources allowed adjustment for 29 confounders using Targeted Maximum Likelihood Estimation (TMLE) with SuperLearner. Sensitivity analyses assessed robustness to analytical choices.

RESULTS

We demonstrated how the target trial framework may be used with linked administrative data to generate evidence for an intervention as it is delivered in practice in the community in the policy-relevant target population, and considering effects on outcomes years down the track. The target trial lens also aided in understanding and limiting the increased measurement, confounding and selection bias risks arising with such data. Substantively, we did not find robust evidence of a meaningful beneficial intervention effect.

CONCLUSIONS

This approach could be a valuable avenue for generating high-quality, policy-relevant evidence that is complementary to trials, particularly when the target populations are multiply disadvantaged and less likely to participate in trials.

摘要

背景

愿意参与随机试验的人群可能与政策相关的目标人群不太相符。通过将“目标试验”因果推理框架与全人群关联行政数据相结合,可能会获得与随机试验互补的有效性证据。

方法

我们在对南澳大利亚家庭家访计划(一项针对社会劣势家庭的护士家访计划)的评估中展示了这种方法。使用伦理批准的 Better Evidence Better Outcomes Linked Data (BEBOLD) 平台中 2004-10 年的匿名数据,我们描述了政策相关人群,并模拟了一项评估该计划对 5 岁儿童发育脆弱性(n=4160)和 9 岁儿童学业成绩(n=6370)影响的试验。与七个健康、福利和教育数据源的链接允许使用 SuperLearner 的目标最大似然估计(TMLE)对 29 个混杂因素进行调整。敏感性分析评估了分析选择的稳健性。

结果

我们展示了如何使用关联行政数据使用目标试验框架生成在社区中实际提供的干预措施的实践中的证据,以及考虑干预措施对多年后的结果的影响。目标试验视角还有助于理解和限制因这些数据而产生的更多测量、混杂和选择偏倚风险。实质上,我们没有发现干预措施有明显有益效果的可靠证据。

结论

这种方法可能是生成与试验互补的高质量、政策相关证据的有价值途径,特别是当目标人群是多重劣势且不太可能参与试验时。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b23c/9908050/4f419f009ff4/dyac092f1.jpg

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