A matching framework to improve causal inference in interrupted time-series analysis

被引:32
|
作者
Linden, Ariel [1 ]
机构
[1] Linden Consulting Grp LLC, 1714 8th Ave, San Francisco, CA 94122 USA
关键词
balance; bias; causal inference; confounding; covariates; interrupted time-series analysis; matching; COVARIATE BALANCE; PROPENSITY SCORE; VALIDITY; PROGRAM; DESIGN;
D O I
10.1111/jep.12874
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Rationale, aims, and objectivesInterrupted time-series analysis (ITSA) is a popular evaluation methodology in which a single treatment unit's outcome is studied over time and the intervention is expected to interrupt the level and/or trend of the outcome, subsequent to its introduction. When ITSA is implemented without a comparison group, the internal validity may be quite poor. Therefore, adding a comparable control group to serve as the counterfactual is always preferred. This paper introduces a novel matching framework, ITSAMATCH, to create a comparable control group by matching directly on covariates and then use these matches in the outcomes model. MethodWe evaluate the effect of California's Proposition 99 (passed in 1988) for reducing cigarette sales, by comparing California to other states not exposed to smoking reduction initiatives. We compare ITSAMATCH results to 2 commonly used matching approaches, synthetic controls (SYNTH), and regression adjustment; SYNTH reweights nontreated units to make them comparable to the treated unit, and regression adjusts covariates directly. Methods are compared by assessing covariate balance and treatment effects. ResultsBoth ITSAMATCH and SYNTH achieved covariate balance and estimated similar treatment effects. The regression model found no treatment effect and produced inconsistent covariate adjustment. ConclusionsWhile the matching framework achieved results comparable to SYNTH, it has the advantage of being technically less complicated, while producing statistical estimates that are straightforward to interpret. Conversely, regression adjustment may adjust away a treatment effect. Given its advantages, ITSAMATCH should be considered as a primary approach for evaluating treatment effects in multiple-group time-series analysis.
引用
收藏
页码:408 / 415
页数:8
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