Literature DB >> 26097800

Assumption Trade-Offs When Choosing Identification Strategies for Pre-Post Treatment Effect Estimation: An Illustration of a Community-Based Intervention in Madagascar.

Ann M Weber1, Mark J van der Laan2, Maya L Petersen2.   

Abstract

Failure (or success) in finding a statistically significant effect of a large-scale intervention may be due to choices made in the evaluation. To highlight the potential limitations and pitfalls of some common identification strategies used for estimating causal effects of community-level interventions, we apply a roadmap for causal inference to a pre-post evaluation of a national nutrition program in Madagascar. Selection into the program was non-random and strongly associated with the pre-treatment (lagged) outcome. Using structural causal models (SCM), directed acyclic graphs (DAGs) and simulated data, we illustrate that an estimand with the outcome defined as the post-treatment outcome controls for confounding by the lagged outcome but not by possible unmeasured confounders. Two separate differencing estimands (of the pre- and post-treatment outcome) have the potential to adjust for a certain type of unmeasured confounding, but introduce bias if the additional identification assumptions they rely on are not met. In order to illustrate the practical impact of choice between three common identification strategies and their corresponding estimands, we used observational data from the community nutrition program in Madagascar to estimate each of these three estimands. Specifically, we estimated the average treatment effect of the program on the community mean nutritional status of children 5 years and under and found that the estimate based on the post-treatment estimand was about a quarter of the magnitude of either of the differencing estimands (0.066 SD vs. 0.26-0.27 SD increase in mean weight-for-age z-score). Choice of estimand clearly has important implications for the interpretation of the success of the program to improve nutritional status of young children. A careful appraisal of the assumptions underlying the causal model is imperative before committing to a statistical model and progressing to estimation. However, knowledge about the data-generating process must be sufficient in order to choose the identification strategy that gets us closest to the truth.

Entities:  

Keywords:  average treatment effect; causal effect; change score; community-level intervention; difference-in-differences

Year:  2015        PMID: 26097800      PMCID: PMC4470579          DOI: 10.1515/jci-2013-0019

Source DB:  PubMed          Journal:  J Causal Inference        ISSN: 2193-3685


  9 in total

1.  Marginal structural models and causal inference in epidemiology.

Authors:  J M Robins; M A Hernán; B Brumback
Journal:  Epidemiology       Date:  2000-09       Impact factor: 4.822

Review 2.  An introduction to causal inference.

Authors:  Judea Pearl
Journal:  Int J Biostat       Date:  2010-02-26       Impact factor: 0.968

3.  On the consistency rule in causal inference: axiom, definition, assumption, or theorem?

Authors:  Judea Pearl
Journal:  Epidemiology       Date:  2010-11       Impact factor: 4.822

4.  Diagnosing and responding to violations in the positivity assumption.

Authors:  Maya L Petersen; Kristin E Porter; Susan Gruber; Yue Wang; Mark J van der Laan
Journal:  Stat Methods Med Res       Date:  2010-10-28       Impact factor: 3.021

5.  Estimating causal effects from epidemiological data.

Authors:  Miguel A Hernán; James M Robins
Journal:  J Epidemiol Community Health       Date:  2006-07       Impact factor: 3.710

Review 6.  Maternal and child undernutrition: global and regional exposures and health consequences.

Authors:  Robert E Black; Lindsay H Allen; Zulfiqar A Bhutta; Laura E Caulfield; Mercedes de Onis; Majid Ezzati; Colin Mathers; Juan Rivera
Journal:  Lancet       Date:  2008-01-19       Impact factor: 79.321

7.  Causal diagrams for epidemiologic research.

Authors:  S Greenland; J Pearl; J M Robins
Journal:  Epidemiology       Date:  1999-01       Impact factor: 4.822

8.  Strategies for reducing inequalities and improving developmental outcomes for young children in low-income and middle-income countries.

Authors:  Patrice L Engle; Lia C H Fernald; Harold Alderman; Jere Behrman; Chloe O'Gara; Aisha Yousafzai; Meena Cabral de Mello; Melissa Hidrobo; Nurper Ulkuer; Ilgi Ertem; Selim Iltus
Journal:  Lancet       Date:  2011-09-22       Impact factor: 79.321

Review 9.  Causal models and learning from data: integrating causal modeling and statistical estimation.

Authors:  Maya L Petersen; Mark J van der Laan
Journal:  Epidemiology       Date:  2014-05       Impact factor: 4.822

  9 in total
  1 in total

1.  Intersections of machine learning and epidemiological methods for health services research.

Authors:  Sherri Rose
Journal:  Int J Epidemiol       Date:  2021-01-23       Impact factor: 7.196

  1 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.