Literature DB >> 30714118

Causal inference when counterfactuals depend on the proportion of all subjects exposed.

Caleb H Miles1, Maya Petersen2,3, Mark J van der Laan2,4.   

Abstract

The assumption that no subject's exposure affects another subject's outcome, known as the no-interference assumption, has long held a foundational position in the study of causal inference. However, this assumption may be violated in many settings, and in recent years has been relaxed considerably. Often this has been achieved with either the aid of a known underlying network, or the assumption that the population can be partitioned into separate groups, between which there is no interference, and within which each subject's outcome may be affected by all the other subjects in the group via the proportion exposed (the stratified interference assumption). In this article, we instead consider a complete interference setting, in which each subject affects every other subject's outcome. In particular, we make the stratified interference assumption for a single group consisting of the entire sample. We show that a targeted maximum likelihood estimator for the i.i.d. setting can be used to estimate a class of causal parameters that includes direct effects and overall effects under certain interventions. This estimator remains doubly-robust, semiparametric efficient, and continues to allow for incorporation of machine learning under our model. We conduct a simulation study, and present results from a data application where we study the effect of a nurse-based triage system on the outcomes of patients receiving HIV care in Kenyan health clinics.
© 2019 International Biometric Society.

Entities:  

Keywords:  Dependent data; HIV/AIDS; SUTVA; causal inference; interference; semiparametric estimation

Mesh:

Year:  2019        PMID: 30714118      PMCID: PMC6679813          DOI: 10.1111/biom.13034

Source DB:  PubMed          Journal:  Biometrics        ISSN: 0006-341X            Impact factor:   2.571


  7 in total

1.  Toward Causal Inference With Interference.

Authors:  Michael G Hudgens; M Elizabeth Halloran
Journal:  J Am Stat Assoc       Date:  2008-06       Impact factor: 5.033

2.  Evaluating the Impact of a HIV Low-Risk Express Care Task-Shifting Program: A Case Study of the Targeted Learning Roadmap.

Authors:  Linh Tran; Constantin T Yiannoutsos; Beverly S Musick; Kara K Wools-Kaloustian; Abraham Siika; Sylvester Kimaiyo; Mark J van der Laan; Maya Petersen
Journal:  Epidemiol Methods       Date:  2016-11-10

3.  Causal Inference for a Population of Causally Connected Units.

Authors:  Mark J van der Laan
Journal:  J Causal Inference       Date:  2014-03

4.  On causal inference in the presence of interference.

Authors:  Eric J Tchetgen Tchetgen; Tyler J VanderWeele
Journal:  Stat Methods Med Res       Date:  2010-11-10       Impact factor: 3.021

5.  Large sample randomization inference of causal effects in the presence of interference.

Authors:  Lan Liu; Michael G Hudgens
Journal:  J Am Stat Assoc       Date:  2014-01-01       Impact factor: 5.033

Review 6.  Quality of care provided by mid-level health workers: systematic review and meta-analysis.

Authors:  Zohra S Lassi; Giorgio Cometto; Luis Huicho; Zulfiqar A Bhutta
Journal:  Bull World Health Organ       Date:  2013-11-01       Impact factor: 9.408

7.  Semi-Parametric Estimation and Inference for the Mean Outcome of the Single Time-Point Intervention in a Causally Connected Population.

Authors:  Oleg Sofrygin; Mark J van der Laan
Journal:  J Causal Inference       Date:  2016-11-29
  7 in total

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