Literature DB >> 25921223

All your data are always missing: incorporating bias due to measurement error into the potential outcomes framework.

Jessie K Edwards1, Stephen R Cole2, Daniel Westreich2.   

Abstract

Epidemiologists often use the potential outcomes framework to cast causal inference as a missing data problem. Here, we demonstrate how bias due to measurement error can be described in terms of potential outcomes and considered in concert with bias from other sources. In addition, we illustrate how acknowledging the uncertainty that arises due to measurement error increases the amount of missing information in causal inference. We use a simple example to show that estimating the average treatment effect requires the investigator to perform a series of hidden imputations based on strong assumptions.
© The Author 2015; all rights reserved. Published by Oxford University Press on behalf of the International Epidemiological Association.

Keywords:  Bias (Epidemiology); HIV; causal inference; missing data

Mesh:

Year:  2015        PMID: 25921223      PMCID: PMC4723683          DOI: 10.1093/ije/dyu272

Source DB:  PubMed          Journal:  Int J Epidemiol        ISSN: 0300-5771            Impact factor:   7.196


  15 in total

1.  A definition of causal effect for epidemiological research.

Authors:  M A Hernán
Journal:  J Epidemiol Community Health       Date:  2004-04       Impact factor: 3.710

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

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

3.  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

4.  The consistency statement in causal inference: a definition or an assumption?

Authors:  Stephen R Cole; Constantine E Frangakis
Journal:  Epidemiology       Date:  2009-01       Impact factor: 4.822

5.  Invited Commentary: Causal diagrams and measurement bias.

Authors:  Miguel A Hernán; Stephen R Cole
Journal:  Am J Epidemiol       Date:  2009-09-15       Impact factor: 4.897

6.  Concerning the consistency assumption in causal inference.

Authors:  Tyler J VanderWeele
Journal:  Epidemiology       Date:  2009-11       Impact factor: 4.822

7.  Invited commentary: positivity in practice.

Authors:  Daniel Westreich; Stephen R Cole
Journal:  Am J Epidemiol       Date:  2010-02-05       Impact factor: 4.897

8.  Identifiability, exchangeability, and epidemiological confounding.

Authors:  S Greenland; J M Robins
Journal:  Int J Epidemiol       Date:  1986-09       Impact factor: 7.196

9.  Berkson's bias, selection bias, and missing data.

Authors:  Daniel Westreich
Journal:  Epidemiology       Date:  2012-01       Impact factor: 4.822

10.  Confounding and effect modification: distribution and measure.

Authors:  T J Vander Weele
Journal:  Epidemiol Methods       Date:  2012-08-01
View more
  27 in total

1.  Imputation approaches for potential outcomes in causal inference.

Authors:  Daniel Westreich; Jessie K Edwards; Stephen R Cole; Robert W Platt; Sunni L Mumford; Enrique F Schisterman
Journal:  Int J Epidemiol       Date:  2015-07-25       Impact factor: 7.196

2.  Measurement of Current Substance Use in a Cohort of HIV-Infected Persons in Continuity HIV Care, 2007-2015.

Authors:  Catherine R Lesko; Alexander P Keil; Richard D Moore; Geetanjali Chander; Anthony T Fojo; Bryan Lau
Journal:  Am J Epidemiol       Date:  2018-09-01       Impact factor: 4.897

3.  Multiple Overimputation to Address Missing Data and Measurement Error: Application to HIV Treatment During Pregnancy and Pregnancy Outcomes.

Authors:  Angela M Bengtson; Daniel Westreich; Patrick Musonda; Audrey Pettifor; Carla Chibwesha; Benjamin H Chi; Bellington Vwalika; Brian W Pence; Jeffrey S A Stringer; William C Miller
Journal:  Epidemiology       Date:  2016-09       Impact factor: 4.822

4.  When Is a Complete-Case Approach to Missing Data Valid? The Importance of Effect-Measure Modification.

Authors:  Rachael K Ross; Alexander Breskin; Daniel Westreich
Journal:  Am J Epidemiol       Date:  2020-12-01       Impact factor: 4.897

5.  Nonparametric Bounds for the Risk Function.

Authors:  Stephen R Cole; Michael G Hudgens; Jessie K Edwards; M Alan Brookhart; David B Richardson; Daniel Westreich; Adaora A Adimora
Journal:  Am J Epidemiol       Date:  2019-04-01       Impact factor: 4.897

6.  An Illustration of Inverse Probability Weighting to Estimate Policy-Relevant Causal Effects.

Authors:  Jessie K Edwards; Stephen R Cole; Catherine R Lesko; W Christopher Mathews; Richard D Moore; Michael J Mugavero; Daniel Westreich
Journal:  Am J Epidemiol       Date:  2016-07-28       Impact factor: 4.897

7.  The Epidemiologic Toolbox: Identifying, Honing, and Using the Right Tools for the Job.

Authors:  Catherine R Lesko; Alexander P Keil; Jessie K Edwards
Journal:  Am J Epidemiol       Date:  2020-06-01       Impact factor: 4.897

8.  Sensitivity Analyses for Misclassification of Cause of Death in the Parametric G-Formula.

Authors:  Jessie K Edwards; Stephen R Cole; Richard D Moore; W Christopher Mathews; Mari Kitahata; Joseph J Eron
Journal:  Am J Epidemiol       Date:  2018-08-01       Impact factor: 4.897

9.  Invited Commentary: Causal Inference Across Space and Time-Quixotic Quest, Worthy Goal, or Both?

Authors:  Jessie K Edwards; Catherine R Lesko; Alexander P Keil
Journal:  Am J Epidemiol       Date:  2017-07-15       Impact factor: 4.897

10.  Are all biases missing data problems?

Authors:  Chanelle J Howe; Lauren E Cain; Joseph W Hogan
Journal:  Curr Epidemiol Rep       Date:  2015-07-12
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.