Literature DB >> 26576336

Are all biases missing data problems?

Chanelle J Howe1, Lauren E Cain2, Joseph W Hogan3.   

Abstract

Estimating causal effects is a frequent goal of epidemiologic studies. Traditionally, there have been three established systematic threats to consistent estimation of causal effects. These three threats are bias due to confounders, selection, and measurement error. Confounding, selection, and measurement bias have typically been characterized as distinct types of biases. However, each of these biases can also be characterized as missing data problems that can be addressed with missing data solutions. Here we describe how the aforementioned systematic threats arise from missing data as well as review methods and their related assumptions for reducing each bias type. We also link the assumptions made by the reviewed methods to the missing completely at random (MCAR) and missing at random (MAR) assumptions made in the missing data framework that allow for valid inferences to be made based on the observed, incomplete data.

Entities:  

Keywords:  Confounding bias; Measurement bias; Missing data; Selection bias

Year:  2015        PMID: 26576336      PMCID: PMC4643276          DOI: 10.1007/s40471-015-0050-8

Source DB:  PubMed          Journal:  Curr Epidemiol Rep


  63 in total

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5.  Bias formulas for sensitivity analysis of unmeasured confounding for general outcomes, treatments, and confounders.

Authors:  Tyler J Vanderweele; Onyebuchi A Arah
Journal:  Epidemiology       Date:  2011-01       Impact factor: 4.822

6.  Estimating the effect of cumulative occupational asbestos exposure on time to lung cancer mortality: using structural nested failure-time models to account for healthy-worker survivor bias.

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Journal:  Epidemiology       Date:  2014-03       Impact factor: 4.822

7.  Bias Correction Methods for Misclassified Covariates in the Cox Model: comparison offive correction methods by simulation and data analysis.

Authors:  Heejung Bang; Ya-Lin Chiu; Jay S Kaufman; Mehul D Patel; Gerardo Heiss; Kathryn M Rose
Journal:  J Stat Theory Pract       Date:  2013-01-01

8.  Comparing competing risk outcomes within principal strata, with application to studies of mother-to-child transmission of HIV.

Authors:  Dustin M Long; Michael G Hudgens
Journal:  Stat Med       Date:  2012-08-28       Impact factor: 2.373

9.  Impact of differential attrition on the association of education with cognitive change over 20 years of follow-up: the ARIC neurocognitive study.

Authors:  Rebecca F Gottesman; Andreea M Rawlings; A Richey Sharrett; Marilyn Albert; Alvaro Alonso; Karen Bandeen-Roche; Laura H Coker; Josef Coresh; David J Couper; Michael E Griswold; Gerardo Heiss; David S Knopman; Mehul D Patel; Alan D Penman; Melinda C Power; Ola A Selnes; Andrea L C Schneider; Lynne E Wagenknecht; B Gwen Windham; Lisa M Wruck; Thomas H Mosley
Journal:  Am J Epidemiol       Date:  2014-03-13       Impact factor: 4.897

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Authors:  Mark Lunt; Robert J Glynn; Kenneth J Rothman; Jerry Avorn; Til Stürmer
Journal:  Am J Epidemiol       Date:  2012-04-24       Impact factor: 4.897

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3.  Evaluating the Population Impact on Racial/Ethnic Disparities in HIV in Adulthood of Intervening on Specific Targets: A Conceptual and Methodological Framework.

Authors:  Chanelle J Howe; Akilah Dulin-Keita; Stephen R Cole; Joseph W Hogan; Bryan Lau; Richard D Moore; W Christopher Mathews; Heidi M Crane; Daniel R Drozd; Elvin Geng; Stephen L Boswell; Sonia Napravnik; Joseph J Eron; Michael J Mugavero
Journal:  Am J Epidemiol       Date:  2018-02-01       Impact factor: 5.363

4.  Statin adherence and the risk of Parkinson's disease: A population-based cohort study.

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5.  Limitations for health research with restricted data collection from UK primary care.

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  5 in total

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