Literature DB >> 27479649

Diagnostics for Confounding of Time-varying and Other Joint Exposures.

John W Jackson1.   

Abstract

The effects of joint exposures (or exposure regimes) include those of adhering to assigned treatment versus placebo in a randomized controlled trial, duration of exposure in a cohort study, interactions between exposures, and direct effects of exposure, among others. Unlike the setting of a single point exposure (e.g., propensity score matching), there are few tools to describe confounding for joint exposures or how well a method resolves it. Investigators need tools that describe confounding in ways that are conceptually grounded and intuitive for those who read, review, and use applied research to guide policy. We revisit the implications of exchangeability conditions that hold in sequentially randomized trials, and the bias structure that motivates the use of g-methods, such as marginal structural models. From these, we develop covariate balance diagnostics for joint exposures that can (1) describe time-varying confounding, (2) assess whether covariates are predicted by prior exposures given their past, the indication for g-methods, and (3) describe residual confounding after inverse probability weighting. For each diagnostic, we present time-specific metrics that encompass a wide class of joint exposures, including regimes of multivariate time-varying exposures in censored data, with multivariate point exposures as a special case. We outline how to estimate these directly or with regression and how to average them over person-time. Using a simulated example, we show how these metrics can be presented graphically. This conceptually grounded framework can potentially aid the transparent design, analysis, and reporting of studies that examine joint exposures. We provide easy-to-use tools to implement it.

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Mesh:

Year:  2016        PMID: 27479649      PMCID: PMC5308856          DOI: 10.1097/EDE.0000000000000547

Source DB:  PubMed          Journal:  Epidemiology        ISSN: 1044-3983            Impact factor:   4.822


  24 in total

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4.  SMART designs in observational studies of opioid therapy duration.

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5.  The explanatory role of stroke as a mediator of the mortality risk difference between older adults who initiate first- versus second-generation antipsychotic drugs.

Authors:  John W Jackson; Tyler J VanderWeele; Anand Viswanathan; Deborah Blacker; Sebastian Schneeweiss
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Authors:  Tyler J Vanderweele; Onyebuchi A Arah
Journal:  Epidemiology       Date:  2011-01       Impact factor: 4.822

Review 8.  A review of covariate selection for non-experimental comparative effectiveness research.

Authors:  Brian C Sauer; M Alan Brookhart; Jason Roy; Tyler VanderWeele
Journal:  Pharmacoepidemiol Drug Saf       Date:  2013-09-05       Impact factor: 2.890

9.  Constructing inverse probability weights for marginal structural models.

Authors:  Stephen R Cole; Miguel A Hernán
Journal:  Am J Epidemiol       Date:  2008-08-05       Impact factor: 4.897

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  9 in total

1.  Diagnosing Covariate Balance Across Levels of Right-Censoring Before and After Application of Inverse-Probability-of-Censoring Weights.

Authors:  John W Jackson
Journal:  Am J Epidemiol       Date:  2019-12-31       Impact factor: 4.897

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Authors:  Erin M Schnellinger; Linda Valeri; John W Jackson
Journal:  Am J Epidemiol       Date:  2020-12-01       Impact factor: 4.897

Review 3.  Causal inference and longitudinal data: a case study of religion and mental health.

Authors:  Tyler J VanderWeele; John W Jackson; Shanshan Li
Journal:  Soc Psychiatry Psychiatr Epidemiol       Date:  2016-09-08       Impact factor: 4.328

4.  Methodological Challenges and Proposed Solutions for Evaluating Opioid Policy Effectiveness.

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5.  Association of age with the timing of acute spine surgery-effects on neurological outcome after traumatic spinal cord injury.

Authors:  Tom Lübstorf; Marcel A Kopp; Christian Blex; Jan M Schwab; Ulrike Grittner; Thomas Auhuber; Axel Ekkernkamp; Andreas Niedeggen; Erik Prillip; Magdalena Hoppe; Johanna Ludwig; Martin Kreutzträger; Thomas Liebscher
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Review 6.  The state of the science in opioid policy research.

Authors:  Megan S Schuler; Sara E Heins; Rosanna Smart; Beth Ann Griffin; David Powell; Elizabeth A Stuart; Bryce Pardo; Sierra Smucker; Stephen W Patrick; Rosalie Liccardo Pacula; Bradley D Stein
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7.  Using computable knowledge mined from the literature to elucidate confounders for EHR-based pharmacovigilance.

Authors:  Scott A Malec; Peng Wei; Elmer V Bernstam; Richard D Boyce; Trevor Cohen
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8.  Propensity Scores in Pharmacoepidemiology: Beyond the Horizon.

Authors:  John W Jackson; Ian Schmid; Elizabeth A Stuart
Journal:  Curr Epidemiol Rep       Date:  2017-11-06

9.  Survival Bias in Mendelian Randomization Studies: A Threat to Causal Inference.

Authors:  Roelof A J Smit; Stella Trompet; Olaf M Dekkers; J Wouter Jukema; Saskia le Cessie
Journal:  Epidemiology       Date:  2019-11       Impact factor: 4.822

  9 in total

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