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      Controlling Time-Dependent Confounding by Health Status and Frailty: Restriction Versus Statistical Adjustment.

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          Abstract

          Nonexperimental studies of preventive interventions are often biased because of the healthy-user effect and, in frail populations, because of confounding by functional status. Bias is evident when estimating influenza vaccine effectiveness, even after adjustment for claims-based indicators of illness. We explored bias reduction methods while estimating vaccine effectiveness in a cohort of adult hemodialysis patients. Using the United States Renal Data System and linked data from a commercial dialysis provider, we estimated vaccine effectiveness using a Cox proportional hazards marginal structural model of all-cause mortality before and during 3 influenza seasons in 2005/2006 through 2007/2008. To improve confounding control, we added frailty indicators to the model, measured time-varying confounders at different time intervals, and restricted the sample in multiple ways. Crude and baseline-adjusted marginal structural models remained strongly biased. Restricting to a healthier population removed some unmeasured confounding; however, this reduced the sample size, resulting in wide confidence intervals. We estimated an influenza vaccine effectiveness of 9% (hazard ratio = 0.91, 95% confidence interval: 0.72, 1.15) when bias was minimized through cohort restriction. In this study, the healthy-user bias could not be controlled through statistical adjustment; however, sample restriction reduced much of the bias.

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          Author and article information

          Journal
          Am. J. Epidemiol.
          American journal of epidemiology
          Oxford University Press (OUP)
          1476-6256
          0002-9262
          Jul 01 2015
          : 182
          : 1
          Article
          kwu485
          10.1093/aje/kwu485
          4479111
          25868551
          2d79c387-338b-47fc-b1fc-7cb106f2e64c
          History

          bias (epidemiology),confounding factors (epidemiology),influenza vaccines,renal dialysis

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