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. 2012 Sep;23(5):751-61.
doi: 10.1097/EDE.0b013e31825fb7a0.

Components of the indirect effect in vaccine trials: identification of contagion and infectiousness effects

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Components of the indirect effect in vaccine trials: identification of contagion and infectiousness effects

Tyler J Vanderweele et al. Epidemiology. 2012 Sep.

Erratum in

  • Epidemiology. 2012 Nov;23(6):940

Abstract

Vaccination of one person may prevent the infection of another either because the vaccine prevents the first from being infected and from infecting the second, or because, even if the first person is infected, the vaccine may render the infection less infectious. We might refer to the first of these mechanisms as a contagion effect and the second as an infectiousness effect. In the simple setting of a randomized vaccine trial with households of size two, we use counterfactual theory under interference to provide formal definitions of a contagion effect and an unconditional infectiousness effect. Using ideas analogous to mediation analysis, we show that the indirect effect (the effect of one person's vaccine on another's outcome) can be decomposed into a contagion effect and an unconditional infectiousness effect on the risk difference, risk ratio, odds ratio, and vaccine efficacy scales. We provide identification assumptions for such contagion and unconditional infectiousness effects and describe a simple statistical technique to estimate these effects when they are identified. We also give a sensitivity analysis technique to assess how inferences would change under violations of the identification assumptions. The concepts and results of this paper are illustrated with hypothetical vaccine trial data.

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Figures

Figure
Figure
Vaccine trial in which person 1 is randomized to vaccine and person 2 does not receive the vaccine. Ai1 denotes the vaccine status of person 1; Yi1 denotes the infection status of person 1; Yi2 denotes the infection status of person 2; Ci denotes individual and household covariates for household i.

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