OR function

Causal odds ratio of a binary/continuous treatment variable

Causal odds ratio of a binary/continuous treatment variable

OR can be used to calculate the causal odds ratio of a binary/continuous treatment variable, with corresponding interval obtained using posterior simulation.

OR(x, trt, int.var = NULL, joint = TRUE, n.sim = 100, prob.lev = 0.05, length.out = NULL)

Arguments

  • x: A fitted gjrm object.
  • trt: Name of the treatment variable.
  • int.var: A vector made up of the name of the variable interacted with nm.end, and a value for it.
  • joint: If FALSE then the effect is obtained from the univariate model which neglects the presence of unobserved confounders. When TRUE, the effect is obtained from the simultaneous model which accounts for observed and unobserved confounders.
  • n.sim: Number of simulated coefficient vectors from the posterior distribution of the estimated model parameters. This is used when delta = FALSE. It may be increased if more precision is required.
  • prob.lev: Overall probability of the left and right tails of the OR distribution used for interval calculations.
  • length.out: Ddesired length of the sequence to be used when calculating the effect that a continuous treatment has on a binary outcome.

Details

OR calculates the causal odds ratio for a binary/continuous Gaussian treatment. Posterior simulation is used to obtain a confidence/credible interval.

Returns

  • prob.lev: Probability level used.

  • sim.OR: It returns a vector containing simulated values of the average OR. This is used to calculate intervals.

  • Ratios: For the case of continuous endogenous treatment and binary outcome, it returns a matrix made up of three columns containing the odds ratios for each incremental value in the endogenous variable and respective intervals.

Author(s)

Maintainer: Giampiero Marra giampiero.marra@ucl.ac.uk

See Also

GJRM-package, gjrm