confounders.array {episensr} | R Documentation |
Sensitivity analysis for unmeasured confounders based on confounding imbalance among exposed and unexposed
Description
Sensitivity analysis to explore effect of residual confounding using simple algebraic transformation (array approach). It indicates the strength of an unmeasured confounder and the necessary imbalance among exposure categories to affect the observed (crude) relative risk.
Usage
confounders.array(
crude.risk,
type = c("binary", "continuous", "RD"),
bias_parms = NULL
)
Arguments
crude.risk |
Crude (apparent or observed) relative risk between the exposure and the outcome. If type 'RD', this is the crude (observed) risk difference. |
type |
Choice of implementation, for binary covariates, continuous covariates, or on risk difference scale. |
bias_parms |
Numeric vector defining the necessary bias parameters. This vector has 3 elements, in the following order:
|
Value
A list with elements:
model |
Bias analysis performed. |
bias.parms |
Input bias parameters. |
adj.measures |
Output results, with bias as a percentage: (crude.RR - risk_adj)/risk_adj * 100. |
References
Schneeweiss, S., 2006. Sensitivity analysis and external adjustment for unmeasured confounders in epidemiologic database studies of therapeutics. Pharmacoepidemiol Drug Safety 15: 291-303.
Examples
# Example from Schneeweiss, S. Sensitivity analysis and external adjustment for
# unmeasured confounders in epidemiologic database studies of therapeutics.
# Pharmacoepidemiol Drug Safety 2006; 15: 291-303.
confounders.array(crude.risk = 1.5, type = "binary",
bias_parms = c(5.5, 0.5, 0.1))
# Examples from Patorno E., Gopalakrishnan, C., Franklin, J.M., Brodovicz, K.G.,
# Masso-Gonzalez, E., Bartels, D.B., Liu, J., and Schneeweiss, S. Claims-based
# studies of oral glucose-lowering medications can achieve balance in critical
# clinical variables only observed in electronic health records 2017; 20(4): 974-
# 984.
confounders.array(crude.risk = 1.5, type = "binary",
bias_parms = c(3.25, 0.333, 0.384))
confounders.array(crude.risk = 1.5, type = "continuous",
bias_parms = c(1.009, 7.8, 7.9))
confounders.array(crude.risk = 0.05, type = "RD", bias_parms = c(0.009, 8.5, 8))