| Title: | Nonparametric Bounds for the Average Causal Effect Due to Balke and Pearl and Extensions | 
| Version: | 0.1.6 | 
| Description: | Implementation of the nonparametric bounds for the average causal effect under an instrumental variable model by Balke and Pearl (Bounds on Treatment Effects from Studies with Imperfect Compliance, JASA, 1997, 92, 439, 1171-1176, <doi:10.2307/2965583>). The package can calculate bounds for a binary outcome, a binary treatment/phenotype, and an instrument with either 2 or 3 categories. The package implements bounds for situations where these 3 variables are measured in the same dataset (trivariate data) or where the outcome and instrument are measured in one study and the treatment/phenotype and instrument are measured in another study (bivariate data). | 
| License: | GPL-3 | 
| URL: | https://github.com/remlapmot/bpbounds, https://remlapmot.github.io/bpbounds/ | 
| BugReports: | https://github.com/remlapmot/bpbounds/issues | 
| Depends: | R (≥ 4.0.0) | 
| Suggests: | dplyr, knitr, rmarkdown, shiny, testthat, tidyr | 
| VignetteBuilder: | knitr | 
| Encoding: | UTF-8 | 
| RoxygenNote: | 7.3.1 | 
| NeedsCompilation: | no | 
| Packaged: | 2024-06-13 15:00:32 UTC; eptmp | 
| Author: | Tom Palmer | 
| Maintainer: | Tom Palmer <remlapmot@hotmail.com> | 
| Repository: | CRAN | 
| Date/Publication: | 2024-06-13 15:20:07 UTC | 
bpbounds: Nonparametric Bounds for the Average Causal Effect Due to Balke and Pearl and Extensions
Description
Implementation of the nonparametric bounds for the average causal effect under an instrumental variable model by Balke and Pearl (Bounds on Treatment Effects from Studies with Imperfect Compliance, JASA, 1997, 92, 439, 1171-1176, doi:10.2307/2965583). The package can calculate bounds for a binary outcome, a binary treatment/phenotype, and an instrument with either 2 or 3 categories. The package implements bounds for situations where these 3 variables are measured in the same dataset (trivariate data) or where the outcome and instrument are measured in one study and the treatment/phenotype and instrument are measured in another study (bivariate data).
Author(s)
Maintainer: Tom Palmer remlapmot@hotmail.com (ORCID)
Authors:
See Also
Useful links:
- Report bugs at https://github.com/remlapmot/bpbounds/issues 
Nonparametric Bounds for the Average Causal Effect due to Balke and Pearl.
Description
Nonparametric Bounds for the Average Causal Effect due to Balke and Pearl.
Usage
bpbounds(p, t = NULL, fmt = "trivariate")
Arguments
| p | Object of class "table" containing either cell counts or conditional probabilities. For trivariate data these are for the phenotype/treatment-outcome association given Z, i.e. P(X, Y | Z). Cell counts could be generated from  If you only know the conditional probabilities you can enter these, e.g. for the Balke and Pearl Vitamin A example: cp   <- c(.0064, 0, .9936, 0, .0028, .001, .1972, .799)
tabp <- as.table(array(
  cp,
  dim = c(2, 2, 2),
  dimnames = list(
    x = c(0, 1),
    y = c(0, 1),
    z = c(0, 1)
  )
))
And then call  For bivariate data this object contains cell conditional probabilities for the outcome-instrument (Y|Z) association. | 
| t | Specified for bivariate data. Object with treatment/phenotype-instrument cell counts or conditional probabilities, i.e. (X|Z). | 
| fmt | A character string which sould be either "bivariate" (i.e. X, Z in one dataset and Y, Z in another dataset) or "trivariate" (X, Y, Z in the same dataset). | 
Value
List with the following elements:
- fmt
- whether the data is bivariate or trivariate 
- nzcats
- 2 or 3, the no. instrument categories 
- inequality
- Logical, indicating whether the IV inquality is satisfied 
- bplb
- Lower bound of ACE 
- bpub
- Upper bound of ACE 
- bplower
- Vector of lower bound probabilities 
- bpupper
- Vector of upper bound probabilities 
- p11low
- Lower bound of P(Y=1|do(X=1)) 
- p11upp
- Upper bound of P(Y=1|do(X=1)) 
- p10low
- Lower bound of P(Y=1|do(X=0)) 
- p10upp
- Upper bound of P(Y=1|do(X=0)) 
- p11lower
- Vector of probabilities for lower bound of P(Y=1|do(X=1)) 
- p11upper
- Vector of probabilities for upper bound of P(Y=1|do(X=1)) 
- p10lower
- Vector of probabilities for lower bound of P(Y=1|do(X=0)) 
- p10upper
- Vector of probabilities for upper bound of P(Y=1|do(X=0)) 
- crrlb
- Lower bound of CRR 
- crrub
- Upper bound of CRR 
- monoinequality
- Logical, indicating whether the monoticity inequality is satisfied 
- monobplb
- Lower bound of ACE assuming monotonicity 
- monobpub
- Upper bound of ACE assuming monotonicity 
- monobplower
- Vector of probabilities for lower bound of ACE assuming monotonicity 
- monobpupper
- Vector of probabilities for upper bound of ACE assuming monotonicity 
- monop11low
- Lower bound of P(Y=1|do(X=1)) assuming monotonicity 
- monop11upp
- Upper bound of P(Y=1|do(X=1)) assuming monotonicity 
- monop10low
- Lower bound of P(Y=1|do(X=0)) assuming monotonicity 
- monop10upp
- Upper bound of P(Y=1|do(X=0)) assuming monotonicity 
- monop11lower
- Vector for corresponding bound above 
- monop11upper
- Vector for corresponding bound above 
- monop10lower
- Vector for corresponding bound above 
- monop10upper
- Vector for corresponding bound above 
- monocrrlb
- Lower bound of CRR assuming monotonicity 
- monocrrub
- Upper bound of CRR assuming monotonicity 
Examples
# Vitamin A example, using cell counts
require(tidyr)
require(bpbounds)
tab1dat <- data.frame(
  z = c(0, 0, 1, 1, 1, 1, 0, 0),
  x = c(0, 0, 0, 0, 1, 1, 1, 1),
  y = c(0, 1, 0, 1, 0, 1, 0, 1),
  freq = c(74, 11514, 34, 2385, 12, 9663, 0, 0)
)
tab1inddat <- uncount(tab1dat, freq)
xt         <- xtabs(~ x + y + z, data = tab1inddat)
p          <- prop.table(xt, margin = 3)
bpres      <- bpbounds(p)
sbpres     <- summary(bpres)
print(sbpres)
# Vitamin A example, using conditional probabilities
require(bpbounds)
cp = c(.0064, 0, .9936, 0, .0028, .001, .1972, .799)
tabp = as.table(array(
  cp,
  dim = c(2, 2, 2),
  dimnames = list(
    x = c(0, 1),
    y = c(0, 1),
    z = c(0, 1)
  )
))
bpbounds(tabp)
Run Shiny App demonstrating the package
Description
Run Shiny App demonstrating the package
Usage
runExample(...)
Arguments
| ... | passed to  | 
Examples
if (interactive() && requireNamespace("shiny", quietly = TRUE)) {
  bpbounds::runExample()
}