The mr_forest
function draws a forest plot of causal estimates. The default option plots the variant-specific causal estimates (by/bx
) and the estimate from the mr_ivw
function using default settings (assuming variants are uncorrelated, random-effects for 4+ variants). Options allow users to plot estimates from a variety of different methods.
mr_forest(
object,
alpha = 0.05,
snp_estimates = TRUE,
methods = "ivw",
ordered = FALSE
)# S4 method for MRInput
mr_forest(
object,
alpha = 0.05,
snp_estimates = TRUE,
methods = "ivw",
ordered = FALSE
)
An MRInput
object.
The significance level used to calculate the confidence intervals. The default value is 0.05, corresponding to 95% confidence intervals.
Whether to plot the variant-specific estimates. Defaults to TRUE
.
Takes a string of computation methods used to calculate estimates. Defaults to "ivw"
. Options are: "median"
(simple median estimate), "wmedian"
(weighted median estimate), "egger"
(MR-Egger estimate), "mbe"
(mode-based estimate), "conmix"
(contamination mixture estimate), and "maxlik"
(maximum likelihood estimate).
Determines by whether to arrange the variant-specific estimates in ascending order. Defaults to FALSE
.
As the function produces a ggplot
object, graphical parameters can be changed by adding commands from the ggplot2
package.
mr_forest(mr_input(bx = ldlc, bxse = ldlcse, by = chdlodds, byse = chdloddsse),
alpha = 0.01, ordered = TRUE)
mr_forest(mr_input(bx = ldlc, bxse = ldlcse, by = chdlodds, byse = chdloddsse),
methods = c("ivw", "wmedian", "egger"), snp_estimates = FALSE)
forest = mr_forest(mr_input(bx = ldlc, bxse = ldlcse, by = chdlodds, byse = chdloddsse))
# how to change x-axis limits
# library(ggplot2)
# forest2 = forest + coord_cartesian(xlim=c(-5,5))
# forest2
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