This short article covers the two helper functions that prepare data before the plot is drawn.
as_forest_data() to standardize a coefficient
tableas_forest_data() converts your column names into the
internal structure used by ggforestplotR. The result
contains the columns expected by ggforestplot(),
add_forest_table(), and add_split_table().
raw_coefs <- data.frame(
variable = c("Age", "BMI", "Treatment"),
beta = c(0.10, -0.08, 0.34),
lower = c(0.02, -0.16, 0.12),
upper = c(0.18, 0.00, 0.56),
display = c("Age", "BMI", "Treatment"),
section = c("Clinical", "Clinical", "Treatment"),
sample_size = c(120, 115, 98),
p_value = c(0.04, 0.15, 0.001)
)
forest_ready <- as_forest_data(
data = raw_coefs,
term = "variable",
estimate = "beta",
conf.low = "lower",
conf.high = "upper",
label = "display",
grouping = "section",
n = "sample_size",
p.value = "p_value"
)Once the data are standardized, you can pass them straight into
ggforestplot().
tidy_forest_model() for model objectsIf broom is available, tidy_forest_model()
can pull coefficient estimates and confidence limits from a fitted
model.
The returned object can be passed directly into
ggforestplot().