Fit gastric emptying curves with Stan
stan_gastempt(
d,
model_name = "linexp_gastro_2b",
lkj = 2,
student_df = 5L,
init_r = 0.2,
chains = 1,
iter = 2000,
...
)A list of class stan_gastempt with elements coef, fit, plot
coef is a data frame with columns:
rec Record descriptor, e.g. patient ID
v0 Initial volume at t=0
tempt Emptying time constant
kappa Parameter kappa for
model = linexp
beta Parameter beta for model = powexp
t50 Half-time of emptying
slope_t50 Slope in t50; typically in units of ml/minute
On error, coef is NULL
fit Result of class `stanfit`
plot A ggplot graph of data and prediction. Plot of raw data is
returned even when convergence was not achieved.
A data frame with columns
rec Record descriptor as grouping variable, e.g. patient ID
minute Time after meal or start of recording.
vol Volume of meal or stomach
Name of predefined model in
gastempt/exec. Use stan_model_names() to get a list
of available models.
LKJ prior for kappa/tempt correlation, only required for model linexp_gastro_2b. Values from 1.5 (strong correlation) to 50 (almost independent) are useful.
Student-t degrees of freedom for residual error; default 5. Use 3 for strong outliers; values above 10 are close to gaussian residual distribution.
for stan, default = 0.2; Stan's own default is 2, which often results in stuck chains.
for stan; default = 1
A positive integer specifying the number of iterations for each chain (including warmup). The default is 2000.
Additional parameter passed to sampling and stan
# Runs 30+ seconds on CRAN
dd = simulate_gastempt(n_records = 6, seed = 471)
d = dd$data
ret = stan_gastempt(d)
print(ret$coef)
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