Function to estimate seroincidences based on cross-sectional serology data and longitudinal response model.
est.incidence.by(
pop_data,
curve_params,
noise_params,
strata,
curve_strata_varnames = strata,
noise_strata_varnames = strata,
antigen_isos = pop_data %>% pull("antigen_iso") %>% unique(),
lambda_start = 0.1,
build_graph = FALSE,
num_cores = 1L,
verbose = FALSE,
print_graph = FALSE,
...
)
if strata
has meaningful inputs:
An object of class "seroincidence.by"
; i.e., a list of
"seroincidence"
objects from est.incidence()
, one for each stratum,
with some meta-data attributes.
if strata
is missing, NULL
, NA
, or ""
:
An object of class "seroincidence"
.
a data.frame with cross-sectional serology data per
antibody and age, and additional columns corresponding to
each element of the strata
input
a data.frame()
containing MCMC samples of parameters
from the Bayesian posterior distribution of a longitudinal decay curve model.
The parameter columns must be named:
antigen_iso
: a character()
vector indicating antigen-isotype
combinations
iter
: an integer()
vector indicating MCMC sampling iterations
y0
: baseline antibody level at $t=0$ ($y(t=0)$)
y1
: antibody peak level (ELISA units)
t1
: duration of infection
alpha
: antibody decay rate
(1/days for the current longitudinal parameter sets)
r
: shape factor of antibody decay
a data.frame()
(or tibble::tibble()
)
containing the following variables,
specifying noise parameters for each antigen isotype:
antigen_iso
: antigen isotype whose noise parameters are being specified
on each row
nu
: biological noise
eps
: measurement noise
y.low
: lower limit of detection for the current antigen isotype
y.high
: upper limit of detection for the current antigen isotype
a character vector of stratum-defining variables.
Values must be variable names in pop_data
.
A subset of strata
.
Values must be variable names in curve_params
. Default = "".
A subset of strata
.
Values must be variable names in noise_params
. Default = "".
Character vector with one or more antibody names. Values must match pop_data
starting guess for incidence rate, in years/event.
whether to graph the log-likelihood function across a range of incidence rates (lambda values)
Number of processor cores to use for calculations when computing by strata. If set to more than 1 and package parallel is available, then the computations are executed in parallel. Default = 1L.
logical: if TRUE, print verbose log information to console
whether to display the log-likelihood curve graph in the course of running est.incidence()
Arguments passed on to est.incidence
, stats::nlm
stepmin
A positive scalar providing the minimum allowable relative step length.
stepmax
a positive scalar which gives the maximum allowable
scaled step length. stepmax
is used to prevent steps which
would cause the optimization function to overflow, to prevent the
algorithm from leaving the area of interest in parameter space, or to
detect divergence in the algorithm. stepmax
would be chosen
small enough to prevent the first two of these occurrences, but should
be larger than any anticipated reasonable step.
typsize
an estimate of the size of each parameter at the minimum.
fscale
an estimate of the size of f
at the minimum.
ndigit
the number of significant digits in the function f
.
gradtol
a positive scalar giving the tolerance at which the
scaled gradient is considered close enough to zero to
terminate the algorithm. The scaled gradient is a
measure of the relative change in f
in each direction
p[i]
divided by the relative change in p[i]
.
iterlim
a positive integer specifying the maximum number of iterations to be performed before the program is terminated.
check.analyticals
a logical scalar specifying whether the analytic gradients and Hessians, if they are supplied, should be checked against numerical derivatives at the initial parameter values. This can help detect incorrectly formulated gradients or Hessians.
If strata
is left empty, a warning will be produced,
recommending that you use est.incidence()
for unstratified analyses,
and then the data will be passed to est.incidence()
.
If for some reason you want to use est.incidence.by()
with no strata instead of calling est.incidence()
,
you may use NA
, NULL
, or ""
as the strata
argument to avoid that warning.
library(dplyr)
xs_data <-
sees_pop_data_pk_100
curve <-
typhoid_curves_nostrat_100 %>%
filter(antigen_iso %in% c("HlyE_IgA", "HlyE_IgG"))
noise <-
example_noise_params_pk
est2 <- est.incidence.by(
strata = c("catchment"),
pop_data = xs_data,
curve_params = curve,
noise_params = noise,
antigen_isos = c("HlyE_IgG", "HlyE_IgA"),
# num_cores = 8 # Allow for parallel processing to decrease run time
iterlim = 5 # limit iterations for the purpose of this example
)
summary(est2)
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