cosinor()
now has a stable population mean cosinor option with appropriate confidence intervals
procedure_codes()
has the latest ICD10 codes, as of 11/2023, and are included in the package
The circadian-rhythm features have been deprecated and recurrent data features have been removed
The cosinor()
functions will be updated to be more customizable and more efficient, however will be moving to a separate package by v0.2.0
cosinor()
unable to run on certain models based on y valuescosinor_features()
allows for assessing global/special attributes of multiple component cosinor analysisggcosinor()
is now functional for single and multiple component analysisbuild_sequential_models()
, however it is in a list format and will likely be updated to be more "tidy" in the futureggpopcosinor()
can show the cosinors for individuals across a population, along with mean and predicted cosinorggcosinor()
accepts single modelsprint.cosinor()
and plot.cosinor()
functions addedcosinor_zero_amplitude()
test added, works for individual cosinor.cosinor()
now takes the argument
of for individuals. The individual cosinor methods generally work, but may not
yet be accurate.circ_compare_groups()
helps to summarize circadian data by an covariate and
time. This is visualized using ggcircadian()
. Also includes the ggforest()
to create forest plots of odds ratios. This is dependent on the circ_odds()
function to generate odds ratios by time.hardhat
package from tidymodels, cosinor()
introduced
as a new function to allow for diagnostic analysis of circadian patterns.
Although the algorithm is well known, having an implementation in R allows
potential diagnostics. This includes the ggcosinorfit()
allows for assessing
rhythmicity and confidence intervals of amplitude and acrophase of cosinor
model. Basic methods for assessing the model, such as print
, summary
,
coef
, and confint
currently function.recur_survival_table()
, which allows for redesigning longitudinal data tables
into a model appropriate for analysis. It is built to extend survival analyses.
The recur_summary_table()
function allows for reviewing the findings from
recurrent events by category to help understand event strata.circ_sun()
function allows for identifying the sunrise and sunset times
based on geographical location. This is intended to couple with the
circ_center()
function to center a time series around an event, such as
sunrise. A vignette has been added to review this data.