getRhythmStats | R Documentation |
This function uses stats::optim()
to compute various properties of
fitted curves with respect to time, potentially in each condition and for
each posterior sample, and adjusting for any covariates.
getRhythmStats(
fit,
fitType = c("posterior_mean", "posterior_samples", "raw"),
features = NULL,
dopar = TRUE,
rms = FALSE
)
fit |
A |
fitType |
String indicating which fitted models to use to compute the
rhythmic statistics. A typical analysis using |
features |
Vector of names, row numbers, or logical values for
subsetting the features. |
dopar |
Logical indicating whether to run calculations in parallel if
a parallel backend is already set up, e.g., using
|
rms |
Logical indicating whether to calculate |
A data.table
containing the following rhythm statistics:
peak_phase
: time between 0 and fit$period
at which the peak or maximum
value occurs
peak_value
trough_phase
: time between 0 and fit$period
at which the trough or
minimum value occurs
trough_value
peak_trough_amp
: peak_value - trough_value
rms_amp
: root mean square difference between fitted curve and mean value
between time 0 and fit$period
(only calculated if rms
is TRUE
)
mesor
: mean value between time 0 and fit$period
The rows of the data.table
depend on the fit
object and fitType
:
fit
contains data from one condition and fitType
is posterior_mean' or
'raw': one row per feature.
fit
contains data from one condition and fitType
is
'posterior_samples': one row per feature per posterior sample.
fit
contains data from multiple conditions and fitType
is
'posterior_mean' or 'raw': one row per feature per condition.
fit
contains data from multiple conditions and fitType
is
'posterior_samples': one row per feature per condition per posterior
sample.
getModelFit()
, getPosteriorFit()
, getPosteriorSamples()
,
getDiffRhythmStats()
, getStatsIntervals()
library('data.table')
# rhythmicity in one condition
y = GSE54650$y
metadata = GSE54650$metadata
fit = getModelFit(y, metadata)
fit = getPosteriorFit(fit)
rhyStats = getRhythmStats(fit, features = c('13170', '13869'))
# rhythmicity and differential rhythmicity in multiple conditions
y = GSE34018$y
metadata = GSE34018$metadata
fit = getModelFit(y, metadata, nKnots = 3L, condColname = 'cond')
fit = getPosteriorFit(fit)
rhyStats = getRhythmStats(fit, features = c('13170', '12686'))
diffRhyStats = getDiffRhythmStats(fit, rhyStats)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.