multinma 0.7.2
- Fix: Predictions for non-proportional hazards IPD NMA or ML-NMR
survival models using
aux_regression = ~.trt
were
incorrectly omitting the treatment effects on the auxiliary parameter(s)
in some cases (#43).
- Fix: Calling
marginal_effects()
for survival outcomes
with a single target population previously gave an error.
- Fix: Predictions from exponential models where
aux_regression
had been specified were giving an error
(#44). aux_regression
and aux_by
have no
effect for exponential models since there are no auxiliary (shape)
parameters and are ignored, now with a warning.
- Fix: Avoid an error when trying to fit M-spline models combining IPD
and AgD in R versions prior to 4.1.0, due to integer coercion of factors
by
c()
.
multinma 0.7.1
- Fix: Producing survival/hazard/cumulative hazard predictions for
survival models with
predict()
outside of a
plot()
call no longer gives an error (#40).
- Fix: Increased StanHeaders version requirement to version 2.32.9 or
later, to avoid CRAN sanitizer warnings (caused by
stan-dev/rstan#1111).
multinma 0.7.0
- Feature: The new
marginal_effects()
function produces
marginal treatment effects, as a wrapper around absolute predictions
from predict()
. For example, for an analysis with a binary
outcome marginal odds ratios, risk ratios, or risk differences may be
produced. For survival outcomes, marginal effects may be based on the
full range of predictions produced by predict()
, such as
marginal differences in restricted mean survival times, or time-varying
marginal hazard ratios.
- Feature: Progress bars are now displayed when running interactively
for calculations with
predict()
or
marginal_effects()
from ML-NMR models that may take longer
to run. These can be controlled with the new progress
argument.
- Deprecation: The
trt_ref
argument to
predict()
has been renamed to baseline_ref
;
using trt_ref
is now soft-deprecated. Renaming this
argument baseline_ref
follows the naming convention for the
other arguments (baseline_type
,
baseline_level
) that specify the details of a provided
baseline
distribution. This also makes way for the new
marginal_effects()
functionality.
- Fix: Fallback formatting used by print methods when the crayon
package is not installed now works properly, rather than giving
errors.
- Fix: Small bug caused
predict()
for AgD meta-regression
models with new data and baseline_type = "response"
to fail
with an error.
- Fix: The number of studies on a contrast in a network plot
plot.nma_data()
with weight_edges = TRUE
was
incorrect when a study had multiple arms of the same treatment. This now
correctly counts the number of studies making a comparison, rather than
the number of arms.
multinma 0.6.1
- Fix: Piecewise exponential hazard models no longer give errors
during set-up. Calculation of RW1 prior weights needed to be handled as
a special case.
multinma 0.6.0
Feature:
Survival/time-to-event models are now supported
set_ipd()
now has a Surv
argument for
specifying survival outcomes using survival::Surv()
, and a
new function set_agd_surv()
sets up aggregate data in the
form of event/censoring times (e.g. from digitized Kaplan-Meier curves)
and overall covariate summaries.
- Left, right, and interval censoring as well as left truncation
(delayed entry) are all supported.
- The available likelihoods are Exponential (PH and AFT forms),
Weibull (PH and AFT forms), Gompertz, log-Normal, log-Logistic, Gamma,
Generalised Gamma, flexible M-splines on the baseline hazard, and
piecewise exponential hazards.
- Auxiliary parameters (e.g. shapes, spline coefficients) are always
stratified by study to respect randomisation, and may be further
stratified by treatment (e.g. to relax the proportional hazards
assumption) and/or by additional factors using the
aux_by
argument to nma()
.
- A regression model may be defined for the auxiliary parameters using
the
aux_regression
argument to nma()
, allowing
non-proportionality to be modelled by treatment and/or covariate effects
on the shapes or spline coefficients.
- The
predict()
method produces estimates of survival
probabilities, hazards, cumulative hazards, mean survival times,
restricted mean survival times, quantiles of the survival time
distribution, and median survival times. All of these predictions can be
plotted using the plot()
method.
- The
geom_km()
function assists in plotting Kaplan-Meier
curves from a network object, for example to overlay these on estimated
survival curves. The transform
argument can be used to
produce log-log plots for assessing the proportional hazards assumption,
along with cumulative hazards or log survival curves.
- A new vignette demonstrates ML-NMR survival analysis with an example
of progression-free survival after autologous stem cell transplant for
newly diagnosed multiple myeloma, with corresponding datasets
ndmm_ipd
, ndmm_agd
, and
ndmm_agd_covs
.
Feature:
Automatic checking of numerical integration for ML-NMR models
- The accuracy of numerical integration for ML-NMR models can now be
checked automatically, and is by default. To do so, half of the chains
are run with
n_int
and half with n_int/2
integration points. Any Rhat or effective sample size warnings can then
be ascribed to either: non-convergence of the MCMC chains, requiring
increased number of iterations iter
in nma()
,
or; insufficient accuracy of numerical integration, requiring increased
number of integration points n_int
in
add_integration()
. Descriptive warning messages indicate
which is the case.
- This feature is controlled by a new
int_check
argument
to nma()
, which is enabled (TRUE
) by
default.
- Saving thinned cumulative integration points can now be disabled
with
int_thin = 0
, and is now disabled by default. The
previous default was int_thin = max(n_int %/% 10, 1)
.
- Because we can now check sufficient accuracy automatically, the
default number of integration points
n_int
in
add_integration()
has been lowered to 64. This is still a
conservative choice, and will be sufficient in many cases; the previous
default of 1000 was excessive.
- As a result, ML-NMR models are now much faster to run by default,
both due to lower
n_int
and disabling saving cumulative
integration points.
Other updates
- Feature:
dic()
now includes an option to use the pV
penalty instead of pD.
- Feature: The
baseline
and aux
arguments to
predict()
can now be specified as the name of a study in
the network, to use the parameter estimates from that study for
prediction.
- Improvement:
predict()
will now produce aggregate-level
predictions over a sample of individuals in newdata
for
ML-NMR models (previously newdata
had to include
integration points).
- Improvement: Compatibility with future rstan versions (PR #25).
- Improvement: Added a
plot.mcmc_array()
method, as a
shortcut for plot(summary(x), ...)
.
- Fix: In
plot.nma_data()
, using a custom
layout
that is not a string (e.g. a data frame of layout
coordinates) now works as expected when nudge > 0
.
- Fix: Documentation corrections (PR #24).
- Fix: Added missing
as.tibble.stan_nma()
and
as_tibble.stan_nma()
methods, to complement the existing
as.data.frame.stan_nma()
.
- Fix: Bug in ordered multinomial models where data in studies with
missing categories could be assigned the wrong category (#28).
multinma 0.5.1
- Fix: Now compatible with latest StanHeaders v2.26.25 (fixes
#23)
- Fix: Dealt with various tidyverse deprecations
- Fix: Updated TSD URLs again (thanks to @ndunnewind)
multinma 0.5.0
- Feature: Treatment labels in network plots can now be nudged away
from the nodes when
weight_nodes = TRUE
, using the new
nudge
argument to plot.nma_data()
(#15).
- Feature: The data frame returned by calling
as_tibble()
or as.data.frame()
on an nma_summary
object
(such as relative effects or predictions) now includes columns for the
corresponding treatment (.trt
) or contrast
(.trta
and .trtb
), and a
.category
column may be included for multinomial models.
Previously these details were only present as part of the
parameter
column
- Feature: Added log t prior distribution
log_student_t()
, which can be used for positive-valued
parameters (e.g. heterogeneity variance).
- Improvement:
set_agd_contrast()
now produces an
informative error message when the covariance matrix implied by the
se
column is not positive definite. Previously this was
only checked by Stan after calling the nma()
function.
- Improvement: Updated plaque psoriasis ML-NMR vignette to include new
analyses, including assessing the assumptions of population adjustment
and synthesising multinomial outcomes.
- Improvement: Improved behaviour of the
.trtclass
special in regression formulas, now main effects of
.trtclass
are always removed since these are collinear with
.trt
. This allows expansion of interactions with
*
to work properly, e.g. ~variable*.trtclass
,
whereas previously this resulted in an over-parametrised model.
- Fix: CRAN check note for manual HTML5 compatibility.
- Fix: Residual deviance and log likelihood parameters are now named
correctly when only contrast-based aggregate data is present (PR
#19).
multinma 0.4.2
- Fix: Error in
get_nodesplits()
when studies have
multiple arms of the same treatment.
- Fix:
print.nma_data()
now prints the repeated arms when
studies have multiple arms of the same treatment.
- Fix: CRAN warning regarding invalid img tag height attribute in
documentation.
multinma 0.4.1
- Fix: tidyr v1.2.0 breaks ordered multinomial models when some
studies do not report all categories (i.e. some multinomial category
outcomes are
NA
in multi()
) (PR #11)
multinma 0.4.0
- Feature: Node-splitting models for assessing inconsistency are now
available with
consistency = "nodesplit"
in
nma()
. Comparisons to split can be chosen using the
nodesplit
argument, by default all possibly inconsistent
comparisons are chosen using get_nodesplits()
.
Node-splitting results can be summarised with
summary.nma_nodesplit()
and plotted with
plot.nodesplit_summary()
.
- Feature: The correlation matrix for generating integration points
with
add_integration()
for ML-NMR models is now adjusted to
the underlying Gaussian copula, so that the output correlations of the
integration points better match the requested input correlations. A new
argument cor_adjust
controls this behaviour, with options
"spearman"
, "pearson"
, or "none"
.
Although these correlations typically have little impact on the results,
for strict reproducibility the old behaviour from version 0.3.0 and
below is available with cor_adjust = "legacy"
.
- Feature: For random effects models, the predictive distribution of
relative/absolute effects in a new study can now be obtained in
relative_effects()
and predict.stan_nma()
respectively, using the new argument
predictive_distribution = TRUE
.
- Feature: Added option to calculate SUCRA values when summarising the
posterior treatment ranks with
posterior_ranks()
or
posterior_rank_probs()
, when argument
sucra = TRUE
.
- Improvement: Factor order is now respected when
trt
,
study
, or trt_class
are factors, previously
the order of levels was reset into natural sort order.
- Improvement: Update package website to Bootstrap 5 with release of
pkgdown 2.0.0
- Fix: Model fitting is now robust to non-default settings of
options("contrasts")
.
- Fix:
plot.nma_data()
no longer gives a ggplot
deprecation warning (PR #6).
- Fix: Bug in
predict.stan_nma()
with a single covariate
when newdata
is a data.frame
(PR #7).
- Fix: Attempting to call
predict.stan_nma()
on a
regression model with only contrast data and no newdata
or
baseline
specified now throws a descriptive error
message.
multinma 0.3.0
- Feature: Added
baseline_type
and
baseline_level
arguments to
predict.stan_nma()
, which allow baseline distributions to
be specified on the response or linear predictor scale, and at the
individual or aggregate level.
- Feature: The
baseline
argument to
predict.stan_nma()
can now accept a (named) list of
baseline distributions if newdata
contains multiple
studies.
- Improvement: Misspecified
newdata
arguments to
functions like relative_effects()
and
predict.stan_nma()
now give more informative error
messages.
- Fix: Constructing models with contrast-based data previously gave
errors in some scenarios (ML-NMR models, UME models, and in some cases
AgD meta-regression models).
- Fix: Ensure CRAN additional checks with
--run-donttest
run correctly.
multinma 0.2.1
- Fix: Producing relative effect estimates for all contrasts using
relative_effects()
with all_contrasts = TRUE
no longer gives an error for regression models.
- Fix: Specifying the covariate correlation matrix
cor
in
add_integration()
is not required when only one covariate
is present.
- Improvement: Added more detailed documentation on the likelihoods
and link functions available for each data type (
likelihood
and link
arguments in nma()
).
multinma 0.2.0
- Feature: The
set_*()
functions now accept
dplyr::mutate()
style semantics, allowing inline variable
transformations.
- Feature: Added ordered multinomial models, with helper function
multi()
for specifying the outcomes. Accompanied by a new
data set hta_psoriasis
and vignette.
- Feature: Implicit flat priors can now be specified, on any
parameter, using
flat()
.
- Improvement:
as.array.stan_nma()
is now much more
efficient, meaning that many post-estimation functions are also now much
more efficient.
- Improvement:
plot.nma_dic()
is now more efficient,
particularly with large numbers of data points.
- Improvement: The layering of points when producing “dev-dev” plots
using
plot.nma_dic()
with multiple data types has been
reversed for improved clarity (now AgD over the top of IPD).
- Improvement: Aggregate-level predictions with
predict()
from ML-NMR / IPD regression models are now calculated in a much more
memory-efficient manner.
- Improvement: Added an overview of examples given in the
vignettes.
- Improvement: Network plots with
weight_edges = TRUE
no
longer produce legends with non-integer values for the number of
studies.
- Fix:
plot.nma_dic()
no longer gives an error when
attempting to specify .width
argument when producing
“dev-dev” plots.
multinma 0.1.3
- Format DESCRIPTION to CRAN requirements
multinma 0.1.2
- Wrapped long-running examples in
\donttest{}
instead of
\dontrun{}
multinma 0.1.1
- Reduced size of vignettes
- Added methods paper reference to DESCRIPTION
- Added zenodo DOI
multinma 0.1.0
- Feature: Network plots, using a
plot()
method for
nma_data
objects.
- Feature:
as.igraph()
, as_tbl_graph()
methods for nma_data
objects.
- Feature: Produce relative effect estimates with
relative_effects()
, posterior ranks with
posterior_ranks()
, and posterior rank probabilities with
posterior_rank_probs()
. These will be study-specific when a
regression model is given.
- Feature: Produce predictions of absolute effects with a
predict()
method for stan_nma
objects.
- Feature: Plots of relative effects, ranks, predictions, and
parameter estimates via
plot.nma_summary()
.
- Feature: Optional
sample_size
argument for
set_agd_*()
that:
- Enables centering of predictors (
center = TRUE
) in
nma()
when a regression model is given, replacing the
agd_sample_size
argument of nma()
- Enables production of study-specific relative effects, rank
probabilities, etc. for studies in the network when a regression model
is given
- Allows nodes in network plots to be weighted by sample size
- Feature: Plots of residual deviance contributions for a model and
“dev-dev” plots comparing residual deviance contributions between two
models, using a
plot()
method for nma_dic
objects produced by dic()
.
- Feature: Complementary log-log (cloglog) link function
link = "cloglog"
for binomial likelihoods.
- Feature: Option to specify priors for heterogeneity on the standard
deviation, variance, or precision, with argument
prior_het_type
.
- Feature: Added log-Normal prior distribution.
- Feature: Plots of prior distributions vs. posterior distributions
with
plot_prior_posterior()
.
- Feature: Pairs plot method
pairs()
.
- Feature: Added vignettes with example analyses from the NICE TSDs
and more.
- Fix: Random effects models with even moderate numbers of studies
could be very slow. These now run much more quickly, using a sparse
representation of the RE correlation matrix which is automatically
enabled for sparsity above 90% (roughly equivalent to 10 or more
studies).
multinma 0.0.1