rnmamod, version 0.3.0
(2022-11-01)
- Function baseline_model:
- processes the elements in the argument base_risk for a
fixed, random or predicted baseline model and passes the output to
run_model or run_metareg to obtain the absolute risks for all
interventions.
- when a predicted baseline model is conducted, it returns a forest
plot with the trial-specific and summary probability of an event for the
selected reference intervention.
- Function forestplot_metareg:
- upgraded plot that presents two forest plots side-by-side: (i) one
on estimation and prediction from network meta-analysis and network
meta-regression for a selected comparator intervention (allows
comparison of these two analyses), and (ii) one on SUCRA values from
both analyses. Both forest plots present results from network
meta-regression for a selected value of the investigated covariate.
- Function league_table_absolute_user:
- (only for binary outcome) yields the same graph with
league_table_absolute, but the input is not rnmamod object: the
user defines the input and it includes the summary effect and
corresponding (credible or confidence) interval for comparisons with a
reference intervention. These results stem from a network meta-analysis
conducted using another R-package or statistical software.
- Function robustness_index_user:
- calculates the robustness index for a sensitivity analysis performed
using the R-package netmeta or metafor. The user
defines the input and the function returns the robustness index. This
function returns the same output with the
robustness_index function.
- Function trans_quality:
- classifies a systematic review with multiple interventions as having
low, unclear or high quality regarding the transitivity evaluation based
on five quality criteria.
rnmamod, version 0.2.0
(2022-04-06)
- Typos and links (for functions and packages) in the documentation
are corrected.
- Function run_model:
- allows the user to define the reference intervention of the network
via the argument ref;
- (only for binary outcome) estimates the absolute risks for all
non-reference interventions using a selected baseline risk for the
reference intervention (argument base_risk);
- (only for binary outcome) estimates the relative risks and risk
difference as functions of the estimated absolute risks.
- Function league_table_absolute:
- (only for binary outcome) it presents the absolute risks per 1000
participants in main diagonal, the odds ratio on the upper
off-diagonals, and the risk difference per 1000 participants in the
lower off-diagonals;
- allow the user to select the interventions to present via the
argument show (ideal for very large networks that make the
league table cluttered).
- Functions league_heatmap and
league_heatmap_pred:
- allow the user to select the interventions to present via the
argument show (ideal for very large networks that make the
league table cluttered);
- allow the user to illustrate the results of two outcomes for the
same model (i.e. via run_model or run_metareg) or the results of two
models on the same outcome (applicable for: (i) run_model versus
run_metareg, and (ii) run_model versus run_series_meta).
- Functions series_meta_plot and
nodesplit_plot:
- present the extent of heterogeneity in the forest plot of tau using
different colours for low, reasonable, fairly high, and fairly extreme
tau (the classification has been suggested by Spiegelhalter et al.,
2004; ISBN 0471499757).
rnmamod, version 0.1.0
(2021-11-21)