Package: susieR 0.15.57

Peter Carbonetto

susieR: Sum of Single Effects Linear Regression

Implements methods for variable selection in linear regression based on the "Sum of Single Effects" (SuSiE) model, as described in Wang et al (2020) <doi:10.1101/501114> and Zou et al (2021) <doi:10.1101/2021.11.03.467167>. These methods provide simple summaries, called "Credible Sets", for accurately quantifying uncertainty in which variables should be selected. The methods are motivated by genetic fine-mapping applications, and are particularly well-suited to settings where variables are highly correlated and detectable effects are sparse. The fitting algorithm, a Bayesian analogue of stepwise selection methods called "Iterative Bayesian Stepwise Selection" (IBSS), is simple and fast, allowing the SuSiE model be fit to large data sets (thousands of samples and hundreds of thousands of variables).

Authors:Gao Wang [aut], Yuxin Zou [aut], Alexander McCreight [aut], Kaiqian Zhang [aut], William R.P. Denault [aut], Peter Carbonetto [aut, cre], Matthew Stephens [aut]

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susieR.pdf |susieR.html
susieR/json (API)

# Install 'susieR' in R:
install.packages('susieR', repos = c('https://stephenslab.r-universe.dev', 'https://cloud.r-project.org'))

Bug tracker:https://github.com/stephenslab/susier/issues

Uses libs:
  • openblas– Optimized BLAS
  • c++– GNU Standard C++ Library v3
  • openmp– GCC OpenMP (GOMP) support library
Datasets:

On CRAN:

Conda:

openblascppopenmp

14.06 score 253 stars 5 packages 904 scripts 6.4k downloads 2 mentions 45 exports 27 dependencies

Last updated from:0231e05ca5. Checks:11 ERROR, 2 OK. Indexed: yes.

TargetResultTimeFilesSyslog
linux-devel-arm64ERROR252
linux-devel-x86_64ERROR286
source / vignettesOK538
linux-release-arm64ERROR238
linux-release-x86_64ERROR267
macos-release-arm64ERROR192
macos-release-x86_64ERROR384
macos-oldrel-arm64ERROR213
macos-oldrel-x86_64ERROR447
windows-develERROR263
windows-releaseERROR293
windows-oldrelERROR268
wasm-releaseOK149

Exports:absolute.orderblock_coordinate_ascentcalc_zcoef.mr.ashcoef.susiecompute_suff_statestimate_s_rssget_cs_correlationget_objectiveget.full.posterioribss_finalizeibss_initializeis_symmetric_matrixkriging_rssmr.ashmr.ash.rsspath.orderpredict.mr.ashpredict.susieprint.summary.susieslot_prior_betabinomslot_prior_poissonsummary.susiesusiesusie_autosusie_get_cssusie_get_lfsrsusie_get_nitersusie_get_objectivesusie_get_pipsusie_get_posterior_meansusie_get_posterior_samplessusie_get_posterior_sdsusie_get_prior_variancesusie_get_residual_variancesusie_init_coefsusie_plotsusie_plot_changepointsusie_plot_iterationsusie_rsssusie_sssusie_trendfiltersusie_workhorseunivar.orderunivariate_regression

Dependencies:clicpp11crayonfarverggplot2gluegtableirlbaisobandlabelinglatticelifecycleMatrixmatrixStatsmixsqpplyrR6RColorBrewerRcppRcppArmadilloreshaperlangS7scalesvctrsviridisLitewithr

Compare susie_rss variants

Rendered fromsusie_rss.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2022-10-11
Started: 2022-04-05

Diagnostic for fine-mapping with summary statistics

Rendered fromsusierss_diagnostic.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2022-10-11
Started: 2021-05-31

Fine-mapping example

Rendered fromfinemapping.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2022-10-11
Started: 2018-06-27

Fine-mapping with summary statistics

Rendered fromfinemapping_summary_statistics.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2022-10-11
Started: 2018-10-16

Fine-mapping with SuSiE-ash and SuSiE-inf

Rendered fromsusie_unmappable_effects.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2026-03-01
Started: 2025-12-04

A minimal example

Rendered frommwe.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2021-03-23
Started: 2018-06-27

News and Updates

Rendered fromannouncements.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2026-03-29
Started: 2025-11-20

Refine SuSiE model

Rendered fromsusie_refine.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2025-11-20
Started: 2021-04-11

Accounting for uncertainty in residual variances for small sample studies

Rendered fromsmall_sample.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2025-12-05
Started: 2025-09-24

SuSiE with L0Learn initialization example

Rendered froml0_initialization.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2025-11-20
Started: 2018-07-19

Evaluation of sparse version of SuSiE

Rendered fromsparse_susie_eval.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2025-11-20
Started: 2018-09-18

Trend filtering

Rendered fromtrend_filtering.Rmdusingknitr::rmarkdownon Apr 13 2026.

Last update: 2025-11-20
Started: 2018-06-27

Readme and manuals

Help Manual

Help pageTopics
Ordering of Predictors from Coefficient Estimatesabsolute.order
Block coordinate ascent for iterative model refinement.block_coordinate_ascent
Extract Regression Coefficients from Mr.ASH Fitcoef.mr.ash
Extract regression coefficients from susie fitcoef.susie
Compute sufficient statistics for input to 'susie_ss'compute_suff_stat
Estimate s in 'susie_rss' Model Using Regularized LDestimate_s_rss
Simulated Fine-mapping Data with Convergence Problem.FinemappingConvergence
Get Correlations Between CSs, using Variable with Maximum PIP From Each CSget_cs_correlation
Approximation Posterior Expectations from Mr.ASH Fitget.full.posterior
Compute Distribution of z-scores of Variant j Given Other z-scores, and Detect Possible Allele Switch Issuekriging_rss
Multiple Regression with Adaptive Shrinkagemr.ash
Bayesian Multiple Regression with Mixture-of-Normals Prior (RSS)mr.ash.rss
Simulated Fine-mapping Data with Two Effect VariablesN2finemapping
Simulated Fine-mapping Data with Three Effect Variables.N3finemapping
Ordering of Predictors by Regularization Pathpath.order
Predict Outcomes or Extract Coefficients from Mr.ASH Fitpredict.mr.ash
Predict outcomes or extract coefficients from susie fit.predict.susie
Slot Activity Prior for SuSiEslot_prior_betabinom slot_prior_poisson
Summarize Susie Fit.print.summary.susie summary.susie
Simulated Fine-mapping Data with LD matrix From Reference Panel.SummaryConsistency
Sum of Single Effects (SuSiE) Regressionsusie
Attempt at Automating SuSiE for Hard Problemssusie_auto
Inferences From Fitted SuSiE Modelsusie_get_cs susie_get_lfsr susie_get_niter susie_get_objective susie_get_pip susie_get_posterior_mean susie_get_posterior_samples susie_get_posterior_sd susie_get_prior_variance susie_get_residual_variance
Initialize a susie object using regression coefficientssusie_init_coef
SuSiE Plots.susie_plot susie_plot_iteration
Plot changepoint data and susie fit using ggplot2susie_plot_changepoint
SuSiE with Regression Summary Statistics (RSS)susie_rss
SuSiE using Sufficient Statisticssusie_ss
Apply susie to trend filtering (especially changepoint problems), a type of non-parametric regression.susie_trendfilter
Ordering of Predictors from Univariate Regressionunivar.order
Perform Univariate Linear Regression Separately for Columns of Xcalc_z univariate_regression