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twl (version 1.0)

Two-Way Latent Structure Clustering Model

Description

Implementation of a Bayesian two-way latent structure model for integrative genomic clustering. The model clusters samples in relation to distinct data sources, with each subject-dataset receiving a latent cluster label, though cluster labels have across-dataset meaning because of the model formulation. A common scaling across data sources is unneeded, and inference is obtained by a Gibbs Sampler. The model can fit multivariate Gaussian distributed clusters or a heavier-tailed modification of a Gaussian density. Uniquely among integrative clustering models, the formulation makes no nestedness assumptions of samples across data sources -- the user can still fit the model if a study subject only has information from one data source. The package provides a variety of post-processing functions for model examination including ones for quantifying observed alignment of clusterings across genomic data sources. Run time is optimized so that analyses of datasets on the order of thousands of features on fewer than 5 datasets and hundreds of subjects can converge in 1 or 2 days on a single CPU. See "Swanson DM, Lien T, Bergholtz H, Sorlie T, Frigessi A, Investigating Coordinated Architectures Across Clusters in Integrative Studies: a Bayesian Two-Way Latent Structure Model, 2018, , Cold Spring Harbor Laboratory" at for model details.

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Version

Install

install.packages('twl')

Monthly Downloads

194

Version

1.0

License

GPL (>= 2)

Maintainer

Michael Swanson

Last Published

August 24th, 2018

Functions in twl (1.0)

cross_dat_analy

Compares clustering across datasets using metrics described in associated TWL manuscript
post_analy_cor

Creates and saves correlation plots based on posterior similarity matrices
twl-package

twl
misaligned_mat

Progressively misaligned cluster data matrices
outpu_new

Output PSMs
pairwise_clus

Create posterior similarity matrix from outputted list of clustering samples
post_analy_clus

Assigns cluster labels by building dendrogram and thresholding at specified height
TWLsample

Main function to obtain posterior samples from a TWL model.
clus_save

Output samples
misaligned

Progressively misaligned cluster annotation