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ConsensusOPLS (version 1.1.0)

Consensus OPLS for Multi-Block Data Fusion

Description

Merging data from multiple sources is a relevant approach for comprehensively evaluating complex systems. However, the inherent problems encountered when analyzing single tables are amplified with the generation of multi-block datasets, and finding the relationships between data layers of increasing complexity constitutes a challenging task. For that purpose, a generic methodology is proposed by combining the strength of established data analysis strategies, i.e. multi-block approaches and the Orthogonal Partial Least Squares (OPLS) framework to provide an efficient tool for the fusion of data obtained from multiple sources. The package enables quick and efficient implementation of the consensus OPLS model for any horizontal multi-block data structures (observation-based matching). Moreover, it offers an interesting range of metrics and graphics to help to determine the optimal number of components and check the validity of the model through permutation tests. Interpretation tools include score and loading plots, Variable Importance in Projection (VIP), functionality predict for SHAP computing, and performance coefficients such as R2, Q2, and DQ2 coefficients. J. Boccard and D.N. Rutledge (2013) .

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Version

Install

install.packages('ConsensusOPLS')

Monthly Downloads

142

Version

1.1.0

License

GPL (>= 3)

Maintainer

Van T. Tran

Last Published

February 27th, 2025

Functions in ConsensusOPLS (1.1.0)

plotDQ2

DQ2 plot
demo_3_Omics

Three-block omics data
plotR2

R2 plot
plotLoadings

Loading plot
ConsensusOPLS

ConsensusOPLS
ConsensusOPLS-class

ConsensusOPLS S4 class
plotScores

Score plot
ConsensusOPLS-package

Consensus OPLS for Multi-Block Data Fusion
plotQ2

Q2 plot
plotContribution

Block contribution plot
plotVIP

VIP plot
predict

Model prediction