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Bayesian profile regression for clustering analysis involving a longitudinal response and explanatory variables.


ABSTRACT: The identification of sets of co-regulated genes that share a common function is a key question of modern genomics. Bayesian profile regression is a semi-supervised mixture modelling approach that makes use of a response to guide inference toward relevant clusterings. Previous applications of profile regression have considered univariate continuous, categorical, and count outcomes. In this work, we extend Bayesian profile regression to cases where the outcome is longitudinal (or multivariate continuous) and provide PReMiuMlongi, an updated version of PReMiuM, the R package for profile regression. We consider multivariate normal and Gaussian process regression response models and provide proof of principle applications to four simulation studies. The model is applied on budding yeast data to identify groups of genes co-regulated during the Saccharomyces cerevisiae cell cycle. We identify 4 distinct groups of genes associated with specific patterns of gene expression trajectories, along with the bound transcriptional factors, likely involved in their co-regulation process.

SUBMITTER: Rouanet A 

PROVIDER: S-EPMC7615733 | biostudies-literature | 2024 Mar

REPOSITORIES: biostudies-literature

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Bayesian profile regression for clustering analysis involving a longitudinal response and explanatory variables.

Rouanet Anaïs A   Johnson Rob R   Strauss Magdalena M   Richardson Sylvia S   Tom Brian D BD   White Simon R SR   Kirk Paul D W PDW  

Methodology : European journal of research methods for the behavioral & social sciences 20231108 2


The identification of sets of co-regulated genes that share a common function is a key question of modern genomics. Bayesian profile regression is a semi-supervised mixture modelling approach that makes use of a response to guide inference toward relevant clusterings. Previous applications of profile regression have considered univariate continuous, categorical, and count outcomes. In this work, we extend Bayesian profile regression to cases where the outcome is longitudinal (or multivariate con  ...[more]

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