Literature DB >> 30596887

Bayesian generalized biclustering analysis via adaptive structured shrinkage.

Ziyi Li1, Changgee Chang2, Suprateek Kundu1, Qi Long2.   

Abstract

Biclustering techniques can identify local patterns of a data matrix by clustering feature space and sample space at the same time. Various biclustering methods have been proposed and successfully applied to analysis of gene expression data. While existing biclustering methods have many desirable features, most of them are developed for continuous data and few of them can efficiently handle -omics data of various types, for example, binomial data as in single nucleotide polymorphism data or negative binomial data as in RNA-seq data. In addition, none of existing methods can utilize biological information such as those from functional genomics or proteomics. Recent work has shown that incorporating biological information can improve variable selection and prediction performance in analyses such as linear regression and multivariate analysis. In this article, we propose a novel Bayesian biclustering method that can handle multiple data types including Gaussian, Binomial, and Negative Binomial. In addition, our method uses a Bayesian adaptive structured shrinkage prior that enables feature selection guided by existing biological information. Our simulation studies and application to multi-omics datasets demonstrate robust and superior performance of the proposed method, compared to other existing biclustering methods.
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Keywords:  -omics data; Adaptive shrinkage prior; Bayesian; Biclustering; Biological information; Integrative analysis

Mesh:

Year:  2020        PMID: 30596887      PMCID: PMC7307984          DOI: 10.1093/biostatistics/kxy081

Source DB:  PubMed          Journal:  Biostatistics        ISSN: 1465-4644            Impact factor:   5.899


  32 in total

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Review 8.  Biclustering on expression data: A review.

Authors:  Beatriz Pontes; Raúl Giráldez; Jesús S Aguilar-Ruiz
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  2 in total

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