Bayesian meta-analysis models for heterogeneous genomics data

dc.contributor.advisor

Mukherjee, Sayan

dc.contributor.author

Zheng, Lingling

dc.date.accessioned

2013-12-16T20:13:16Z

dc.date.available

2015-12-06T05:30:05Z

dc.date.issued

2013

dc.department

Computational Biology and Bioinformatics

dc.description.abstract

The accumulation of high-throughput data from vast sources has drawn a lot attentions to develop methods for extracting meaningful information out of the massive data. More interesting questions arise from how to combine the disparate information, which goes beyond modeling sparsity and dimension reduction. This dissertation focuses on the innovations in the area of heterogeneous data integration.

Chapter 1 contextualizes this dissertation by introducing different aspects of meta-analysis and model frameworks for high-dimensional genomic data.

Chapter 2 introduces a novel technique, joint Bayesian sparse factor analysis model, to vertically integrate multi-dimensional genomic data from different platforms.

Chapter 3 extends the above model to a nonparametric Bayes formula. It directly infers number of factors from a model-based approach.

On the other hand, chapter 4 deals with horizontal integration of diverse gene expression data; the model infers pathway activities across various experimental conditions.

All the methods mentioned above are demonstrated in both simulation studies and real data applications in chapters 2-4.

Finally, chapter 5 summarizes the dissertation and discusses future directions.

dc.identifier.uri

https://hdl.handle.net/10161/8209

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Bioinformatics

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Statistics

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Bayesian statistics

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Biomarker

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Cancer genomics

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Epigenomics

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Factor analysis model

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integrated analysis

dc.title

Bayesian meta-analysis models for heterogeneous genomics data

dc.type

Dissertation

duke.embargo.months

24

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