<p>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.</p><p>Chapter 1 contextualizes this dissertation by introducing different aspects of meta-analysis and model frameworks for high-dimensional genomic data.</p><p>Chapter 2 introduces a novel technique, joint Bayesian sparse factor analysis model, to vertically integrate multi-dimensional genomic data from different platforms. </p><p>Chapter 3 ex...
High-throughput assays are transforming the study of biology, and are generating a rich, complex and...
Meta-analysis of microarray studies to produce an overall gene list is relatively straightforward wh...
Life sciences research is advancing in breadth and scope, affecting many areas of life including med...
The accumulation of high-throughput data from vast sources has drawn a lot atten-tions to develop me...
In this paper we define a hierarchical Bayesian model for microarray expression data collected fro...
In this paper we define a hierarchical Bayesian model for microarray expression data collected from ...
Background With the growing abundance of microarray data, statistical methods are increasingly neede...
Technological advances have transformed the scientific landscape by enabling comprehensive quantitat...
<p>Metagenomics is the study of microbial communities on the genome level by direct sequencing of en...
The "big data" revolution of the past decade has allowed researchers to procure or access biological...
Random-effects meta-analysis models are commonly applied in combining effect sizes from individual g...
This thesis explores the potential of statistical inference methodologies in their applications in f...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Genomic and proteomic experiments have become widely applied in cancer profiling studies over the pa...
Abstract Background With the explosion in data genera...
High-throughput assays are transforming the study of biology, and are generating a rich, complex and...
Meta-analysis of microarray studies to produce an overall gene list is relatively straightforward wh...
Life sciences research is advancing in breadth and scope, affecting many areas of life including med...
The accumulation of high-throughput data from vast sources has drawn a lot atten-tions to develop me...
In this paper we define a hierarchical Bayesian model for microarray expression data collected fro...
In this paper we define a hierarchical Bayesian model for microarray expression data collected from ...
Background With the growing abundance of microarray data, statistical methods are increasingly neede...
Technological advances have transformed the scientific landscape by enabling comprehensive quantitat...
<p>Metagenomics is the study of microbial communities on the genome level by direct sequencing of en...
The "big data" revolution of the past decade has allowed researchers to procure or access biological...
Random-effects meta-analysis models are commonly applied in combining effect sizes from individual g...
This thesis explores the potential of statistical inference methodologies in their applications in f...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Genomic and proteomic experiments have become widely applied in cancer profiling studies over the pa...
Abstract Background With the explosion in data genera...
High-throughput assays are transforming the study of biology, and are generating a rich, complex and...
Meta-analysis of microarray studies to produce an overall gene list is relatively straightforward wh...
Life sciences research is advancing in breadth and scope, affecting many areas of life including med...