It is now a standard practice in the study of complex disease to perform many high-throughput -omic experiments (genome wide SNP, copy number, mRNA and miRNA expression) on the same set of patient samples. These multi-modal data should allow researchers to form a more complete, systems-level picture of a sample, but this is only possible if they have a suitable model for integrating the data. Due to the variety of data modalities and possible combinations of data, general, flexible integration methods that will be widely applicable in many settings are desirable. In this dissertation I will present my work using graphical models for de novo structure learning of both undirected and directed sparse graphs over a mixture of Gaussian and categ...
The flood of genome-wide data generated by high-throughput technologies currently provides biologist...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
A primary challenge in the analysis of high-throughput biological data is the abundance of correlate...
It is now a standard practice in the study of complex disease to perform many high-throughput -omic ...
Up to date, many biological pathways related to cancer have been extensively applied thanks to outpu...
This thesis shows a novel contribution to computational biology alongside with developed ma-chine le...
Statistical network modeling techniques are increasingly important tools to analyze cancer genomics ...
Motivation Phenotype and outcome prediction using a set of selected biomarkers (e.g. gene expression...
<div><p>Building prediction models based on complex omics datasets such as transcriptomics, proteomi...
In the study of transcriptional data for different groups (e.g. cancer types) it\u27s reasonable to ...
Clinical decision making and biomedical research have the potential to be revolutionized by the abun...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
MOTIVATION: Gene expression data is commonly used at the intersection of cancer research and machine...
The flood of genome-wide data generated by high-throughput technologies currently provides biologist...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
A primary challenge in the analysis of high-throughput biological data is the abundance of correlate...
It is now a standard practice in the study of complex disease to perform many high-throughput -omic ...
Up to date, many biological pathways related to cancer have been extensively applied thanks to outpu...
This thesis shows a novel contribution to computational biology alongside with developed ma-chine le...
Statistical network modeling techniques are increasingly important tools to analyze cancer genomics ...
Motivation Phenotype and outcome prediction using a set of selected biomarkers (e.g. gene expression...
<div><p>Building prediction models based on complex omics datasets such as transcriptomics, proteomi...
In the study of transcriptional data for different groups (e.g. cancer types) it\u27s reasonable to ...
Clinical decision making and biomedical research have the potential to be revolutionized by the abun...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
Networks provide an intuitive and highly adaptable means to model relationships between objects. Whe...
MOTIVATION: Gene expression data is commonly used at the intersection of cancer research and machine...
The flood of genome-wide data generated by high-throughput technologies currently provides biologist...
Thesis (Ph.D.)--University of Washington, 2013The advent of high-dimensional biological data from te...
A primary challenge in the analysis of high-throughput biological data is the abundance of correlate...