Thesis (Ph.D.)--University of Washington, 2018Omics technologies are among the most exciting developments in biology and medicine in recent decades. They offer a whole new way of investigating a sample or a patient by taking comprehensive molecular-level snapshots. These snapshots, in the form of massive amount of data, provide important hints about the pathophysiological state of the target. Despite the promises of the omics technologies, their usefulness hinges upon proper translation of the data into knowledge. This dissertation is focused on mining of public gene expression data to discover gene sets that may be parts of biological pathways. It tries to answer these two overall questions: (1) what is the data mining method best suited f...
ABSTRACT: BACKGROUND: The analysis of massive high throughput data via clustering algorithms is very...
Introduction: Gene-set analysis (GSA) methods are used as complementary approaches to genome-wide as...
Traditional clustering approaches for gene expression data are not well adapted to address the compl...
Thesis (Ph.D.)--University of Washington, 2018Omics technologies are among the most exciting develop...
Background: Transcriptome analysis aims at gaining insight into cellular processes through discoveri...
Biclustering is a powerful data mining technique that allows clustering of rows and columns, simulta...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
Biclustering or simultaneous clustering of both genes and conditions have generated considerable int...
Microarray and beadchip are two most efficient techniques for measuring gene expression and methylat...
Microarray and beadchip are two most efficient techniques for measuring gene expression and methylat...
The explosion of "omics" data over the past few decades has generated an increasing need of efficien...
Biclustering or simultaneous clustering of both genes and conditions have generated consider-able in...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Analyses of gene set differential coexpression may shed light on molecular mechanisms underlying phe...
ABSTRACT: BACKGROUND: The analysis of massive high throughput data via clustering algorithms is very...
Introduction: Gene-set analysis (GSA) methods are used as complementary approaches to genome-wide as...
Traditional clustering approaches for gene expression data are not well adapted to address the compl...
Thesis (Ph.D.)--University of Washington, 2018Omics technologies are among the most exciting develop...
Background: Transcriptome analysis aims at gaining insight into cellular processes through discoveri...
Biclustering is a powerful data mining technique that allows clustering of rows and columns, simulta...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
DNA microarray technologies are used extensively to profile the expression levels of thousands of ge...
Biclustering or simultaneous clustering of both genes and conditions have generated considerable int...
Microarray and beadchip are two most efficient techniques for measuring gene expression and methylat...
Microarray and beadchip are two most efficient techniques for measuring gene expression and methylat...
The explosion of "omics" data over the past few decades has generated an increasing need of efficien...
Biclustering or simultaneous clustering of both genes and conditions have generated consider-able in...
With the availability of tons of expression profiles, the need for meta-analyses to integratediffere...
Analyses of gene set differential coexpression may shed light on molecular mechanisms underlying phe...
ABSTRACT: BACKGROUND: The analysis of massive high throughput data via clustering algorithms is very...
Introduction: Gene-set analysis (GSA) methods are used as complementary approaches to genome-wide as...
Traditional clustering approaches for gene expression data are not well adapted to address the compl...