Ever-increasing amounts of complex biological data continue to come on line daily. Examples include proteomic, transcriptomic, genomic and metabolomic data generated by a plethora of high-throughput methods. Accordingly, fast and effective data processing techniques are more and more in demand. This issue is addressed in this dissertation through an investigation of various algorithmic alternatives and enhancements to routine and traditional procedures in common use. In the analysis of gene co-expression data, for example, differential measures of entropy and variation are studied as augmentations to mere differential expression. These novel metrics are shown to help elucidate disease-related genes in wide assortments of case/control data. ...
Traditional biology has changed dramatically in the past two decades to the degree that advancements...
The scope and scale of biological data continues to grow at an exponential clip, driven by advances ...
The need for automating genome analysis is a result of the tremendous amount of genomic data. As of ...
Graph-based methods used in the analysis of DNA microarray technology can be powerful tools in the e...
The explosive growth in the rate of data generation in recent years threatens to outpace the growth ...
The problem of interpreting biological data is often cast into a mathematical optimization framework...
High-throughput experimental technologies are generating increasingly massive and complex genomic da...
The most intriguing problems in genetics epidemiology are to predict genetic disease susceptibility ...
Graph theoretical approaches have been widely used to solve problems arising in bioinformatics and g...
Biological data derived from high-throughput microarrays can be transformed into finite, simple, und...
Background The exponential growth of biological data has given rise to new and difficult challenges....
With the advent of high-throughput genomics, biological big data brings challenges to scientists in ...
As cost and throughput of second-generation sequencers continue to improve, even modestly resourced ...
This thesis is concerned with developing novel rank aggregation methods for gene prioritization. Ge...
The advent and continued improvement of DNA sequencing methods promises deeper insights into the gen...
Traditional biology has changed dramatically in the past two decades to the degree that advancements...
The scope and scale of biological data continues to grow at an exponential clip, driven by advances ...
The need for automating genome analysis is a result of the tremendous amount of genomic data. As of ...
Graph-based methods used in the analysis of DNA microarray technology can be powerful tools in the e...
The explosive growth in the rate of data generation in recent years threatens to outpace the growth ...
The problem of interpreting biological data is often cast into a mathematical optimization framework...
High-throughput experimental technologies are generating increasingly massive and complex genomic da...
The most intriguing problems in genetics epidemiology are to predict genetic disease susceptibility ...
Graph theoretical approaches have been widely used to solve problems arising in bioinformatics and g...
Biological data derived from high-throughput microarrays can be transformed into finite, simple, und...
Background The exponential growth of biological data has given rise to new and difficult challenges....
With the advent of high-throughput genomics, biological big data brings challenges to scientists in ...
As cost and throughput of second-generation sequencers continue to improve, even modestly resourced ...
This thesis is concerned with developing novel rank aggregation methods for gene prioritization. Ge...
The advent and continued improvement of DNA sequencing methods promises deeper insights into the gen...
Traditional biology has changed dramatically in the past two decades to the degree that advancements...
The scope and scale of biological data continues to grow at an exponential clip, driven by advances ...
The need for automating genome analysis is a result of the tremendous amount of genomic data. As of ...