The availability of enough samples for effective analysis and knowledge discovery has been a challenge in the research community, especially in the area of gene expression data analysis. Thus, the approaches being developed for data analysis have mostly suffered from the lack of enough data to train and test the constructed models. We argue that the process of sample generation could be successfully automated by employing some sophisticated machine learning techniques. An automated sample generation framework could successfully complement the actual sample generation from real cases. This argument is validated in this paper by describing a framework that integrates multiple models (perspectives) for sample generation. We illustrate its appl...
The interpretation of data-driven experiments in genomics often involves a search for biological cat...
Biomarkers are of great importance in many fields, such as cancer research, toxicology, diagnosis an...
The discovery of biologically interpretable knowledge from gene expression data is one of the larges...
Objective: Overcome the lack of enough samples in gene expression data sets having thousands of gene...
The ever-growing need for gene-expression data analysis motivates studies in sample generation due t...
AbstractData originating from biomedical experiments has provided machine learning researchers with ...
Thesis (Ph.D.)--University of Washington, 2016-08The recent explosion in the availability of gene ex...
Background: A key problem in bioinformatics is that of predicting gene expression levels. There are ...
Gene Set Enrichment (GSE) is a computational technique which determines whether a priori defined set...
We present new techniques for the application of the Bayesian network learning framework to the prob...
Advances in genomics allow researchers to measure the complete set of transcripts in cells. These tr...
This dissertation explores, proposes, and examines methods of applying modernmachine learning and Ba...
Background: In microarray data analysis, factors such as data quality, biological variation, and the...
Aim of this work is to apply a novel comprehensive machine learning tool for data mining to preproce...
AbstractIn this work we have developed a new framework for microarray gene expression data analysis....
The interpretation of data-driven experiments in genomics often involves a search for biological cat...
Biomarkers are of great importance in many fields, such as cancer research, toxicology, diagnosis an...
The discovery of biologically interpretable knowledge from gene expression data is one of the larges...
Objective: Overcome the lack of enough samples in gene expression data sets having thousands of gene...
The ever-growing need for gene-expression data analysis motivates studies in sample generation due t...
AbstractData originating from biomedical experiments has provided machine learning researchers with ...
Thesis (Ph.D.)--University of Washington, 2016-08The recent explosion in the availability of gene ex...
Background: A key problem in bioinformatics is that of predicting gene expression levels. There are ...
Gene Set Enrichment (GSE) is a computational technique which determines whether a priori defined set...
We present new techniques for the application of the Bayesian network learning framework to the prob...
Advances in genomics allow researchers to measure the complete set of transcripts in cells. These tr...
This dissertation explores, proposes, and examines methods of applying modernmachine learning and Ba...
Background: In microarray data analysis, factors such as data quality, biological variation, and the...
Aim of this work is to apply a novel comprehensive machine learning tool for data mining to preproce...
AbstractIn this work we have developed a new framework for microarray gene expression data analysis....
The interpretation of data-driven experiments in genomics often involves a search for biological cat...
Biomarkers are of great importance in many fields, such as cancer research, toxicology, diagnosis an...
The discovery of biologically interpretable knowledge from gene expression data is one of the larges...