Gene set testing is an important bioinformatics technique that addresses the challenges of power, interpretation and replication. To better support the analysis of large and highly overlapping gene set collections, researchers have recently developed a number of multiset methods that jointly evaluate all gene sets in a collection to identify a parsimonious group of functionally independent sets. Unfortunately, current multiset methods all use binary indicators for gene and gene set activity and assume that a gene is active if any containing gene set is active. This simplistic model limits performance on many types of genomic data. To address this limitation, we developed gene set Selection via LASSO Penalized Regression (SLPR), a novel mapp...
Univariate methods have frequently been used to discover Quantitative Trait Loci for gene expression...
Genome-wide association studies have been extensively conducted, searching for markers for biologica...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...
Gene set testing is an important bioinformatics technique that addresses the challenges of power, in...
Motivation: In ordinary regression, imposition of a lasso penalty makes continuous model selection s...
Model selection procedures for simultaneous analysis of all single-nucleotide polymorphisms in genom...
Abstract Background Genome-wide association studies involve detecting association between millions o...
In precision medicine, it is known that specific genes are decisive for the development of different...
High-dimensional data has become a major research area in the field of genetics, bioinformatics and ...
High-dimensional data has become a major research area in the field of genetics, bioinformatics and ...
Recently, the amount of high-dimensional data has exploded, creating new analytical challenges for h...
This research aims to integrate linear structures of genetic networks into genomewide analysis studi...
Abstract Background In a typical genome-enabled prediction problem there are many more predictor var...
Variable selection methods are powerful tools in analysis of high dimensional massive data. In bioin...
Genome-wide association studies have been extensively conducted, searching for markers for biologica...
Univariate methods have frequently been used to discover Quantitative Trait Loci for gene expression...
Genome-wide association studies have been extensively conducted, searching for markers for biologica...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...
Gene set testing is an important bioinformatics technique that addresses the challenges of power, in...
Motivation: In ordinary regression, imposition of a lasso penalty makes continuous model selection s...
Model selection procedures for simultaneous analysis of all single-nucleotide polymorphisms in genom...
Abstract Background Genome-wide association studies involve detecting association between millions o...
In precision medicine, it is known that specific genes are decisive for the development of different...
High-dimensional data has become a major research area in the field of genetics, bioinformatics and ...
High-dimensional data has become a major research area in the field of genetics, bioinformatics and ...
Recently, the amount of high-dimensional data has exploded, creating new analytical challenges for h...
This research aims to integrate linear structures of genetic networks into genomewide analysis studi...
Abstract Background In a typical genome-enabled prediction problem there are many more predictor var...
Variable selection methods are powerful tools in analysis of high dimensional massive data. In bioin...
Genome-wide association studies have been extensively conducted, searching for markers for biologica...
Univariate methods have frequently been used to discover Quantitative Trait Loci for gene expression...
Genome-wide association studies have been extensively conducted, searching for markers for biologica...
Abstract Background Gene set analysis (GSA) has become a successful tool to interpret gene expressio...