Given the costliness of HIV drug therapy research, it is important not only to maximize true positive rate (TPR) by identifying which genetic markers are related to drug resistance, but also to minimize false discovery rate (FDR) by reducing the number of incorrect markers unrelated to drug resistance. In this study, we propose a multiple testing procedure that unifies key concepts in computational statistics, namely Model-free Knockoffs, Bayesian variable selection, and the local false discovery rate. We develop an algorithm that utilizes the augmented data-Knockoff matrix and implement Bayesian Lasso. We then identify signals using test statistics based on Markov Chain Monte Carlo outputs and local false discovery rate. We test our propos...
Regression techniques are increasingly important as automatic methods to study complex high-dimensio...
We consider the variable selection problem, which seeks to identify important variables influencin...
Background: In high density arrays, the identification of relevant genes for disease classification ...
Given the costliness of HIV drug therapy research, it is important not only to maximize true positiv...
In many fields of science, we observe a response variable together with a large number of potential ...
The discovery of biomarkers that are informative for cancer risk assessment, diagnosis, prognosis an...
A genome-wide association study (GWAS) aims to determine genetic variants statistically associated w...
In many fields, researchers are interested in discovering features with substantial effect on the re...
Case-control studies of genetic polymorphisms and gene-environment interactions are reporting large ...
Abstract Background Biological assays for the quantification of markers may suffer from a lack of se...
BACKGROUND: Biological assays for the quantification of markers may suffer from a lack of sensitivit...
Statistical challenges arise in identifying meaningful patterns and structures from high dimensional...
In many scientific and medical settings, large-scale experiments are generating large quantities of ...
The last decade has been characterized by an explosion of biological sequence information. When the ...
High-dimensional variable selection is a challenging task, especially when groups of highly correlat...
Regression techniques are increasingly important as automatic methods to study complex high-dimensio...
We consider the variable selection problem, which seeks to identify important variables influencin...
Background: In high density arrays, the identification of relevant genes for disease classification ...
Given the costliness of HIV drug therapy research, it is important not only to maximize true positiv...
In many fields of science, we observe a response variable together with a large number of potential ...
The discovery of biomarkers that are informative for cancer risk assessment, diagnosis, prognosis an...
A genome-wide association study (GWAS) aims to determine genetic variants statistically associated w...
In many fields, researchers are interested in discovering features with substantial effect on the re...
Case-control studies of genetic polymorphisms and gene-environment interactions are reporting large ...
Abstract Background Biological assays for the quantification of markers may suffer from a lack of se...
BACKGROUND: Biological assays for the quantification of markers may suffer from a lack of sensitivit...
Statistical challenges arise in identifying meaningful patterns and structures from high dimensional...
In many scientific and medical settings, large-scale experiments are generating large quantities of ...
The last decade has been characterized by an explosion of biological sequence information. When the ...
High-dimensional variable selection is a challenging task, especially when groups of highly correlat...
Regression techniques are increasingly important as automatic methods to study complex high-dimensio...
We consider the variable selection problem, which seeks to identify important variables influencin...
Background: In high density arrays, the identification of relevant genes for disease classification ...