Motivated by a study conducted to evaluate the associations of 51 inflammatory markers and lung cancer risk, we propose several approaches of varying computational complexity for analyzing multiple correlated markers that are also censored due to lower and/or upper limits of detection, using likelihood-based sufficient dimension reduction (SDR) methods. We extend the theory and the likelihood-based SDR framework in two ways: (i) we accommodate censored predictors directly in the likelihood, and (ii) we incorporate variable selection. We find linear combinations that contain all the information that the correlated markers have on an outcome variable (i.e., are sufficient for modeling and prediction of the outcome) while accounting for censor...
Summary. Modern high-throughput technologies allow us to simultaneously measure the expres-sions of ...
Fast and more economical next-generation sequencing technologies will generate unprecedentedly massi...
Dimension reduction (DR) methods play an inevitable role in analyzing and visualizing high-dimension...
We propose a method to combine several predictors (markers) that are measured repeatedly over time i...
Recent efforts to characterize the human microbiome and its relation to chronic diseases have led to...
Using patients\u27 genetic variants to predict the risk of lung cancer is a challenging task. In thi...
Efficient modeling of censored data, that is, data which are restricted by some detection limit or t...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
Recent research has shown that gene expression profiles can potentially be used for predicting pheno...
With the availability of high-dimensional genetic biomarkers, it is of interest to identify heteroge...
AbstractBackgroundThe discovery and the description of the genetic background of common human diseas...
We propose counting process-based dimension reduction methods for right-censored survival data. Semi...
Abstract Background The likelihood ratio function (LR...
A new ensemble dimension reduction regression technique, called Correlated Component Regression (CCR...
In observational studies, the causal effect of a treatment may be confounded with variables that are...
Summary. Modern high-throughput technologies allow us to simultaneously measure the expres-sions of ...
Fast and more economical next-generation sequencing technologies will generate unprecedentedly massi...
Dimension reduction (DR) methods play an inevitable role in analyzing and visualizing high-dimension...
We propose a method to combine several predictors (markers) that are measured repeatedly over time i...
Recent efforts to characterize the human microbiome and its relation to chronic diseases have led to...
Using patients\u27 genetic variants to predict the risk of lung cancer is a challenging task. In thi...
Efficient modeling of censored data, that is, data which are restricted by some detection limit or t...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
Recent research has shown that gene expression profiles can potentially be used for predicting pheno...
With the availability of high-dimensional genetic biomarkers, it is of interest to identify heteroge...
AbstractBackgroundThe discovery and the description of the genetic background of common human diseas...
We propose counting process-based dimension reduction methods for right-censored survival data. Semi...
Abstract Background The likelihood ratio function (LR...
A new ensemble dimension reduction regression technique, called Correlated Component Regression (CCR...
In observational studies, the causal effect of a treatment may be confounded with variables that are...
Summary. Modern high-throughput technologies allow us to simultaneously measure the expres-sions of ...
Fast and more economical next-generation sequencing technologies will generate unprecedentedly massi...
Dimension reduction (DR) methods play an inevitable role in analyzing and visualizing high-dimension...