Background Survival prediction from high-dimensional genomic data is an active field in today's medical research. Most of the proposed prediction methods make use of genomic data alone without considering established clinical covariates that often are available and known to have predictive value. Recent studies suggest that combining clinical and genomic information may improve predictions, but there is a lack of systematic studies on the topic. Also, for the widely used Cox regression model, it is not obvious how to handle such combined models. Results We propose a way to combine classical clinical covariates with genomic data in a clinico-genomic prediction mode...
Summary: Clinical covariates such as age, gender, tumor grade, and smoking history have been extensi...
We introduce a statistical procedure that integrates datasets from multiple biomedical studies to pr...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
There exist many methods for survival prediction from high-dimensional genomic data. Most of them co...
High-throughput gene expression profiling technologies generating a wealth of data, are increasingly...
Motivation: Many traditional clinical prognostic factors have been known for cancer for years, but u...
Knowledge of transcription of the human genome might greatly enhance our understanding of cancer. In...
Accurate survival prediction is critical in the management of cancer patients’ care and well-being....
In biomedical literature numerous prediction models for clinical outcomes have been developed based ...
BACKGROUND:High-throughput gene expression profiling technologies generating a wealth of data, are i...
International audienceBackground: Prediction of patient survival from tumor molecular ‘-omics’ data ...
An important application of microarray technology is to relate gene expression profiles to various c...
Predicting survival probability (or any other response variable) from gene expression data presents...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
Summary: Clinical covariates such as age, gender, tumor grade, and smoking history have been extensi...
We introduce a statistical procedure that integrates datasets from multiple biomedical studies to pr...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...
Building a risk prediction model for a specific subgroup of patients based on high-dimensional molec...
There exist many methods for survival prediction from high-dimensional genomic data. Most of them co...
High-throughput gene expression profiling technologies generating a wealth of data, are increasingly...
Motivation: Many traditional clinical prognostic factors have been known for cancer for years, but u...
Knowledge of transcription of the human genome might greatly enhance our understanding of cancer. In...
Accurate survival prediction is critical in the management of cancer patients’ care and well-being....
In biomedical literature numerous prediction models for clinical outcomes have been developed based ...
BACKGROUND:High-throughput gene expression profiling technologies generating a wealth of data, are i...
International audienceBackground: Prediction of patient survival from tumor molecular ‘-omics’ data ...
An important application of microarray technology is to relate gene expression profiles to various c...
Predicting survival probability (or any other response variable) from gene expression data presents...
Motivation: Patient outcome prediction using microarray technologies is an important application in ...
Summary: Clinical covariates such as age, gender, tumor grade, and smoking history have been extensi...
We introduce a statistical procedure that integrates datasets from multiple biomedical studies to pr...
Motivation: Patient outcome prediction using microarray technolo-gies is an important application in...