Survival analysis consists of studying the elapsed time until an event of interest, such as the death or recovery of a patient in medical studies. This work explores the potential of neural networks in survival analysis from clinical and RNA-seq data. If the neural network approach is not recent in survival analysis, methods were classically considered for low-dimensional input data. But with the emergence of high-throughput sequencing data, the number of covariates of interest has become very large, with new statistical issues to consider. We present and test a few recent neural network approaches for survival analysis adapted to high-dimensional inputs
Artificial neural networks (ANN) are computing architectures with many interconnections of simple ne...
Survival analysis today is widely implemented in the fields of medical and biological sciences, soci...
<div><p>Artificial neural networks (ANN) are computing architectures with many interconnections of s...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
Analysis of data with a censored survival response and high-dimensional omics measurements is now co...
The traditional technique to model survival probabilities is the Cox regression analysis [Cox and Oa...
The extensive availability of recent computational models and data mining techniques for data anal...
Artificial neural networks (ANN) are computing architectures with many interconnections of simple ne...
Survival analysis today is widely implemented in the fields of medical and biological sciences, soci...
<div><p>Artificial neural networks (ANN) are computing architectures with many interconnections of s...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
We describe models for survival analysis which are based on a multi-layer perceptron, a type of neur...
Analysis of data with a censored survival response and high-dimensional omics measurements is now co...
The traditional technique to model survival probabilities is the Cox regression analysis [Cox and Oa...
The extensive availability of recent computational models and data mining techniques for data anal...
Artificial neural networks (ANN) are computing architectures with many interconnections of simple ne...
Survival analysis today is widely implemented in the fields of medical and biological sciences, soci...
<div><p>Artificial neural networks (ANN) are computing architectures with many interconnections of s...