One of the prevailing applications of machine learning is the use of predictive modelling in clinical survival analysis. In this work, we present our view of the current situation of computer tools for survival analysis, stressing the need of transferring the latest results in the field of machine learning to biomedical researchers. We propose a web based software for survival analysis called OSA (Online Survival Analysis), which has been developed as an open access and user friendly option to obtain discrete time, predictive survival models at individual level using machine learning techniques, and to perform standard survival analysis. OSA employs an Artificial Neural Network (ANN) based method to produce the predictive survival mode...
Machine learning techniques have recently received considerable attention, especially when used for ...
The extensive availability of recent computational models and data mining techniques for data anal...
Introduction: Prognostic scores are important tools in oncology to facilitate clinical decision-maki...
One of the prevailing applications of machine learning is the use of predictive modelling in clinica...
One of the prevailing applications of machine learning is the use of predictive modelling in clinica...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
In the present thesis I introduce and evaluate a new machine learning method for estimating survival...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
Survival analysis consists of studying the elapsed time until an event of interest, such as the deat...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
Survival analysis with high dimensional data deals with the prediction of patient survival based ...
The analysis of cancer survival is used to determine the efficiency of treatment programmes and prot...
Traditional machine learning focuses on the situation where a fixed number of features are available...
Machine learning techniques have recently received considerable attention, especially when used for ...
The extensive availability of recent computational models and data mining techniques for data anal...
Introduction: Prognostic scores are important tools in oncology to facilitate clinical decision-maki...
One of the prevailing applications of machine learning is the use of predictive modelling in clinica...
One of the prevailing applications of machine learning is the use of predictive modelling in clinica...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
In the present thesis I introduce and evaluate a new machine learning method for estimating survival...
International audienceSurvival analysis consists of studying the elapsed time until an event of inte...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
Survival analysis consists of studying the elapsed time until an event of interest, such as the deat...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
Survival analysis with high dimensional data deals with the prediction of patient survival based ...
The analysis of cancer survival is used to determine the efficiency of treatment programmes and prot...
Traditional machine learning focuses on the situation where a fixed number of features are available...
Machine learning techniques have recently received considerable attention, especially when used for ...
The extensive availability of recent computational models and data mining techniques for data anal...
Introduction: Prognostic scores are important tools in oncology to facilitate clinical decision-maki...