The use of alternative modeling techniques for predicting patient survival is complicated by the fact that some alternative techniques cannot readily deal with censoring, which is essential for analyzing survival data. In the current study, we aimed to demonstrate that pseudo values enable statistically appropriate analyses of survival outcomes when used in seven alternative modeling techniques.In this case study, we analyzed survival of 1282 Dutch patients with newly diagnosed Head and Neck Squamous Cell Carcinoma (HNSCC) with conventional Kaplan-Meier and Cox regression analysis. We subsequently calculated pseudo values to reflect the individual survival patterns. We used these pseudo values to compare recursive partitioning (RPART), neur...
Censoring is a common form for missing data in survival analysis. When a data set is censored, there...
The aim of this paper is to design a learning machine for the predictive modeling of independently r...
Background. Electronic patient files generate an enormous amount of medical data. These data can be ...
<div><p>Background</p><p>The use of alternative modeling techniques for predicting patient survival ...
Background: The use of alternative modeling techniques for predicting patient survival is complicate...
Everybody is confronted with the diagnosis of cancer during their life. If not personally, it might ...
In oncology, analyzing survival data is of primary importance in epidemiological studies and clinica...
Abstract Background Modern modelling techniques may p...
Accurate modelling of time-to-event data is of particular importance for both exploratory and predic...
The course of a disease is frequently characterized by a sequence of non fatal events related to dis...
Survival analysis is a branch of statistics focused on estimation for time to event data. Many speci...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
In the present thesis I introduce and evaluate a new machine learning method for estimating survival...
Wereview recentwork on the application of pseudo-observations in survival and event history analysis...
In medicine, an important objective is predicting patients’ survival based on their molecular and cl...
Censoring is a common form for missing data in survival analysis. When a data set is censored, there...
The aim of this paper is to design a learning machine for the predictive modeling of independently r...
Background. Electronic patient files generate an enormous amount of medical data. These data can be ...
<div><p>Background</p><p>The use of alternative modeling techniques for predicting patient survival ...
Background: The use of alternative modeling techniques for predicting patient survival is complicate...
Everybody is confronted with the diagnosis of cancer during their life. If not personally, it might ...
In oncology, analyzing survival data is of primary importance in epidemiological studies and clinica...
Abstract Background Modern modelling techniques may p...
Accurate modelling of time-to-event data is of particular importance for both exploratory and predic...
The course of a disease is frequently characterized by a sequence of non fatal events related to dis...
Survival analysis is a branch of statistics focused on estimation for time to event data. Many speci...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
In the present thesis I introduce and evaluate a new machine learning method for estimating survival...
Wereview recentwork on the application of pseudo-observations in survival and event history analysis...
In medicine, an important objective is predicting patients’ survival based on their molecular and cl...
Censoring is a common form for missing data in survival analysis. When a data set is censored, there...
The aim of this paper is to design a learning machine for the predictive modeling of independently r...
Background. Electronic patient files generate an enormous amount of medical data. These data can be ...