AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learning techniques have been successfully applied to numerous fields in clinical medicine. Zupan et al. (2000) proposed handling censored survival data by assigning distributions of outcomes to shortly observed censored instances. In this paper, we applied their learning technique to two well-known procedures for learning Bayesian networks: a search-and-score hill-climbing algorithm and a constraint-based conditional independence algorithm. The method was thoroughly tested in a simulation study and on the publicly available clinical dataset GBSG2. We compared it to learning Bayesian networks by treating censored instances as event-free and to Cox ...
Applications of machine learning in healthcare often require working with time-to-event prediction t...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
Rationale, aims, and objectivesTime to the occurrence of an event is often studied in health researc...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
Machine learning techniques have recently received considerable attention, especially when used for ...
We propose a unified and flexible framework for ensemble learning in the presence of censoring. For ...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
In oncology, analyzing survival data is of primary importance in epidemiological studies and clinica...
We analyzed cancer data using Fully Bayesian inference approach based on Markov Chain Monte Carlo (M...
This dissertation extends the results of Berliner and Hill (1988) in several directions, including a...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
Survival analysis is a valuable tool for estimating the time until specific events, such as death or...
In the present thesis I introduce and evaluate a new machine learning method for estimating survival...
Applications of machine learning in healthcare often require working with time-to-event prediction t...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
Rationale, aims, and objectivesTime to the occurrence of an event is often studied in health researc...
AbstractDifferent survival data pre-processing procedures and adaptations of existing machine-learni...
Machine learning techniques have recently received considerable attention, especially when used for ...
We propose a unified and flexible framework for ensemble learning in the presence of censoring. For ...
Artificial neural networks are a powerful tool for analyzing data sets where there are complicated n...
Machine Learning Models are known to understand the intricacies of the data well, but native ML mode...
Predicting the probable survival for a patient can be very challenging for many diseases. In many fo...
In oncology, analyzing survival data is of primary importance in epidemiological studies and clinica...
We analyzed cancer data using Fully Bayesian inference approach based on Markov Chain Monte Carlo (M...
This dissertation extends the results of Berliner and Hill (1988) in several directions, including a...
Survival analysis is an important field of Statistics concerned with mak- ing time-to-event predicti...
Survival analysis is a valuable tool for estimating the time until specific events, such as death or...
In the present thesis I introduce and evaluate a new machine learning method for estimating survival...
Applications of machine learning in healthcare often require working with time-to-event prediction t...
In this paper, we investigate a number of Bayesian techniques for predicting 1-year- survival and ma...
Rationale, aims, and objectivesTime to the occurrence of an event is often studied in health researc...