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Learning Bayesian networks from survival data using weighting censored instances

Different 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 ce...

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Published in:Journal of biomedical informatics 2010-08, Vol.43 (4), p.613-622
Main Authors: Stajduhar, Ivan, Dalbelo-Basić, Bojana
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Language:English
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description Different 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 regression. The results on model performance suggest that the weighting approach performs best when dealing with intermediate censoring. There is no significant difference between the model structures learnt using either the weighting approach or by treating censored instances as event-free, regardless of censoring.
doi_str_mv 10.1016/j.jbi.2010.03.005
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subjects Artificial Intelligence
Bayes Theorem
Bayesian network
Humans
Medical decision support
Population Groups
Prognostic model
Survival Analysis
Treatment Outcome
Weighting censored instances
title Learning Bayesian networks from survival data using weighting censored instances
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