Impact of censoring on learning Bayesian networks in survival modelling
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摘要
ObjectiveBayesian networks are commonly used for presenting uncertainty and covariate interactions in an easily interpretable way. Because of their efficient inference and ability to represent causal relationships, they are an excellent choice for medical decision support systems in diagnosis, treatment, and prognosis. Although good procedures for learning Bayesian networks from data have been defined, their performance in learning from censored survival data has not been widely studied. In this paper, we explore how to use these procedures to learn about possible interactions between prognostic factors and their influence on the variate of interest. We study how censoring affects the probability of learning correct Bayesian network structures. Additionally, we analyse the potential usefulness of the learnt models for predicting the time-independent probability of an event of interest.
论文关键词:Bayesian networks,Structure learning,Survival analysis,Censoring,Prognostic models in medicine,Medical decision support
论文评审过程:Received 19 June 2008, Revised 12 January 2009, Accepted 28 August 2009, Available online 14 October 2009.
论文官网地址:https://doi.org/10.1016/j.artmed.2009.08.001