Automated interviews on clinical case reports to elicit directed acyclic graphs
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摘要
ObjectiveSetting up clinical reports within hospital information systems makes it possible to record a variety of clinical presentations. Directed acyclic graphs (Dags) offer a useful way of representing causal relations in clinical problem domains and are at the core of many probabilistic models described in the medical literature, like Bayesian networks. However, medical practitioners are not usually trained to elicit Dag features. Part of the difficulty lies in the application of the concept of direct causality before selecting all the causal variables of interest for a specific patient. We designed an automated interview to tutor medical doctors in the development of Dags to represent their understanding of clinical reports.
论文关键词:Knowledge acquisition,Bayesian networks,Directed acyclic graph,Diagnostic reasoning,Problem based learning
论文评审过程:Received 10 January 2011, Revised 31 October 2011, Accepted 28 November 2011, Available online 28 December 2011.
论文官网地址:https://doi.org/10.1016/j.artmed.2011.11.007