Temporal abstraction and temporal Bayesian networks in clinical domains: A survey

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ObjectivesTemporal abstraction (TA) of clinical data aims to abstract and interpret clinical data into meaningful higher-level interval concepts. Abstracted concepts are used for diagnostic, prediction and therapy planning purposes. On the other hand, temporal Bayesian networks (TBNs) are temporal extensions of the known probabilistic graphical models, Bayesian networks. TBNs can represent temporal relationships between events and their state changes, or the evolution of a process, through time. This paper offers a survey on techniques/methods from these two areas that were used independently in many clinical domains (e.g. diabetes, hepatitis, cancer) for various clinical tasks (e.g. diagnosis, prognosis). A main objective of this survey, in addition to presenting the key aspects of TA and TBNs, is to point out important benefits from a potential integration of TA and TBNs in medical domains and tasks. The motivation for integrating these two areas is their complementary function: TA provides clinicians with high level views of data while TBNs serve as a knowledge representation and reasoning tool under uncertainty, which is inherent in all clinical tasks.

论文关键词:Temporal abstraction,Temporal reasoning,Bayesian networks,Temporal Bayesian networks,Medical knowledge-based systems

论文评审过程:Received 6 February 2012, Revised 15 November 2013, Accepted 27 December 2013, Available online 17 January 2014.

论文官网地址:https://doi.org/10.1016/j.artmed.2013.12.007