Literature DB >> 24529699

Temporal abstraction and temporal Bayesian networks in clinical domains: a survey.

Kalia Orphanou1, Athena Stassopoulou2, Elpida Keravnou3.   

Abstract

OBJECTIVES: Temporal 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.
METHODS: Key publications from these two areas of relevance to clinical systems, mainly circumscribed to the latest two decades, are reviewed and classified. TA techniques are compared on the basis of: (a) knowledge acquisition and representation for deriving TA concepts and (b) methodology for deriving basic and complex temporal abstractions. TBNs are compared on the basis of: (a) representation of time, (b) knowledge representation and acquisition, (c) inference methods and the computational demands of the network, and (d) their applications in medicine.
RESULTS: The survey performs an extensive comparative analysis to illustrate the separate merits and limitations of various TA and TBN techniques used in clinical systems with the purpose of anticipating potential gains through an integration of the two techniques, thus leading to a unified methodology for clinical systems. The surveyed contributions are evaluated using frameworks of respective key features. In addition, for the evaluation of TBN methods, a unifying clinical domain (diabetes) is used.
CONCLUSION: The main conclusion transpiring from this review is that techniques/methods from these two areas, that so far are being largely used independently of each other in clinical domains, could be effectively integrated in the context of medical decision-support systems. The anticipated key benefits of the perceived integration are: (a) during problem solving, the reasoning can be directed at different levels of temporal and/or conceptual abstractions since the nodes of the TBNs can be complex entities, temporally and structurally and (b) during model building, knowledge generated in the form of basic and/or complex abstractions, can be deployed in a TBN.
Copyright © 2014 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Bayesian networks; Medical knowledge-based systems; Temporal Bayesian networks; Temporal abstraction; Temporal reasoning

Mesh:

Year:  2014        PMID: 24529699     DOI: 10.1016/j.artmed.2013.12.007

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  8 in total

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Authors:  Malte Ganssauge; Rema Padman; Pradip Teredesai; Ameet Karambelkar
Journal:  AMIA Annu Symp Proc       Date:  2017-02-10

2.  A Temporal Mining Framework for Classifying Un-Evenly Spaced Clinical Data: An Approach for Building Effective Clinical Decision-Making System.

Authors:  Nancy Yesudhas Jane; Khanna Harichandran Nehemiah; Kannan Arputharaj
Journal:  Appl Clin Inform       Date:  2016-01-13       Impact factor: 2.342

3.  Estimating Disease Onset Time by Modeling Lab Result Trajectories via Bayes Networks.

Authors:  Wonsuk Oh; Pranjul Yadav; Vipin Kumar; Pedro J Caraballo; M Regina Castro; Michael S Steinbach; Gyorgy J Simon
Journal:  IEEE Int Conf Healthc Inform       Date:  2017-09-14

Review 4.  Temporal data representation, normalization, extraction, and reasoning: A review from clinical domain.

Authors:  Mohcine Madkour; Driss Benhaddou; Cui Tao
Journal:  Comput Methods Programs Biomed       Date:  2016-02-23       Impact factor: 5.428

5.  A Computational Method for Learning Disease Trajectories From Partially Observable EHR Data.

Authors:  Wonsuk Oh; Michael S Steinbach; M Regina Castro; Kevin A Peterson; Vipin Kumar; Pedro J Caraballo; Gyorgy J Simon
Journal:  IEEE J Biomed Health Inform       Date:  2021-07-27       Impact factor: 7.021

6.  Feature engineering with clinical expert knowledge: A case study assessment of machine learning model complexity and performance.

Authors:  Kenneth D Roe; Vibhu Jawa; Xiaohan Zhang; Christopher G Chute; Jeremy A Epstein; Jordan Matelsky; Ilya Shpitser; Casey Overby Taylor
Journal:  PLoS One       Date:  2020-04-23       Impact factor: 3.240

7.  Patient-Generated Health Data Integration and Advanced Analytics for Diabetes Management: The AID-GM Platform.

Authors:  Elisa Salvi; Pietro Bosoni; Valentina Tibollo; Lisanne Kruijver; Valeria Calcaterra; Lucia Sacchi; Riccardo Bellazzi; Cristiana Larizza
Journal:  Sensors (Basel)       Date:  2019-12-24       Impact factor: 3.576

8.  Longitudinal Risk Prediction of Chronic Kidney Disease in Diabetic Patients Using a Temporal-Enhanced Gradient Boosting Machine: Retrospective Cohort Study.

Authors:  Yong Hu; Mei Liu; Xing Song; Lemuel R Waitman; Alan Sl Yu; David C Robbins
Journal:  JMIR Med Inform       Date:  2020-01-31
  8 in total

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