Literature DB >> 10906615

A probabilistic and decision-theoretic approach to the management of infectious disease at the ICU.

P J Lucas1, N C de Bruijn, K Schurink, A Hoepelman.   

Abstract

The medical community is presently in a state of transition from a situation dominated by the paper medical record to a future situation where all patient data will be available on-line by an electronic clinical information system. In data-intensive clinical environments, such as intensive care units (ICUs), clinical patient data are already fully managed by such systems in a number of hospitals. However, providing facilities for storing and retrieving patient data to clinicians is not enough; clinical information systems should also offer facilities to assist clinicians in dealing with hard clinical problems. Extending an information system's capabilities by integrating it with a decision-support system may be a solution. In this paper, we describe the development of a probabilistic and decision-theoretic system that aims to assist clinicians in diagnosing and treating patients with pneumonia in the intensive-care unit. Its underlying probabilistic-network model includes temporal knowledge to diagnose pneumonia on the basis of the likelihood of laryngotracheobronchial-tree colonisation by pathogens, and symptoms and signs actually present in the patient. Optimal antimicrobial therapy is selected by balancing the expected efficacy of treatment, which is related to the likelihood of particular pathogens causing the infection, against the spectrum of antimicrobial treatment. The models were built on the basis of expert knowledge. The patient data that were available were of limited value in the initial construction of the models because of problems of incompleteness. In particular, detailed temporal information was missing. By means of a number of different techniques, among others from the theory of linear programming, these data have been used to check the probabilistic information elicited from infectious-disease experts. The results of an evaluation of a number of slightly different models using retrospective patient data are discussed as well.

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Year:  2000        PMID: 10906615     DOI: 10.1016/s0933-3657(00)00048-8

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


  7 in total

1.  A Bayesian decision-support system for diagnosing ventilator-associated pneumonia.

Authors:  Carolina A M Schurink; Stefan Visscher; Peter J F Lucas; Henk J van Leeuwen; Erik Buskens; Reinier G Hoff; Andy I M Hoepelman; Marc J M Bonten
Journal:  Intensive Care Med       Date:  2007-06-16       Impact factor: 17.440

2.  Impact of precision of Bayesian network parameters on accuracy of medical diagnostic systems.

Authors:  Agnieszka Oniśko; Marek J Druzdzel
Journal:  Artif Intell Med       Date:  2013-03-05       Impact factor: 5.326

Review 3.  Big data analysis using modern statistical and machine learning methods in medicine.

Authors:  Changwon Yoo; Luis Ramirez; Juan Liuzzi
Journal:  Int Neurourol J       Date:  2014-06-26       Impact factor: 2.835

4.  A novel approach for prediction of tacrolimus blood concentration in liver transplantation patients in the intensive care unit through support vector regression.

Authors:  Stijn Van Looy; Thierry Verplancke; Dominique Benoit; Eric Hoste; Georges Van Maele; Filip De Turck; Johan Decruyenaere
Journal:  Crit Care       Date:  2007       Impact factor: 9.097

5.  Bayesian networks for clinical decision support in lung cancer care.

Authors:  M Berkan Sesen; Ann E Nicholson; Rene Banares-Alcantara; Timor Kadir; Michael Brady
Journal:  PLoS One       Date:  2013-12-06       Impact factor: 3.240

6.  From complex questionnaire and interviewing data to intelligent Bayesian network models for medical decision support.

Authors:  Anthony Costa Constantinou; Norman Fenton; William Marsh; Lukasz Radlinski
Journal:  Artif Intell Med       Date:  2016-01-16       Impact factor: 5.326

7.  Integrating Expert Knowledge with Data in Bayesian Networks: Preserving Data-Driven Expectations when the Expert Variables Remain Unobserved.

Authors:  Anthony Costa Constantinou; Norman Fenton; Martin Neil
Journal:  Expert Syst Appl       Date:  2016-03-18       Impact factor: 6.954

  7 in total

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