Dynamic Decision Support System Based on Bayesian Networks

Abstract

 The improvement of medical care quality is a significant interest for the future years. The fight against nosocomial infections (NI) in the intensive care units (ICU) is a good example. We will focus on a set of observations which reflect the dynamic aspect of the decision, result of the application of a Medical Decision Support System (MDSS). This system has to make dynamic decision on temporal data. We use dynamic Bayesian network (DBN) to model this dynamic process. It is a temporal reasoning within a real-time environment; we are interested in the Dynamic Decision Support Systems in healthcare domain (MDDSS).

Authors and Affiliations

Hela Ltifi , Ghada Trabelsi , Mounir Ben Ayed , Adel M. Alimi

Keywords

Related Articles

 New Cluster Validation with Input-Output Causality for Context-Based Gk Fuzzy Clustering

 In this paper, a cluster validity concept from an unsupervised to a supervised manner is presented. Most cluster validity criterions were established in an unsupervised manner, although many clustering methods perf...

 Association Rule Based Flexible Machine Learning Module for Embedded System Platforms like Android

 The past few years have seen a tremendous growth in the popularity of smartphones. As newer features continue to be added to smartphones to increase their utility, their significance will only increase in future. C...

 A Sparse Representation Method with Maximum Probability of Partial Ranking for Face Recognition

  Face recognition is a popular topic in computer vision applications. Compressive sensing is a novel sampling technique for finding sparse solutions to underdetermined linear systems. Recently, a sparse representat...

 Evaluation of Cirrus Cloud Detection Accuracy of GOSAT/CAI and Landsat-8 with Laser Radar: Lidar and Confirmation with Calipso Data

 Cirrus cloud detection accuracy of GOSAT/CAI and Landsat-8 is evaluated with a ground based Laser Radar: Lidar data and sky view camera data. Also, the evaluation results are confirmed with Calipso data together wi...

 Contradiction Resolution of Competitive and Input Neurons to Improve Prediction and Visualization Performance

In this paper, we propose a new type of informationtheoretic method to resolve the contradiction observed in competitive and input neurons. For competitive neurons, contradiction between self-evaluation (individuality) a...

Download PDF file
  • EP ID EP145575
  • DOI -
  • Views 119
  • Downloads 0

How To Cite

Hela Ltifi, Ghada Trabelsi, Mounir Ben Ayed, Adel M. Alimi (2012).  Dynamic Decision Support System Based on Bayesian Networks. International Journal of Advanced Research in Artificial Intelligence(IJARAI), 1(1), 22-29. https://europub.co.uk/articles/-A-145575