BMC Research Notes (Jul 2018)

Evaluation of Bayesian classifiers in asthma exacerbation prediction after medication discontinuation

  • Ioannis I. Spyroglou,
  • Gunter Spöck,
  • Alexandros G. Rigas,
  • E. N. Paraskakis

DOI
https://doi.org/10.1186/s13104-018-3621-1
Journal volume & issue
Vol. 11, no. 1
pp. 1 – 6

Abstract

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Abstract Objective The achievement of the optimal control of the disease is of cardinal importance in asthma treatment. As the control of the disease is sustained the medication should be gradually reduced and then stopped. Nevertheless, the discontinuation of asthma medication may lead to loss of disease control and eventually to an exacerbation of the disease. The goal of this paper is to examine the performance of Bayesian network classifiers in predicting asthma exacerbation based on several patient’s parameters such as objective measurements and medical history data. Results In this study several Bayesian network classifiers are presented and evaluated. It is shown that the proposed semi-naive network classifier with the use of Backward Sequential Elimination and Joining algorithm is able to predict if a patient will have an exacerbation of the disease after his last assessment with 93.84% accuracy and 90.9% sensitivity. In addition, the resulting structure and the conditional probability tables give a clear view of the probabilistic relationships between the used factors. This network may help the clinicians to identify the patients who are at high risk of having an exacerbation after stopping the medication and to confirm which factors are the most important.

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