Title of article :
Tuberculosis Surveillance Using a Hidden Markov Model
Author/Authors :
Rafei, A Dept. of Mathematics and Statistics - School of Health Management and Information Sciences - Tehran University of Medical Sciences, Tehran , Jamshidi Orak, R Dept. of Mathematics and Statistics - School of Health Management and Information Sciences - Tehran University of Medical Sciences, Tehran , Pasha, E Dept. of Mathematics - School of Mathematics and Computer - Kharazmi University, Tehran
Abstract :
Background: Routinely collected data from tuberculosis surveillance system can be used to investigate and monitor
the irregularities and abrupt changes of the disease incidence. We aimed at using a Hidden Markov Model in order to
detect the abnormal states of pulmonary tuberculosis in Iran.
Methods: Data for this study were the weekly number of newly diagnosed cases with sputum smear-positive pulmonary
tuberculosis reported between April 2005 and March 2011 throughout Iran. In order to detect the unusual states
of the disease, two Hidden Markov Models were applied to the data with and without seasonal trends as baselines.
Consequently, the best model was selected and compared with the results of Serfling epidemic threshold which is typically
used in the surveillance of infectious diseases.
Results: Both adjusted R-squared and Bayesian Information Criterion (BIC) reflected better goodness-of-fit for the
model with seasonal trends (0.72 and -1336.66, respectively) than the model without seasonality (0.56 and -1386.75).
Moreover, according to the Serfling epidemic threshold, higher values of sensitivity and specificity suggest a higher
validity for the seasonal model (0.87 and 0.94, respectively) than model without seasonality (0.73 and 0.68, respectively).
Conclusion: A two-state Hidden Markov Model along with a seasonal trend as a function of the model parameters
provides an effective warning system for the surveillance of tuberculosis.
Keywords :
Sputum , Pulmonary tuberculosis , Hidden Markov model , Cyclic regression , EM-algorithm
Journal title :
Astroparticle Physics