A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of Influenza

<strong>Introduction:</strong> One major problem in analyzing epidemic data is the lack of data and high dependency among the available data, which is due to the fact that the epidemic process is not directly observable.<br /> <strong>Methods:</strong> One method for ep...

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Main Authors: Atefeh Sadat Mirarabshahi, Mehrdad Kargari
Format: Article
Language:English
Published: International Travel Medicine Center of Iran 2019-09-01
Series:International Journal of Travel Medicine and Global Health
Subjects:
Online Access:http://www.ijtmgh.com/article_95527_e442a668d19d6f8b097fdfbfd6297a5f.pdf
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spelling doaj-20f8db961f6947f7921eed927f611fed2020-11-25T02:15:09ZengInternational Travel Medicine Center of IranInternational Journal of Travel Medicine and Global Health2322-11002476-57592019-09-0173919810.15171/ijtmgh.2019.2095527A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of InfluenzaAtefeh Sadat Mirarabshahi0Mehrdad Kargari1Information Technology Department, Faculty of Industrial Engineering, Tarbiat Modares University, Tehran, IranInformation Technology Department, Faculty of Industrial Engineering, Tarbiat Modares University, Tehran, Iran<strong>Introduction:</strong> One major problem in analyzing epidemic data is the lack of data and high dependency among the available data, which is due to the fact that the epidemic process is not directly observable.<br /> <strong>Methods:</strong> One method for epidemic data analysis to estimate the desired epidemic parameters, such as disease transmission rate and recovery rate, is data intensification. In this method, unknown quantities are considered as additional parameters of the model and are extracted using other parameters. The Markov Chain Monte Carlo algorithm is extensively used in this field.<br /> <strong>Results:</strong> The current study presents a Bayesian statistical analysis of influenza outbreak data using Markov Chain Monte Carlo data intensification that is independent of probability approximation and provides a wider range of results than previous studies. A method for estimating the epidemic parameters has been presented in a way that the problem of uncertainty regarding the modeling of dynamic biological systems can be solved. The proposed method is then applied to fit an SIR-like flu transmission model to data from 19 years leading up to the seventh week of the 2017 incidence of influenza.<br /> <strong>Conclusion:</strong> The proposed method showed an improvement in estimating the values of all the parameters considered in the study. The results of this study showed that the distributions are significant and the error ranges are real.http://www.ijtmgh.com/article_95527_e442a668d19d6f8b097fdfbfd6297a5f.pdfdisease outbreakmetropolis-hastings algorithminfluenza
collection DOAJ
language English
format Article
sources DOAJ
author Atefeh Sadat Mirarabshahi
Mehrdad Kargari
spellingShingle Atefeh Sadat Mirarabshahi
Mehrdad Kargari
A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of Influenza
International Journal of Travel Medicine and Global Health
disease outbreak
metropolis-hastings algorithm
influenza
author_facet Atefeh Sadat Mirarabshahi
Mehrdad Kargari
author_sort Atefeh Sadat Mirarabshahi
title A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of Influenza
title_short A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of Influenza
title_full A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of Influenza
title_fullStr A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of Influenza
title_full_unstemmed A Disease Outbreak Prediction Model Using Bayesian Inference: A Case of Influenza
title_sort disease outbreak prediction model using bayesian inference: a case of influenza
publisher International Travel Medicine Center of Iran
series International Journal of Travel Medicine and Global Health
issn 2322-1100
2476-5759
publishDate 2019-09-01
description <strong>Introduction:</strong> One major problem in analyzing epidemic data is the lack of data and high dependency among the available data, which is due to the fact that the epidemic process is not directly observable.<br /> <strong>Methods:</strong> One method for epidemic data analysis to estimate the desired epidemic parameters, such as disease transmission rate and recovery rate, is data intensification. In this method, unknown quantities are considered as additional parameters of the model and are extracted using other parameters. The Markov Chain Monte Carlo algorithm is extensively used in this field.<br /> <strong>Results:</strong> The current study presents a Bayesian statistical analysis of influenza outbreak data using Markov Chain Monte Carlo data intensification that is independent of probability approximation and provides a wider range of results than previous studies. A method for estimating the epidemic parameters has been presented in a way that the problem of uncertainty regarding the modeling of dynamic biological systems can be solved. The proposed method is then applied to fit an SIR-like flu transmission model to data from 19 years leading up to the seventh week of the 2017 incidence of influenza.<br /> <strong>Conclusion:</strong> The proposed method showed an improvement in estimating the values of all the parameters considered in the study. The results of this study showed that the distributions are significant and the error ranges are real.
topic disease outbreak
metropolis-hastings algorithm
influenza
url http://www.ijtmgh.com/article_95527_e442a668d19d6f8b097fdfbfd6297a5f.pdf
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