Hand, Foot, and Mouth Disease in Thailand: A Comprehensive Modelling of Epidemic Dynamics

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Author listVerma Suraj, Razzaque M.A., Sangtongdee U., Arpnikanondt C., Tassaneetrithep B., Arthan D., Paratthakonkun C., Soonthornworasiri N.

PublisherTaylor & Francis: STM, Behavioural Science and Public Health Titles / Hindawi Publishing Corporation / Hindawi Limited

Publication year2021

JournalComputational and Mathematical Methods in Medicine (1748-670X)

Volume number2021

Start page1

End page15

Number of pages15

ISSN1748-670X

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85102646282&doi=10.1155%2f2021%2f6697522&partnerID=40&md5=190ac8a23a8fe8bbdd43600e93d295cd

LanguagesEnglish-Great Britain (EN-GB)


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Abstract

Hand, foot, and mouth disease (HFMD) is a highly contagious disease with several outbreaks in Asian-Pacific countries, including Thailand. With such epidemic characteristics and potential economic impact, HFMD is a significant public health issue in Thailand. Generally, contagious/infectious diseases' transmission dynamics vary across geolocations due to different socioeconomic situations, demography, and lifestyles. Hence, a nationwide comprehensive model of the disease's epidemic dynamics can provide information to understand better and predict a potential outbreak of this disease and efficiently and effectively manage its impact. However, there is no nationwide and comprehensive (i.e., the inclusion of reinfections in the model) model of HFDM dynamics for Thailand. This paper has endeavoured to promote nationwide comprehensive modelling of HFMD's epidemic dynamics and comprehend the reinfection cases. We have formulated the SEIRS epidemiological model with dynamic vitals, including reinfections, to explore this disease's prevalence. We also introduced periodic seasonality to reproduce the seasonal effect. The pattern of spread of this disease is uneven across the provinces in Thailand, so we used K-means clustering algorithm to cluster those provinces into three groups (i.e., highly, moderately, and least affected levels). We also analysed health records collected from district hospitals, which suggest significant reinfection cases. For example, we found that 11% (approximately) of infectious patients return for repeat treatment within the study period. We also performed sensitivity analysis which indicates that the basic reproduction number (R0) is sensitive to the rate of transmission (β) and the rate at which infected people recover (γ). By fitting the model with HFMD confirmed data for the provinces in each cluster, the basic reproduction number (R0) was estimated to be 2.643, 1.91, and 3.246 which are greater than 1. Based on this high R0, this study recommends that this disease will persist in the coming years under identical cultural and environmental conditions. © 2021 Suraj Verma et al.


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Last updated on 2023-23-09 at 07:36