Skip to main content
Top
Published in: BMC Infectious Diseases 1/2019

Open Access 01-12-2019 | Research article

Forecasting incidence of hand, foot and mouth disease using BP neural networks in Jiangsu province, China

Authors: Wendong Liu, Changjun Bao, Yuping Zhou, Hong Ji, Ying Wu, Yingying Shi, Wenqi Shen, Jing Bao, Juan Li, Jianli Hu, Xiang Huo

Published in: BMC Infectious Diseases | Issue 1/2019

Login to get access

Abstract

Background

Hand, foot and mouth disease (HFMD) is a rising public health problem and has attracted considerable attention worldwide. The purpose of this study was to develop an optimal model with meteorological factors to predict the epidemic of HFMD.

Methods

Two types of methods, back propagation neural networks (BP) and auto-regressive integrated moving average (ARIMA), were employed to develop forecasting models, based on the monthly HFMD incidences and meteorological factors during 2009–2016 in Jiangsu province, China. Root mean square error (RMSE) and mean absolute percentage error (MAPE) were employed to select model and evaluate the performance of the models.

Results

Four models were constructed. The multivariate BP model was constructed using the HFMD incidences lagged from 1 to 4 months, mean temperature, rainfall and their one order lagged terms as inputs. The other BP model was fitted just using the lagged HFMD incidences as inputs. The univariate ARIMA model was specified as ARIMA (1,0,1)(1,1,0)12 (AIC = 1132.12, BIC = 1440.43). And the multivariate ARIMAX with one order lagged temperature as external predictor was fitted based on this ARIMA model (AIC = 1132.37, BIC = 1142.76). The multivariate BP model performed the best in both model fitting stage and prospective forecasting stage, with a MAPE no more than 20%. The performance of the multivariate ARIMAX model was similar to that of the univariate ARIMA model. Both performed much worse than the two BP models, with a high MAPE near to 40%.

Conclusion

The multivariate BP model effectively integrated the autocorrelation of the HFMD incidence series. Meanwhile, it also comprehensively combined the climatic variables and their hysteresis effects. The introduction of the climate terms significantly improved the prediction accuracy of the BP model. This model could be an ideal method to predict the epidemic level of HFMD, which is of great importance for the public health authorities.
Literature
4.
go back to reference Chan KP, Goh KT, Chong CY, Teo ES, Lau GKK, Ling AE. Epidemic hand, foot and mouth disease caused by human enterovirus 71, Singapore. Emerg Infect Dis. 2003;9(1):78–85 PubMed PMID: WOS:000180503300012.CrossRef Chan KP, Goh KT, Chong CY, Teo ES, Lau GKK, Ling AE. Epidemic hand, foot and mouth disease caused by human enterovirus 71, Singapore. Emerg Infect Dis. 2003;9(1):78–85 PubMed PMID: WOS:000180503300012.CrossRef
6.
go back to reference Fujimoto T, Chikahira M, Yoshida S, Ebira H, Hasegawa A, Totsuka A, et al. Outbreak of central nervous system disease associated with hand, foot, and mouth disease in Japan during the summer of 2000: detection and molecular epidemiology of enterovirus 71. Microbiol Immunol. 2002;46(9):621–7 PubMed PMID: 12437029.CrossRef Fujimoto T, Chikahira M, Yoshida S, Ebira H, Hasegawa A, Totsuka A, et al. Outbreak of central nervous system disease associated with hand, foot, and mouth disease in Japan during the summer of 2000: detection and molecular epidemiology of enterovirus 71. Microbiol Immunol. 2002;46(9):621–7 PubMed PMID: 12437029.CrossRef
7.
go back to reference Ang LW, Koh BK, Chan KP, Chua LT, James L, Goh KT. Epidemiology and control of hand, foot and mouth disease in Singapore, 2001-2007. Ann Acad Med Singap. 2009;38(2):106–12 PubMed PMID: 19271036.PubMed Ang LW, Koh BK, Chan KP, Chua LT, James L, Goh KT. Epidemiology and control of hand, foot and mouth disease in Singapore, 2001-2007. Ann Acad Med Singap. 2009;38(2):106–12 PubMed PMID: 19271036.PubMed
17.
go back to reference Du K, Swamy M. Neural networks and statistical learning. London: Springer; 2014.CrossRef Du K, Swamy M. Neural networks and statistical learning. London: Springer; 2014.CrossRef
19.
go back to reference Box G, Jenkins G, Reinsel G. Time series analysis: forecasting and control. Hoboken: Wiley; 2008.CrossRef Box G, Jenkins G, Reinsel G. Time series analysis: forecasting and control. Hoboken: Wiley; 2008.CrossRef
26.
go back to reference Schittenkopf C, Deco G, Brauer W. Two strategies to avoid overfitting in feedforward networks. Neural Netw. 1997;10(3):12.CrossRef Schittenkopf C, Deco G, Brauer W. Two strategies to avoid overfitting in feedforward networks. Neural Netw. 1997;10(3):12.CrossRef
Metadata
Title
Forecasting incidence of hand, foot and mouth disease using BP neural networks in Jiangsu province, China
Authors
Wendong Liu
Changjun Bao
Yuping Zhou
Hong Ji
Ying Wu
Yingying Shi
Wenqi Shen
Jing Bao
Juan Li
Jianli Hu
Xiang Huo
Publication date
01-12-2019
Publisher
BioMed Central
Published in
BMC Infectious Diseases / Issue 1/2019
Electronic ISSN: 1471-2334
DOI
https://doi.org/10.1186/s12879-019-4457-6

Other articles of this Issue 1/2019

BMC Infectious Diseases 1/2019 Go to the issue
Obesity Clinical Trial Summary

At a glance: The STEP trials

A round-up of the STEP phase 3 clinical trials evaluating semaglutide for weight loss in people with overweight or obesity.

Developed by: Springer Medicine

Highlights from the ACC 2024 Congress

Year in Review: Pediatric cardiology

Watch Dr. Anne Marie Valente present the last year's highlights in pediatric and congenital heart disease in the official ACC.24 Year in Review session.

Year in Review: Pulmonary vascular disease

The last year's highlights in pulmonary vascular disease are presented by Dr. Jane Leopold in this official video from ACC.24.

Year in Review: Valvular heart disease

Watch Prof. William Zoghbi present the last year's highlights in valvular heart disease from the official ACC.24 Year in Review session.

Year in Review: Heart failure and cardiomyopathies

Watch this official video from ACC.24. Dr. Biykem Bozkurt discuss last year's major advances in heart failure and cardiomyopathies.