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Published in: BMC Infectious Diseases 1/2021

Open Access 01-12-2021 | Research article

Research on the predictive effect of a combined model of ARIMA and neural networks on human brucellosis in Shanxi Province, China: a time series predictive analysis

Authors: Mengmeng Zhai, Wenhan Li, Ping Tie, Xuchun Wang, Tao Xie, Hao Ren, Zhuang Zhang, Weimei Song, Dichen Quan, Meichen Li, Limin Chen, Lixia Qiu

Published in: BMC Infectious Diseases | Issue 1/2021

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Abstract

Background

Brucellosis is a major public health problem that seriously affects developing countries and could cause significant economic losses to the livestock industry and great harm to human health. Reasonable prediction of the incidence is of great significance in controlling brucellosis and taking preventive measures.

Methods

Our human brucellosis incidence data were extracted from Shanxi Provincial Center for Disease Control and Prevention. We used seasonal-trend decomposition using Loess (STL) and monthplot to analyse the seasonal characteristics of human brucellosis in Shanxi Province from 2007 to 2017. The autoregressive integrated moving average (ARIMA) model, a combined model of ARIMA and the back propagation neural network (ARIMA-BPNN), and a combined model of ARIMA and the Elman recurrent neural network (ARIMA-ERNN) were established separately to make predictions and identify the best model. Additionally, the mean squared error (MAE), mean absolute error (MSE) and mean absolute percentage error (MAPE) were used to evaluate the performance of the model.

Results

We observed that the time series of human brucellosis in Shanxi Province increased from 2007 to 2014 but decreased from 2015 to 2017. It had obvious seasonal characteristics, with the peak lasting from March to July every year. The best fitting and prediction effect was the ARIMA-ERNN model. Compared with those of the ARIMA model, the MAE, MSE and MAPE of the ARIMA-ERNN model decreased by 18.65, 31.48 and 64.35%, respectively, in fitting performance; in terms of prediction performance, the MAE, MSE and MAPE decreased by 60.19, 75.30 and 64.35%, respectively. Second, compared with those of ARIMA-BPNN, the MAE, MSE and MAPE of ARIMA-ERNN decreased by 9.60, 15.73 and 11.58%, respectively, in fitting performance; in terms of prediction performance, the MAE, MSE and MAPE decreased by 31.63, 45.79 and 29.59%, respectively.

Conclusions

The time series of human brucellosis in Shanxi Province from 2007 to 2017 showed obvious seasonal characteristics. The fitting and prediction performances of the ARIMA-ERNN model were better than those of the ARIMA-BPNN and ARIMA models. This will provide some theoretical support for the prediction of infectious diseases and will be beneficial to public health decision making.
Literature
1.
go back to reference Zheng RJ, Xie SS, Lu XB, Sun LH, Zhou Y, Zhang YX, et al. A systematic review and meta-analysis of epidemiology and clinical manifestations of human Brucellosis in china. Biomed Res Int. 2018;2018:e5712920. Zheng RJ, Xie SS, Lu XB, Sun LH, Zhou Y, Zhang YX, et al. A systematic review and meta-analysis of epidemiology and clinical manifestations of human Brucellosis in china. Biomed Res Int. 2018;2018:e5712920.
2.
go back to reference Jia P, Joyner A. Human brucellosis occurrences in Inner Mongolia, China: a spatio-temporal distribution and ecological niche modeling approach. BMC Infect Dis. 2015;15:36.CrossRef Jia P, Joyner A. Human brucellosis occurrences in Inner Mongolia, China: a spatio-temporal distribution and ecological niche modeling approach. BMC Infect Dis. 2015;15:36.CrossRef
4.
go back to reference Kaan JA, Frakking FNJ, Arents NLA, Anten S, Roest HIJ, Rothbarth PH. Clinical manifestations and hazards of brucellosis in the Netherlands. Ned Tijdschr Geneeskd. 2012;156(12):A4460.PubMed Kaan JA, Frakking FNJ, Arents NLA, Anten S, Roest HIJ, Rothbarth PH. Clinical manifestations and hazards of brucellosis in the Netherlands. Ned Tijdschr Geneeskd. 2012;156(12):A4460.PubMed
5.
go back to reference Ahmed W, Zheng K, Liu ZF. Establishment of chronic infection: Brucella's stealth strategy. Front Cell Infect Microbiol. 2016;6:30.CrossRef Ahmed W, Zheng K, Liu ZF. Establishment of chronic infection: Brucella's stealth strategy. Front Cell Infect Microbiol. 2016;6:30.CrossRef
10.
go back to reference Bai Y, Cui B, Tie P, Yan C, Zheng Y, Wang T, et al. Epidemiology of brucellosis in Shanxi Province, 2006-2015. Dis Surveil. 2016;31(12):1018–22. Bai Y, Cui B, Tie P, Yan C, Zheng Y, Wang T, et al. Epidemiology of brucellosis in Shanxi Province, 2006-2015. Dis Surveil. 2016;31(12):1018–22.
18.
go back to reference Bagheri H, Tapak L, Karami M, Amiri B, Cherghi Z. Epidemiological features of human brucellosis in Iran (2011-2018) and prediction of brucellosis with data-mining models. J Res Health Sci. 2019;19(4):e00462.PubMedPubMedCentral Bagheri H, Tapak L, Karami M, Amiri B, Cherghi Z. Epidemiological features of human brucellosis in Iran (2011-2018) and prediction of brucellosis with data-mining models. J Res Health Sci. 2019;19(4):e00462.PubMedPubMedCentral
21.
go back to reference Yan WR, Shi LY, Zhang HJ, Zhou YK. Introduction on a forecasting model for infectious disease incidence rate based on radial basis function network. Chin J Epidemiol. 2007;28(12):1219–22. Yan WR, Shi LY, Zhang HJ, Zhou YK. Introduction on a forecasting model for infectious disease incidence rate based on radial basis function network. Chin J Epidemiol. 2007;28(12):1219–22.
24.
go back to reference Zhao HY, Hua Q, Chen HB, et al. Thermal-sensor-based occupancy detection for smart buildings using machine-learning methods. Acm T Des Automat EL. 2018;23(4):54. Zhao HY, Hua Q, Chen HB, et al. Thermal-sensor-based occupancy detection for smart buildings using machine-learning methods. Acm T Des Automat EL. 2018;23(4):54.
31.
go back to reference Sanchez AB, Ordonez C, Lasheras FS, Juez FJ, Roca-Pardinas J. Forecasting SO2 pollution incidents by means of Elman Artificial Neural Networks and ARIMA Models. Abstr Appl Anal. 2013;2013:e238259.CrossRef Sanchez AB, Ordonez C, Lasheras FS, Juez FJ, Roca-Pardinas J. Forecasting SO2 pollution incidents by means of Elman Artificial Neural Networks and ARIMA Models. Abstr Appl Anal. 2013;2013:e238259.CrossRef
34.
go back to reference Cao N, Guo SY, Yan T, Zhu H, Zhang XG. Epidemiological survey of human brucellosis in Inner Mongolia, China, 2010–2014: a high risk groups-based survey. J Infect Public Health. 2018;11(1):24–9.CrossRef Cao N, Guo SY, Yan T, Zhu H, Zhang XG. Epidemiological survey of human brucellosis in Inner Mongolia, China, 2010–2014: a high risk groups-based survey. J Infect Public Health. 2018;11(1):24–9.CrossRef
35.
go back to reference Ministry of Health of the People’s Republic of China. WS 269–2007 diagnostic criteria for Brucellosis. Beijing: People’s Health Publishing House; 2007. Ministry of Health of the People’s Republic of China. WS 269–2007 diagnostic criteria for Brucellosis. Beijing: People’s Health Publishing House; 2007.
42.
go back to reference Ma L, Yu JY, Wu Q, Sang ZH. Epidemic trend analysis and prevention and control countermeasures of statutory infectious diseases in Shanxi Province from 1999 to 2013. Chin Rem Clin. 2015;15(10):1419–21. Ma L, Yu JY, Wu Q, Sang ZH. Epidemic trend analysis and prevention and control countermeasures of statutory infectious diseases in Shanxi Province from 1999 to 2013. Chin Rem Clin. 2015;15(10):1419–21.
43.
go back to reference Bai YF, Tie P, Yan CF, Zheng YH, Wang T, et al. Analysis on surveillance results of brucellosis at nation surveillance spots in Shanxi, 2013-2016. Chin J Public Health Manag. 2018;34(6):837–41. Bai YF, Tie P, Yan CF, Zheng YH, Wang T, et al. Analysis on surveillance results of brucellosis at nation surveillance spots in Shanxi, 2013-2016. Chin J Public Health Manag. 2018;34(6):837–41.
44.
go back to reference Cui BY. Epidemic surveilance and control of brucellosis in China. Dis Surveil. 2007;22(10):649–51. Cui BY. Epidemic surveilance and control of brucellosis in China. Dis Surveil. 2007;22(10):649–51.
Metadata
Title
Research on the predictive effect of a combined model of ARIMA and neural networks on human brucellosis in Shanxi Province, China: a time series predictive analysis
Authors
Mengmeng Zhai
Wenhan Li
Ping Tie
Xuchun Wang
Tao Xie
Hao Ren
Zhuang Zhang
Weimei Song
Dichen Quan
Meichen Li
Limin Chen
Lixia Qiu
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Infectious Diseases / Issue 1/2021
Electronic ISSN: 1471-2334
DOI
https://doi.org/10.1186/s12879-021-05973-4

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