Inference and prediction of malaria transmission dynamics using time series data
Abstract Background Disease surveillance systems are essential for effective disease intervention and control by monitoring disease prevalence as time series. To evaluate the severity of an epidemic, statistical methods are widely used to forecast the trend, seasonality, and the possible number of i...
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doaj-10a2dd29dc8a4eaea282b3afe3d153cc2020-11-25T03:02:41ZengBMCInfectious Diseases of Poverty2049-99572020-07-019111310.1186/s40249-020-00696-1Inference and prediction of malaria transmission dynamics using time series dataBenyun Shi0Shan Lin1Qi Tan2Jie Cao3Xiaohong Zhou4Shang Xia5Xiao-Nong Zhou6Jiming Liu7School of Computer Science and Technology, Nanjing Tech UniversityCollege of Information Engineering, Nanjing University of Finance & EconomicsDepartment of Computer Science, Hong Kong Baptist UniversityCollege of Information Engineering, Nanjing University of Finance & EconomicsDepartment of Pathogen Biology, School of Public Health, Southern Medical UniversityNational Institute of Parasitic Diseases, Chinese Center for Diseases Control and PreventionNational Institute of Parasitic Diseases, Chinese Center for Diseases Control and PreventionDepartment of Computer Science, Hong Kong Baptist UniversityAbstract Background Disease surveillance systems are essential for effective disease intervention and control by monitoring disease prevalence as time series. To evaluate the severity of an epidemic, statistical methods are widely used to forecast the trend, seasonality, and the possible number of infections of a disease. However, most statistical methods are limited in revealing the underlying dynamics of disease transmission, which may be affected by various impact factors, such as environmental, meteorological, and physiological factors. In this study, we focus on investigating malaria transmission dynamics based on time series data. Methods A data-driven nonlinear stochastic model is proposed to infer and predict the dynamics of malaria transmission based on the time series of prevalence data. Specifically, the dynamics of malaria transmission is modeled based on the notion of vectorial capacity (VCAP) and entomological inoculation rate (EIR). A particle Markov chain Monte Carlo (PMCMC) method is employed to estimate the model parameters. Accordingly, a one-step-ahead prediction method is proposed to project the number of future malaria infections. Finally, two case studies are carried out on the inference and prediction of Plasmodium vivax transmission in Tengchong and Longling, Yunnan province, China. Results The results show that the trained data-driven stochastic model can well fit the historical time series of P. vivax prevalence data in both counties from 2007 to 2010. Moreover, with well-trained model parameters, the proposed one-step-ahead prediction method can achieve better performances than that of the seasonal autoregressive integrated moving average model with respect to predicting the number of future malaria infections. Conclusions By involving dynamically changing impact factors, the proposed data-driven model together with the PMCMC method can successfully (i) depict the dynamics of malaria transmission, and (ii) achieve accurate one-step-ahead prediction about malaria infections. Such a data-driven method has the potential to investigate malaria transmission dynamics in other malaria-endemic countries/regions.http://link.springer.com/article/10.1186/s40249-020-00696-1 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Benyun Shi Shan Lin Qi Tan Jie Cao Xiaohong Zhou Shang Xia Xiao-Nong Zhou Jiming Liu |
spellingShingle |
Benyun Shi Shan Lin Qi Tan Jie Cao Xiaohong Zhou Shang Xia Xiao-Nong Zhou Jiming Liu Inference and prediction of malaria transmission dynamics using time series data Infectious Diseases of Poverty |
author_facet |
Benyun Shi Shan Lin Qi Tan Jie Cao Xiaohong Zhou Shang Xia Xiao-Nong Zhou Jiming Liu |
author_sort |
Benyun Shi |
title |
Inference and prediction of malaria transmission dynamics using time series data |
title_short |
Inference and prediction of malaria transmission dynamics using time series data |
title_full |
Inference and prediction of malaria transmission dynamics using time series data |
title_fullStr |
Inference and prediction of malaria transmission dynamics using time series data |
title_full_unstemmed |
Inference and prediction of malaria transmission dynamics using time series data |
title_sort |
inference and prediction of malaria transmission dynamics using time series data |
publisher |
BMC |
series |
Infectious Diseases of Poverty |
issn |
2049-9957 |
publishDate |
2020-07-01 |
description |
Abstract Background Disease surveillance systems are essential for effective disease intervention and control by monitoring disease prevalence as time series. To evaluate the severity of an epidemic, statistical methods are widely used to forecast the trend, seasonality, and the possible number of infections of a disease. However, most statistical methods are limited in revealing the underlying dynamics of disease transmission, which may be affected by various impact factors, such as environmental, meteorological, and physiological factors. In this study, we focus on investigating malaria transmission dynamics based on time series data. Methods A data-driven nonlinear stochastic model is proposed to infer and predict the dynamics of malaria transmission based on the time series of prevalence data. Specifically, the dynamics of malaria transmission is modeled based on the notion of vectorial capacity (VCAP) and entomological inoculation rate (EIR). A particle Markov chain Monte Carlo (PMCMC) method is employed to estimate the model parameters. Accordingly, a one-step-ahead prediction method is proposed to project the number of future malaria infections. Finally, two case studies are carried out on the inference and prediction of Plasmodium vivax transmission in Tengchong and Longling, Yunnan province, China. Results The results show that the trained data-driven stochastic model can well fit the historical time series of P. vivax prevalence data in both counties from 2007 to 2010. Moreover, with well-trained model parameters, the proposed one-step-ahead prediction method can achieve better performances than that of the seasonal autoregressive integrated moving average model with respect to predicting the number of future malaria infections. Conclusions By involving dynamically changing impact factors, the proposed data-driven model together with the PMCMC method can successfully (i) depict the dynamics of malaria transmission, and (ii) achieve accurate one-step-ahead prediction about malaria infections. Such a data-driven method has the potential to investigate malaria transmission dynamics in other malaria-endemic countries/regions. |
url |
http://link.springer.com/article/10.1186/s40249-020-00696-1 |
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