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Using deep learning to predict the hand-foot-and-mouth disease of enterovirus A71 subtype in Beijing from 2011 to 2018
by
Wang, Quanyi
, Zeng, Daniel
, Wang, Xiaoli
, Wang, Yuejiao
, Cao, Zhidong
in
639/705/117
/ 692/699/255
/ Age
/ Age groups
/ Animals
/ Beijing - epidemiology
/ Child
/ Child, Preschool
/ Databases, Factual
/ Deep Learning
/ Disease Outbreaks - statistics & numerical data
/ Enterovirus A, Human - immunology
/ Enterovirus A, Human - isolation & purification
/ Female
/ Hand, Foot and Mouth Disease - diagnosis
/ Hand, Foot and Mouth Disease - virology
/ Hand-foot-and-mouth disease
/ Humanities and Social Sciences
/ Humans
/ Infant
/ Infant, Newborn
/ Models, Theoretical
/ multidisciplinary
/ Neural networks
/ Predictions
/ Science
/ Science (multidisciplinary)
/ Seasons
2020
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Using deep learning to predict the hand-foot-and-mouth disease of enterovirus A71 subtype in Beijing from 2011 to 2018
by
Wang, Quanyi
, Zeng, Daniel
, Wang, Xiaoli
, Wang, Yuejiao
, Cao, Zhidong
in
639/705/117
/ 692/699/255
/ Age
/ Age groups
/ Animals
/ Beijing - epidemiology
/ Child
/ Child, Preschool
/ Databases, Factual
/ Deep Learning
/ Disease Outbreaks - statistics & numerical data
/ Enterovirus A, Human - immunology
/ Enterovirus A, Human - isolation & purification
/ Female
/ Hand, Foot and Mouth Disease - diagnosis
/ Hand, Foot and Mouth Disease - virology
/ Hand-foot-and-mouth disease
/ Humanities and Social Sciences
/ Humans
/ Infant
/ Infant, Newborn
/ Models, Theoretical
/ multidisciplinary
/ Neural networks
/ Predictions
/ Science
/ Science (multidisciplinary)
/ Seasons
2020
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Using deep learning to predict the hand-foot-and-mouth disease of enterovirus A71 subtype in Beijing from 2011 to 2018
by
Wang, Quanyi
, Zeng, Daniel
, Wang, Xiaoli
, Wang, Yuejiao
, Cao, Zhidong
in
639/705/117
/ 692/699/255
/ Age
/ Age groups
/ Animals
/ Beijing - epidemiology
/ Child
/ Child, Preschool
/ Databases, Factual
/ Deep Learning
/ Disease Outbreaks - statistics & numerical data
/ Enterovirus A, Human - immunology
/ Enterovirus A, Human - isolation & purification
/ Female
/ Hand, Foot and Mouth Disease - diagnosis
/ Hand, Foot and Mouth Disease - virology
/ Hand-foot-and-mouth disease
/ Humanities and Social Sciences
/ Humans
/ Infant
/ Infant, Newborn
/ Models, Theoretical
/ multidisciplinary
/ Neural networks
/ Predictions
/ Science
/ Science (multidisciplinary)
/ Seasons
2020
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Using deep learning to predict the hand-foot-and-mouth disease of enterovirus A71 subtype in Beijing from 2011 to 2018
Journal Article
Using deep learning to predict the hand-foot-and-mouth disease of enterovirus A71 subtype in Beijing from 2011 to 2018
2020
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Overview
Hand-foot-and-month disease (HFMD), especially the enterovirus A71 (EV-A71) subtype, is a major health problem in Beijing, China. Previous studies mainly used regressive models to forecast the prevalence of HFMD, ignoring its intrinsic age groups. This study aims to predict HFMD of EV-A71 subtype in three age groups (0–3, 3–6 and > 6 years old) from 2011 to 2018 using residual-convolutional-recurrent neural network (CNNRNN-Res), convolutional-recurrent neural network (CNNRNN) and recurrent neural network (RNN). They were compared with auto-regressio, global auto-regression and vector auto-regression on both short-term and long-term prediction. Results showed that CNNRNN-Res and RNN had higher accuracies on point forecast tasks, as well as robust performances in long-term prediction. Three deep learning models also had better skills in peak intensity forecast, and CNNRNN-Res achieved the best results in the peak month forecast. We also found that three age groups had consistent outbreak trends and similar patterns of prediction errors. These results highlight the superior performance of deep learning models in HFMD prediction and can assist the decision-makers to refine the HFMD control measures according to age groups.
Publisher
Nature Publishing Group UK,Nature Publishing Group
Subject
/ Age
/ Animals
/ Child
/ Disease Outbreaks - statistics & numerical data
/ Enterovirus A, Human - immunology
/ Enterovirus A, Human - isolation & purification
/ Female
/ Hand, Foot and Mouth Disease - diagnosis
/ Hand, Foot and Mouth Disease - virology
/ Humanities and Social Sciences
/ Humans
/ Infant
/ Science
/ Seasons
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