Study on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithm

Abstract Background Influenza epidemics pose a threat to human health. It has been reported that meteorological factors (MFs) are associated with influenza. This study aimed to explore the similarities and differences between the influences of more comprehensive MFs on influenza in cities with diffe...

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Main Authors: Hansong Zhu, Si Chen, Wen Lu, Kaizhi Chen, Yulin Feng, Zhonghang Xie, Zhifang Zhang, Lingfang Li, Jianming Ou, Guangmin Chen
Format: Article
Language:English
Published: BMC 2022-12-01
Series:BMC Public Health
Subjects:
Online Access:https://doi.org/10.1186/s12889-022-14299-y
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author Hansong Zhu
Si Chen
Wen Lu
Kaizhi Chen
Yulin Feng
Zhonghang Xie
Zhifang Zhang
Lingfang Li
Jianming Ou
Guangmin Chen
author_facet Hansong Zhu
Si Chen
Wen Lu
Kaizhi Chen
Yulin Feng
Zhonghang Xie
Zhifang Zhang
Lingfang Li
Jianming Ou
Guangmin Chen
author_sort Hansong Zhu
collection DOAJ
description Abstract Background Influenza epidemics pose a threat to human health. It has been reported that meteorological factors (MFs) are associated with influenza. This study aimed to explore the similarities and differences between the influences of more comprehensive MFs on influenza in cities with different economic, geographical and climatic characteristics in Fujian Province. Then, the information was used to predict the daily number of cases of influenza in various cities based on MFs to provide bases for early warning systems and outbreak prevention. Method Distributed lag nonlinear models (DLNMs) were used to analyse the influence of MFs on influenza in different regions of Fujian Province from 2010 to 2021. Long short-term memory (LSTM) was used to train and model daily cases of influenza in 2010–2018, 2010–2019, and 2010–2020 based on meteorological daily values. Daily cases of influenza in 2019, 2020 and 2021 were predicted. The root mean squared error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE) and symmetric mean absolute percentage error (SMAPE) were used to quantify the accuracy of model predictions. Results The cumulative effect of low and high values of air pressure (PRS), air temperature (TEM), air temperature difference (TEMD) and sunshine duration (SSD) on the risk of influenza was obvious. Low (< 979 hPa), medium (983 to 987 hPa) and high (> 112 hPa) PRS were associated with a higher risk of influenza in women, children aged 0 to 12 years, and rural populations. Low (< 9 °C) and high (> 23 °C) TEM were risk factors for influenza in four cities. Wind speed (WIN) had a more significant effect on the risk of influenza in the ≥ 60-year-old group. Low (< 40%) and high (> 80%) relative humidity (RHU) in Fuzhou and Xiamen had a significant effect on influenza. When PRS was between 1005–1015 hPa, RHU > 60%, PRE was low, TEM was between 10–20 °C, and WIN was low, the interaction between different MFs and influenza was most obvious. The RMSE, MAE, MAPE, and SMAPE evaluation indices of the predictions in 2019, 2020 and 2021 were low, and the prediction accuracy was high. Conclusion All eight MFs studied had an impact on influenza in four cities, but there were similarities and differences. The LSTM model, combined with these eight MFs, was highly accurate in predicting the daily cases of influenza. These MFs and prediction models could be incorporated into the influenza early warning and prediction system of each city and used as a reference to formulate prevention strategies for relevant departments.
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spelling doaj.art-d642aefefb2a4b4895124f917b3cfe392022-12-22T04:23:45ZengBMCBMC Public Health1471-24582022-12-0122111710.1186/s12889-022-14299-yStudy on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithmHansong Zhu0Si Chen1Wen Lu2Kaizhi Chen3Yulin Feng4Zhonghang Xie5Zhifang Zhang6Lingfang Li7Jianming Ou8Guangmin Chen9Emergency Response and Epidemic Management Institute, Fujian Center for Disease Control and PreventionClimate Assessment Office of Fujian Climate CenterShengli Clinical Medical College of Fujian Medical University, Department of Health Management of Fujian Provincial HospitalCollege of Computer and Data Science, Fuzhou UniversitySchool of Public Health, Fujian Medical UniversityEmergency Response and Epidemic Management Institute, Fujian Center for Disease Control and PreventionFujian Provincial Key Laboratory of Zoonosis ResearchEmergency Response and Epidemic Management Institute, Fujian Center for Disease Control and PreventionEmergency Response and Epidemic Management Institute, Fujian Center for Disease Control and PreventionEmergency Response and Epidemic Management Institute, Fujian Center for Disease Control and PreventionAbstract Background Influenza epidemics pose a threat to human health. It has been reported that meteorological factors (MFs) are associated with influenza. This study aimed to explore the similarities and differences between the influences of more comprehensive MFs on influenza in cities with different economic, geographical and climatic characteristics in Fujian Province. Then, the information was used to predict the daily number of cases of influenza in various cities based on MFs to provide bases for early warning systems and outbreak prevention. Method Distributed lag nonlinear models (DLNMs) were used to analyse the influence of MFs on influenza in different regions of Fujian Province from 2010 to 2021. Long short-term memory (LSTM) was used to train and model daily cases of influenza in 2010–2018, 2010–2019, and 2010–2020 based on meteorological daily values. Daily cases of influenza in 2019, 2020 and 2021 were predicted. The root mean squared error (RMSE), mean absolute error (MAE), mean absolute percentage error (MAPE) and symmetric mean absolute percentage error (SMAPE) were used to quantify the accuracy of model predictions. Results The cumulative effect of low and high values of air pressure (PRS), air temperature (TEM), air temperature difference (TEMD) and sunshine duration (SSD) on the risk of influenza was obvious. Low (< 979 hPa), medium (983 to 987 hPa) and high (> 112 hPa) PRS were associated with a higher risk of influenza in women, children aged 0 to 12 years, and rural populations. Low (< 9 °C) and high (> 23 °C) TEM were risk factors for influenza in four cities. Wind speed (WIN) had a more significant effect on the risk of influenza in the ≥ 60-year-old group. Low (< 40%) and high (> 80%) relative humidity (RHU) in Fuzhou and Xiamen had a significant effect on influenza. When PRS was between 1005–1015 hPa, RHU > 60%, PRE was low, TEM was between 10–20 °C, and WIN was low, the interaction between different MFs and influenza was most obvious. The RMSE, MAE, MAPE, and SMAPE evaluation indices of the predictions in 2019, 2020 and 2021 were low, and the prediction accuracy was high. Conclusion All eight MFs studied had an impact on influenza in four cities, but there were similarities and differences. The LSTM model, combined with these eight MFs, was highly accurate in predicting the daily cases of influenza. These MFs and prediction models could be incorporated into the influenza early warning and prediction system of each city and used as a reference to formulate prevention strategies for relevant departments.https://doi.org/10.1186/s12889-022-14299-yMeteorologicalInfluenzaDLNMLSTM
spellingShingle Hansong Zhu
Si Chen
Wen Lu
Kaizhi Chen
Yulin Feng
Zhonghang Xie
Zhifang Zhang
Lingfang Li
Jianming Ou
Guangmin Chen
Study on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithm
BMC Public Health
Meteorological
Influenza
DLNM
LSTM
title Study on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithm
title_full Study on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithm
title_fullStr Study on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithm
title_full_unstemmed Study on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithm
title_short Study on the influence of meteorological factors on influenza in different regions and predictions based on an LSTM algorithm
title_sort study on the influence of meteorological factors on influenza in different regions and predictions based on an lstm algorithm
topic Meteorological
Influenza
DLNM
LSTM
url https://doi.org/10.1186/s12889-022-14299-y
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