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Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study

BACKGROUND: Influenza outbreaks pose a significant threat to global public health. Traditional surveillance systems and simple algorithms often struggle to predict influenza outbreaks in an accurate and timely manner. Big data and modern technology have offered new modalities for disease surveillanc...

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Autores principales: Yang, Liuyang, Zhang, Ting, Han, Xuan, Yang, Jiao, Sun, Yanxia, Ma, Libing, Chen, Jialong, Li, Yanming, Lai, Shengjie, Li, Wei, Feng, Luzhao, Yang, Weizhong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10618884/
https://www.ncbi.nlm.nih.gov/pubmed/37847532
http://dx.doi.org/10.2196/45085
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author Yang, Liuyang
Zhang, Ting
Han, Xuan
Yang, Jiao
Sun, Yanxia
Ma, Libing
Chen, Jialong
Li, Yanming
Lai, Shengjie
Li, Wei
Feng, Luzhao
Yang, Weizhong
author_facet Yang, Liuyang
Zhang, Ting
Han, Xuan
Yang, Jiao
Sun, Yanxia
Ma, Libing
Chen, Jialong
Li, Yanming
Lai, Shengjie
Li, Wei
Feng, Luzhao
Yang, Weizhong
author_sort Yang, Liuyang
collection PubMed
description BACKGROUND: Influenza outbreaks pose a significant threat to global public health. Traditional surveillance systems and simple algorithms often struggle to predict influenza outbreaks in an accurate and timely manner. Big data and modern technology have offered new modalities for disease surveillance and prediction. Influenza-like illness can serve as a valuable surveillance tool for emerging respiratory infectious diseases like influenza and COVID-19, especially when reported case data may not fully reflect the actual epidemic curve. OBJECTIVE: This study aimed to develop a predictive model for influenza outbreaks by combining Baidu search query data with traditional virological surveillance data. The goal was to improve early detection and preparedness for influenza outbreaks in both northern and southern China, providing evidence for supplementing modern intelligence epidemic surveillance methods. METHODS: We collected virological data from the National Influenza Surveillance Network and Baidu search query data from January 2011 to July 2018, totaling 3,691,865 and 1,563,361 respective samples. Relevant search terms related to influenza were identified and analyzed for their correlation with influenza-positive rates using Pearson correlation analysis. A distributed lag nonlinear model was used to assess the lag correlation of the search terms with influenza activity. Subsequently, a predictive model based on the gated recurrent unit and multiple attention mechanisms was developed to forecast the influenza-positive trend. RESULTS: This study revealed a high correlation between specific Baidu search terms and influenza-positive rates in both northern and southern China, except for 1 term. The search terms were categorized into 4 groups: essential facts on influenza, influenza symptoms, influenza treatment and medicine, and influenza prevention, all of which showed correlation with the influenza-positive rate. The influenza prevention and influenza symptom groups had a lag correlation of 1.4-3.2 and 5.0-8.0 days, respectively. The Baidu search terms could help predict the influenza-positive rate 14-22 days in advance in southern China but interfered with influenza surveillance in northern China. CONCLUSIONS: Complementing traditional disease surveillance systems with information from web-based data sources can aid in detecting warning signs of influenza outbreaks earlier. However, supplementation of modern surveillance with search engine information should be approached cautiously. This approach provides valuable insights for digital epidemiology and has the potential for broader application in respiratory infectious disease surveillance. Further research should explore the optimization and customization of search terms for different regions and languages to improve the accuracy of influenza prediction models.
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spelling pubmed-106188842023-11-02 Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study Yang, Liuyang Zhang, Ting Han, Xuan Yang, Jiao Sun, Yanxia Ma, Libing Chen, Jialong Li, Yanming Lai, Shengjie Li, Wei Feng, Luzhao Yang, Weizhong J Med Internet Res Original Paper BACKGROUND: Influenza outbreaks pose a significant threat to global public health. Traditional surveillance systems and simple algorithms often struggle to predict influenza outbreaks in an accurate and timely manner. Big data and modern technology have offered new modalities for disease surveillance and prediction. Influenza-like illness can serve as a valuable surveillance tool for emerging respiratory infectious diseases like influenza and COVID-19, especially when reported case data may not fully reflect the actual epidemic curve. OBJECTIVE: This study aimed to develop a predictive model for influenza outbreaks by combining Baidu search query data with traditional virological surveillance data. The goal was to improve early detection and preparedness for influenza outbreaks in both northern and southern China, providing evidence for supplementing modern intelligence epidemic surveillance methods. METHODS: We collected virological data from the National Influenza Surveillance Network and Baidu search query data from January 2011 to July 2018, totaling 3,691,865 and 1,563,361 respective samples. Relevant search terms related to influenza were identified and analyzed for their correlation with influenza-positive rates using Pearson correlation analysis. A distributed lag nonlinear model was used to assess the lag correlation of the search terms with influenza activity. Subsequently, a predictive model based on the gated recurrent unit and multiple attention mechanisms was developed to forecast the influenza-positive trend. RESULTS: This study revealed a high correlation between specific Baidu search terms and influenza-positive rates in both northern and southern China, except for 1 term. The search terms were categorized into 4 groups: essential facts on influenza, influenza symptoms, influenza treatment and medicine, and influenza prevention, all of which showed correlation with the influenza-positive rate. The influenza prevention and influenza symptom groups had a lag correlation of 1.4-3.2 and 5.0-8.0 days, respectively. The Baidu search terms could help predict the influenza-positive rate 14-22 days in advance in southern China but interfered with influenza surveillance in northern China. CONCLUSIONS: Complementing traditional disease surveillance systems with information from web-based data sources can aid in detecting warning signs of influenza outbreaks earlier. However, supplementation of modern surveillance with search engine information should be approached cautiously. This approach provides valuable insights for digital epidemiology and has the potential for broader application in respiratory infectious disease surveillance. Further research should explore the optimization and customization of search terms for different regions and languages to improve the accuracy of influenza prediction models. JMIR Publications 2023-10-17 /pmc/articles/PMC10618884/ /pubmed/37847532 http://dx.doi.org/10.2196/45085 Text en ©Liuyang Yang, Ting Zhang, Xuan Han, Jiao Yang, Yanxia Sun, Libing Ma, Jialong Chen, Yanming Li, Shengjie Lai, Wei Li, Luzhao Feng, Weizhong Yang. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 17.10.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Yang, Liuyang
Zhang, Ting
Han, Xuan
Yang, Jiao
Sun, Yanxia
Ma, Libing
Chen, Jialong
Li, Yanming
Lai, Shengjie
Li, Wei
Feng, Luzhao
Yang, Weizhong
Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study
title Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study
title_full Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study
title_fullStr Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study
title_full_unstemmed Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study
title_short Influenza Epidemic Trend Surveillance and Prediction Based on Search Engine Data: Deep Learning Model Study
title_sort influenza epidemic trend surveillance and prediction based on search engine data: deep learning model study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10618884/
https://www.ncbi.nlm.nih.gov/pubmed/37847532
http://dx.doi.org/10.2196/45085
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