Cargando…
Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study
BACKGROUND: Changeful seasonal influenza activity in subtropical areas such as Taiwan causes problems in epidemic preparedness. The Taiwan Centers for Disease Control has maintained real-time national influenza surveillance systems since 2004. Except for timely monitoring, epidemic forecasting using...
Autores principales: | , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
JMIR Publications
2020
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7439145/ https://www.ncbi.nlm.nih.gov/pubmed/32755888 http://dx.doi.org/10.2196/15394 |
_version_ | 1783572922751778816 |
---|---|
author | Cheng, Hao-Yuan Wu, Yu-Chun Lin, Min-Hau Liu, Yu-Lun Tsai, Yue-Yang Wu, Jo-Hua Pan, Ke-Han Ke, Chih-Jung Chen, Chiu-Mei Liu, Ding-Ping Lin, I-Feng Chuang, Jen-Hsiang |
author_facet | Cheng, Hao-Yuan Wu, Yu-Chun Lin, Min-Hau Liu, Yu-Lun Tsai, Yue-Yang Wu, Jo-Hua Pan, Ke-Han Ke, Chih-Jung Chen, Chiu-Mei Liu, Ding-Ping Lin, I-Feng Chuang, Jen-Hsiang |
author_sort | Cheng, Hao-Yuan |
collection | PubMed |
description | BACKGROUND: Changeful seasonal influenza activity in subtropical areas such as Taiwan causes problems in epidemic preparedness. The Taiwan Centers for Disease Control has maintained real-time national influenza surveillance systems since 2004. Except for timely monitoring, epidemic forecasting using the national influenza surveillance data can provide pivotal information for public health response. OBJECTIVE: We aimed to develop predictive models using machine learning to provide real-time influenza-like illness forecasts. METHODS: Using surveillance data of influenza-like illness visits from emergency departments (from the Real-Time Outbreak and Disease Surveillance System), outpatient departments (from the National Health Insurance database), and the records of patients with severe influenza with complications (from the National Notifiable Disease Surveillance System), we developed 4 machine learning models (autoregressive integrated moving average, random forest, support vector regression, and extreme gradient boosting) to produce weekly influenza-like illness predictions for a given week and 3 subsequent weeks. We established a framework of the machine learning models and used an ensemble approach called stacking to integrate these predictions. We trained the models using historical data from 2008-2014. We evaluated their predictive ability during 2015-2017 for each of the 4-week time periods using Pearson correlation, mean absolute percentage error (MAPE), and hit rate of trend prediction. A dashboard website was built to visualize the forecasts, and the results of real-world implementation of this forecasting framework in 2018 were evaluated using the same metrics. RESULTS: All models could accurately predict the timing and magnitudes of the seasonal peaks in the then-current week (nowcast) (ρ=0.802-0.965; MAPE: 5.2%-9.2%; hit rate: 0.577-0.756), 1-week (ρ=0.803-0.918; MAPE: 8.3%-11.8%; hit rate: 0.643-0.747), 2-week (ρ=0.783-0.867; MAPE: 10.1%-15.3%; hit rate: 0.669-0.734), and 3-week forecasts (ρ=0.676-0.801; MAPE: 12.0%-18.9%; hit rate: 0.643-0.786), especially the ensemble model. In real-world implementation in 2018, the forecasting performance was still accurate in nowcasts (ρ=0.875-0.969; MAPE: 5.3%-8.0%; hit rate: 0.582-0.782) and remained satisfactory in 3-week forecasts (ρ=0.721-0.908; MAPE: 7.6%-13.5%; hit rate: 0.596-0.904). CONCLUSIONS: This machine learning and ensemble approach can make accurate, real-time influenza-like illness forecasts for a 4-week period, and thus, facilitate decision making. |
format | Online Article Text |
id | pubmed-7439145 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | JMIR Publications |
record_format | MEDLINE/PubMed |
spelling | pubmed-74391452020-08-31 Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study Cheng, Hao-Yuan Wu, Yu-Chun Lin, Min-Hau Liu, Yu-Lun Tsai, Yue-Yang Wu, Jo-Hua Pan, Ke-Han Ke, Chih-Jung Chen, Chiu-Mei Liu, Ding-Ping Lin, I-Feng Chuang, Jen-Hsiang J Med Internet Res Original Paper BACKGROUND: Changeful seasonal influenza activity in subtropical areas such as Taiwan causes problems in epidemic preparedness. The Taiwan Centers for Disease Control has maintained real-time national influenza surveillance systems since 2004. Except for timely monitoring, epidemic forecasting using the national influenza surveillance data can provide pivotal information for public health response. OBJECTIVE: We aimed to develop predictive models using machine learning to provide real-time influenza-like illness forecasts. METHODS: Using surveillance data of influenza-like illness visits from emergency departments (from the Real-Time Outbreak and Disease Surveillance System), outpatient departments (from the National Health Insurance database), and the records of patients with severe influenza with complications (from the National Notifiable Disease Surveillance System), we developed 4 machine learning models (autoregressive integrated moving average, random forest, support vector regression, and extreme gradient boosting) to produce weekly influenza-like illness predictions for a given week and 3 subsequent weeks. We established a framework of the machine learning models and used an ensemble approach called stacking to integrate these predictions. We trained the models using historical data from 2008-2014. We evaluated their predictive ability during 2015-2017 for each of the 4-week time periods using Pearson correlation, mean absolute percentage error (MAPE), and hit rate of trend prediction. A dashboard website was built to visualize the forecasts, and the results of real-world implementation of this forecasting framework in 2018 were evaluated using the same metrics. RESULTS: All models could accurately predict the timing and magnitudes of the seasonal peaks in the then-current week (nowcast) (ρ=0.802-0.965; MAPE: 5.2%-9.2%; hit rate: 0.577-0.756), 1-week (ρ=0.803-0.918; MAPE: 8.3%-11.8%; hit rate: 0.643-0.747), 2-week (ρ=0.783-0.867; MAPE: 10.1%-15.3%; hit rate: 0.669-0.734), and 3-week forecasts (ρ=0.676-0.801; MAPE: 12.0%-18.9%; hit rate: 0.643-0.786), especially the ensemble model. In real-world implementation in 2018, the forecasting performance was still accurate in nowcasts (ρ=0.875-0.969; MAPE: 5.3%-8.0%; hit rate: 0.582-0.782) and remained satisfactory in 3-week forecasts (ρ=0.721-0.908; MAPE: 7.6%-13.5%; hit rate: 0.596-0.904). CONCLUSIONS: This machine learning and ensemble approach can make accurate, real-time influenza-like illness forecasts for a 4-week period, and thus, facilitate decision making. JMIR Publications 2020-08-05 /pmc/articles/PMC7439145/ /pubmed/32755888 http://dx.doi.org/10.2196/15394 Text en ©Hao-Yuan Cheng, Yu-Chun Wu, Min-Hau Lin, Yu-Lun Liu, Yue-Yang Tsai, Jo-Hua Wu, Ke-Han Pan, Chih-Jung Ke, Chiu-Mei Chen, Ding-Ping Liu, I-Feng Lin, Jen-Hsiang Chuang. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 05.08.2020. 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 http://www.jmir.org/, as well as this copyright and license information must be included. |
spellingShingle | Original Paper Cheng, Hao-Yuan Wu, Yu-Chun Lin, Min-Hau Liu, Yu-Lun Tsai, Yue-Yang Wu, Jo-Hua Pan, Ke-Han Ke, Chih-Jung Chen, Chiu-Mei Liu, Ding-Ping Lin, I-Feng Chuang, Jen-Hsiang Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study |
title | Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study |
title_full | Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study |
title_fullStr | Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study |
title_full_unstemmed | Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study |
title_short | Applying Machine Learning Models with An Ensemble Approach for Accurate Real-Time Influenza Forecasting in Taiwan: Development and Validation Study |
title_sort | applying machine learning models with an ensemble approach for accurate real-time influenza forecasting in taiwan: development and validation study |
topic | Original Paper |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7439145/ https://www.ncbi.nlm.nih.gov/pubmed/32755888 http://dx.doi.org/10.2196/15394 |
work_keys_str_mv | AT chenghaoyuan applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT wuyuchun applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT linminhau applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT liuyulun applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT tsaiyueyang applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT wujohua applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT pankehan applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT kechihjung applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT chenchiumei applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT liudingping applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT linifeng applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy AT chuangjenhsiang applyingmachinelearningmodelswithanensembleapproachforaccuraterealtimeinfluenzaforecastingintaiwandevelopmentandvalidationstudy |