Using weather factors and google data to predict COVID-19 transmission in Melbourne, Australia: A time-series predictive model

被引:5
作者
McClymont, Hannah [1 ]
Si, Xiaohan [1 ]
Hu, Wenbiao [1 ]
机构
[1] Queensland Univ Technol, Sch Publ Hlth & Social Work, Brisbane, QLD, Australia
关键词
COVID-19; ARIMA; Forecasting; Weather; Internet search queries; Mobility; AMBIENT-TEMPERATURE;
D O I
10.1016/j.heliyon.2023.e13782
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Background: Forecast models have been essential in understanding COVID-19 transmission and guiding public health responses throughout the pandemic. This study aims to assess the effect of weather variability and Google data on COVID-19 transmission and develop multivariable time series AutoRegressive Integrated Moving Average (ARIMA) models for improving traditional predictive modelling for informing public health policy. Methods: COVID-19 case notifications, meteorological factors and Google data were collected over the B.1.617.2 (Delta) outbreak in Melbourne, Australia from August to November 2021. Times-eries cross-correlation (TSCC) was used to evaluate the temporal correlation between weather factors, Google search trends, Google Mobility data and COVID-19 transmission. Multivariable time series ARIMA models were fitted to forecast COVID-19 incidence and Effective Reproductive Number (Reff) in the Greater Melbourne region. Five models were fitted to compare and validate predictive models using moving three-day ahead forecasts to test the predictive accuracy for both COVID-19 incidence and Reff over the Melbourne Delta outbreak. Results: Case-only ARIMA model resulted in an R squared (R2) value of 0.942, Root Mean Square Error (RMSE) of 141.59, and Mean Absolute Percentage Error (MAPE) of 23.19. The model including transit station mobility (TSM) and maximum temperature (Tmax) had greater predic-tive accuracy with R2 0.948, RMSE 137.57, and MAPE 21.26. Conclusion: Multivariable ARIMA modelling for COVID-19 cases and Reff was useful for predicting epidemic growth, with higher predictive accuracy for models including TSM and Tmax. These results suggest that TSM and Tmax would be useful for further exploration for developing weather-informed early warning models for future COVID-19 outbreaks with potential applica-tion for the inclusion of weather and Google data with disease surveillance in developing effective early warning systems for informing public health policy and epidemic response.
引用
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页数:15
相关论文
共 72 条
[61]   Transmission, viral kinetics and clinical characteristics of the emergent SARS-CoV-2 Delta VOC in Guangzhou, China [J].
Wang, Yaping ;
Chen, Ruchong ;
Hu, Fengyu ;
Lan, Yun ;
Yang, Zhaowei ;
Zhan, Chen ;
Shi, Jingrong ;
Deng, Xizi ;
Jiang, Mei ;
Zhong, Shuxin ;
Liao, Baolin ;
Deng, Kai ;
Tang, Jingyan ;
Guo, Liliangzi ;
Jiang, Mengling ;
Fan, Qinghong ;
Li, Meiyu ;
Liu, Jinxin ;
Shi, Yaling ;
Deng, Xilong ;
Xiao, Xincai ;
Kang, Min ;
Li, Yan ;
Guan, Weijie ;
Li, Yimin ;
Li, Shiyue ;
Li, Feng ;
Zhong, Nanshan ;
Tang, Xiaoping .
ECLINICALMEDICINE, 2021, 40
[62]   Challenges in the control of COVID-19 outbreaks caused by the delta variant during periods of low humidity: an observational study in Sydney, Australia [J].
Ward, Michael P. ;
Liu, Yuanhua ;
Xiao, Shuang ;
Zhang, Zhijie .
INFECTIOUS DISEASES OF POVERTY, 2021, 10 (01)
[63]   The role of climate during the COVID-19 epidemic in New South Wales, Australia [J].
Ward, Michael P. ;
Xiao, Shuang ;
Zhang, Zhijie .
TRANSBOUNDARY AND EMERGING DISEASES, 2020, 67 (06) :2313-2317
[64]   SARIMA and ARDL models for predicting leptospirosis in Anuradhapura district Sri Lanka [J].
Warnasekara, Janith ;
Agampodi, Suneth ;
Abeynayake, N. R. .
PLOS ONE, 2022, 17 (10)
[65]  
World Health Organization, 2019, World health statistics 2019: monitoring health for the SDGs (WHO World Health Statistics)
[66]   Nowcasting and forecasting the potential domestic and international spread of the 2019-nCoV outbreak originating in Wuhan, China: a modelling study [J].
Wu, Joseph T. ;
Leung, Kathy ;
Leung, Gabriel M. .
LANCET, 2020, 395 (10225) :689-697
[67]   Statistical Modeling for the Prediction of Infectious Disease Dissemination With Special Reference to COVID-19 Spread [J].
Yadav, Subhash Kumar ;
Akhter, Yusuf .
FRONTIERS IN PUBLIC HEALTH, 2021, 9
[68]   Deep learning methods for forecasting COVID-19 time-Series data: A Comparative study [J].
Zeroual, Abdelhafid ;
Harrou, Fouzi ;
Dairi, Abdelkader ;
Sun, Ying .
CHAOS SOLITONS & FRACTALS, 2020, 140
[69]   Using internet-based query and climate data to predict climate-sensitive infectious disease risks: a systematic review of epidemiological evidence [J].
Zhang, Yuzhou ;
Bambrick, Hilary ;
Mengersen, Kerrie ;
Tong, Shilu ;
Hu, Wenbiao .
INTERNATIONAL JOURNAL OF BIOMETEOROLOGY, 2021, 65 (12) :2203-2214
[70]   Using Google Trends and ambient temperature to predict seasonal influenza outbreaks [J].
Zhang, Yuzhou ;
Bambrick, Hilary ;
Mengersen, Kerrie ;
Tong, Shilu ;
Hu, Wenbiao .
ENVIRONMENT INTERNATIONAL, 2018, 117 :284-291