Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations
Upper respiratory tract infections (URTIs) represent a large strain on primary health resources. To mitigate URTI transmission and public health burdens, it is important to pre-empt and provide forward guidance on URTI burden, while taking into account various facets which influence URTI transmissio...
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sg-ntu-dr.10356-1688482023-06-25T15:37:40Z Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations Lim, Jue Tao Tan, Kelvin Bryan Abisheganaden, John Dickens, Borame L. Lee Kong Chian School of Medicine (LKCMedicine) Tan Tock Seng Hospital Science::Medicine Respiratory Tract Infection Time Series Analysis Upper respiratory tract infections (URTIs) represent a large strain on primary health resources. To mitigate URTI transmission and public health burdens, it is important to pre-empt and provide forward guidance on URTI burden, while taking into account various facets which influence URTI transmission. This is so that appropriate public health measures can be taken to mitigate strain on primary care resources. This study describes a new approach to forecasting URTIs which can be used for national public health resource planning. Specifically, using environmental and disease data comprising more than 1000 dimensions, we developed sub-models which optimizes model explainability, in-sample model fit, predictive accuracy and combines many weaker predictors over a 2-month time horizon to generate direct, point forecasts over a 1-8 week ahead forecast horizon. Predictive performance was evaluated using rolling out-of-sample forecast assessment within both periods with/without structural breaks in transmission over the period of 2012-2022. We showed that forecast combinations of 5 other forecasting models had better and more consistent predictive performance than other modelling approaches, over periods with and without structural breaks in transmission dynamics. Furthermore, epidemiological analysis on high dimensional data was enabled using post-selection inference, to show the dynamic association between lower temperature, increases in past relative humidity and absolute humidity and increased URTIs attendance. The methods proposed can be used for outbreak preparedness and guide healthcare resource planning, in both stable periods of transmission and periods where structural breaks in data occur. Ministry of Education (MOE) Nanyang Technological University Published version This research project is supported by the Lee Kong Chian School of Medicine - Ministry of Education Start-Up Grant. 2023-06-20T05:54:56Z 2023-06-20T05:54:56Z 2023 Journal Article Lim, J. T., Tan, K. B., Abisheganaden, J. & Dickens, B. L. (2023). Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations. PLOS Computational Biology, 19(2), e1010892-. https://dx.doi.org/10.1371/journal.pcbi.1010892 1553-734X https://hdl.handle.net/10356/168848 10.1371/journal.pcbi.1010892 36749792 2-s2.0-85147928119 2 19 e1010892 en PLOS Computational Biology © 2023 Lim et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. application/pdf |
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Science::Medicine Respiratory Tract Infection Time Series Analysis Lim, Jue Tao Tan, Kelvin Bryan Abisheganaden, John Dickens, Borame L. Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations |
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Upper respiratory tract infections (URTIs) represent a large strain on primary health resources. To mitigate URTI transmission and public health burdens, it is important to pre-empt and provide forward guidance on URTI burden, while taking into account various facets which influence URTI transmission. This is so that appropriate public health measures can be taken to mitigate strain on primary care resources. This study describes a new approach to forecasting URTIs which can be used for national public health resource planning. Specifically, using environmental and disease data comprising more than 1000 dimensions, we developed sub-models which optimizes model explainability, in-sample model fit, predictive accuracy and combines many weaker predictors over a 2-month time horizon to generate direct, point forecasts over a 1-8 week ahead forecast horizon. Predictive performance was evaluated using rolling out-of-sample forecast assessment within both periods with/without structural breaks in transmission over the period of 2012-2022. We showed that forecast combinations of 5 other forecasting models had better and more consistent predictive performance than other modelling approaches, over periods with and without structural breaks in transmission dynamics. Furthermore, epidemiological analysis on high dimensional data was enabled using post-selection inference, to show the dynamic association between lower temperature, increases in past relative humidity and absolute humidity and increased URTIs attendance. The methods proposed can be used for outbreak preparedness and guide healthcare resource planning, in both stable periods of transmission and periods where structural breaks in data occur. |
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Lee Kong Chian School of Medicine (LKCMedicine) |
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Lee Kong Chian School of Medicine (LKCMedicine) Lim, Jue Tao Tan, Kelvin Bryan Abisheganaden, John Dickens, Borame L. |
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Article |
author |
Lim, Jue Tao Tan, Kelvin Bryan Abisheganaden, John Dickens, Borame L. |
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Lim, Jue Tao |
title |
Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations |
title_short |
Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations |
title_full |
Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations |
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Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations |
title_full_unstemmed |
Forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations |
title_sort |
forecasting upper respiratory tract infection burden using high-dimensional time series data and forecast combinations |
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2023 |
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https://hdl.handle.net/10356/168848 |
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1772825383393034240 |