Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning Modeling
The significant health and economic effects of COVID-19 emphasize the requirement for reliable forecasting models to avoid the sudden collapse of healthcare facilities with overloaded hospitals. Several forecasting models have been developed based on the data acquired within the early stages of the...
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doaj-a41a25802ff34243b32da61ff3a41a382021-08-06T15:22:43ZengMDPI AGInternational Journal of Environmental Research and Public Health1661-78271660-46012021-07-01187799779910.3390/ijerph18157799Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning ModelingEssam A. Rashed0Akimasa Hirata1Department of Electrical and Mechanical Engineering, Nagoya Institute of Technology, Nagoya 466-8555, JapanDepartment of Electrical and Mechanical Engineering, Nagoya Institute of Technology, Nagoya 466-8555, JapanThe significant health and economic effects of COVID-19 emphasize the requirement for reliable forecasting models to avoid the sudden collapse of healthcare facilities with overloaded hospitals. Several forecasting models have been developed based on the data acquired within the early stages of the virus spread. However, with the recent emergence of new virus variants, it is unclear how the new strains could influence the efficiency of forecasting using models adopted using earlier data. In this study, we analyzed daily positive cases (DPC) data using a machine learning model to understand the effect of new viral variants on morbidity rates. A deep learning model that considers several environmental and mobility factors was used to forecast DPC in six districts of Japan. From machine learning predictions with training data since the early days of COVID-19, high-quality estimation has been achieved for data obtained earlier than March 2021. However, a significant upsurge was observed in some districts after the discovery of the new COVID-19 variant B.1.1.7 (Alpha). An average increase of 20–40% in DPC was observed after the emergence of the Alpha variant and an increase of up to 20% has been recognized in the effective reproduction number. Approximately four weeks was needed for the machine learning model to adjust the forecasting error caused by the new variants. The comparison between machine-learning predictions and reported values demonstrated that the emergence of new virus variants should be considered within COVID-19 forecasting models. This study presents an easy yet efficient way to quantify the change caused by new viral variants with potential usefulness for global data analysis.https://www.mdpi.com/1660-4601/18/15/7799COVID-19forecastingdeep learningviral variants |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Essam A. Rashed Akimasa Hirata |
spellingShingle |
Essam A. Rashed Akimasa Hirata Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning Modeling International Journal of Environmental Research and Public Health COVID-19 forecasting deep learning viral variants |
author_facet |
Essam A. Rashed Akimasa Hirata |
author_sort |
Essam A. Rashed |
title |
Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning Modeling |
title_short |
Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning Modeling |
title_full |
Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning Modeling |
title_fullStr |
Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning Modeling |
title_full_unstemmed |
Infectivity Upsurge by COVID-19 Viral Variants in Japan: Evidence from Deep Learning Modeling |
title_sort |
infectivity upsurge by covid-19 viral variants in japan: evidence from deep learning modeling |
publisher |
MDPI AG |
series |
International Journal of Environmental Research and Public Health |
issn |
1661-7827 1660-4601 |
publishDate |
2021-07-01 |
description |
The significant health and economic effects of COVID-19 emphasize the requirement for reliable forecasting models to avoid the sudden collapse of healthcare facilities with overloaded hospitals. Several forecasting models have been developed based on the data acquired within the early stages of the virus spread. However, with the recent emergence of new virus variants, it is unclear how the new strains could influence the efficiency of forecasting using models adopted using earlier data. In this study, we analyzed daily positive cases (DPC) data using a machine learning model to understand the effect of new viral variants on morbidity rates. A deep learning model that considers several environmental and mobility factors was used to forecast DPC in six districts of Japan. From machine learning predictions with training data since the early days of COVID-19, high-quality estimation has been achieved for data obtained earlier than March 2021. However, a significant upsurge was observed in some districts after the discovery of the new COVID-19 variant B.1.1.7 (Alpha). An average increase of 20–40% in DPC was observed after the emergence of the Alpha variant and an increase of up to 20% has been recognized in the effective reproduction number. Approximately four weeks was needed for the machine learning model to adjust the forecasting error caused by the new variants. The comparison between machine-learning predictions and reported values demonstrated that the emergence of new virus variants should be considered within COVID-19 forecasting models. This study presents an easy yet efficient way to quantify the change caused by new viral variants with potential usefulness for global data analysis. |
topic |
COVID-19 forecasting deep learning viral variants |
url |
https://www.mdpi.com/1660-4601/18/15/7799 |
work_keys_str_mv |
AT essamarashed infectivityupsurgebycovid19viralvariantsinjapanevidencefromdeeplearningmodeling AT akimasahirata infectivityupsurgebycovid19viralvariantsinjapanevidencefromdeeplearningmodeling |
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