Predicting New Daily COVID-19 Cases and Deaths Using Search Engine Query Data in South Korea from 2020 to 2021: Infodemiology Study

Husnayain, Atina and Shim, Eunha and Fuad, Anis and Su, Emily Chia-Yu (2021) Predicting New Daily COVID-19 Cases and Deaths Using Search Engine Query Data in South Korea from 2020 to 2021: Infodemiology Study. Journal of Medical Internet Research, 23 (12). ISSN 14388871

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Abstract

Background: Given the ongoing COVID-19 pandemic situation, accurate predictions could greatly help in the health resource management for future waves. However, as a new entity, COVID-19's disease dynamics seemed difficult to predict. External factors, such as internet search data, need to be included in the models to increase their accuracy. However, it remains unclear whether incorporating online search volumes into models leads to better predictive performances for long-term prediction. Objective: The aim of this study was to analyze whether search engine query data are important variables that should be included in the models predicting new daily COVID-19 cases and deaths in short- and long-term periods. Methods: We used country-level case-related data, NAVER search volumes, and mobility data obtained from Google and Apple for the period of January 20, 2020, to July 31, 2021, in South Korea. Data were aggregated into four subsets: 3, 6, 12, and 18 months after the first case was reported. The first 80 of the data in all subsets were used as the training set, and the remaining data served as the test set. Generalized linear models (GLMs) with normal, Poisson, and negative binomial distribution were developed, along with linear regression (LR) models with lasso, adaptive lasso, and elastic net regularization. Root mean square error values were defined as a loss function and were used to assess the performance of the models. All analyses and visualizations were conducted in SAS Studio, which is part of the SAS OnDemand for Academics. Results: GLMs with different types of distribution functions may have been beneficial in predicting new daily COVID-19 cases and deaths in the early stages of the outbreak. Over longer periods, as the distribution of cases and deaths became more normally distributed, LR models with regularization may have outperformed the GLMs. This study also found that models performed better when predicting new daily deaths compared to new daily cases. In addition, an evaluation of feature effects in the models showed that NAVER search volumes were useful variables in predicting new daily COVID-19 cases, particularly in the first 6 months of the outbreak. Searches related to logistical needs, particularly for “thermometer” and “mask strap,” showed higher feature effects in that period. For longer prediction periods, NAVER search volumes were still found to constitute an important variable, although with a lower feature effect. This finding suggests that search term use should be considered to maintain the predictive performance of models. Conclusions: NAVER search volumes were important variables in short- and long-term prediction, with higher feature effects for predicting new daily COVID-19 cases in the first 6 months of the outbreak. Similar results were also found for death predictions. © Atina Husnayain, Eunha Shim, Anis Fuad, Emily Chia-Yu Su. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 22.12.2021. 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.

Item Type: Article
Additional Information: Cited by: 7; All Open Access, Gold Open Access, Green Open Access
Uncontrolled Keywords: COVID-19; Humans; Infodemiology; Pandemics; SARS-CoV-2; Search Engine; hand sanitizer; Article; contact examination; coronavirus disease 2019; death; elastic tissue; human; information seeking; search engine; social distancing; South Korea; pandemic; search engine
Subjects: R Medicine > RB Biomedical Sciences
Divisions: Faculty of Medicine, Public Health and Nursing > Biomedical Sciences
Depositing User: Sri JUNANDI
Date Deposited: 28 Sep 2024 03:11
Last Modified: 28 Sep 2024 03:11
URI: https://ir.lib.ugm.ac.id/id/eprint/4498

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