2021
DOI: 10.1186/s12889-021-11058-3
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Predicting the incidence of COVID-19 using data mining

Abstract: Background The high prevalence of COVID-19 has made it a new pandemic. Predicting both its prevalence and incidence throughout the world is crucial to help health professionals make key decisions. In this study, we aim to predict the incidence of COVID-19 within a two-week period to better manage the disease. Methods The COVID-19 datasets provided by Johns Hopkins University, contain information on COVID-19 cases in different geographic regions sin… Show more

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Cited by 18 publications
(15 citation statements)
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“… GQ1, GQ2, SQ1, SQ3 Abdallah et al. ( 2022 ) Tunisia Propose a new strategy based on reinforcement learning (RL) to study the dynamics of COVID-19 evolution GQ1, GQ2, SQ1, SQ3 Ahouz and Golabpour ( 2021 ) Iran Predict the incidence of COVID-19 within two weeks to better manage the disease using the Least-Square Boosting Classification algorithm. GQ1, SQ1, SQ4 Alali et al.…”
Section: Resultsmentioning
confidence: 99%
“… GQ1, GQ2, SQ1, SQ3 Abdallah et al. ( 2022 ) Tunisia Propose a new strategy based on reinforcement learning (RL) to study the dynamics of COVID-19 evolution GQ1, GQ2, SQ1, SQ3 Ahouz and Golabpour ( 2021 ) Iran Predict the incidence of COVID-19 within two weeks to better manage the disease using the Least-Square Boosting Classification algorithm. GQ1, SQ1, SQ4 Alali et al.…”
Section: Resultsmentioning
confidence: 99%
“… N.P. Countries having maximum number >2000 of confirmed cases in a day [ 55 ] (B) Comparison between different types of COVID-19 forecast models Types Strength Weakness Dynamics Able to forecast over a wide future time window The physical meaning of the model is very clear Cannot be adapted to situations where the model subject has increased or where model parameters change with specific policies, disease pathogen variability, etc. High requirements for parameter estimation High demands on data sources, some of which are often missing or inaccessible, and their neglect often leads to unrealistic model assumptions Time series Simple and reproducible steps The required data are easily available Particularly suitable for cases where time series are periodic Application scenarios are limited, e.g.…”
Section: Literature Reviewmentioning
confidence: 99%
“…Another limitation of this study is the use of data from all countries involved in COVID-19, while each country has its own protocol for testing and identifying patients. However, in general, this is the only global dataset for COVID-19 that has been used in other studies [17], [29], [34], [46]- [48]. Also, in the proposed model, the past information of each country has been used to predict the COVID-19 status of that country, and this reduces the mentioned limitation.…”
Section: Predicting the Status Of The Active Patientsmentioning
confidence: 99%