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  1. Article: Association between weather data and COVID-19 pandemic predicting mortality rate: Machine learning approaches.

    Malki, Zohair / Atlam, El-Sayed / Hassanien, Aboul Ella / Dagnew, Guesh / Elhosseini, Mostafa A / Gad, Ibrahim

    Chaos, solitons, and fractals

    2020  Volume 138, Page(s) 110137

    Abstract: ... that temperature and humidity are important features for predicting COVID-19 mortality rate. Moreover, it is ... between different factors and the spreading rate of COVID-19. The machine learning algorithms employed ... of COVID-19 by extracting the relationship between the number of confirmed cases and the weather variables ...

    Abstract Nowadays, a significant number of infectious diseases such as human coronavirus disease (COVID-19) are threatening the world by spreading at an alarming rate. Some of the literatures pointed out that the pandemic is exhibiting seasonal patterns in its spread, incidence and nature of the distribution. In connection to the spread and distribution of the infection, scientific analysis that answers the questions whether the next summer can save people from COVID-19 is required. Many researchers have been exclusively asked whether high temperature during summer can slow down the spread of the COVID-19 as it has with other seasonal flues. Since there are a lot of questions that are unanswered right now, and many mysteries aspects about the COVID-19 that is still unknown to us, in-depth study and analysis of associated weather features are required. Moreover, understanding the nature of COVID-19 and forecasting the spread of COVID-19 request more investigation of the real effect of weather variables on the transmission of the COVID-19 among people. In this work, various regressor machine learning models are proposed to extract the relationship between different factors and the spreading rate of COVID-19. The machine learning algorithms employed in this work estimate the impact of weather variables such as temperature and humidity on the transmission of COVID-19 by extracting the relationship between the number of confirmed cases and the weather variables on certain regions. To validate the proposed method, we have collected the required datasets related to weather and census features and necessary prepossessing is carried out. From the experimental results, it is shown that the weather variables are more relevant in predicting the mortality rate when compared to the other census variables such as population, age, and urbanization. Thus, from this result, we can conclude that temperature and humidity are important features for predicting COVID-19 mortality rate. Moreover, it is indicated that the higher the value of temperature the lower number of infection cases.
    Keywords covid19
    Language English
    Publishing date 2020-07-17
    Publishing country England
    Document type Journal Article
    ZDB-ID 2003919-0
    ISSN 1873-2887 ; 0960-0779
    ISSN (online) 1873-2887
    ISSN 0960-0779
    DOI 10.1016/j.chaos.2020.110137
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article: Association between weather data and COVID-19 pandemic predicting mortality rate: Machine learning approaches

    Malki, Zohair / Atlam, El-Sayed / Hassanien, Aboul Ella / Dagnew, Guesh / Elhosseini, Mostafa A. / Gad, Ibrahim

    Chaos Solitons Fractals

    Abstract: ... that temperature and humidity are important features for predicting COVID-19 mortality rate. Moreover, it is ... between different factors and the spreading rate of COVID-19. The machine learning algorithms employed ... of COVID-19 by extracting the relationship between the number of confirmed cases and the weather variables ...

    Abstract Nowadays, a significant number of infectious diseases such as human coronavirus disease (COVID-19) are threatening the world by spreading at an alarming rate. Some of the literatures pointed out that the pandemic is exhibiting seasonal patterns in its spread, incidence and nature of the distribution. In connection to the spread and distribution of the infection, scientific analysis that answers the questions whether the next summer can save people from COVID-19 is required. Many researchers have been exclusively asked whether high temperature during summer can slow down the spread of the COVID-19 as it has with other seasonal flues. Since there are a lot of questions that are unanswered right now, and many mysteries aspects about the COVID-19 that is still unknown to us, in-depth study and analysis of associated weather features are required. Moreover, understanding the nature of COVID-19 and forecasting the spread of COVID-19 request more investigation of the real effect of weather variables on the transmission of the COVID-19 among people. In this work, various regressor machine learning models are proposed to extract the relationship between different factors and the spreading rate of COVID-19. The machine learning algorithms employed in this work estimate the impact of weather variables such as temperature and humidity on the transmission of COVID-19 by extracting the relationship between the number of confirmed cases and the weather variables on certain regions. To validate the proposed method, we have collected the required datasets related to weather and census features and necessary prepossessing is carried out. From the experimental results, it is shown that the weather variables are more relevant in predicting the mortality rate when compared to the other census variables such as population, age, and urbanization. Thus, from this result, we can conclude that temperature and humidity are important features for predicting COVID-19 mortality rate. Moreover, it is indicated that the higher the value of temperature the lower number of infection cases.
    Keywords covid19
    Publisher WHO
    Document type Article
    Note WHO #Covidence: #650533
    Database COVID19

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  3. Article ; Online: Association between weather data and COVID-19 pandemic predicting mortality rate

    Malki, Zohair / Atlam, El-Sayed / Hassanien, Aboul Ella / Dagnew, Guesh / Elhosseini, Mostafa A. / Gad, Ibrahim

    Chaos, Solitons & Fractals

    Machine learning approaches

    2020  Volume 138, Page(s) 110137

    Keywords General Mathematics ; covid19
    Language English
    Publisher Elsevier BV
    Publishing country us
    Document type Article ; Online
    ZDB-ID 2003919-0
    ISSN 1873-2887 ; 0960-0779
    ISSN (online) 1873-2887
    ISSN 0960-0779
    DOI 10.1016/j.chaos.2020.110137
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  4. Article ; Online: Association between weather data and COVID-19 pandemic predicting mortality rate

    Malki, Zohair / Atlam, El-Sayed / Hassanien, Aboul Ella / Dagnew, Guesh / Elhosseini, Mostafa A. / Gad, Ibrahim

    reponame:Expeditio Repositorio Institucional UJTL ; instname:Universidad de Bogotá Jorge Tadeo Lozano

    Machine learning approaches

    2020  

    Abstract: ... that temperature and humidity are important features for predicting COVID-19 mortality rate. Moreover, it is ... between different factors and the spreading rate of COVID-19. The machine learning algorithms employed ... of COVID-19 by extracting the relationship between the number of confirmed cases and the weather variables ...

    Abstract Nowadays, a significant number of infectious diseases such as human coronavirus disease (COVID-19) are threatening the world by spreading at an alarming rate. Some of the literatures pointed out that the pandemic is exhibiting seasonal patterns in its spread, incidence and nature of the distribution. In connection to the spread and distribution of the infection, scientific analysis that answers the questions whether the next summer can save people from COVID-19 is required. Many researchers have been exclusively asked whether high temperature during summer can slow down the spread of the COVID-19 as it has with other seasonal flues. Since there are a lot of questions that are unanswered right now, and many mysteries aspects about the COVID-19 that is still unknown to us, in-depth study and analysis of associated weather features are required. Moreover, understanding the nature of COVID-19 and forecasting the spread of COVID-19 request more investigation of the real effect of weather variables on the transmission of the COVID-19 among people. In this work, various regressor machine learning models are proposed to extract the relationship between different factors and the spreading rate of COVID-19. The machine learning algorithms employed in this work estimate the impact of weather variables such as temperature and humidity on the transmission of COVID-19 by extracting the relationship between the number of confirmed cases and the weather variables on certain regions. To validate the proposed method, we have collected the required datasets related to weather and census features and necessary prepossessing is carried out. From the experimental results, it is shown that the weather variables are more relevant in predicting the mortality rate when compared to the other census variables such as population, age, and urbanization. Thus, from this result, we can conclude that temperature and humidity are important features for predicting COVID-19 mortality rate. Moreover, it is indicated that the higher the value of temperature the lower number of infection cases.
    Keywords Aprendizaje automático ; Síndrome respiratorio agudo grave ; COVID-19 ; SARS-CoV-2 ; Coronavirus ; OLS ; Temperature ; Humidity ; Machine learning ; Prediction ; covid19
    Publisher Chaos, Solitons and Fractals
    Publishing country co
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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