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  1. Article ; Online: How Data Analytics and Big Data Can Help Scientists in Managing COVID-19 Diffusion: Modeling Study to Predict the COVID-19 Diffusion in Italy and the Lombardy Region.

    Tosi, Davide / Campi, Alessandro

    Journal of medical Internet research

    2020  Volume 22, Issue 10, Page(s) e21081

    Abstract: ... on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored ... able to forecast the behavior of the COVID-19 diffusion and how it predicted the total number ... cases with controversial findings and numbers.: Objective: In this paper, a data analytics study ...

    Abstract Background: COVID-19 is the most widely discussed topic worldwide in 2020, and at the beginning of the Italian epidemic, scientists tried to understand the virus diffusion and the epidemic curve of positive cases with controversial findings and numbers.
    Objective: In this paper, a data analytics study on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored to forecast the evolution of the diffusion over time.
    Methods: Starting with all available official data collected worldwide about the diffusion of COVID-19, we defined a predictive model at the beginning of March 2020 for the Italian country.
    Results: This paper aims at showing how this predictive model was able to forecast the behavior of the COVID-19 diffusion and how it predicted the total number of positive cases in Italy over time. The predictive model forecasted, for the Italian country, the end of the COVID-19 first wave by the beginning of June.
    Conclusions: This paper shows that big data and data analytics can help medical experts and epidemiologists in promptly designing accurate and generalized models to predict the different COVID-19 evolutionary phases in other countries and regions, and for second and third possible epidemic waves.
    MeSH term(s) Betacoronavirus ; Big Data ; COVID-19 ; Computer Simulation ; Coronavirus Infections/epidemiology ; Coronavirus Infections/transmission ; Data Science ; Humans ; Italy/epidemiology ; Pandemics ; Pneumonia, Viral/epidemiology ; Pneumonia, Viral/transmission ; SARS-CoV-2
    Keywords covid19
    Language English
    Publishing date 2020-10-14
    Publishing country Canada
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 2028830-X
    ISSN 1438-8871 ; 1439-4456
    ISSN (online) 1438-8871
    ISSN 1439-4456
    DOI 10.2196/21081
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article: How Data Analytics and Big Data Can Help Scientists in Managing COVID-19 Diffusion: Modeling Study to Predict the COVID-19 Diffusion in Italy and the Lombardy Region

    Tosi, Davide / Campi, Alessandro

    J Med Internet Res

    Abstract: ... on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored ... wave by the beginning of June. CONCLUSIONS: This paper shows that big data and data analytics can help ... to forecast the behavior of the COVID-19 diffusion and how it predicted the total number of positive cases ...

    Abstract BACKGROUND: COVID-19 is the most widely discussed topic worldwide in 2020, and at the beginning of the Italian epidemic, scientists tried to understand the virus diffusion and the epidemic curve of positive cases with controversial findings and numbers. OBJECTIVE: In this paper, a data analytics study on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored to forecast the evolution of the diffusion over time. METHODS: Starting with all available official data collected worldwide about the diffusion of COVID-19, we defined a predictive model at the beginning of March 2020 for the Italian country. RESULTS: This paper aims at showing how this predictive model was able to forecast the behavior of the COVID-19 diffusion and how it predicted the total number of positive cases in Italy over time. The predictive model forecasted, for the Italian country, the end of the COVID-19 first wave by the beginning of June. CONCLUSIONS: This paper shows that big data and data analytics can help medical experts and epidemiologists in promptly designing accurate and generalized models to predict the different COVID-19 evolutionary phases in other countries and regions, and for second and third possible epidemic waves.
    Keywords covid19
    Publisher WHO
    Document type Article
    Note WHO #Covidence: #862699
    Database COVID19

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  3. Article ; Online: How Data Analytics and Big Data Can Help Scientists in Managing COVID-19 Diffusion

    Tosi, Davide / Campi, Alessandro

    Modeling Study to Predict the COVID-19 Diffusion in Italy and the Lombardy Region

    2020  

    Abstract: ... epidemic, scientists tried to understand the virus diffusion and the epidemic curve of positive cases ... COVID-19 is the most widely discussed topic worldwide in 2020, and at the beginning of the Italian ... with controversial findings and numbers. ...

    Abstract COVID-19 is the most widely discussed topic worldwide in 2020, and at the beginning of the Italian epidemic, scientists tried to understand the virus diffusion and the epidemic curve of positive cases with controversial findings and numbers.
    Keywords COVID-19 ; covid19
    Language English
    Publishing country it
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  4. Article ; Online: How Data Analytics and Big Data Can Help Scientists in Managing COVID-19 Diffusion

    Tosi, D. / Campi, A.

    Modeling Study to Predict the COVID-19 Diffusion in Italy and the Lombardy Region

    2020  

    Abstract: ... on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored ... wave by the beginning of June. CONCLUSIONS: This paper shows that big data and data analytics can help ... to forecast the behavior of the COVID-19 diffusion and how it predicted the total number of positive cases ...

    Abstract BACKGROUND: COVID-19 is the most widely discussed topic worldwide in 2020, and at the beginning of the Italian epidemic, scientists tried to understand the virus diffusion and the epidemic curve of positive cases with controversial findings and numbers. OBJECTIVE: In this paper, a data analytics study on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored to forecast the evolution of the diffusion over time. METHODS: Starting with all available official data collected worldwide about the diffusion of COVID-19, we defined a predictive model at the beginning of March 2020 for the Italian country. RESULTS: This paper aims at showing how this predictive model was able to forecast the behavior of the COVID-19 diffusion and how it predicted the total number of positive cases in Italy over time. The predictive model forecasted, for the Italian country, the end of the COVID-19 first wave by the beginning of June. CONCLUSIONS: This paper shows that big data and data analytics can help medical experts and epidemiologists in promptly designing accurate and generalized models to predict the different COVID-19 evolutionary phases in other countries and regions, and for second and third possible epidemic waves.
    Keywords big data ; COVID-19 ; data analytics ; diffusion ; Italy ; modeling ; prediction ; predictive models ; SARS-CoV-2 ; Computer Simulation ; Coronavirus Infections ; Data Science ; Humans ; Pandemics ; Pneumonia ; Viral ; Betacoronavirus ; covid19
    Subject code 330
    Language English
    Publishing country it
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  5. Article ; Online: How Data Analytics and Big Data Can Help Scientists in Managing COVID-19 Diffusion

    Tosi, Davide / Campi, Alessandro

    Journal of Medical Internet Research, Vol 22, Iss 10, p e

    Modeling Study to Predict the COVID-19 Diffusion in Italy and the Lombardy Region

    2020  Volume 21081

    Abstract: ... on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored ... wave by the beginning of June. ConclusionsThis paper shows that big data and data analytics can help ... to forecast the behavior of the COVID-19 diffusion and how it predicted the total number of positive cases ...

    Abstract BackgroundCOVID-19 is the most widely discussed topic worldwide in 2020, and at the beginning of the Italian epidemic, scientists tried to understand the virus diffusion and the epidemic curve of positive cases with controversial findings and numbers. ObjectiveIn this paper, a data analytics study on the diffusion of COVID-19 in Italy and the Lombardy Region is developed to define a predictive model tailored to forecast the evolution of the diffusion over time. MethodsStarting with all available official data collected worldwide about the diffusion of COVID-19, we defined a predictive model at the beginning of March 2020 for the Italian country. ResultsThis paper aims at showing how this predictive model was able to forecast the behavior of the COVID-19 diffusion and how it predicted the total number of positive cases in Italy over time. The predictive model forecasted, for the Italian country, the end of the COVID-19 first wave by the beginning of June. ConclusionsThis paper shows that big data and data analytics can help medical experts and epidemiologists in promptly designing accurate and generalized models to predict the different COVID-19 evolutionary phases in other countries and regions, and for second and third possible epidemic waves.
    Keywords Computer applications to medicine. Medical informatics ; R858-859.7 ; Public aspects of medicine ; RA1-1270
    Subject code 330
    Language English
    Publishing date 2020-10-01T00:00:00Z
    Publisher JMIR Publications
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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