2021
DOI: 10.3390/jcm10071409
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Modeling of Various Spatial Patterns of SARS-CoV-2: The Case of Germany

Abstract: Among numerous publications about the SARS-CoV-2, many articles present research from the geographic point of view. The cartographic research method used in this area of science can be successfully applied to analyze the spatiotemporal characteristics of the pandemic using limited data and can be useful for a quick and preliminary assessment of the spread of infections. In this paper, research on the spatial differentiation of the structure and homogeneity of the system in which SARS-CoV-2 occurs, as well as s… Show more

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Cited by 3 publications
(2 citation statements)
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“…The above leads to the determination of the most significant factors, enabling the prediction and modelling of the spatial patterns of virus spread. The researchers commonly use spatial statistic tools such as linear and non-linear regression [50], Bayesian Belief Networks [68], Adaboost algorithm [69], Potential Model [70], Joinpoint analysis [71], machine learning [50,72] in modelling COVID-19 spatial pattern. As a result, it is possible to forecast the COVID spread and to deliver an effective response in cluster containment for crisis situations with intelligent computing [20,62,70,73,74].…”
Section: Figurementioning
confidence: 99%
“…The above leads to the determination of the most significant factors, enabling the prediction and modelling of the spatial patterns of virus spread. The researchers commonly use spatial statistic tools such as linear and non-linear regression [50], Bayesian Belief Networks [68], Adaboost algorithm [69], Potential Model [70], Joinpoint analysis [71], machine learning [50,72] in modelling COVID-19 spatial pattern. As a result, it is possible to forecast the COVID spread and to deliver an effective response in cluster containment for crisis situations with intelligent computing [20,62,70,73,74].…”
Section: Figurementioning
confidence: 99%
“…The dominance of publications from China, the USA and Brazil is not so strong anymore. Most of the available studies are those that concern the development of the COVID-19 epidemic in individual countries (Danon et al, 2020;Gomes et al, 2020;Hernández-Flores et al, 2020;Hohl et al, 2020;Kim et al, 2020;Liu et al, 2020;Mollalo et al, 2020;Niu et al, 2020;Ramirez-Aldana, 2020;Castro et al, 2021;Gaudart et al, 2021;Gupta et al, 2021;Huang et al, 2021;Lipsitt et al, 2021;Mościcka et al, 2021;Vaz, 2021). Although so far rare, there are also available results of analyzes carried out on a supra-national scale, especially concerning the European Union (Mounir Amdaoud et al, 2020;Hass & Jokar Arsanjani, 2021;Sannigrahi et al, 2020), entire continents (Weiss et al, 2020 -Africa) and even the whole Earth (Shadi Nazari et al, 2020).…”
Section: Introductionmentioning
confidence: 99%