Author: Wu, Chao; Zhou, Mengjie; Liu, Pengyu; Yang, Mengjie
Title: Analyzing COVIDâ€19 Using Multisource Data: An Integrated Approach of Visualization, Spatial Regression, and Machine Learning Cord-id: o48n0ytr Document date: 2021_8_1
ID: o48n0ytr
Snippet: Coronavirus disease 2019 (COVIDâ€19), caused by severe acute respiratory syndrome coronavirus 2, was first identified in Wuhan, China, in December 2019. As the number of COVIDâ€19 infections and deaths worldwide continues to increase rapidly, the prevention and control of COVIDâ€19 remains urgent. This article aims to analyze COVIDâ€19 from a geographical perspective, and this information can provide useful insights for rapid visualization of spatialâ€temporal epidemic information and ident
Document: Coronavirus disease 2019 (COVIDâ€19), caused by severe acute respiratory syndrome coronavirus 2, was first identified in Wuhan, China, in December 2019. As the number of COVIDâ€19 infections and deaths worldwide continues to increase rapidly, the prevention and control of COVIDâ€19 remains urgent. This article aims to analyze COVIDâ€19 from a geographical perspective, and this information can provide useful insights for rapid visualization of spatialâ€temporal epidemic information and identification of the factors important to the spread of COVIDâ€19. A new type of vitalization method, called the point grid map, is integrated with calendarâ€based visualization to show the spatialâ€temporal variations in COVIDâ€19. The combination of mixed geographically weighted regression (mixed GWR) and extreme gradient boosting (XGBoost) is used to identify the potential factors and the corresponding importance. The visualization results clearly reflect the spatialâ€temporal patterns of COVIDâ€19. The quantified results reveal that the impact of population outflow from Wuhan is the most important factor and indicate statistically significant spatial heterogeneity. Our results provide insights into how multisource big geodata can be employed within the framework of integrating visualization and analytical methods to characterize COVIDâ€19 trends. In addition, this work can help understand the influential factors for controlling and preventing epidemics, which is important for policy design and effective decisionâ€making for controlling COVIDâ€19. The results reveal that one of the most effective ways to control COVIDâ€19 include controlling the source of infection, cutting off the transmission route, and protecting vulnerable groups.
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