Frontiers in Public Health, Volume (8), Year (2021-1)

Title : ( A Synergetic R-Shiny Portal for Modeling and Tracking of COVID-19 Data )

Authors: Mahdi Salehi , Mohammad Arashi , Andriette Bekker , Johan Ferreira , Ding-Geng Chen , Foad Esmaeili , Motala Frances ,

Access to full-text not allowed by authors

Citation: BibTeX | EndNote

Abstract

The purpose of this paper is to introduce a useful online interactive dashboard (https://mahdisalehi.shinyapps.io/Covid19Dashboard/) that visualize and follow confirmed cases of COVID-19 in real-time. The dashboard was made publicly available on 6 April 2020 to illustrate the counts of confirmed cases, deaths, and recoveries of COVID-19 at the level of country or continent. This dashboard is intended as a user-friendly dashboard for researchers as well as the general public to track the COVID-19 pandemic, and is generated from trusted data sources and built in open-source R software (Shiny in particular); ensuring a high sense of transparency and reproducibility. The R Shiny framework serves as a platform for visualization and analysis of the data, as well as an advance to capitalize on existing data curation to support and enable open science. Coded analysis here includes logistic and Gompertz growth models, as two mathematical tools for predicting the future of the COVID-19 pandemic, as well as the Moran’s index metric, which gives a spatial perspective via heat maps that may assist in the identification of latent responses and behavioral patterns. This analysis provides real-time statistical application aiming to make sense to academic and public consumers of the large amount of data that is being accumulated due to the COVID-19 pandemic.

Keywords

, COVID-19, dashboard, gompertz growth model, logistic growth model, moran’s index, open science, r, shiny
برای دانلود از شناسه و رمز عبور پرتال پویا استفاده کنید.

@article{paperid:1083675,
author = {Mahdi Salehi and Arashi, Mohammad and Andriette Bekker and Johan Ferreira and Ding-Geng Chen and Foad Esmaeili and Motala Frances},
title = {A Synergetic R-Shiny Portal for Modeling and Tracking of COVID-19 Data},
journal = {Frontiers in Public Health},
year = {2021},
volume = {8},
month = {January},
issn = {2296-2565},
keywords = {COVID-19; dashboard; gompertz growth model; logistic growth model; moran’s index; open science; r; shiny},
}

[Download]

%0 Journal Article
%T A Synergetic R-Shiny Portal for Modeling and Tracking of COVID-19 Data
%A Mahdi Salehi
%A Arashi, Mohammad
%A Andriette Bekker
%A Johan Ferreira
%A Ding-Geng Chen
%A Foad Esmaeili
%A Motala Frances
%J Frontiers in Public Health
%@ 2296-2565
%D 2021

[Download]