2022
DOI: 10.4103/jfmpc.jfmpc_1205_21
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Determining the efficiency of data analysis systems in predicting COVID-19 infected cases

Abstract: After the outbreak of the novel coronavirus disease (2019) (COVID-19), a lot of people have been affected around the world. Due to the large number of affected patients in the world, the global health care system has been disrupted and nearly all hospitals around the world has faced a shortage of bed spaces. As a consequence, being able of prediction of the number of COVID-19 cases is extremely important for taking appropriate decision for management of the affected patients. An accurate prediction of the numb… Show more

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“…The current study makes an effort to produce a more precise estimate of the number of Coronavirus cases by taking into account data from the past as well as other potent elements related to the virus. Data analysis, along with the creation of a network-based neural algorithm [i.e., nonlinear autonomous exogenous input (NARX)], can be utilised for this purpose [40]. C-reactive protein, platelets, and D-dimers were shown to be the variables most closely connected with COVID-19 severity prediction when data analysis techniques were employed to identify patterns and key characteristics in the data [41].…”
Section: Covid-19 Data Analysis Approachmentioning
confidence: 99%
“…The current study makes an effort to produce a more precise estimate of the number of Coronavirus cases by taking into account data from the past as well as other potent elements related to the virus. Data analysis, along with the creation of a network-based neural algorithm [i.e., nonlinear autonomous exogenous input (NARX)], can be utilised for this purpose [40]. C-reactive protein, platelets, and D-dimers were shown to be the variables most closely connected with COVID-19 severity prediction when data analysis techniques were employed to identify patterns and key characteristics in the data [41].…”
Section: Covid-19 Data Analysis Approachmentioning
confidence: 99%