| Literature DB >> 32270521 |
Nadia Al-Rousan1, Hazem Al-Najjar1.
Abstract
Coronavirus epidemic caused an emergency in South Korea. The first infected case came to light on 20 January 2020 followed by 9583 more cases that were reported by 29 March 2020. This indicates that the number of confirmed cases is increasing rapidly, which can cause a nationwide crisis for the country. The aim of this study is to fill a gap between previous studies and the current rate of spreading of COVID-19 by extracting a relationship between independent variables and the dependent ones. This study statistically analyzed the effect of factors such as sex, region, infection reasons, birth year, and released or diseased date on the reported number of recovered and deceased cases. The results found that sex, region, and infection reasons affected both recovered and deceased cases, while birth year affected only the deceased cases. Besides, no deceased cases are reported for released cases, while 11.3% of deceased cases positive confirmed after their deceased. Unknown reason of infection is the main variable that detected in South Korea with more than 33% of total infected cases.Entities:
Keywords: South Korea; engineering and technology; epidemiology; infection
Mesh:
Year: 2020 PMID: 32270521 PMCID: PMC7262105 DOI: 10.1002/jmv.25850
Source DB: PubMed Journal: J Med Virol ISSN: 0146-6615 Impact factor: 20.693
Figure 1Distribution of recovered, unrecovered, deceased, and undeceased cases based on sex
Figure 2Ratios of recovered cases to infected cases based on region
Figure 3Ratios of deceased cases to infected cases based on region
Figure 4Ratio of recovered cases to infected cases based on the infection reasons
Figure 5Ratio of deceased cases to infected cases based on the infection reasons
Classification results based on multinomial logistic regression
| 0.00 | 1.00 | Percent correct | |
|---|---|---|---|
| Death | |||
| 0.00 | 2361 | 3 | 99.9% |
| 1.00 | 8 | 42 | 84.0% |
| Overall percentage | 98.1% | 1.9% | 99.5% |
| Recovered | |||
| 0.00 | 1426 | 212 | 87.1% |
| 1.00 | 78 | 698 | 89.9% |
| Overall percentage | 62.3% | 37.7% | 88.0% |
Likelihood ratio tests
| Effect | Model fitting criteria | Likelihood ratio tests | ||||
|---|---|---|---|---|---|---|
| AIC of reduced model | BIC of reduced model | −2 log likelihood of reduced model |
|
| Sig. | |
| Death | ||||||
| Intercept | 482 | 1703 | 60 | 0 | 0 | |
| Birth_Date | 574 | 1790 | 154 | 94 | 1 | .000 |
| Sex | 487 | 1703 | 67 | 7 | 1 | .006 |
| Country | 17 711 | 18 243 | 17 527 | 17 467 | 119 | .000 |
| Region | 846 | 2027 | 438 | 379 | 7 | .000 |
| Infection_Reason | 493 | 1593 | 113 | 54 | 21 | .000 |
| confirmed_date | 449 | 1352 | 137 | 77 | 55 | .027 |
| Recovered | ||||||
| Intercept | 1606 | 2827 | 1184 | 0 | 0 | |
| Sex | 1632 | 2848 | 1212 | 28 | 1 | .000 |
| Country | 1604 | 2820 | 1184 | 1 | 1 | .443 |
| Region | 1738 | 2270 | 1554 | 370 | 119 | .000 |
| Infection_Reason | 1639 | 2820 | 1231 | 47 | 7 | .000 |
| confirmed_date | 1625 | 2725 | 1245 | 61 | 21 | .000 |
| Birth_Date | 1917 | 2820 | 1605 | 422 | 55 | .000 |