| Literature DB >> 32678056 |
Yong Li1, Lian-Wen Wang2, Zhi-Hang Peng3, Hong-Bing Shen4.
Abstract
BACKGROUND: Coronavirus disease 2019 (COVID-19) has caused a serious epidemic around the world, but it has been effectively controlled in the mainland of China. The Chinese government limited the migration of people almost from all walks of life. Medical workers have rushed into Hubei province to fight against the epidemic. Any activity that can increase infection is prohibited. The aim of this study was to confirm that timely lockdown, large-scale case-screening and other control measures proposed by the Chinese government were effective to contain the spread of the virus in the mainland of China.Entities:
Keywords: Basic reproduction number; Coronavirus disease 2019; Large-scale case-screening; Lockdown; Parameter estimation; SEIQR model
Mesh:
Year: 2020 PMID: 32678056 PMCID: PMC7363992 DOI: 10.1186/s40249-020-00704-4
Source DB: PubMed Journal: Infect Dis Poverty ISSN: 2049-9957 Impact factor: 4.520
Fig. 1Flow chart of compartments of the COVID-19 SEIQR model
Parameter estimates for COVID-19 in the mainland of China
| Parameter, initial value | Definition | Value | Standard deviation | Source |
|---|---|---|---|---|
| Transmission rate (day− 1 individual− 1) | 1.0009 | 0.1945 | Estimated | |
| Transmission rate | 1.3754 | 1.076 | Estimated | |
| Transmission rate | 1.0967 | 0.0501 | Estimated | |
| Transmission rate | 0.0809 | 0.0371 | Estimated | |
| Transmission rate | 2.2783 | 1.0798 | Estimated | |
| Transmission rate | 1.4721 | 0.6584 | Estimated | |
| Transmission rate | 0.289 | 0.0176 | Estimated | |
| Transmission rate | 0.0189 | 0.0091 | Estimated | |
| Recovery rate (day− 1) | 0.0618 | 0.0094 | Estimated | |
| Detection rate (day− 1) | 0.2269 | 0.0457 | Estimated | |
| Migration rate (day− 1) | 0.0033 | 0.0002 | Estimated | |
| Migration rate (day− 1) | 0.0029 | 0.0006 | Estimated | |
| Infectivity reduction factor | 0.2001 | 0.0152 | Estimated | |
| Infectivity reduction factor | 0.1489 | 0.0164 | Estimated | |
| Infectivity reduction factor | 0.0587 | 0.0159 | Estimated | |
| Infectivity reduction factor | 0.0001 | – | Fixed | |
| Self-healing ratio | 0.0335 | 0.0056 | Estimated | |
| Infectivity reduction factor (day− 1) | 0.3301 | 0.0678 | Estimated | |
| Transition rate of exposed (day− 1) | 0.1724 | – | [ | |
| Proportion of the infectious | 0.8683 | – | [ | |
| Disease-induced death rate (day− 1) | 1.7826 × 10 − 5 | – | [ | |
| Initial susceptible population | 1.10 × 10 7 | – | [ | |
| Initial exposed population | 12.2544 | 4.3719 | Estimated | |
| Initial infected population | 0.1208 | 0.0868 | Estimated | |
| Initial isolated population | 41 | – | Data | |
| Initial recovered population | 2 | – | Data | |
| Initial susceptible population | 1.23 × 10 8 | 1.31 × 10 5 | Estimated | |
| Initial exposed population | 0.0184 | 0.0094 | Estimated | |
| Initial infected population | 0.0154 | 0.0087 | Estimated | |
| Initial isolated population | 0 | – | Data | |
| Initial recovered population | 0 | – | Data |
- means not applicable
Fig. 2The cumulative daily confirmed and simulative cases in Hubei province (L1(t)) and the mainland of China (L1(t) + L2(t))
Fig. 4Impact of the large-scale case-screening (especially in Hubei province) on the number of predicted confirmed cases in Hubei province
Fig. 5The number of predicted confirmed cases after the large-scale case-screening started on 12 February (especially in Hubei province) in the mainland of China
Fig. 3Comparison of the influence of lockdown of Wuhan and Hubei, China
Partial rank correlation coefficients (PRCC) values for R0(1)
| Input parameter | PRCC | |
|---|---|---|
| −0.864972677 | 0 | |
| 0.860166592 | 0 | |
| 0.734582947 | 0 | |
| −0.658402698 | 0 | |
| 0.550790936 | 0 | |
| −0.50823884 | 0 | |
| −0.460646049 | 0 | |
| 0.043493277 | 0.052272305 | |
| 0.004758291 | 0.831920484 |
Fig. 6The values of (PRCC) on the outcome of R0(1). All parameter values were derived from 27 January to 11 February 2020
The basic reproduction numbers of COVID-19 model (1)
| 11–22 January | 23–26 January | 27 January– 11 February | After 12 February |
|---|---|---|---|
| – | – |
Fig. 7Effect of future migration (12 March, 12 April or 12 May) on the number of confirmed cases