| Literature DB >> 32831142 |
Hui Wan1, Jing-An Cui2, Guo-Jing Yang3,4,5.
Abstract
BACKGROUND: In December 2019, an outbreak of coronavirus disease (later named as COVID-19) was identified in Wuhan, China and, later on, detected in other parts of China. Our aim is to evaluate the effectiveness of the evolution of interventions and self-protection measures, estimate the risk of partial lifting control measures and predict the epidemic trend of the virus in the mainland of China excluding Hubei province based on the published data and a novel mathematical model.Entities:
Keywords: COVID-19; Contact tracing; Control reproduction number; Effective daily reproduction ratio; Intervention measure; Mathematical model; Risk estimation and prediction
Mesh:
Year: 2020 PMID: 32831142 PMCID: PMC7443853 DOI: 10.1186/s40249-020-00683-6
Source DB: PubMed Journal: Infect Dis Poverty ISSN: 2049-9957 Impact factor: 4.520
State variables and initial values in Model (1)
| Definitions | State variables | Initial values | Geweke | Source |
|---|---|---|---|---|
| Susceptible population | 1 336 210 000 | – | [ | |
| Exposed population | 501.23 | 0.92956 | MCMC | |
| Symptomatic infected population | 0.22839 | 0.95511 | MCMC | |
| Asymptomatic infected population | 991.29 | 0.81969 | MCMC | |
| Isolated susceptible population | 0 | – | Data | |
| Quarantined infected population | 0 | – | Data | |
| Infected population in hospitals | 21 | – | Data | |
| Recovered population | 240.76 | 0.63851 | MCMC | |
| Recovered population from hospitals | 0 | – | Data | |
| Cumulative number of dead cases in hospitals | 0 | – | Data | |
| Total number of reported cases | 21 | – | Data |
MCMC Markov Chain Monte Carlo method; Data COVID-19 daily data excluding Hubei province archived from NHCC
Fig. 1Flow chart of COVID-19 with intervention measures
Definition of the parameters
| Interpretations | Parameters | Values | Geweke | Source |
|---|---|---|---|---|
| Probability of transmission per contact | 0.054043 | 0.92594 | MCMC | |
| Initial contact rate | 40.319 | 0.99203 | MCMC | |
| Transition rate of exposed individuals | 1/5.2 | – | [ | |
| to the infected class | ||||
| Probability of having symptoms | 0.6628 | 0.91799 | MCMC | |
| among infected individuals | ||||
| Transition rate of quarantined infected | 17.379 | 0.59129 | MCMC | |
| individuals to hospital class | ||||
| Recovery rate of symptomatic | 0.15796 | 0.7351 | MCMC | |
| infectious individuals | ||||
| Recovery rate of asymptomatic | 0.55671 | 0.99168 | MCMC | |
| infected individuals | ||||
| Recovery rate of quarantined | 0.035352 | 0.97782 | MCMC | |
| infected individuals | ||||
| Disease-induced death rate | 5.5888×10−4 | 0.98847 | MCMC | |
| Correction factor of transmission probability | 0.80987 | 0.74505 | MCMC | |
| with asymptomatic infectious individuals | ||||
| Rate at which the quarantined uninfected | 1/14 | – | [ | |
| contacts were released | ||||
| Intervention coefficient with respect | – | – | Assumption | |
| to contact | ||||
| Intervention parameter with respect | 0.47218 | 0.9302 | MCMC | |
| to patient detection | ||||
| Intervention parameter with respect | 2.6954 | 0.55476 | MCMC | |
| to close contact tracing | ||||
| Exponential decreasing rate of contact rate | 2.8286×10−4 | 0.99962 | MCMC |
MCMC Markov Chain Monte Carlo method
Fig. 2Reported data of the mainland of China excluding Hubei
Fig. 3Posterior distribution (solid line) and prior distribution (dash line) of each parameter. x-axis is the parameter value, y-axis is the density
Fig. 4Data fitting and prediction. The abscissa axis is the time. The shaded area is the 95% confidence interval region; The blue solid line is the result of the date fitting; The red stars are the real data. a Cumulative confirmed cases; b Cumulative dead cases from hospitals; c Cumulative recovered cases; d The number of new cases; e The number of hospitalized individuals; f The number of infectious individuals
Fig. 5Effective reproduction number
Fig. 6Comparison of scenarios with different contact rates. The abscissa axis is the time. The blue solid line is the case with no changes (q1=exp(−δT(t))); The purple dash line is the case with q1=0.2; The red dash-dot line is the case with q1=0.5. a–b Adjust the contact rate from 5 March 2020; c–d Adjust the contact rate from 20 March 2020
The impact of partial lifting control measures and personal protection
| Starting time of adjustment | Maximum of cumulative confirmed cases | Epidemic period |
|---|---|---|
| No adjustment ( | 13 155 | 70 days |
| 5 March ( | 13 227 | 110 days |
| 5 March ( | More than 447 million | More than 365 days |
| 20 March ( | 13 161 | 77 days |
| 20 March ( | More than 445 million | More than 365 days |