| Literature DB >> 34886542 |
Sonvanee Uansri1, Titiporn Tuangratananon1,2, Mathudara Phaiyarom1, Nattadhanai Rajatanavin1, Rapeepong Suphanchaimat1,3, Warisara Jaruwanno1.
Abstract
In mid-2021, Thailand faced a fourth wave of Coronavirus Disease 2019 (COVID-19) predominantly fueled by the Delta and Alpha variants. The number of cases and deaths rose exponentially, alongside a sharp increase in hospitalizations and intubated patients. The Thai Government then implemented a lockdown to mitigate the outbreak magnitude and prevent cases from overwhelming the healthcare system. This study aimed to model the severity of the outbreak over the following months by different levels of lockdown effectiveness. Secondary analysis was performed on data primarily obtained from the Ministry of Health; the data were analyzed using both the deterministic compartmental model and the system dynamics model. The model was calibrated against the number of daily cases in Greater Bangkok during June-July 2021. We then assessed the outcomes (daily cases, daily deaths, and intubated patients) according to hypothetical lockdowns of varying effectiveness and duration. The findings revealed that lockdown measures could reduce and delay the peak of COVID-19 cases and deaths. A two-month lockdown with 60% effectiveness in the reduction in reproduction number caused the lowest number of cases, deaths, and intubated patients, with a peak about one-fifth of the size of a no-lockdown peak. The two-month lockdown policy also delayed the peak until after December, while in the context of a one-month lockdown, cases peaked during the end of September to early December (depending on the varying degrees of lockdown effectiveness in the reduction in reproduction number). In other words, the implementation of a lockdown policy did not mean the end of the outbreak, but it helped delay the peak. In this sense, implementing a lockdown helped to buy time for the healthcare system to recover and better prepare for any future outbreaks. We recommend further studies that explore the impact of lockdown measures at a sub-provincial level, and examine the impact of lockdowns on parameters not directly related to the spread of disease, such as quality of life and economic implications for individuals and society.Entities:
Keywords: Coronavirus Disease 2019; Thailand; lockdown; reproduction number
Mesh:
Year: 2021 PMID: 34886542 PMCID: PMC8657386 DOI: 10.3390/ijerph182312816
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Model framework.
Scenarios of interest.
| Scenario | Lockdown Effect (% Reduction in Reproduction Number) | Duration of Lockdown (Months) |
|---|---|---|
| 1 | No lockdown (theoretical reference) | |
| 2 | 20 | 1 |
| 3 | 40 | 1 |
| 4 | 60 | 1 |
| 5 | 20 | 2 |
| 6 | 40 | 2 |
| 7 | 60 | 2 |
List of key parameters.
| Parameters | Unit | Value | Reference |
|---|---|---|---|
| Reproduction number | Dimensionless | 1.43 | Model calibration |
| Population in Greater Bangkok | Persons | 12,200,000 | National Statistical Office of Thailand [ |
| Percentage of initial infectees per total population | Dimensionless | 0.5 | Model calibration |
| Average infectious duration | Days | 5 | Ganyani et al. [ |
| Average incubation period | Days | 5.2 | McAloon et al. [ |
| The time lag from being infected to isolation | Days | 5 | Model calibration |
| Percentage of reported asymptomatic and mildly asymptomatic cases | Dimensionless | 42.6 | Internal database of the Department of Disease Control |
| Percentage of reported symptomatic nonpneumonic cases | Dimensionless | 54.2 | Internal database of the Department of Disease Control |
| Percentage of reported symptomatic pneumonic cases without intubation | Dimensionless | 2.6 | Internal database of the Department of Disease Control |
| Percentage of reported symptomatic pneumonic cases with intubation | Dimensionless | 0.6 | Internal database of the Department of Disease Control |
| Percentage of actual asymptomatic and mildly asymptomatic cases | Dimensionless | 60.7 | Internal database of the Department of Disease Control |
| Percentage of actual symptomatic nonpneumonic cases | Dimensionless | 38.6 | Internal database of the Department of Disease Control |
| Percentage of actual symptomatic pneumonic cases without intubation | Dimensionless | 0.6 | Internal database of the Department of Disease Control |
| Percentage of actual symptomatic pneumonic cases with intubation | Dimensionless | 0.1 | Internal database of the Department of Disease Control |
| Length of hospital stay for asymptomatic and mildly symptomatic cases | Day | 14 | Internal database of the Department of Disease Control |
| Length of hospital stay for symptomatic nonpneumonic cases | Day | 14 | Internal database of the Department of Disease Control |
| Length of hospital stay for pneumonia cases with and without intubation | Day | 21 | Internal database of the Department of Disease Control |
| The ratio of daily incident deaths per prevalent intubated cases | Dimensionless | 0.12 | Internal database of the Department of Medical Services |
The essential formula of the model.
| Change of Status | Formula | Note |
|---|---|---|
| From susceptible to exposed | −β × (1 − κ) × S × I2/P | β = reproduction number/infectious duration, κ = lockdown effect, S = susceptible population, I2 = isolated infectious population, P = total population |
| From susceptible to nonisolated infectious | −αE | α = 1/incubation period, E = exposed population |
| From nonisolated infectious to isolated infectious | −δI1 | δ = 1/time lag from nonisolation to isolation, I1 = nonisolated infectious population |
| From isolated infectious to recovered | −ζI2 | ζ = 1/length of stay (varying by clinical severity); I2 = isolated infectious population |
Figure 2Daily (estimated) actual new cases in Greater Bangkok.
Figure 3Daily new reported cases in Greater Bangkok.
Figure 4Daily new deaths in Greater Bangkok.
Figure 5Prevalent reported intubated cases in Greater Bangkok.