Modelling the Effectiveness of Epidemic Control Measures in Preventing the Transmission of COVID-19 in Malaysia
Abstract
:1. Introduction
2. Materials and Methods
2.1. Data Source
2.2. Data Analysis
2.3. Model Formulation
- (1)
- We assumed that international travel had introduced transmission into the local setting but then played no further role in local transmissions, assuming a closed population. This was mitigated by travel restrictions and entry/exit point screening, which were enforced on 25 January 2020, limiting importation of cases.
- (2)
- Malaysia’s total population, denoted as N, was divided into an extended SEIR compartmental model, distinguishing between the traced and untraced populations and incorporating the current control measures and precautions taken. Apart from the basic compartments of SEIR (Susceptible (S), Exposed (E), Infected (I), and Recovered (R)), this model had additional three compartments, namely traced close-contact and a negative test result population (T), traced exposed close-contact and positive test result population (Eq), and the infected isolated (Iq). It was assumed that, initially, the entire Malaysian population was susceptible, hence S0 = N.
- (3)
- All Malaysian residents were assumed to be of equal measure in their likelihood to contract and transmit the virus, assuming there was homogenous mixing within the population; however, we assumed that only 67% of the population would be susceptible based on the concept of herd immunity [24]. Current literature on transmission of COVID-19 has suggested that there is no strong evidence to support asymptomatic transmission and therefore our model only accounted for symptomatic transmission [24].
- (4)
- A constant population was assumed due to the short time period for the model development and projection, wherein changes of birth and death rates would be negligible.
- (5)
- Some of the parameters used were developed based on the outbreak data in China. As such, we assumed homogeneity of the disease dynamics between China and Malaysia.
2.4. Model Simulation
3. Results
3.1. Outbreak Simulation With No MCO Measures
3.2. Outbreak Simulation with MCO Measures
3.3. Comparison of Outbreak Simulation With and Without MCO Measures
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Parameter | Description | Value | Source |
---|---|---|---|
N | Total human population in Malaysia | 32,600,000 | (DOSM 2019) |
Incubation Period | 6.5 | [16] | |
β | Probability of susceptible become infectious per contact | 0.052 | Calibrated using data (27 February to 17 March 2020) |
Infectious period | 3.6 | [4] | |
ε | Death rate due to COVID-19 | 0 | MOH (as per 16 March 2020) |
ζ | The average number of contacts per day per case | 25 | Calibrated using data (27 February to 17 March 2020) |
q | The proportion of close contact traced per day | 0.23 | Calibrated using data (27 February to 17 March 2020) |
The duration of quarantine | 14 | MOH | |
κ | The proportion of exposed persons who performed effective precautions | 0.05 | [24] |
δ | The mean daily rate at which infectious cases are isolated | 0.03 | [24] |
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Gill, B.S.; Jayaraj, V.J.; Singh, S.; Mohd Ghazali, S.; Cheong, Y.L.; Md Iderus, N.H.; Sundram, B.M.; Aris, T.B.; Mohd Ibrahim, H.; Hong, B.H.; et al. Modelling the Effectiveness of Epidemic Control Measures in Preventing the Transmission of COVID-19 in Malaysia. Int. J. Environ. Res. Public Health 2020, 17, 5509. https://doi.org/10.3390/ijerph17155509
Gill BS, Jayaraj VJ, Singh S, Mohd Ghazali S, Cheong YL, Md Iderus NH, Sundram BM, Aris TB, Mohd Ibrahim H, Hong BH, et al. Modelling the Effectiveness of Epidemic Control Measures in Preventing the Transmission of COVID-19 in Malaysia. International Journal of Environmental Research and Public Health. 2020; 17(15):5509. https://doi.org/10.3390/ijerph17155509
Chicago/Turabian StyleGill, Balvinder Singh, Vivek Jason Jayaraj, Sarbhan Singh, Sumarni Mohd Ghazali, Yoon Ling Cheong, Nuur Hafizah Md Iderus, Bala Murali Sundram, Tahir Bin Aris, Hishamshah Mohd Ibrahim, Boon Hao Hong, and et al. 2020. "Modelling the Effectiveness of Epidemic Control Measures in Preventing the Transmission of COVID-19 in Malaysia" International Journal of Environmental Research and Public Health 17, no. 15: 5509. https://doi.org/10.3390/ijerph17155509
APA StyleGill, B. S., Jayaraj, V. J., Singh, S., Mohd Ghazali, S., Cheong, Y. L., Md Iderus, N. H., Sundram, B. M., Aris, T. B., Mohd Ibrahim, H., Hong, B. H., & Labadin, J. (2020). Modelling the Effectiveness of Epidemic Control Measures in Preventing the Transmission of COVID-19 in Malaysia. International Journal of Environmental Research and Public Health, 17(15), 5509. https://doi.org/10.3390/ijerph17155509