A Macroeconomic SIR Model for COVID-19
Abstract
:1. Introduction
- We formulated an exit time control problem where lockdown measures are lifted when the population reaches herd immunity;
- We incorporated a transmission rate that captures how individuals react to current infection levels. This “behavior-dependent” transmission rate seeks to model individual behaviors that occur independently of lockdown. For example, individuals might wear masks, practice social distancing, and take other precautions to reduce their risk as infection numbers go up, even in the absence of official lockdown measures;
- We considered the costs of indirect deaths attributed to the adverse mental and physical effects of lockdown and of continued unemployment after the lockdown has ended and the positive impact of workers who are able to work remotely during lockdown;
- We added a penalty for overwhelming intensive care unit (ICU) capacity and a term that captures the future impacts of missed health screenings during the pandemic.
Literature Review
2. Methods
2.1. Population Dynamics
2.1.1. Deaths
2.1.2. Behavior-Dependent Disease Transmission
2.2. Objective Function
2.2.1. Attainable Lockdown Levels
2.2.2. Herd Immunity
2.2.3. Output Loss ()
2.2.4. Cost of Death ()
2.2.5. Future Loss of Employment ()
2.2.6. ICU Overcapacity ()
3. Numerical Results
3.1. Numerical Method
3.2. Calibration
3.2.1. Realistic Death Rates
3.2.2. Varying Initial Conditions
3.3. Parameter Robustness and Discussion
4. Conclusions
- When the expected vaccine arrival time is 1.5 y after the start of the outbreak, our model recommends less than 7 mo of lockdown for the high-risk group (instead of locking down for the full 1.5 y until the vaccine). Additionally, lockdowns for the low-risk group are 6 wk shorter than in previous models. This means that there are ways of slowing community spread of COVID-19 to protect high-risk individuals;
- The addition of a behavior-dependent virus transmission rate contributes to these shorter lockdowns and decreases mortality. In an extreme situation where individuals can take measures that decrease transmission by 95% when infections reach 30%, less than a month of lockdown is prescribed for the low-risk group. In the more moderate benchmark case, where individuals are able to reduce their transmission by 25% when infections reach 30% of the population, herd immunity arrives a month earlier than in a situation with a constant disease transmission rate. In both cases, we also observe lower output loss due to shorter lockdown and fewer deaths due to slower transmission;
- Increasing the predicted length of future unemployment and the predicted rate of lockdown-related deaths both decrease lockdown length in similar manners and have negative impacts on outcomes. Adjusting the length of future unemployment and the predicted number of indirect deaths due to lockdown leads to trade-offs between output and mortality. Running the model with different initial conditions shows that higher prelockdown infection levels lead to earlier onset of herd immunity, but higher death tolls, highlighting the risks of infection spikes. Future impacts of current missed health screenings and a penalty for overfull ICUs are revealed to have little impact on the optimal lockdown policy in our formulation;
- Increasing the level of remote work reduces the impact of COVID-19 by decreasing both mortality and output loss, even though a longer lockdown is imposed. This supports the intuitive idea that increased remote work reduces infection risk without sacrificing economic activity.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Parameter | Description | Our Model | ||
---|---|---|---|---|
Maximum attainable lockdown | 0.7 | [0.7, 0.7, 1] | [0.7, 1] | |
Recovery rate | 1/18 | 1/18 | 1/18 | |
Base mortality | 0.01 | |||
Rate of mortality increase based on infection levels | 0.05 | if I = 30%, then mortality rates are 5 times the base rates | ||
Rate of ICU admittance | N/A | (unknown) | [0.026, 0.074] | |
ICU capacity as the proportion of the overall population (based on beds/100,000 individuals) | N/A | N/A | 0.0003 | |
Scale factor for the cost of ICU overcapacity | N/A | N/A | 10 | |
Initial transmission rate | 0.2 | 0.2 | 0.2 | |
Interaction level between groups | N/A | 1 | 0.75 | |
Intensity for vaccine/cure arrival | 0.667/365 (1.5 yrs) | 0.667/365 | 0.667/365 | |
Normalized individual daily productivity | 1 | [1, 1, 0] | [1, 0] | |
h | Proportion of the workforce that can work remotely | 0 | 0 | 0.4 |
r | Yearly interest rate | 5% | 1% | 0.001% |
Nonpecuniary cost of death | 0 | 20 | 0.2/r | |
Years left in career | ∞ | [15, 7.5, 0] | [20, 0] | |
Obedience to lockdown | 0.5 | 0.75 | 0.75 | |
Scaling factor for indirect deaths due to lockdown | 0 | 0 | 0.00001 | |
Scaling factor for decrease in due to personal social distancing measures (masks, etc.) | 0 | 0 | 1 | |
Scale factor for decreasing potential career length/increasing chance of bankruptcy as lockdown lengthens | N/A | 0 | 0.01 | |
F | Future cost of missing health maintenance during lockdown | 0 | 0 | 1 |
p | Immunity passport p = 1 ⇒ no passport p = 0 ⇒ passport | 0 | 0 | 1 |
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Group | ||
---|---|---|
Age 20–64 | ||
Age 65+ |
Situation | Output Loss | Total Deaths |
---|---|---|
No Lockdown | 0% | 0.6189% |
Optimal Lockdown | 7.3439% | 0.3266% |
Nonpecuniary Value of Life | Output Loss | Total Deaths (All) | COVID-19 Deaths (All) | Total Deaths (20–64) | COVID-19 Deaths (20–64) | Total Deaths (65+) | COVID-19 Deaths (65+) |
---|---|---|---|---|---|---|---|
0% | 0.4464% | 0.4335 % | 0.1433% | 0.1433% | 0.3017% | 0.2902% | |
(Benchmark) | 7.3439% | 0.3266% | 0.2544% | 0.1201% | 0.0855% | 0.2066% | 0.1689% |
Parameter Values | Avg. Lockdown (20–64) | Length (20–64) (Days) | Avg. Lockdown (65+) | Length (65+) (Days) | Output Loss (%) | Total Deaths (%) | COVID-19 Deaths (%) |
---|---|---|---|---|---|---|---|
Benchmark | 0.3188 | 161 | 0.8819 | 207 | 7.3439 | 0.3266 | 0.2544 |
0.3123 | 205 | 0.8878 | 239 | 8.9667 | 0.3265 | 0.2388 | |
0.2864 | 126 | 0.8663 | 167 | 5.2962 | 0.338 | 0.2848 | |
0.3083 | 192 | 0.8863 | 227 | 8.3612 | 0.2456 | 0.2456 | |
0.2689 | 116 | 0.8511 | 154 | 4.6199 | 0.5319 | 0.2977 | |
0.3582 | 214 | 0.9057 | 249 | 10.6699 | 0.3712 | 0.2707 | |
0.2173 | 144 | 0.7758 | 219 | 4.5236 | 0.2651 | 0.2106 | |
0.1503 | 84 | 0.4962 | 188 | 1.9019 | 0.259 | 0.2328 | |
0.041 | 24 | 0.3852 | 189 | 0.1558 | 0.245 | 0.2314 | |
0.2874 | 126 | 0.8631 | 168 | 8.8592 | 0.338 | 0.2846 | |
0.3106 | 201 | 0.8866 | 235 | 5.842 | 0.3251 | 0.2394 | |
0.2989 | 193 | 0.8418 | 233 | 8.118 | 0.2753 | 0.1955 | |
0.3316 | 147 | 0.891 | 194 | 7.0292 | 0.3657 | 0.2975 | |
0.3065 | 175 | 0.855 | 211 | 7.6457 | 0.3324 | 0.2588 | |
0.3177 | 160 | 0.8803 | 206 | 6.8007 | 0.3264 | 0.2548 | |
0.3171 | 158 | 0.88 | 204 | 6.0805 | 0.3262 | 0.2556 | |
0.3188 | 161 | 0.8819 | 207 | 7.3439 | 0.3266 | 0.2544 | |
0.3188 | 161 | 0.8819 | 207 | 7.3439 | 0.3266 | 0.2544 | |
0.3552 | 129 | 0.8792 | 161 | 6.7354 | 0.3589 | 0.2992 | |
0.2736 | 266 | 0.8815 | 304 | 9.7995 | 0.3075 | 0.2023 | |
0.2982 | 185 | 0.8973 | 242 | 7.8084 | 0.2948 | 0.2135 | |
0.2983 | 186 | 0.8919 | 279 | 7.8496 | 0.2724 | 0.1852 | |
0.2793 | 202 | 0.8633 | Vaccine | 7.967 | 0.2732 | 0.1444 | |
0.2775 | 204 | 0.9909 | Vaccine | 7.9881 | 0.2834 | 0.1416 | |
0.2754 | 206 | 1.0 | Vaccine | 8.0011 | 0.2832 | 0.1405 | |
0.2754 | 206 | 1.0 | Vaccine | 8.0011 | 0.2832 | 0.1405 |
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Bayraktar, E.; Cohen, A.; Nellis, A. A Macroeconomic SIR Model for COVID-19. Mathematics 2021, 9, 1901. https://doi.org/10.3390/math9161901
Bayraktar E, Cohen A, Nellis A. A Macroeconomic SIR Model for COVID-19. Mathematics. 2021; 9(16):1901. https://doi.org/10.3390/math9161901
Chicago/Turabian StyleBayraktar, Erhan, Asaf Cohen, and April Nellis. 2021. "A Macroeconomic SIR Model for COVID-19" Mathematics 9, no. 16: 1901. https://doi.org/10.3390/math9161901
APA StyleBayraktar, E., Cohen, A., & Nellis, A. (2021). A Macroeconomic SIR Model for COVID-19. Mathematics, 9(16), 1901. https://doi.org/10.3390/math9161901