| Literature DB >> 34150986 |
Xiaoye Ding1,2, Shenyang Huang1,2, Abby Leung1,2, Reihaneh Rabbany1,2.
Abstract
Current efforts of modelling COVID-19 are often based on the standard compartmental models such as SEIR and their variations. As pre-symptomatic and asymptomatic cases can spread the disease between populations through travel, it is important to incorporate mobility between populations into the epidemiological modelling. In this work, we propose to modify the commonly-used SEIR model to account for the dynamic flight network, by estimating the imported cases based on the air traffic volume and the test positive rate. We conduct a case study based on data found in Canada to demonstrate how this modification, called Flight-SEIR, can potentially enable (1) early detection of outbreaks due to imported pre-symptomatic and asymptomatic cases, (2) more accurate estimation of the reproduction number and (3) evaluation of the impact of travel restrictions and the implications of lifting these measures. The proposed Flight-SEIR is essential in navigating through this pandemic and the next ones, given how interconnected our world has become.Entities:
Keywords: Dynamic network; Epidemiological modelling; Network science
Year: 2021 PMID: 34150986 PMCID: PMC8205202 DOI: 10.1007/s41109-021-00378-3
Source DB: PubMed Journal: Appl Netw Sci ISSN: 2364-8228
Fig. 1Flight network before and after imposing travel restrictions. Note that only flights with an endpoint in Canada have been considered
Fig. 2Demographic and epidemic dynamics of Flight-SEIR. The figure shows the movements of exposed individuals and between the populations. Each population maintains its own epidemic states , , , and . An exposed individual can either come from other populations or be infected by an infectious individual within the same population. More details on the notations can be found in Table 1
Parameters for Flight-SEIR
| Parameter | Description | Value | Type |
|---|---|---|---|
| # susceptible individuals at node | |||
| # exposed individuals at node | |||
| # infected individuals at node | |||
| # recovered individuals at node | |||
| # susceptible individuals travelling from node | |||
| # exposed individuals travelling from node | |||
| # infected individuals travelling from node | |||
| # recovered individuals travelling from node | |||
| Total population at node | Constant | ||
| Mean latent period of the disease | 5 | Constant | |
| Incubation rate | Constant | ||
| Mean infectious period | 14 | Constant | |
| Recovery rate | Constant | ||
| Transmission rate | Fitted | ||
| The population reproduction number | Fitted | ||
| # passengers travelling from node | Estimated | ||
| # passengers travelling from node | Estimated | ||
| Test positive rate of node | Estimated | ||
| % of exposed individuals over all infected individuals | Estimated | ||
| # flights from node | Estimated | ||
| Estimated average flight capacity | Estimated | ||
| Load factor: onboard passengers to available seats ratio | Estimated | ||
| % of projected air traffic over pre-pandemic air traffic | Variable |
Type of the parameter can be constant, variable, fitted or estimated. Constant parameters are set based on WHO’s Report of the WHO-China Joint Mission on Coronavirus Disease 2019 (2020b) and Government of Canada (2020b)
Fig. 3Ratio of passengers to available seats (LF) in flights interpolated based on the available data from U.S.D of Transportation (2020)
Fig. 4Test positive rates, interpolated based on data from Roser et al. (2020) and Government of Canada (2020a)
Fig. 5The estimated number of susceptible and exposed individuals going in and out of Canada, before and after travel restrictions
Fig. 6Total incoming exposed individuals to Canada aggregated per country/region. Note that the circle sizes are plotted in log scale
Fig. 7Early time prediction without enforced travel restriction. Note that, between April 2–30, a computer error resulted in 1317 missing positive COVID-19 cases in Quebec (CTV News 2020a), causing the gap in the data
Fig. 8Early time prediction with enforced travel restriction
Fig. 9Estimation of and for Canada. Initially, Flight-SEIR predicts more than the confirmed cases while the standard SEIR model underestimates the number of infectious individuals. Later on, Flight-SEIR fits almost perfectly to the confirmed cases whereas the standard SEIR model starts to overestimate
Fig. 10Estimation of and for Canada given starting conditions. Estimation of and assuming that the simulation starts on March 6 and 20% of infected cases are reported. The degree of early phase overestimation is alleviated while the fit to later phase remains reasonable
Fig. 11Estimation for difference provinces within Canada. Quebec is estimated to have a much higher than Ontario. In both cases, Flight-SEIR shows a better fit than the standard SEIR model
Fig. 12estimation for reopening simulation. Flight-SEIR is fitted to confirmed cases from June 1st to August 1st, approximately 2 months before the reopen date. We run grid search in the range of [0.50, 0.80] and find the best fit to be 0.63. Note that, on July 17, Quebec revised the recovery criteria, causing active cases to plummet (CTV News 2020b) and hence the gap in the data
Fig. 14Daily active cases by source of infection. The figure shows the composition of infected population if we resume 25%, 50%, 75% and 100% of air traffic. Both the number of imported cases and community transmission increase with the scale of reopening
Fig. 15Reopening simulation with two different countries.This shows the effect of resuming 25%, 50%, 75% and 100% air traffic between Canada and UK/US. The impact of resuming flights with UK is negligible when compared to that of US
Estimated percentage of infected people with and without travel restrictions on June 1st
| Without travel Res. (%) | With travel Res. (%) | Difference (%) | |
|---|---|---|---|
| 0.3 | 0.036 | 0.003 | 0.034 |
| 0.4 | 0.043 | 0.004 | 0.038 |
| 0.5 | 0.051 | 0.007 | 0.045 |
| 0.6 | 0.063 | 0.011 | 0.052 |
| 0.7 | 0.078 | 0.017 | 0.061 |
| 0.8 | 0.100 | 0.027 | 0.073 |
| 0.9 | 0.130 | 0.043 | 0.087 |
| 1.0 | 0.172 | 0.066 | 0.105 |
| 1.1 | 0.231 | 0.102 | 0.128 |
| 1.2 | 0.313 | 0.156 | 0.157 |
Fig. 13Simulation of resuming international flights in Canada. The figure shows the effect of resuming 25%, 50%, 75% and 100% air traffic between Canada and the rest of the world. The simulation starts on August 1st and continues for a month. We observe an immediate rebound when flights are increased by more than 50%
Estimated Cumulative Infections by September 1st if we resume flights between Canada and other countries by 25%, 50%, 75% and 100%
| Scaling factor | All countries | US only | UK only |
|---|---|---|---|
| 0.25 | 276,946 | 273,469 | 275,180 |
| 0.50 | 316,623 | 283,984 | 275,352 |
| 0.75 | 384,092 | 302,493 | 275,822 |
| 1.00 | 472,146 | 327,294 | 276,444 |
Daily active cases by source of infection by September 1st if we resume flights between Canada and the rest of the world by 25%, 50%, 75% and 100%
| Scaling factor | Imported | Community | Total | Imported/community |
|---|---|---|---|---|
| 0.25 | 58 | 6590 | 6648 | 0.0087 |
| 0.50 | 197 | 8993 | 9190 | 0.0219 |
| 0.75 | 592 | 12,884 | 13,476 | 0.0460 |
| 1.00 | 812 | 18,332 | 19,144 | 0.0443 |
Fig. 16Reopening simulation for two provinces within Canada. The figure shows the effect of resuming 25%, 50%, 75% and 100% air traffic between Ontario/Quebec and the rest of the world. While lifting travel restriction is expected to have a mild impact on Quebec, we observe an immediate rebound upon reopening Ontario