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. 2021 Apr 15;12(1):2274.
doi: 10.1038/s41467-021-22521-5.

The effect of eviction moratoria on the transmission of SARS-CoV-2

Affiliations

The effect of eviction moratoria on the transmission of SARS-CoV-2

Anjalika Nande et al. Nat Commun. .

Abstract

Massive unemployment during the COVID-19 pandemic could result in an eviction crisis in US cities. Here we model the effect of evictions on SARS-CoV-2 epidemics, simulating viral transmission within and among households in a theoretical metropolitan area. We recreate a range of urban epidemic trajectories and project the course of the epidemic under two counterfactual scenarios, one in which a strict moratorium on evictions is in place and enforced, and another in which evictions are allowed to resume at baseline or increased rates. We find, across scenarios, that evictions lead to significant increases in infections. Applying our model to Philadelphia using locally-specific parameters shows that the increase is especially profound in models that consider realistically heterogenous cities in which both evictions and contacts occur more frequently in poorer neighborhoods. Our results provide a basis to assess eviction moratoria and show that policies to stem evictions are a warranted and important component of COVID-19 control.

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Conflict of interest statement

M.C and A.V. report grants and personal fees from Metabiota Inc. outside of the submitted work. SVS is a paid consultant with Pandefense Advisory and Booze Allen Hamilton; is on the advisory board for BioFire Diagnostics Trend Surveillance, which includes paid to consult; and holds unexercised options in Iliad Biotechnologies. These entities provided no financial support associated with this research, did not have a role in the design of this study, and did not have any role during its execution, analyses, interpretation of the data, and/or decision to submit. The remaining authors declare no competing interests.

Figures

Fig. 1
Fig. 1. Modeling the effect of evictions on SARS-CoV-2 transmission.
We model the spread of infection over a transmission network where contacts are divided into those occurring within a household (solid gray lines) vs. outside the house (“external contacts”, dotted gray lines). Social distancing interventions (such as venue and school closures, work-from-home policies, mask-wearing, lockdowns, etc) are modeled as reductions in external contacts (red x’s), while relaxations of these interventions result in increases in external contacts towards their baseline levels. When a household experiences eviction (red outline), we assume the residents of that house “double-up” by merging with another house (blue circle), thus increasing their household contacts. Evictions can also directly lead to homelessness (orange outline), and residence in shelters or encampments with high numbers of contacts.
Fig. 2
Fig. 2. Impact of evictions on a SARS-CoV-2 comeback during Fall 2020.
We model evictions occurring in the context of an epidemic similar to cities following “Trajectory 1”, with a large first wave and strong control in the spring, followed by relaxation to a plateau over the summer and an eventual comeback in the fall. Monthly evictions start Sept 1, with a 4-month backlog processed in the first month. a The projected daily incidence of new infections (7-day running average) with and without evictions. Shaded regions represent central 90% of all simulations. The first lockdown (dotted vertical line) reduced external contacts by 85%, under relaxation (second dotted line) they were still reduced by 70%, and during the fall comeback, they were reduced by 60% (fourth dotted line). b Final epidemic size by Dec 31, 2020, measured as a percent of individuals who had ever been in any stage of infection. c The predicted increase in infections due to evictions through Dec 31, 2020, measured as the excess percent of the population infected (left Y-axis) or the number of excess infections (right Y-axis). d The relative risk of infection in the presence vs. absence of evictions, for individuals who merged households due to evictions (“Doubled-up”) and for individuals who kept their pre-epidemic household (“Other households”). Data in bd shown as median values with interquartile ranges across simulations. eh Same as above but assuming a second lockdown is instituted on Dec 1 and maintained through March 2021.
Fig. 3
Fig. 3. Alternate epidemic trajectories of SARS-CoV-2 before and after evictions in a large city.
Each panel shows the projected daily incidence of new infections (7-day running average) with and without evictions at 1%/month with a 4-month backlog, starting on Sept 1, 2020. Shaded regions represent central 90% of all simulations. In the left column, the spread continues unabated through Dec 31, 2020, whereas in the second column a new lockdown is introduced on Dec 1. Each trajectory scenario is created by calibrating the model to a group of US metropolitan statistical areas with similar patterns of spread (see “Methods” section, Supplementary Figs. 5–8). For all trajectory types, the degree of reduction in external contacts by control measures was modulated on dates March 25, June 15, July 15, and Oct 1, with values, reported in Supplementary Table 1.
Fig. 4
Fig. 4. Impact of evictions on COVID-19 epidemics in heterogeneous cities.
a Schematic of our model for inequalities within a city. The city is divided into a “high socioeconomic status (SES)” (purple) and a “low SES” (teal) neighborhood. Evictions only occur in the low SES area, and individuals living in this area are assumed to be less able to adopt social distancing measures, and hence have higher contact rates under interventions (90% vs. 80% reduction in external contacts during lockdown for 85% overall, 75% vs. 65% during a relaxation for 70% overall, and 65% vs. 55% during fall comeback for 60% overall). Before interventions, residents are equally likely to contact someone outside the household who lives within vs. outside their neighborhood. b Cumulative percent of the population infected over time, by neighborhood, in the absence of evictions. Error bars show interquartile ranges across simulations. c The projected daily incidence of new infections (7-day running average) with 1%/month evictions vs. no evictions. Shaded regions represent central 90% of all simulations. d Final epidemic size by Dec 31, 2020, measured as percent individuals who had ever been in any stage of infection, for the heterogeneous city as compared to a homogenous city with the same effective eviction rate and intervention efficacy. e The predicted increase in infections due to evictions through Dec 31, 2020, measured as the excess percent of the population infected (left Y-axis) or the number of excess infections (right Y-axis). f Relative risk of infection by Dec 31, 2020, for residents of the low SES vs. high SES neighborhood. g The relative risk of infection by Dec 31 2020 in the presence vs. absence of evictions, for individuals who merged households due to evictions (“Doubled-up”) and for individuals who kept their pre-epidemic household (“Other households”). Data in b, (dg) shown as median values with interquartile ranges across simulations.
Fig. 5
Fig. 5. A detailed example of how evictions might affect SARS-CoV-2 transmission in the city of Philadelphia, Pennsylvania, USA.
a Map of Philadelphia, with each zip code colored by the cluster it was assigned to. Properties of clusters are Table 2 and Supplementary Tables 1, 2. b Schematic of our model for inequalities within the city. Each cluster is modeled as a group of households, and the eviction rate and ability to adopt social distancing measures vary by cluster. c Simulated cumulative percent of the population infected over time, by cluster, in the absence of evictions. Data points from seroprevalence studies in Philadelphia or Pennsylvania: x, +, triangle, square. d The projected daily incidence of new infections (7-day running average) with evictions at 5-fold the 2019 rate vs. no evictions. Shaded regions represent central 90% of all simulations. e Final epidemic size by Dec 31, 2020, measured as percent individuals who had ever been in any stage of infection. f The predicted increase in infections due to evictions through Dec 31, 2020, measured as the excess percent of the population infected (left Y-axis) or the number of excess infections (right Y-axis). g Relative risk of infection by Dec 31, 2020, for residents compared by neighborhood. hi Relative risk of infection by Dec 31, 2020, in the presence vs. absence of evictions, for individuals who merged households due to evictions (“Doubled-up”, h) and for individuals who kept their pre-epidemic household (“Other households”, i). Data in c, ei showed as median values with interquartile ranges across simulations.

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References

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