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Long-term COVID-19 containment will be shaped by strength and duration of natural, vaccine-induced immunity

Nature of immune responses may affect clinical outcomes and burden of severe cases requiring hospitalization
Published: 28 September 2020

New research suggests that the impact of natural and vaccine-induced immunity will be key factors in shaping the future trajectory of the global coronavirus pandemic, known as COVID-19. In particular, a vaccine capable of eliciting a strong immune response could substantially reduce the future burden of infection, according to a study recently published in the journal Science.

“Much of the discussion so far related to the future trajectory of COVID-19 has rightly been focused on the effects of seasonality and non-pharmaceutical interventions [NPIs], such as mask-wearing and physical distancing,” said co-first author Chadi Saad-Roy, a Ph.D. candidate in Princeton’s Lewis-Sigler Institute for Integrative Genomics. “In the short term, and during the pandemic phase, NPIs are the key determinant of case burdens. However, the role of immunity will become increasingly important as we look into the future.”

“Ultimately, we don’t know what the strength or duration of natural immunity to SARS-CoV-2 — or a potential vaccine — will look like,” explained co-first author Caroline Wagner, an Assistant Professor of Bioengineering at Â鶹AV who worked on the study as a postdoctoral research associate in the Princeton Environmental Institute (PEI).

“For instance, if reinfection is possible, what does a person’s immune response to their previous infection do?” Wagner asked. “Is that immune response capable of stopping you from transmitting the infection to others? These will all impact the dynamics of future outbreaks.”

The current study builds on previous research by the same team, published in Science on May 18 that reported that local variations in climate are not likely to dominate the first wave of the COVID-19 pandemic.

In the most recent paper, the researchers used a simple model to project the future incidence of COVID-19 cases — and the degree of immunity in the human population — under a range of assumptions related to how likely individuals are to transmit the virus in different contexts. For example, the model allows for different durations of immunity after infection, as well as different extents of protection from reinfection. The researchers posted online an under these different sets of assumptions.

As expected, the model found that the initial pandemic peak is largely independent of immunity because most people are susceptible. However, a substantial range of epidemic patterns are possible as SARS-CoV-2 infection — and thus immunity — increases in the population.

“If immune responses are only weak, or transiently protective against reinfection, for example, then larger and more frequent outbreaks can be expected in the medium term,” said co-author Andrea Graham, professor of ecology and evolutionary biology at Princeton.

The nature of the immune responses also can affect clinical outcomes and the burden of severe cases requiring hospitalization, the researchers found. The key question is the severity of subsequent infections in comparison to primary ones.

Importantly, the study found that in all scenarios a vaccine capable of eliciting a strong immune response could substantially reduce future caseloads. Even a vaccine that only offers partial protection against secondary transmission could generate major benefits if widely deployed, the researchers reported.

Factors such as age and superspreading events are known to influence the spread of SARS-CoV-2 by causing individuals within a population to experience different immune responses or transmit the virus at different rates. The study found that these factors do not affect the qualitative projections about future epidemic dynamics. However, the researchers note that as vaccine candidates emerge and more detailed predictions of future caseloads with vaccination are needed, these additional details will need to be incorporated into more complex models.

The study authors also explored the effect of “vaccine hesitancy” on future infection dynamics. Their model found that people who decline to partake in pharmaceutical and non-pharmaceutical measures to contain the coronavirus could nonetheless slow containment of the virus even if a vaccine is available.

“Our model indicates that if vaccine refusal is high and correlated with increased transmission and riskier behavior such as refusing to wear a mask, then the necessary vaccination rate needed to reach herd immunity could be much higher,” said co-author Simon Levin, the James S. McDonnell Distinguished University Professor in Ecology and Evolutionary Biology and an associated faculty member in PEI. “In this case, the nature of the immune response after infection or vaccination would be very important factors in determining how effective a vaccine would be.”

One of the main takeaways of the study is that monitoring population-level immunity to SARS-CoV-2, in addition to active infections, will be critical for accurately predicting future incidence.

“This is not an easy thing to do accurately, particularly when the nature of this immune response is not well understood,” said co-author Michael Mina, an assistant professor at the Harvard School of Public Health and Harvard Medical School. “Even if we can measure a clinical quantity like an antibody titer against this virus, we don’t necessarily know what that means in terms of protection.”

Studying the effects of T-cell immunity and cross-protection from other coronaviruses are important avenues for future work.

(With source files from the Princeton Environmental Institute)

About the study

“,” by Chadi M. Saad-Roy, Caroline E. Wagner et al. was published in Science.

This study was funded by the Natural Sciences and Engineering Research Council of Canada, the Life Sciences Research Foundation, the Cooperative Institute for Modelling the Earth System (CIMES) at Princeton University, the James S. McDonnell Foundation, the C3.ai Digital Transformation Institute, the National Science Foundation, the US Centers for Disease Control and Prevention, and Flu Lab.

About Â鶹AV

Founded in Montreal, Quebec, in 1821, Â鶹AV is Canada’s top ranked medical doctoral university. Â鶹AV is consistently ranked as one of the top universities, both nationally and internationally. It is a world-renowned institution of higher learning with research activities spanning two campuses, 11 faculties, 13 professional schools, 300 programs of study and over 40,000 students, including more than 10,200 graduate students. Â鶹AV attracts students from over 150 countries around the world, its 12,800 international students making up 31% per cent of the student body. Over half of Â鶹AV students claim a first language other than English, including approximately 19% of our students who say French is their mother tongue.

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