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Estimating the strength of selection for new COVID-19 variants

Determining the transmissibility of new variants can aid vaccination programs and healthcare response

Date:
December 22, 2021
Source:
DOE/Los Alamos National Laboratory
Summary:
In an effort to make sense of new COVID-19 variants, scientists have developed methods to quantify how much more or less transmissible they are, which could have far-reaching implications for public health in terms of COVID-19 risk and the vaccination levels required to obtain herd immunity.
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As the discovery of the new omicron variant illustrates, new COVID-19 variants will continue to regularly emerge. In an effort to make sense of these new variants, scientists at Los Alamos National Laboratory have developed methods to quantify how much more or less transmissible they are, which could have far-reaching implications for public health in terms of COVID-19 risk and the vaccination levels required to obtain herd immunity.

"Generally, new COVID-19 variants are simply discussed in terms of being more dangerous or spreading quicker than previous strains," said Ethan Romero-Severson, a computational epidemiologist in Los Alamos's Theoretical Division and senior author on the paper published in Nature Communications. "We showed that it is possible to calculate new strains' transmission advantage while accounting for alternative explanations such as migration and random genetic drift. Our collection of methods allows us to look both broadly at the global situation and in greater detail at specific countries using publicly available genetic sequence data."

The Los Alamos research is "a method for integrating molecular epidemiological surveillance into surveillance systems using publicly available data streams," Romero-Severson noted.

The team used two distinct but complementary approaches. The first is derived from classical population genetic methods that relate the increased transmissibility of a COVID-19 variant to the expected frequency of that variant in the population over time.

"We modified that model to include migration as a possible alternative explanation to increased transmissibility and implemented it in a hierarchical modeling framework that allowed us to estimate the unique selection effect for each variant in each country in which it appeared," he said.

The second, more detailed method used a stochastic (allowing for uncertainty) epidemiological model to predict both the changes in COVID-19 variant frequencies and deaths over time, accounting for natural and random variation in the virus both between and within countries over time.

Together, these approaches showed that the pattern of emerging and rising COVID-19 variants globally was driven by large increases in the transmissibility of the virus over time. The methods also clearly established that early detection of variants of concern is possible even when the global frequency of new variants is as small as 5 percent.


Story Source:

Materials provided by DOE/Los Alamos National Laboratory. Note: Content may be edited for style and length.


Journal Reference:

  1. Christiaan H. van Dorp, Emma E. Goldberg, Nick Hengartner, Ruian Ke, Ethan O. Romero-Severson. Estimating the strength of selection for new SARS-CoV-2 variants. Nature Communications, 2021; 12 (1) DOI: 10.1038/s41467-021-27369-3

Cite This Page:

DOE/Los Alamos National Laboratory. "Estimating the strength of selection for new COVID-19 variants." ScienceDaily. ScienceDaily, 22 December 2021. <www.sciencedaily.com/releases/2021/12/211222153147.htm>.
DOE/Los Alamos National Laboratory. (2021, December 22). Estimating the strength of selection for new COVID-19 variants. ScienceDaily. Retrieved April 18, 2024 from www.sciencedaily.com/releases/2021/12/211222153147.htm
DOE/Los Alamos National Laboratory. "Estimating the strength of selection for new COVID-19 variants." ScienceDaily. www.sciencedaily.com/releases/2021/12/211222153147.htm (accessed April 18, 2024).

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