New York, July 22 Scientists have developed a novel machine-learning system — a type of artificial intelligence (AI) application — that can track the detailed evolution of epidemic viruses and predict the emergence of viral variants with important new properties.
In a paper in Cell Patterns, the scientists demonstrated the system by using data on recorded SARS-CoV-2 variants and Covid-19 mortality rates.
They showed that the system could have predicted the emergence of new SARS-CoV-2 variants of concern (VOCs) ahead of their official designations by the World Health Organization (WHO).
The findings point to the possibility of using such a system in real-time to track future viral pandemics.
“There are rules of pandemic virus evolution that we have not understood but can be discovered, and used in an actionable sense by private and public health organisations, through this unprecedented machine-learning approach,” said William Balch, Professor in the Department of Molecular Medicine at Scripps Research Translational Institute in the US.
For the study, the team applied their approach to the Covid-19 pandemic. They developed machine-learning software, using a strategy called Gaussian process-based spatial covariance, to relate three data sets spanning the course of the pandemic: the genetic sequences of SARS-CoV-2 variants found in infected people worldwide, the frequencies of those variants, and the global mortality rate for Covid-19.
The software enabled the researchers to track sets of genetic changes appearing in SARS-CoV-2 variants around the world. These changes — typically trending towards increased spread rates and decreased mortality rates — signified the virus’ adaptations to lockdowns, mask wearing, vaccines, increasing natural immunity in the global population, and the relentless competition among SARS-CoV-2 variants themselves.
“We could see key gene variants appearing and becoming more prevalent, as the mortality rate also changed, and all this was happening weeks before the VOCs containing these variants were officially designated by the WHO,” Balch said.
The team showed that they could use this SARS-CoV-2 tracking system as an early warning “anomaly detector” for gene variants associated with significant changes in viral spread and mortality rates.
“One of the big lessons of this work is that it is important to take into account not just a few prominent variants, but also the tens of thousands of other undesignated variants, which we call the ‘variant dark matter,’” Balch said.
A similar system could be used to track the detailed evolution of future viral pandemics in real time, the researchers noted. In principle, it would enable scientists to predict changes in a pandemic’s trajectory, for example, big increases in infection rates, in time to adopt appropriate public health countermeasures.
Balch and his colleagues also envision the use of their approach to better understand virus biology and thereby enhance the development of treatments and vaccines.