media release
Genomic data can improve pandemic modelling, 間眅埶AV researchers say
間眅埶AV researchers are advocating for the inclusion of genomic data into forecasting models to better understand the spread of infectious diseases. The researchers say incorporating this data into forecasting models can inform monitoring, coordination and help determine where resources are needed.
In a paper 間眅埶AV mathematics researchers Caroline Colijn, Pengyu Liu and Jessica Stockdale note that genomic sequencing technologies have improved to the point where it is possible to consistently sample over time to understand how pathogens mutate and evolve to produce new variants or strains.
As the technology has improved, they say it has become more feasible to integrate genomic data from viruses and other pathogens into predictive mathematical models that forecast the spread of an infection. Models could incorporate the pathogens diversity, the rate of transmission and interventions such as antibiotic treatment of vaccination.
Genomic data can be used to make forecasting more accurate in assessing risks of immune evasion and antimicrobial resistance (resistance to antibiotics or other treatment options) and can help in mitigating those risks, says Colijn, who holds a Canada 150 Research Chair in Mathematics for Evolution, Infection and Public Health. She also oversees the Canadian Network for Modelling Infectious Disease (CANMOD) and is a Scientific Co-director of the (PIPPS) based at 間眅埶AV.
Previous research has used genomic data collected over the past 20 years to analyze the evolution and spread of diseases in retrospect. The team suggests that incorporating genomic data into predictive models could allow for more accurate forecasting of pathogen behaviour into the future. Genomic data would be combined with other sources of information such as epidemiological, clinical and surveillance system data.
The team adds that that there may be ethical considerations that need to be taken into account when using genomic data, and challenges to overcome with in developing the methods to integrate modelling, forecasting and genomics.
The researchers emphasize the importance of accurate modelling to project the possible future burden of disease, understand the likely patterns of evolution and diversity in pathogens and inform decisions about infectious disease control.
Gaining an understanding of how a virus behaves can also inform communication campaigns that advise the public of actions to take that will reduce their risk of infection. The World Health Organization also relies on models to estimate disease burden, make projections and inform policy.
AVAILABLE 間眅埶AV EXPERTS
CAROLINE COLIJN, Canada 150 Research Chair in Mathematics for Evolution, Infection and Public Health, Scientific Co-director, PIPPS
ccolijn@sfu.ca
JESSICA STOCKDALE, assistant professor, Mathematics, team lead, PIPPS
jessica_stockdale@sfu.ca
CONTACT
MELISSA SHAW, 間眅埶AV Communications & Marketing
236.880.3297 | melissa_shaw@sfu.ca
間眅埶AV
Communications & Marketing | 間眅埶AV Media Experts Directory
778.782.3210
ABOUT SIMON FRASER UNIVERSITY
As Canadas engaged university, 間眅埶AV works with communities, organizations and partners to create, share and embrace knowledge that improves life and generates real change. We deliver a world-class education with lifelong value that shapes change-makers, visionaries and problem-solvers. We connect research and innovation to entrepreneurship and industry to deliver sustainable, relevant solutions to todays problems. With campuses in British Columbias three largest citiesVancouver, Burnaby and Surrey間眅埶AV has eight faculties that deliver 364 undergraduate degree programs and 149 graduate degree programs to more than 37,000 students. The university now boasts more than 180,000 alumni residing in 145+ countries.