For this session, hosts Heidi Beidinger-Burnett, Director, Eck Institute for Global Health Global Health Masters Program and Mary Ann McDowell, Associate Professor of Biological Sciences were joined by Alex Perkins, Associate Professor, Department of Biological Sciences and Jenna Coalson, Assistant Professor of the Practice, Department of Biological Sciences. The purpose of this session is to discuss the epidemiology of Covid-19, as it is important for the public to stay informed on the facts about the pandemic.
The session began with an introduction of the guests. Coalson explained the interdisciplinary nature of epidemiology and why she believes it is a great career for her. Perkins explained that he studied biology and math, as he realized early on that he did not truly want to be a doctor. He also explained that his research has led him to very cool experiences. This led to the âRumor Has Itâ portion. The first rumor was that the virus is evolving to become more deadly because there are fewer recorded deaths. Coalson said that there is some evidence that they are getting better at treating people in hospitals, which may be responsible for flattening the curve.Â
After a recap of the concerning Covid data that took place that week, Perkins discussed what a scientific model is and why it is necessary. Models allow for a mathematical tool which can analyze the mathematics and the biology necessary to understand a virus. Models can determine how transmittable a virus is, when lockdown is necessary, and more. He then said that the next few weeks look unfortunate; the trends are all pointing upward and it is important how people respond to those upward trends. Unfortunately, the human dynamic is very difficult to predict.
A viewer then asked about what the âGreat Barrington Declarationâ is, and Coalson was called to answer that question. She stated that it includes two major concepts, which are âfocused protectionâ and âherd immunity.â The declaration states that the focus should be more on high risk populations to quarantine, while the healthier parts of the population should contract the disease. This way, cases would eventually drive to zero, because enough people will have personal immunity from the virus. Coalson stated that this theory may rely on too many assumptions. For example, it assumes that Covid-19 has very long lasting immunity after infection. Moreover, it assumes that those without underlying conditions will always be at lower risk for severe symptomatology. Finally, it is difficult to imagine that we would be able to fully protect the older and high-risk populations when the disease is running rampant in the rest of the country.
Next, Perkins began a discussion about Bayesâ Theorem and what it means to epidemiology. Bayesâ Theorem allows for scientists to relate different conditional probabilities. For example, âgiven that someone has Covid, what is the probability that, if we test them, the test will be positive?â. There are positive and negative conditional probabilities, which depend on the way the different variables are framed, as Perkins shared.
Finally, this was followed by an explanation of the importance of testing. Whether people are vulnerable or not, regular testing is very important to ensure transmission does not occur. Catching people early in their infections can be the key to beating the virus.
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