BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20250713T195733EDT-5377MWOKae@132.216.98.100 DTSTAMP:20250713T235733Z DESCRIPTION:Harlan Campbell\, PhD\n\nPostdoctoral Research Fellow | Departm ent of Statistics | University of British Columbia\n\nWhere: Virtual | Zoo m\n\nAbstract\n\nEstimating the COVID-19 infection fatality rate (IFR) has proven to be particularly challenging –and rather controversial– due in l arge part to the fact that both the data on deaths and the data on the num ber of individuals infected are subject to many different biases. In this presentation\, I consider a Bayesian evidence synthesis approach which\, w hile simple enough for researchers to understand and use\, accounts for ma ny important sources of bias and uncertainty inherent in both the seroprev alence and mortality data. With the understanding that the results of one' s evidence synthesis may be largely driven by which studies are included a nd which are excluded\, two separate parallel analyses are conducted based on two different lists of eligible studies. The various challenges encoun tered in estimating the COVID-19 IFR provide valuable lessons for epidemio logists conducting evidence synthesis with challenging data.\n\nLearning O bjectives\n\n\n Understand the various challenges of working with COVID-19 seroprevalence and mortality data and how these challenges can\, to a cert ain degree\, be addressed with Bayesian methods\n Discuss how the results o f one's evidence synthesis analysis can be greatly impacted by which studi es are included and which are excluded. It is therefore important to deter mine the how the uncertainty inherent in one’s risk of bias assessment can impact parameter estimates\n Describe how the lethality of COVID-19 likely varies with population age\, wealth\, and other factors which remain poor ly understood\, even today\n\n\nSpeaker Bio\n\nHarlan Campbell is a statis tician and is currently working as a postdoctoral research fellow in the D epartment of Statistics at the University of British Columbia. His work fo cuses on developing statistical methods with a wide range of applications including in clinical trials\, epidemiology\, ecology\, and psychology. He is also interested in better understanding the parallels between frequent ist and Bayesian paradigms\, and in addressing the so-called reproducibili ty crisis. He earned his PhD in statistics at the University of British Co lumbia\, after completing his masters at Simon Fraser University\, and his undergraduate studies at ºÃÉ«TV.\n\nPresented as part of the E pidemiology Seminar Series\n\nThe Department of Epidemiology\, Biostatisti cs and Occupational Health Seminar Series is a self-approved Group Learnin g Activity (Section 1) as defined by the maintenance of certification prog ram of the Royal College of Physicians and Surgeons of Canada\n DTSTART:20230220T210000Z DTEND:20230220T220000Z SUMMARY:Determining the lethality of COVID-19: Lessons for addressing bias and uncertainty in evidence synthesis URL:/epi-biostat-occh/channels/event/determining-letha lity-covid-19-lessons-addressing-bias-and-uncertainty-evidence-synthesis-3 45577 END:VEVENT END:VCALENDAR