BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20250709T125840EDT-4400PLUTSv@132.216.98.100 DTSTAMP:20250709T165840Z DESCRIPTION:Justin Slater\, PhD\n\nAssistant Professor\n Department of Mathe matics & Statistics |\n University of Guelph\n\nWHEN: Wednesday\, February 26\, 2025\, from 3:30 to 4:30 p.m.\n WHERE: Hybrid | 2001 ºÃÉ«TVl College Av enue\, Room 1140\; Zoom\n NOTE: Justin Slater will be presenting from Guelp h\n\nAbstract\n\nEstimating the number of individuals who have had an infe ctious disease is essential for understanding disease burden\, yet this re mains challenging as all sources of surveillance data come with their own biases. A comprehensive approach must integrate reported cases\, wastewate r surveillance\, and serosurvey data while addressing biases in each sourc e. In this talk\, I present a flexible Bayesian framework that (i) models under-reporting using approximations of count-valued state-space models\, (ii) accounts for noisy wastewater signals with differentiable Gaussian pr ocesses\, and (iii) leverages serosurvey data both for informative priors and model validation. I demonstrate this approach by reconstructing epidem ic curves in Toronto and New Zealand\, highlighting insights gained and ch allenges encountered.\n\nSpeaker Bio\n\nDr. Justin Slater is an assistant professor of statistics and data science at the University of Guelph. He r eceived his PhD in Statistical Sciences from the University of Toronto in 2023\, supervised by Drs. Patrick Brown and Jeffrey Rosenthal. He is the r ecent recipient of the Banting-CANSSI discovery award in Biostatistics in 2024. His research focuses on Bayesian methods in biostatistics/epidemiolo gy. Presently\, he is working on problems in both contagious infectious di seases and agent-based methods for modelling viral hepatitis. You can read more about his work at https://www.justinslater.ca/.\n DTSTART:20250226T203000Z DTEND:20250226T213000Z SUMMARY:A statistical framework for reconstructing epidemic curves URL:/epi-biostat-occh/channels/event/statistical-frame work-reconstructing-epidemic-curves-363558 END:VEVENT END:VCALENDAR