Tuesday, June 14 |
08:00 - 09:00 |
Breakfast (Sunshine/ADM) |
09:00 - 09:45 |
Sebastian Funk: Real-time modelling: lessons for future pandemics ↓ During the COVID-19 pandemic, a range of mathematical models were applied to data in real-time in order to predict of project the future course, estimate key parameters, and understand important new features such as the transmissibility of emerging variants. Here I will describe our efforts in these areas, with a particular focus on the predictive ability of mathematical models in the context of attempting to inform policy. I will discuss the challenges we encountered, and use them to reflect on lessons learned that could help better prepare for future pandemics. (Zoom) |
09:45 - 10:30 |
Michael Johansson: Where Does Pandemic Forecasting Go From Here? ↓ Efforts to forecast the COVID-19 pandemic proliferated rapidly in early 2020, building on previous forecasting work for other pathogens. The lack of historical data, evolving data streams, dynamic participation, role of variants, and scope and scale of mitigation measures all presented new challenges to forecasting science. Major collaborative efforts have provided operational forecasts for many jurisdictions with some documented success. For example, ensemble forecasts continue to provide more reliable information than most individual team forecasts and scenario projections have helped inform decision making at horizons for which forecasts are unreliable. Nonetheless, critical scientific challenges remain to improve forecast reliability, further reduce uncertainty, and extend forecast horizons. (ART 386 (Arts Building)) |
10:30 - 11:00 |
Coffee Break (ASC 310) |
11:00 - 11:45 |
Omar Saucedo: Incorporating human mobility data into epidemiological models ↓ In the past decade, human mobility data has become increasingly available with the introduction of smartphone devices. Not only did communication between acquaintances and access to information become easier; smartphones provide clues on the movement patterns of individuals throughout their day. Incorporating mobility data into an epidemiological model can offer valuable insight for implementing control strategies. In this talk, we will present analytical tools for approximating the basic reproduction number for a SIS-SI vector-borne disease network model. We will use cell phone data to estimate the movement patterns of individuals between different regions with the objective of understanding how the network structure influences vector-borne disease dynamics. (Zoom) |
11:45 - 12:30 |
Eben Kenah: Epidemiologic methods for future pandemics ↓ In the COVID-19 pandemic, the primary tools used to analyze the spread of infection were based on epidemic curves of reported incident infections and population-level models of transmission. While these methods might be useful for short-term predictions, they do not yield reliable insights into risks, rates, and mechanisms of transmission that can be used to design interventions---the measurements are too coarse to support modeling robust and accurate enough for causal inference. Careful measurement and modeling of transmission in close-contact settings such as households, congregate living facilities, hospitals, classrooms, and workplaces is our most promising method of producing such insights. Such studies must be done more often and in more locations, and they must be analyzed using methods such as chain binomial models or pairwise survival analysis. They have the potential to incorporate information about pathogen genomes to improve accuracy and precision, and they have the potential to relate pathogen mutations directly to changes in transmissibility. However, there are important practical and logistical problems to solve in terms of recruitment, high frequency testing, and data collection. Conducting household studies of influenza, coronavirus, cholera, and other infectious diseases will lay a foundation for the effective deployment and analysis of these studies in a future pandemic. Through the shared concept of the contact interval distribution, pairwise survival analysis methods can inform and be informed by dynamical survival analysis (DSA) models for the population-level spread of infection. Combined, these methods provide a novel multi-scale approach to the epidemiology of communicable diseases. (ART 386 (Arts Building)) |
12:30 - 14:00 |
Lunch (Sunshine) |
14:00 - 14:45 |
Gabriela Gomes: Individual variation in susceptibility or exposure to SARS-CoV-2 lowers the herd immunity threshold ↓ Individual variation in susceptibility and exposure is subject to selection by natural infection, accelerating the acquisition of immunity, and reducing herd immunity thresholds and epidemic final sizes. This is a manifestation of a wider population phenomenon known as “frailty variation”. Despite theoretical understanding, public health policies continue to be guided by mathematical models that leave out considerable variation and as a result inflate projected disease burdens and overestimate the impact of interventions. Here we focus on trajectories of the coronavirus disease (COVID-19) pandemic in England and Scotland until November 2021. We fit models to series of daily deaths and infer relevant epidemiological parameters, including coefficients of variation and effects of non-pharmaceutical interventions which we find in agreement with independent empirical estimates based on contact surveys. Our estimates are robust to whether the analysed data series encompass one or two pandemic waves and enable projections compatible with subsequent dynamics. We conclude that vaccination programmes may have contributed modestly to the acquisition of herd immunity in populations with high levels of pre-existing naturally acquired immunity, while being crucial to protect vulnerable individuals from severe outcomes as the virus becomes endemic. (ART 386 (Arts Building)) |
14:45 - 15:30 |
Francesco Di Lauro: Mean-Field models and Epidemic control ↓ Epidemic control is perhaps the most debated topic in infectious diseases in these times. Defining and implementing social distancing protocols is a significant challenge with economical, political, and scientific considerations. The definition of a
clear or optimal goal remains unclear. The main question is which policies should be employed to make sure that the healthcare system is not overwhelmed as the epidemic spreads, while at the same time ensuring that harsh measures such as lockdowns are not maintained more than what is deemed as strictly necessary. In this context, modelling is a powerful tool to investigate the likely impact of different measures. While, in the era of big data, high complexity models are the gold-standard when addressing country-specific questions, simpler models remain important to understand the core ideas behind different policy choices. In this talk we will explore several possibilities, from one-shot interventions to the problem of controlling an outbreak through its whole course, with particular attention to the possible issues of model misspecification. (Zoom) |
15:30 - 16:00 |
Coffee Break (ASC 310) |
16:00 - 16:20 |
Julie Spencer: Distinguishing viruses responsible for ILI to motivate increased viral surveillance (ART 386 (Arts Building)) |
16:20 - 16:40 |
Mui Pham: Controlling COVID-19 in schools ↓ The role of children in SARS-CoV-2 transmission has been uncertain throughout the pandemic. While early in the pandemic, it has been suggested that children might have a lower susceptibility to infection and contribute less to onward transmission, this hypothesis has been challenged by their unique social behavior and contact network as well as the emergence of new variants. It has become clear that understanding the effect of age structure on the epidemic dynamics is crucial for guiding public health policies.
In this talk, I will give a broad overview of what we have learned about the role of school-age children in the current pandemic. I will focus on the contribution of mathematical modeling to understanding the SARS-CoV-2 transmission dynamics within schools and the potential effect of school-based interventions. (ART 386 (Arts Building)) |
16:45 - 17:30 |
Discussion: Open problems in mathematical epidemiology & Plan for the next pandemic (ART 386 (Arts Building)) |
17:30 - 20:00 |
Dinner (Sunshine) |