Conference Agenda

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Session Overview
Session
S62: Epidemic short-term forecasting in real time
Time:
Thursday, 07/Sept/2023:
8:30am - 10:10am

Session Chair: Johannes Bracher
Session Chair: Daniel Wolffram
Location: Seminar Room U1.197 hybrid


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Presentations
8:30am - 8:50am

Collaborative forecasting of COVID-19 in Germany and Poland

Melanie Schienle1,2, Daniel Wolffram1,2, Johannes Bracher1,2

1Karlsruhe Institute of Technology, Germany; 2Heidelberg Institute for Theoretical Studies

Short-term forecating of infectious diseases can contribute to situational awareness and resource planning during infectious disease outbreaks. During the COVID-19 pandemic, such forecasts have received considerable attention, and it is increasingly acknowledged that multi-model systems can improve the reliability of results. So-called Forecast Hubs have therefore been launched in various countries in order to coordinate modelling efforts, enable a coherent comparative evaluation of different models and their combination into a forecast ensemble. In the opening talk of this session, we will provide an overview of the German and Polish COVID-19 Forecast Hub, which we operated from May 2020 through April 2021, when it was merged into a larger effort led by the European Centers for Disease Prevention and Control. We will discuss practical aspects of coordinating real-time forecasting with numerous independent research teams as well as statistical and epidemiological challenges we encountered. Particular attention will be given to a pre-registered evaluation study which we conducted between October 2020 and April 2021. The results indicate that while deaths can be predicted with some success, case forecasts are very challenging, and in particular abrupt changes in trends are difficult to predict. Ensemble forecasts overall showed good relative performance, for most forecast targets outperforming most or all individual models.



8:50am - 9:10am

Improving short term forecasts of COVID-19 incidence with subnational epidemic indicators

Stefan Heyder, Thomas Hotz

TU Ilmenau, Germany

Short term forecasts of the case incidence are a key component in designing public health countermeasures to control an ongoing epidemic. To perform such forecasts one usually estimates quantities related to the growth of cases, e.g. the reproduction number or the growth factor, which are readily available on the national level. However there is considerable heterogeneity in the speed at which cases proliferate within one country, making estimates of these quantities on the subnational level desirable for accurate forecasts. As subnational estimates pose more difficulties due to small incidences and spatial correlation, we combine epidemic modelling with techniques from small area estimation and spatial statistics to facilitate estimation and thus forecasts. The usefulness of our approach is demonstrated by simulation studies and through application to German case data on COVID-19.



9:10am - 9:30am

Predicting the unpredictable: the MOCOS large scale agent based epidemic model

Tyll Krueger, Marcin Bodych, Tomasz Ozanski, Radoslaw Idzikowski

Wroclaw University of Science and Technology, Poland

The MOCOS agent based model is an advanced continuous time epidemic model which is in use for policy recommendation for the polish ministry of health since the beginning of the COVID-19 pandemic. Although the main focus of the model was and is risk analysis and forecasting for the COVID -19 pandemic, it can easily be adapted to the class of respiratory diseases. A special focus of the MOCOS model is the detailed representation of the effect of non pharmaceutical interventions like contact tracing, smartphone based tracing , regional lockdowns and school testing. We present a short overview about the main algorithmic features of the MOCOS model and review the forecast performance of the model based on the submissions to the European forecast hub. We also discuss the Poland specific difficulties of model based policy recommendations. We close the presentation with some challenges of short and medium forecasting for agent based models .



9:30am - 9:50am

Strong effect of testing in containing Covid-19

Jan Mohring, Neele Leithäuser, Jaroslaw Wlazlo, Marvin Schulte, Johanna Münch, Maximilian Pilz

Fraunhofer ITWM, Germany

With the outbreak of the Covid-19 epidemic in Germany, a spread model was developed at Fraunhofer ITWM, which is successfully used for short-term forecasts. The results have entered the German-Polish and European Forecast Hub and still form the basis for advising the state of Rhineland-Palatinate. We start the talk summarizing briefly the integral equation-based model which fits contact and detection rates to reproduce counted numbers of cases and deaths. In a first analysis we consider the situation in Germany in spring 2021. In this phase of the pandemic, data was still available at high quality and daily resolution for different regions and age groups. Moreover, protection could easily be described by three states: susceptible, vaccinated, or recovered. These facts made it possible to fit even the characteristics of the virus, like incubation time and infectious period, without consulting literature. In contrast to many other groups at that time, we fitted explicitly the detection rate and the offset between infection and detection. This enabled us to reconstruct the actual effect of post-test isolation. Comparing the different trajectories of reporting data around the staggered Easter holidays in selected German states, we bring strong evidence that, in spring 2021, post-test isolation made a stronger contribution to the containment of Covid-19 than vaccination or contact restrictions. For this purpose, we are fitting contact rates, which change with contact restrictions, and detection rates, which change with the testing regime. Freezing two of the three rates for restrictions, testing, and vaccination at their values before Easter 2021, and continuing the third one as fitted, we can estimate the effect of each individual measure. It turns out that, in particular, tests at schools have played an important role. In the remaing part of the talk we will discuss recent improvements to our code dealing with transitions between variants and incorporation of waste water measurements.



9:50am - 10:10am

Multi-step immunity mechanism in ICM UW epidemic agent-based model (PDYN 1.5)

Jędrzej M. Nowosielski1, Grzegorz Dudziuk1, Magdalena Gruziel-Słomka1, Karol Niedzielewski1, Maciej Radwan1, Antoni Moszyński1, Jakub Zieliński1, Rafał P. Bartczuk1, Dominik Bogucki1, Filip Dreger1, Łukasz Górski1, Jędrzej Haman1, Artur Kaczorek1, Jan Kisielewski2, Bartosz Krupa1, Marcin Semeniuk1, Franciszek Rakowski1

1Interdisciplinary Centre for Mathematical and Computational Modelling University of Warsaw (ICM UW)), Warsaw, Poland; 2Faculty of Physics, University of Bialystok, Bialystok, Poland

In PDYN 1.5—the epidemiological agent-based model developed at ICM UW—for each agent the probability of contracting infection is calculated daily. Once the agent gets infected, the course of infection consists of a chain of subsequent disease states that the agent goes through. These states represent the severity of symptoms such asymptomatic, mild symptomatic, requiring hospitalisation or requiring ICU treatment. The probabilities of transition from each state to other states determine the total probabilities of each particular course of the whole infection.

The probability of infection as well as transition probabilities between states may be reduced due to the agent’s immunity gained from vaccination or past infection within the frame of a multi-step immunity mechanism. The proposed immunity mechanism captures well-known characteristic of COVID-19 vaccines, i.e., much better efficacy against the severe outcomes of the infection than against the infection itself. The mechanism allows for differentiation of the probabilities of transition to particular severe disease states in the vaccinated and non-vaccinated groups of agents.

Using PDYN 1.5 calibrated to the Polish epidemiological data, we were able to show that our model along with the above mentioned immunity mechanisms is able to capture the reduction of the risk of hospitalisation relative to the risk of the infection itself resulting from vaccination or past infection. Moreover, our method proved its validity in the predictions of delta and omicron VoCs waves in 2021/2022 winter season that were published in Covid-19 European forecast hub. Additionally, to gain further insight into our model of immunity, we carried out an in-silico epidemiological study in which we evaluate the vaccine efficacy (VE) in our simulations and compare it to the real-life data.

In this talk, we would like to present these results as well as explain the mentioned immunity mechanisms implemented in PDYN 1.5 in more detail.



 
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