Leveraging artificial intelligence with mechanistic modeling and high-performance computing
1 Choutka, J., Jansari, V., Hornig, M. & Iwasaki, A. Unexplained post-acute infection syndromes. Nature Medicine 28, 911–923 (2022).
2 Mikolajczyk, R. et al. Likelihood of Post-COVID Condition in people with hybrid immunity; data from the German National Cohort (NAKO). Journal of Infection 89 (2024)
    
The goal of WP1 is the development of an individual immunity and lifestyle/comorbiditiesbased reaction model integrating key variables derived from analysis on the NAKO and DigiHero data sets.
The goal of WP2 is to provide the best-performing vaccination strategies to prevent the development of PAIS given the assumptions of the iteratively refined models. Furthermore, the second goal of WP2 is to provide freely accessible software and pipelines that can be reused by scientists and clinicians to infer estimations on parameters such as, e.g., antibody waning as soon as new data has been collected.
Work package 3 is dedicated to project coordination and dissemination of results.

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          | Year | Title | Authors | Journal | Links | 
|---|
| Year | Title | Presenter | Venue | Links | 
|---|---|---|---|---|
| 2025 | AIMS - AI-driven Modeling for preventing post-acute infection Syndromes | Martin Kühn | CompLS Statusseminar | |
| 2025 | AIMS - AI-driven Modeling for preventing post-acute infection Syndromes | Jonas Frost | CAIMed Meetup, Hannover |