ProjectMultimodal Machine Learning for Patient Stratification and Outcome Prediction
Basic data
Title:
Multimodal Machine Learning for Patient Stratification and Outcome Prediction
Duration:
15/08/2026 to 14/08/2029
Abstract / short description:
This PhD project explores machine learning methods for integrating multimodal biomedical data to better understand disease heterogeneity and predict clinical outcomes. The focus is on combining diverse data sources such as clinical variables, biomarkers, genomics, and large-scale electronic health records (EHRs) to learn unified patient representations. Methodological work will address challenges such as missing data, irregular sampling, and differences across datasets, with the aim of developing scalable and interpretable models for longitudinal data. Overall, the goal is to contribute generalizable methods for data-driven patient stratification and outcome prediction in real-world clinical environments.
Involved staff
Managers
Faculty of Medicine
University of Tübingen
University of Tübingen
Contact persons
University Department of Neurology
Hospitals and clinical institutes, Faculty of Medicine
Hospitals and clinical institutes, Faculty of Medicine
Local organizational units
Hertie Institute for Artificial Intelligence in Brain Health (HIAI)
Non-clinical institutes
Faculty of Medicine
Faculty of Medicine