Department of Quantitative Biomedicine, Medical Informatics

PostDoc in Health AI
80-100 %

The University of Zurich together with the University Hospital of Zurich are embarking on a concerted effort to develop informatics programs to advance biomedical research and healthcare using cutting edge computational approaches. As part of these efforts, the Chair of Medical Informatics (krauthammerlab) investigates topics in clinical data science and translational bioinformatics, such as knowledge discovery from Big Data sources (Electronic Medical Records, health registries) as well as the analysis of human Omics data.

Your responsibilities

We are currently looking for a motivated PostDoc in Health AI who will work at the intersection of computation, biology and medicine. Particularly, the candidate will support our ongoing work in applying AI to the space of genetic engineering, including the prediction of base editor outcomes, the optimization of base editors and the optimal use of base editors in complex genetic diseases (see recent publications [1,2,3,4]). This work is part of the University Research Priority Program (URPP) «Human Reproduction Reloaded»

The PostDoc will be involved in other ongoing lab activities (particularly the supervision of junior lab members and some teaching activities) and will be an integral part of the URPP research community. We offer an interdisciplinary research environment, the possibility to direct your own research, access to state-of-the-art computational resources' infrastructure (further details are listed below) and a formidable place to grow academically.

Your profile

What we offer


References:

1- Mathis, N., Allam, A., Kissling, L. et al. Predicting prime editing efficiency and product purity by deep learning. Nat Biotechnol 41, 1151–1159 (2023). https://doi.org/10.1038/s41587-022-01613-7

2- Nicolas Mathis, Ahmed Allam, András Tálas, Elena Benvenuto, Ruben Schep, Tanav Damodharan, Zsolt Balázs, Sharan Janjuha, Lukas Schmidheini, Desirée Böck, Bas van Steensel, Michael Krauthammer, Gerald Schwank. Predicting prime editing efficiency across diverse edit types and chromatin contexts with machine learning. bioRxiv 2023.10.09.561414; doi: https://doi.org/10.1101/2023.10.09.561414

3- Mollaysa, A., Allam, A., & Krauthammer, M. (2023). Attention-based Multi-task Learning for Base Editor Outcome Prediction. ML4H Findings Track Collection, https://arxiv.org/abs/2311.07636

4- Marquart, K.F., Allam, A., Janjuha, S. et al. Predicting base editing outcomes with an attention-based deep learning algorithm trained on high-throughput target library screens. Nat Commun 12, 5114 (2021). https://doi.org/10.1038/s41467-021-25375-z

Place of work

Zürich, Switzerland

Start of employment

Employment start date to be mutually agreed.

Further information