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PhD student - computational biology (m/f/d)- Universitätsklinikum Münster

Universitätsklinikum Münster

Münster

Vor Ort

EUR 40.000 - 60.000

Teilzeit

Heute
Sei unter den ersten Bewerbenden

Zusammenfassung

A medical research facility in Münster is seeking a part-time PhD Student in Computational Biology. The role focuses on developing innovative strategies to analyze genetic data related to psychiatric disorders. Candidates should be motivated individuals with a master's degree in bioinformatics or related fields and skills in computer science. The position offers exciting projects and professional development opportunities in a collaborative environment.

Leistungen

Exciting Projects
Professional Development and Training
Interdisciplinary Collaboration
Part of Research Innovation
Additional Benefits

Qualifikationen

  • Motivated individuals skilled in computer science, computational biology, or bioinformatics.
  • Desire to make a difference for people suffering from mental health problems.
  • Experience with large genetic datasets and multi-omic traits.

Aufgaben

  • Develop and apply novel strategies for genetic and epigenetic research.
  • Utilize multi-omic data for patient stratification and discovery of new biological mechanisms.
  • Train deep neural network models on existing datasets.

Kenntnisse

Computer science
Computational biology
Bioinformatics
Deep neural networks
Quantitative genetics
R
Python
PyTorch
TensorFlow

Ausbildung

Master’s degree in (Bio‑)Informatics/Data Science
Jobbeschreibung
PhD Student (gn*) Computational Biology

Fixed-term of 3 years | Part-time with 65% (25 hours/week) | Salary according to TV-L, salary group 13 | Lab for Functional Genomics in Psychiatry at the Department of Mental Health, University Muenster | Job ID: 11308

We are UKM. We have a clear social mission and, with our focus on healthcare, research, and teaching, we bear a unique responsibility.

To meet our high standards every day, we are looking forward to your scientific support at the Institute for Experimental Pathology - ideally with you on board!

Responsibilities

The mission of the Ziller lab is to develop and apply novel strategies to dissect the genetic and epigenetic basis of complex diseases, with particular focus on psychiatric disorders. Our research is focused on the question of how many genetic and environmental risk factors act in concert to create a permissive molecular environment that fosters the emergence of psychiatric disorders such as schizophrenia and bipolar disorder and lead to treatment resistance.

In order to address this problem, we employ a highly interdisciplinary, integrative biology approach that utilizes human pluripotent stem cell‑based model systems, high‑throughput functional genomic screening and big‑data‑based machine learning, bridging the scales from genetics to patient level traits. The Ziller lab is part of the Department for Mental Health of the Medical Faculty, University of Muenster.

The overall goal of the Department is to dissect the molecular mechanisms underlying psychiatric diseases and treatment resistance, rapidly utilizing these insights to develop new patient‑tailored therapeutic approaches in a knowledge‑driven fashion.

Requirements

We are looking for motivated individuals skilled in computer science/computational biology/bioinformatics with the desire to make a difference for people suffering from mental health problems. A master’s degree in (Bio‑)Informatics/Data Science or related disciplines is desirable. The positions focus on the development and application of new methods to predict multi‑omic traits and phenotypes from large genetic datasets. More specifically, the computational team will build on our previous work (PMID: 38951512) to establish and train deep neuronal network models on large existing datasets with multi‑omic data. Subsequently, these models will be applied to clinical cohorts of individuals suffering from mental illness to perform patient stratification, discovery of new biological mechanisms and stratified drug target identification, empowering personalized medicine in psychiatry. Experience in quantitative genetics and/or deep neural networks, R/Python/PyTorch/Tensorflow etc. is desirable.

Benefits
  • Exciting Projects
  • Professional Development and Training
  • Interdisciplinary Collaboration
  • Part of Research Innovation
  • Additional Benefits
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