Postdoc Position: Deep Learning for Glioblastoma Sequence-to-Function Models

Updated: 3 months ago
Job Type: FullTime
Deadline: 14 Feb 2026

14 Jan 2026
Job Information
Organisation/Company

Flanders Institute for Biotechnology
Department

VIB Center for AI & Computational Biology
Research Field

Biological sciences » Other
Computer science » Other
Researcher Profile

Recognised Researcher (R2)
Positions

Postdoc Positions
Application Deadline

14 Feb 2026 - 23:59 (Europe/Brussels)
Country

Belgium
Type of Contract

Temporary
Job Status

Full-time
Is the job funded through the EU Research Framework Programme?

Not funded by a EU programme
Is the Job related to staff position within a Research Infrastructure?

No

Offer Description

Description

VIB.AI, the VIB Center for AI & Computational Biology, is a young research center dedicated to combining machine learning with in-depth knowledge of biological processes. Our mission is to study fundamental problems in biology and work towards foundation models of biological systems and innovative AI-driven biotech applications.

The Laboratory of Computational Biology in Leuven (www.aertslab.org ), led by VIB.AI Scientific Director Stein Aerts, is seeking a talented postdoctoral researcher to develop next-generation sequence-to-function models for glioblastoma (GBM). Glioblastoma is the most aggressive form of brain cancer, characterized by diverse and dynamic cell states that drive treatment resistance and poor prognosis.

In this project, funded by the Foundation Against Cancer, you will move beyond descriptive genomics to decipher the underlying regulatory logic of GBM. By leveraging single-cell multi-omics (scATAC-seq, scRNA-seq) and spatial omics, you will map enhancer landscapes at unprecedented resolution. The core innovation of your work will be integrating this data to train deep learning models that predict chromatin accessibility and gene expression patterns. These models will ultimately be used to design synthetic enhancers tailored to modulate specific GBM cell states, offering a path toward highly targeted oncolytic virus therapies and immunomodulatory interventions.

Responsibilities

  • Model Development: Build and train advanced deep learning architectures (e.g., CNNs, Transformers, Generative Models) to decode the regulatory logic of genomic enhancers in GBM and the tumor microenvironment.
  • Synthetic Design: Use sequence-to-function models to design "programmable" synthetic enhancers capable of targeting specific cancer cell states or host cells.
  • Data Integration: Integrate pan-cancer single-cell atlases with spatial transcriptomics to understand signaling pathways and gene-regulatory dynamics.
  • Explainable AI (XAI): Ensure models provide mechanistic insights into cancer cell states, moving from "black box" predictions to biological understanding.
  • Collaboration: Work within a multi-disciplinary team and potentially engage with collaborators across Belgian universities.

Profile

  • Education: PhD in Artificial Intelligence, Bioinformatics, Computer Science, Physics, Engineering, or a related field.
  • Programming: Proficient in Python.
  • Machine Learning: Strong experience with frameworks like TensorFlow, Keras, or PyTorch.
  • Preferred Skills:
    • Experience with Explainable AI (e.g., SHAP, Integrated Gradients).
    • Familiarity with high-performance computing (HPC) and software containers.
    • Knowledge of cancer genomics or regulatory biology is a plus.
  • Mindset: Ability to work independently while thriving in a collaborative, international team.

We offer

  • Cutting-Edge Resources: Access to state-of-the-art compute and GPU infrastructure, including H100 and B300 GPU clusters.
  • Innovation: The opportunity to apply a recently published, "proof-of-concept" method for synthetic enhancer design to a critical, real-world clinical challenge.
  • Environment: A stimulating, international research setting in a top-tier university.
  • Funding: Minimum of 3 years of funding available; candidates are encouraged to apply for prestigious fellowships (EMBO, MSCA, etc.).
  • Start Date: As soon as possible.

How to apply?

Please complete the online application procedure via the VIB website and include:

  • A detailed CV
  • A motivation letter specifically detailing your interest in glioblastoma and deep learning
  • Two reference letters
  • For more information:stein.aerts@kuleuven.be


    Where to apply
    Website
    https://jobs.vib.be/j/130090/postdoc-position-deep-learning-for-glioblastoma-se…

    Requirements
    Research Field
    Biological sciences
    Education Level
    PhD or equivalent

    Skills/Qualifications
    • Education: PhD in Artificial Intelligence, Bioinformatics, Computer Science, Physics, Engineering, or a related field.
    • Programming: Proficient in Python.
    • Machine Learning: Strong experience with frameworks like TensorFlow, Keras, or PyTorch.
    • Preferred Skills:
      • Experience with Explainable AI (e.g., SHAP, Integrated Gradients).
      • Familiarity with high-performance computing (HPC) and software containers.
      • Knowledge of cancer genomics or regulatory biology is a plus.
    • Mindset: Ability to work independently while thriving in a collaborative, international team.

    Languages
    ENGLISH

    Additional Information
    Work Location(s)
    Number of offers available
    1
    Company/Institute
    VIB
    Country
    Belgium
    City
    Leuven
    Postal Code
    3000
    Street
    Herestraat 49
    Geofield


    Contact
    City

    Leuven
    Website

    https://jobs.vib.be/j/130090/postdoc-position-deep-learning-for-glioblastoma-sequence-to-function-models
    Street

    Herestraat 49
    Postal Code

    3000
    E-Mail

    stein.aerts@kuleuven.be

    STATUS: EXPIRED

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