Christoph Ogris

Head of Computational Biology @DISCO Pharmaceuticals | Bridging High-Quality Data & AI to Unlock Novel Targets | Views are my own

Germany

About

I believe that the future of medicine lies in the translation of high-quality data into biological reality. But having the data isn't enough, you need the strategy to interpret it. As the Head of Computational Biology at DISCO Pharmaceuticals, I am focused on exactly this challenge: bridging the gap between wet-lab generation and dry-lab interpretation to unlock the surfaceome. My goal is to use AI not just as a buzzword, but as a pragmatic tool to elevate clinical Probability-of-Success. I lead international teams where bioinformaticians and biologists speak the same language. I am passionate about translating complex multi-omics data into clear, actionable pipeline strategies. I am here on LinkedIn to connect with peers in Biotech, Data Science, and Pharma. I’ll be sharing insights on: 🚀 Data-driven drug discovery 🧬 Taming complex multi-omics data 🤝 Leadership in R&D Feel free to follow along or comment, I’m always up for a discussion on where our industry is heading.

Experience

  • Head of Computational Biology at DISCO Pharmaceuticals GmbH
    Jan 2026 - Present · 7 mos

    Leading the computational biology strategy to map the cell surfaceome and identify novel target pairs for next-generation cancer therapeutics. • Strategic Vision: Building a scalable computational engine that bridges high-fidelity biological data with AI/ML to unlock "undruggable" targets in hard-to-treat tumors and beyond. • Pipeline Acceleration: Directing the computational identification of target pairs for bispecific ADCs and T-cell engagers. • Leadership: Fostering an interdisciplinary culture where data science and wet-lab biology work in sync to drive genuine innovation in oncology. Core Focus: Surfaceome Mapping, Target Discovery, AI/ML in Biotech, Oncology.

  • Team Lead Computational Biology at Boehringer Ingelheim
    Nov 2022 - Jan 2026 · 3 yrs 3 mos

    Led the computational biology strategy for early drug discovery in Inflammation and Oncology. Focused on bridging the gap between large-scale data generation and biological validation. • Leadership & Strategy: Managed an international team of computational biologists, driving the integration of data science into the R&D value chain. • Target Discovery: Spearheaded computational initiatives to identify and validate novel targets, leveraging multi-omics data to improve clinical Probability-of-Success. • Decision Support: Translated complex computational findings into clear strategic guidance for senior stakeholders, directly influencing portfolio decisions and project prioritization. Core Focus: Oncology, Inflammation, Target Identification, R&D Strategy.

  • Helmholtz Munich (4 yrs 9 mos)
    • Team Lead & Principal Investigator
      Jan 2021 - Sep 2022 · 1 yr 9 mos

      Transitioned into a fully independent leadership role, driving the scientific roadmap for AI/ML applications in biomedicine. • Strategic Leadership: Defined and presented computational strategies to executive leadership (C-suite/Scientific Board), ensuring alignment with broader institutional goals. • Funding & Sustainability: Successfully secured grant funding by translating complex technical proposals into compelling value propositions for funding agencies. • Innovation Management: Directed a team of scientists in pioneering machine learning applications, moving from theoretical models to applied innovation. • Operational Excellence: Optimized budget and resource allocation to ensure project efficiency and long-term sustainability.

    • Deputy Head of Computational Cell Maps Group
      Jun 2019 - Dec 2020 · 1 yr 7 mos

      Stepped into leadership to co-manage the group's operations and scientific output. • Scientific Management: Oversaw project delivery and quality control for the Computational Cell Maps group, ensuring high-fidelity results. • Talent Development: Mentored junior scientists and PhD students, fostering a culture of professional growth and technical excellence. • Cell Mapping: Contributed to the strategic focus on spatial biology and cell mapping, laying the groundwork for advanced data integration.

    • Senior Computational Scientist
      Jan 2018 - Jun 2019 · 1 yr 6 mos

      Hands-on development of the core algorithms driving our research. • Algorithm Development: Architected innovative ML/AI workflows for complex data integration and multi-omics analysis. • Discovery: Applied state-of-the-art data analysis to identify hidden disease mechanisms and novel biological insights. • Scientific Communication: Authored high-impact publications and presented novel findings at global conferences to position Helmholtz Munich at the forefront of the field.

  • Lecturer, Translational Bioinformatics at Technical University of Munich
    Sep 2018 - Feb 2020 · 1 yr 6 mos

    Bridged the gap between academic theory and practical application for Master's level students. Focus on conveying complex computational concepts to the next generation of bioinformaticians. • Curriculum Delivery: Lectured on Translational Bioinformatics and Statistical Learning, focusing on the application of ML in biological contexts. • Network Analysis: Taught advanced methodologies in Multi-Modal Network Analysis and Inference. • Mentorship: Provided academic guidance and technical mentorship to students bridging biology and computer science. Core Skills: University Teaching, Machine Learning Algorithms, Statistical Learning.

  • Computational Scientist & Bioinformatician at SciLifeLab
    2013 - Dec 2017 · 5 yrs

    Conducted doctoral research at the intersection of technology development and network biology. Played a key role in early-stage innovations that are now standard in the field. • Spatial Transcriptomics: Collaborated directly with engineering teams to co-develop seminal methods for Spatial Transcriptomics, bridging the gap between hardware engineering and computational interpretation. • Network Algorithms: Developed novel algorithms for predicting functional association networks and network-based pathway annotations to decipher complex biological systems. • Tool Development: Implemented full-stack solutions (backend to frontend) and deployed multiple public-facing web servers to make these algorithms accessible to the global research community. Core Skills: Spatial Transcriptomics, Network Biology, Algorithm Design, Full-Stack Development.