Systems Biology of Signal Transduction

  • Functional and Structural Genomics
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Prof. Dr. Ursula Klingmüller

Division Leader

Bridging from the cellular to the organ scale, the division aims at unraveling molecular mechanisms regulating cell communication and cell decisions, as a failure of these control mechanisms contributes to tumor development.

Our Research

Group photo of the B200 division in 2024.

We combine quantitative technologies with mechanism-based mathematical modeling to enable early detection and personalized treatment of cancer to prevent tumor progression and improve quality of life. 

Cellular responses are regulated by a multitude of extracellular signals received by cell surface receptors. Within cells the information is processed through complex intracellular signaling networks that in turn impinge on gene regulation. The dynamics of signal transduction is affected by the metabolic state of cells as well as the impact of signal transduction on metabolism. These multitude of reactions are integrated and converted to phenotypic responses such as proliferation, survival and differentiation. The majority of these responses are non-linear and operate on very different time scales, ranging from minutes to hours and days. Due to this complexity, it is of advantage to employ mathematical modelling approaches. Data-based mathematical models not only enable rapid testing of hypotheses to uncover deregulation in cancer, but also facilitate the prediction of trajectories such as disease development and support the establishment optimized intervention strategies to change the course of a disease.

In close cooperation with our mathematical modelling partners and the clinical partners, we are advancing cellular model systems to include an authentic extracellular matrix, developing cutting edge mass spectrometry approaches for clinical proteomics and increasingly combine AI-based modelling approaches with dynamic pathway modeling. The key areas of medical interest are processes determining the development of leukemia, lung cancer or liver cancer. 

Areas of focus in the division are: 

  1. Advancing systems medicine approaches for clinical translation through standardization of workflows for high-quality data generation and the development of predictive mathematical models
  2. Bridging from the single cell to the cell population and organ level to unravel principal mechanisms controlling erythropoietin (Epo)-induced cellular responses in the hematopoietic system.
  3. Resolving interactions in the tumor microenvironment determining lung cancer development and personalized optimization of intervention strategies.
  4. Deciphering the interconnection of signal transduction and metabolism to unravel mechanisms controlling the compensation of liver injury due to drugs or viral infection and to establish model-based biomarkers for early detection of liver cancer.

Outlook
Our ambition is to establish mathematical models for the prediction of disease trajectories to support early detection of cancer and to establish effective intervention strategies for converting an aggressively progressing cancer to a controllable disease. Therefore, we continue to develop integrative models linking signal transduction, metabolism and phenotypic responses that are essential building blocks for the establishment of mechanistic multi-scale models to predict the impact of cellular alterations on the entire organ. Our mass spectrometry based clinical proteomics pipeline greatly increases the possibilities to generate reliable quantitative data and through the combination of AI-based pattern recognition with dynamic pathway modeling much extends the development of predictive models. Through our clinical partners we have access to high-quality patient samples that allow to adapt our predictive mathematical models to disease states and to resolve mechanisms leading from chronic diseases to cancer and impacting the heart.

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Current Research Interests

Created with Biorender. Adapted from Heming et al., Bioinform Adv 2022. © dkfz.de

Advancement of clinical proteomics for systems medicine

Disease initiation and progression is a highly dynamic process and to pinpoint alterations resulting in deregulation, systems medicine approaches combining high-quality data generation with the development of mechanistic mathematical models are required. As biological functionality is executed by proteins and their abundance critically determine cell context specific information processing, a quantitative proteomics approach suitable for the generation of quantitative data for mathematical modelling and sufficiently robust for clinical translation is required. A critical basis for the development of a robust clinically-applicable pipeline is the collection of patient samples according to standard operating procedures (SOPs) (Wessels et al., Transl Lung Cancer Research 2020; Gegner et al., Front Mol Biosci 2022). Key steps of our clinical proteomics pipeline have been the optimization of the lysis of cells, extracellular matrix, tissue and blood plasma, semi-automated sample processing and the inclusion of quality standards. To ensure standardized data processing and thereby secure reproducibility of results the MSPypeline tool (Heming et al., Bioinform Adv 2022) was developed. With these developments in place, we could already demonstrate that the generated data much improves calibration of our mechanism-based dynamic pathway models that we are developing for TGFβ, HGF, EGF, IL-6, TNFα, IFNa and Epo-signal transduction.

Team

  • Employee image

    Prof. Dr. Ursula Klingmüller

    Division Leader

    Show profile
  • Employee image

    Yomn Abdullah

    Doctoral Student

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    Annalisa Addante

    Postdoctoral Researcher

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    Sandra Bonefas

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    Katharina Büchner

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    Dr. Sebastian Burbano De Lara Carrillo

    Postdoctoral Researcher

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    Simone Clas

    Doctoral Student

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    Kyra Fischer

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    Dr. Dario Frey

    Postdoctoral Researcher

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    Franziska Gödtel

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    Barbara Helm

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    Elisa Holstein

    PhD Student

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    Martina Kegel

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    Daniel Kempter

    Master's Student

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    Nicola Kunz

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    Dr. Nantia Leonidou

    Postdoctoral Researcher

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    Caroline Lohoff

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    Till Möcklinghoff

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    Christina Mölders

    PhD Student

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    Benedikt Niedermaier

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    Akane Ogawa

    Visiting Bachelor's Student

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    Dr. Agustin Rodriguez Gonzalez

    Postdoctoral Researcher

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    Michelle Sadlowski

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    Dr. Marcel Schilling

    Deputy of Division

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    Lisa Strotmann

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    Katerina Sulková

    PhD Student

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    Cong Quan Ta

    PhD Student

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    Florian Tichawa

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    Henry Unger

    PhD Student

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    Leonie Wilhelm

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    Dr. Piotr Zadora

    Postdoctoral Researcher

Selected Publications

2024 - Molecular systems biology
2022 - Cell Reports 40(12):111360

Erythropoietin-driven dynamic proteome adaptations during erythropoiesis prevent iron overload in the developing embryo.

2021 - Cell Reports 36(6), 109507

Cell-to-cell variability in JAK2/STAT5 pathway components and cytoplasmic volumes defines survival threshold in erythroid progenitor cells.

2020 - Molecular Systems Biology 16(7):e8955

Disentangling molecular mechanisms regulating sensitization of interferon alpha signal transduction.

All Publications

Get in touch with us

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Prof. Dr. Ursula Klingmüller
Division Leader
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Dr. Marcel Schilling
Deputy of Division
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