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A scalable, open-source implementation of a large-scale mechanistic model for single cell proliferation and death signaling

Author

Listed:
  • Cemal Erdem

    (Clemson University)

  • Arnab Mutsuddy

    (Clemson University)

  • Ethan M. Bensman

    (Clemson University)

  • William B. Dodd

    (Clemson University)

  • Michael M. Saint-Antoine

    (University of Delaware)

  • Mehdi Bouhaddou

    (University of California San Francisco)

  • Robert C. Blake

    (Lawrence Livermore National Laboratory)

  • Sean M. Gross

    (Oregon Health & Science University)

  • Laura M. Heiser

    (Oregon Health & Science University)

  • F. Alex Feltus

    (Clemson University
    Clemson University
    Clemson University)

  • Marc R. Birtwistle

    (Clemson University
    Clemson University)

Abstract

Mechanistic models of how single cells respond to different perturbations can help integrate disparate big data sets or predict response to varied drug combinations. However, the construction and simulation of such models have proved challenging. Here, we developed a python-based model creation and simulation pipeline that converts a few structured text files into an SBML standard and is high-performance- and cloud-computing ready. We applied this pipeline to our large-scale, mechanistic pan-cancer signaling model (named SPARCED) and demonstrate it by adding an IFNγ pathway submodel. We then investigated whether a putative crosstalk mechanism could be consistent with experimental observations from the LINCS MCF10A Data Cube that IFNγ acts as an anti-proliferative factor. The analyses suggested this observation can be explained by IFNγ-induced SOCS1 sequestering activated EGF receptors. This work forms a foundational recipe for increased mechanistic model-based data integration on a single-cell level, an important building block for clinically-predictive mechanistic models.

Suggested Citation

  • Cemal Erdem & Arnab Mutsuddy & Ethan M. Bensman & William B. Dodd & Michael M. Saint-Antoine & Mehdi Bouhaddou & Robert C. Blake & Sean M. Gross & Laura M. Heiser & F. Alex Feltus & Marc R. Birtwistle, 2022. "A scalable, open-source implementation of a large-scale mechanistic model for single cell proliferation and death signaling," Nature Communications, Nature, vol. 13(1), pages 1-18, December.
  • Handle: RePEc:nat:natcom:v:13:y:2022:i:1:d:10.1038_s41467-022-31138-1
    DOI: 10.1038/s41467-022-31138-1
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    References listed on IDEAS

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    Cited by:

    1. Cemal Erdem & Sean M. Gross & Laura M. Heiser & Marc R. Birtwistle, 2023. "MOBILE pipeline enables identification of context-specific networks and regulatory mechanisms," Nature Communications, Nature, vol. 14(1), pages 1-16, December.

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