Modeling glioblastoma heterogeneity as a dynamic network of cell states
Journal article, 2021

Tumor cell heterogeneity is a crucial characteristic of malignant brain tumors and underpins phenomena such as therapy resistance and tumor recurrence. Advances in single-cell analysis have enabled the delineation of distinct cellular states of brain tumor cells, but the time-dependent changes in such states remain poorly understood. Here, we construct quantitative models of the time-dependent transcriptional variation of patient-derived glioblastoma (GBM) cells. We build the models by sampling and profiling barcoded GBM cells and their progeny over the course of 3 weeks and by fitting a mathematical model to estimate changes in GBM cell states and their growth rates. Our model suggests a hierarchical yet plastic organization of GBM, where the rates and patterns of cell state switching are partly patient-specific. Therapeutic interventions produce complex dynamic effects, including inhibition of specific states and altered differentiation. Our method provides a general strategy to uncover time-dependent changes in cancer cells and offers a way to evaluate and predict how therapy affects cell state composition.

cell state

patient-derived brain tumor cells

single-cell lineage tracing

time-dependent computational models

cellular barcoding

Author

Ida Larsson

Uppsala University

Erika Dalmo

Uppsala University

Ramy Elgendy

Uppsala University

Mia Niklasson

Uppsala University

Milena Doroszko

Uppsala University

Anna Segerman

Uppsala University

Akademiska Sjukhuset

Rebecka Jörnsten

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Bengt Westermark

Uppsala University

S. Nelander

Uppsala University

Molecular Systems Biology

17444292 (eISSN)

Vol. 17 9 e10105

Subject Categories

Cell Biology

Cell and Molecular Biology

Medical Biotechnology (with a focus on Cell Biology (including Stem Cell Biology), Molecular Biology, Microbiology, Biochemistry or Biopharmacy)

DOI

10.15252/msb.202010105

PubMed

34528760

More information

Latest update

10/6/2021