Gene regulatory network topology governs resistance and treatment escape in glioma stem-like cells.
James H ParkParvinder HothiAdrian Lopez Garcia de LomanaMin PanRachel CalderSerdar TurkarslanWei-Ju WuHwahyung LeeAnoop P PatelCharles CobbsSui HuangNitin S BaligaPublished in: Science advances (2024)
Poor prognosis and drug resistance in glioblastoma (GBM) can result from cellular heterogeneity and treatment-induced shifts in phenotypic states of tumor cells, including dedifferentiation into glioma stem-like cells (GSCs). This rare tumorigenic cell subpopulation resists temozolomide, undergoes proneural-to-mesenchymal transition (PMT) to evade therapy, and drives recurrence. Through inference of transcriptional regulatory networks (TRNs) of patient-derived GSCs (PD-GSCs) at single-cell resolution, we demonstrate how the topology of transcription factor interaction networks drives distinct trajectories of cell-state transitions in PD-GSCs resistant or susceptible to cytotoxic drug treatment. By experimentally testing predictions based on TRN simulations, we show that drug treatment drives surviving PD-GSCs along a trajectory of intermediate states, exposing vulnerability to potentiated killing by siRNA or a second drug targeting treatment-induced transcriptional programs governing nongenetic cell plasticity. Our findings demonstrate an approach to uncover TRN topology and use it to rationally predict combinatorial treatments that disrupt acquired resistance in GBM.
Keyphrases
- single cell
- transcription factor
- poor prognosis
- rna seq
- depressive symptoms
- gene expression
- emergency department
- combination therapy
- cell therapy
- long non coding rna
- bone marrow
- mesenchymal stem cells
- adverse drug
- oxidative stress
- climate change
- drug delivery
- molecular dynamics
- electronic health record
- smoking cessation
- dna binding