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Home › Dataset Library › Transcription profiling of human CEM-C1 cells treate with rapamycin for 3 hours

Dataset: Transcription profiling of human CEM-C1 cells treate with rapamycin for 3 hours

Drug resistance remains a major obstacle to successful cancer treatment. Here we use a novel approach to identify rapamycin as a...

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Drug resistance remains a major obstacle to successful cancer treatment. Here we use a novel approach to identify rapamycin as a glucocorticoid resistance reversal agent. A database of drug-associated gene expression profiles was screened for molecules whose profile overlapped with a gene expression signature of glucocorticoid (GC) sensitivity/resistance in Acute Lymphoblastic Leukemia (ALL) cells. The screen indicated the mTOR inhibitor rapamycin profile matched the signature of GC-sensitivity. We thus tested the hypothesis that rapamycin would induce GC sensitivity in lymphoid malignancy cells, and found that it sensitized cells to glucocorticoid induced apoptosis via modulation of antiapoptotic MCL1. These data indicate that MCL1 is an important regulator of GC-induced apoptosis, and that the combination of rapamycin and glucocorticoids has potential utility in ALL. Furthermore this approach represents a novel strategy for identification of promising combination therapies for cancer. Experiment Overall Design: CEM-C1 cells were treated with 10 nM rapamycin for 3 hours and compared to DMSO treated cells

Species:
human

Samples:
6

Source:
E-GEOD-5822

PubMed:
17010674

Updated:
Dec.12, 2014

Registered:
Jun.19, 2014


Factors: (via ArrayExpress)
Sample
GSE5822GSM136056
GSE5822GSM136064
GSE5822GSM136057
GSE5822GSM136065
GSE5822GSM136066
GSE5822GSM136055

Tags

  • acute lymphoblastic leukemia
  • cancer
  • leukemia
  • lymphoblastic leukemia

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