1.A facile, branched DNA assay to quantitatively measure glucocorticoid receptor auto-regulation in T-cell acute lymphoblastic leukemia.
Jason R SCHWARTZ ; Purvaba J SARVAIYA ; Lily E LEIVA ; Maria C VELEZ ; Tammuella C SINGLETON ; Lolie C YU ; Wayne V VEDECKIS
Chinese Journal of Cancer 2012;31(8):381-391
Glucocorticoid (GC) steroid hormones are used to treat acute lymphoblastic leukemia (ALL) because of their pro-apoptotic effects in hematopoietic cells. However, not all leukemia cells are sensitive to GC, and no assay to stratify patients is available. In the GC-sensitive T-cell ALL cell line CEM-C7, auto-up-regulation of RNA transcripts for the glucocorticoid receptor (GR) correlates with increased apoptotic response. This study aimed to determine if a facile assay of GR transcript levels might be promising for stratifying ALL patients into hormone-sensitive and hormone-resistant populations. The GR transcript profiles of various lymphoid cell lines and 4 bone marrow samples from patients with T-cell ALL were analyzed using both an optimized branched DNA (bDNA) assay and a real-time quantitative reverse transcription-polymerase chain reaction assay. There were significant correlations between both assay platforms when measuring total GR (exon 5/6) transcripts in various cell lines and patient samples, but not for a probe set that detects a specific, low abundance GR transcript (exon 1A3). Our results suggest that the bDNA platform is reproducible and precise when measuring total GR transcripts and, with further development, may ultimately offer a simple clinical assay to aid in the prediction of GC-sensitivity in ALL patients.
Adolescent
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Antineoplastic Agents, Hormonal
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pharmacology
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Apoptosis
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drug effects
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Branched DNA Signal Amplification Assay
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methods
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Cell Line, Tumor
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Child
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Dexamethasone
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pharmacology
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Drug Resistance, Neoplasm
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Exons
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Glucocorticoids
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pharmacology
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Humans
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Precursor T-Cell Lymphoblastic Leukemia-Lymphoma
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metabolism
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pathology
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Receptors, Glucocorticoid
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genetics
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metabolism
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Reverse Transcriptase Polymerase Chain Reaction
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methods
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Transcription, Genetic
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drug effects
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Up-Regulation