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Home › Dataset Library › Reconstruction of the dynamic regulatory network that controls Th17 cell differentiation by systematic perturbation in primary cells... › Expression data from type 2 diabetic and non-diabetic isolated human islets

Dataset: Reconstruction of the dynamic regulatory network that controls Th17 cell differentiation by systematic perturbation in primary cells (Affymetrix timecourse IL23 KO)

Despite their enormous importance, the molecular circuits that control the differentiation of Th17 cells remain largely unknown. Recent...

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Despite their enormous importance, the molecular circuits that control the differentiation of Th17 cells remain largely unknown. Recent studies have reconstructed regulatory networks in mammalian cells, but have focused on short-term responses and relied on perturbation approaches that cannot be applied to primary T cells. Here, we develop a systematic strategy – combining transcriptional profiling at high temporal resolution, novel computational algorithms, and innovative nanowire-based tools for performing gene perturbations in primary T cells – to derive and experimentally validate a temporal model of the dynamic regulatory network that controls Th17 differentiation. The network is arranged into two self-reinforcing and mutually antagonistic modules that either suppress or promote Th17 differentiation. The two modules contain 12 novel regulators with no previous implication in Th17 differentiation, which may be essential to maintain the appropriate balance of Th17 and other CD4+ T cell subsets. Overall, our study identifies and validates 39 regulatory factors that are embedded within a comprehensive temporal network and identifies novel drug targets and organizational principles for the differentiation of Th17 cells. Time course microarray data for Th17 differentiation, comparing IL23r-/- to WT

Species:
mouse

Samples:
20

Source:
E-GEOD-43969

Updated:
Dec.12, 2014

Registered:
Nov.24, 2014


Factors: (via ArrayExpress)
Sample TIME HR GENOTYPE TREATMENT
GSM1075104 24 WT Tgfb+IL6
GSM1075105 48 WT Tgfb+IL6
GSM1075106 49 WT Tgfb+IL6
GSM1075107 54 WT Tgfb+IL6
GSM1075108 65 WT Tgfb+IL6
GSM1075109 72 WT Tgfb+IL6
GSM1075110 24 IL23R knockout Tgfb+IL6
GSM1075 48 IL23R knockout Tgfb+IL6
GSM1075112 49 IL23R knockout Tgfb+IL6
GSM1075113 54 IL23R knockout Tgfb+IL6
GSM1075114 65 IL23R knockout Tgfb+IL6
GSM1075115 72 IL23R knockout Tgfb+IL6
GSM1075116 49 WT Tgfb+IL6+IL23
GSM1075117 54 WT Tgfb+IL6+IL23
GSM1075118 65 WT Tgfb+IL6+IL23
GSM1075119 72 WT Tgfb+IL6+IL23
GSM1075120 49 IL23R knockout Tgfb+IL6+IL23
GSM107512 54 IL23R knockout Tgfb+IL6+IL23
GSM1075122 65 IL23R knockout Tgfb+IL6+IL23
GSM1075123 72 IL23R knockout Tgfb+IL6+IL23

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  • cell

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