Transcriptomics

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The miR-146b-3p/PAX8/NIS Regulatory Circuit Modulates the Differentiation Phenotype and Function of Thyroid Cells During Carcinogenesis


ABSTRACT: To comprehensively characterize microRNAs (miRNA) expression and their target genes in thyroid cancer, we performed next-generation sequencing expression analysis of this disease. Recent studies have found that only the most abundant microRNAs mediate significant target suppression. We sequenced small RNA from 8 papillary thyroid carcinomas (PTC) with paired samples of normal thyroid tissue. We found that only a small set of abundant miRNAs are differentially expressed after pair-wise comparison (12 upregulated and 8 downregulated) reaching the minimum threshold amount to repress target mRNAs. We integrated computational prediction of potential targets and mRNA sequencing from the paired normal and tumor thyroid tissues from the same eight patients with PTC. The integrated analyses identified a master microRNA regulatory network in PTC that is involved in essential biological processes such as thyroid differentiation. As both mature products of miR-146b (miR-146b-5p and -3p) were among the most abundant upregulated in tumors, we unveil their target genes and found that miR-146b-3p specifically binds to the 3`UTR of PAX8 and NIS, leading to an impaired translation of the proteins and subsequently decreasing the iodide uptake of the cells. Furthermore, we show that mir-146b and PAX8 regulate each other, describing a novel regulatory circuit that determines the differentiated phenotype of PTC. In conclusion, our integrative genomic analysis uncovers the target genes of two of the most upregulated miRNAs and highlights the importance of a miR-146b3p-PAX8-NIS regulatory circuit that determines thyroid differentiation in thyroid cancer.

ORGANISM(S): Homo sapiens

PROVIDER: GSE63511 | GEO | 2015/08/24

SECONDARY ACCESSION(S): PRJNA268095

REPOSITORIES: GEO

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