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Gene expression in EndoC-bH1 human beta-cell line

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NIAID Data Ecosystem2026-05-01 收录
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https://www.ncbi.nlm.nih.gov/sra/ERP016999
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Most genetic association signals for type 2 diabetes risk are located in non-coding regions of the genome, hindering translation into molecular mechanisms. Physiological studies have shown a majority of disease-associated variants to exert their effects through pancreatic islet dysfunction. Systematically characterizing the role of regional transcripts in ß-cell function could identify the underlying disease-causing genes, but large-scale studies in human cellular models have previously been impractical. We developed a robust and scalable strategy based on arrayed gene silencing in the human ß-cell line EndoC-ßH1. In a screen of 300 positional candidates selected from 75 type 2 diabetes regions, each gene was assayed for effects on multiple disease-relevant phenotypes, including insulin secretion and cellular proliferation. We identified a total of 45 genes involved in ß-cell function, pointing to possible causal mechanisms at 37 disease-associated loci. The results showed a strong enrichment for genes implicated in monogenic diabetes. Selected effects were validated in a follow-up study, including several genes (ARL15, ZMIZ1 and THADA) with previously unknown or poorly described roles in ß-cell biology. We have demonstrated the feasibility of systematic functional screening in a human ß-cell model, and successfully prioritized plausible disease-causing genes at more than half of the regions investigated.
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2023-04-26
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