Cell-type, allelic and genetic signatures in the human pancreatic beta cell transcriptome
- Alexandra C Nica,
- Halit Ongen,
- Jean-Claude Irminger,
- Domenico Bosco,
- Thierry Berney,
- Stylianos E Antonarakis,
- Philippe A Halban and
- Emmanouil T Dermitzakis1
- ↵* Corresponding author; email: emmanouil.dermitzakis{at}unige.ch
Abstract
Elucidating the pathophysiology and molecular attributes of common disorders as well as developing targeted and effective treatments hinges on the study of the relevant cell type and tissues. Pancreatic beta cells within the islets of Langerhans are centrally involved in the pathogenesis of both type 1 and type 2 diabetes. Describing the differentiated state of the human beta cell has been hampered so far by technical (low resolution microarrays) and biological limitations (whole islet preparations rather than isolated beta cells). We circumvent these by deep RNA sequencing of purified beta cells from 11 individuals, presenting here the first characterization of the human beta cell transcriptome. We perform the first comparison of gene expression profiles between beta cells, whole islets and beta cell depleted islet preparations, revealing thus beta cell specific expression and splicing signatures. Further, we demonstrate that genes with consistent increased expression in beta cells have neuronal-like properties, a signal previously hypothesized. Finally, we find evidence for extensive allelic imbalance in expression and uncover genetic regulatory variants (eQTLs) active in beta cells. This first molecular blueprint of the human beta cell offers biological insight into its differentiated function including expression of key genes associated with both major types of diabetes.
- Received October 12, 2012.
- Accepted May 2, 2013.
- © 2013, Published by Cold Spring Harbor Laboratory Press
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