Characterization of Vesicles Secreted from Insulinoma NIT-1 Cells

胰岛素瘤 纳特 小泡 化学 生物化学 细胞生物学 分子生物学 计算生物学 生物 计算机科学 胰腺 计算机网络
作者
Hyo Sun Lee,Jaeho Jeong,Kong‐Joo Lee
出处
期刊:Journal of Proteome Research [American Chemical Society]
卷期号:8 (6): 2851-2862 被引量:56
标识
DOI:10.1021/pr900009y
摘要

Insulinoma NIT-1, an insulin-secreting mouse cell line, secretes vesicles in response to glucose or calcium. These vesicles, like exosomes, are relatively homogeneous (30−100 nm). We analyzed their protein profiles employing one-dimensional SDS gel electrophoresis combined with nanoLC-ESI-q-TOF tandem mass spectrometry, and searched for post-translational modifications (PTMs) using MODi algorithm. We identified 270 proteins which matched at least two peptides reproducibly in duplicate runs. These proteins included metabolic proteins, endocytosis/exocytosis related proteins, chaperones, cytoskeletal proteins, membrane transporters/ion channels, signaling molecules, and nucleic acid binding proteins. Over 200 of these are newly identified proteins for the first time in secreted vesicles, and included RNA- and translation-related proteins, ubiquitin- and protein-degradation related proteins and post-translationally modified proteins. The rest of the proteins identified in this study were similar to those reported by others to be present in exosomes of various origins. The present study demonstrates that vesicles secreted from insulinoma NIT-1 cells have some properties, common to exosomes from lymphocytes and cancer cells, and some differing from those of other types of exosomes. We believe that the modified and newly identified proteins we identified in secreted vesicles from insulinoma NIT-1 cells have the potential to provide insights into mechanisms of biogenesis and function of secreted vesicles and may help explain the impairment of insulin secretion in islets from type-2 diabetes.

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