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Regulatory networks define phenotypic classes of human stem cell lines

机译:监管网络定义了人类干细胞系的表型类别

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摘要

Stem cells are defined as self-renewing cell populations that can differentiate into multiple distinct cell types. However, hundreds of different human cell lines from embryonic, fetal, and adult sources have been called stem cells, even though they range from pluripotent cells, typified by embryonic stem cells, which are capable of virtually unlimited proliferation and differentiation, to adult stem cell lines, which can generate a far more limited repertory of differentiated cell types. The rapid increase in reports of new sources of stem cells and their anticipated value to regenerative medicine, have highlighted the need for a general, reproducible method for classification of these cells. We report here the creation and analysis of a database of global gene expression profiles (“Stem Cell Matrix”) that enables the classification of cultured human stem cells in the context of a wide variety of pluripotent, multipotent, and differentiated cell types. Using an unsupervised clustering method, to categorize a collection of ~150 cell samples, we discovered that pluripotent stem cell lines group together, while other cell types, including brain-derived neural stem cell lines, are very diverse. Using further bioinformatic analysis we uncovered a protein-protein network (“PluriNet”) that is shared by the pluripotent cells (embryonic stem cells, embryonal carcinomas, and induced pluripotent cells). Analysis of published data showed that the PluriNet appears to be a common characteristic of pluripotent cells, including mouse ES and iPS cells and human oocytes. Our results offer a new strategy for classifying stem cells and support the idea that pluripotence and self-renewal are under tight control by specific molecular networks.
机译:干细胞被定义为可以自我更新的细胞群,可以分化为多种不同的细胞类型。然而,来自胚胎,胎儿和成年来源的数百种不同的人类细胞系被称为干细胞,尽管它们的范围从以胚胎干细胞为代表的多能细胞(实际上能够无限增殖和分化)到成体干细胞。系,可以产生分化细胞类型更多的限制。新的干细胞来源及其对再生医学的期望值的报告迅速增加, 突显了对通用,可重现方法的需求这些细胞的分类 。我们在这里报告了全球基因表达谱数据库(“干细胞矩阵”)的创建和分析,该数据库能够在多种多能,多能和分化细胞类型的背景下对培养的人类干细胞进行分类。使用无监督聚类方法 对约150个细胞样本进行分类,我们发现多能干细胞系聚在一起,而其他细胞包括脑源性神经干细胞系在内的多种类型非常多样化。使用进一步的生物信息学分析 ,我们发现了多能细胞(胚胎干细胞,胚胎癌和诱导性多能细胞)共享的蛋白质-蛋白质网络(“ PluriNet”)。对已发表数据的分析表明,PluriNet似乎是多能细胞的共同特征,包括小鼠ES和iPS细胞以及人卵母细胞。我们的结果为干细胞分类提供了新策略,并支持多能性和自我更新受到特定分子网络严格控制的观点。

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