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首页> 外文期刊>Proteomics >Toward a comprehensive quantitative proteome database: protein expression map of lymphoid neoplasms by 2-D DIGE and MS
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Toward a comprehensive quantitative proteome database: protein expression map of lymphoid neoplasms by 2-D DIGE and MS

机译:建立全面的定量蛋白质组数据库:通过二维DIGE和MS分析淋巴瘤的蛋白质表达图

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摘要

Using 2-D DIGE, we constructed a quantitative 2-D database including 309 proteins corresponding to 389 protein spots across 42 lymphoid neoplasm cell lines. The proteins separated by 2-D PAGE were identified by MS and assigned to the expression data obtained by 2-D DIGE. The cell lines were categorized into four groups: those from Hodgkin's lymphoma (HL) (4 cell lines), B cell malignancies (19 cell lines), T cell malignancies (16 cell lines), and natural killer (NK) cell malignancies (3 cell lines). We characterized the proteins in the database by classifying them according to their expression level. We found 28 proteins with more than a 2-fold difference between the cell line groups. We also noted the proteins that allowed multidimensional separation to be achieved (1) between HL cells. and other cells, (2) between the cells derived from B cells, T cells and NK cells, and (3) between HL cells and anaplastic large cell lymphoma cells. Decision tree classification identified five proteins that could be used to classify the 42 cell lines according to differentiation. These results suggest that the quantitative 2-D database using 2-D DIGE will be a useful resource for studying the mechanisms underlying the differentiation phenotypes of lymphoid neoplasms.
机译:使用2-D DIGE,我们构建了一个定量2-D数据库,其中包括309个蛋白,它们对应于42个淋巴瘤细胞系中的389个蛋白点。通过MS鉴定2-D PAGE分离的蛋白质,并将其分配给2-D DIGE获得的表达数据。这些细胞系分为四类:霍奇金淋巴瘤(HL)(4个细胞系),B细胞恶性肿瘤(19个细胞系),T细胞恶性肿瘤(16个细胞系)和自然杀伤(NK)细胞恶性肿瘤(3细胞系)。我们通过根据蛋白质的表达水平对其进行分类来表征数据库中的蛋白质。我们发现28种蛋白质在细胞系组之间的差异超过2倍。我们还注意到允许在HL细胞之间实现多维分离的蛋白质(1)。 (2)在B细胞,T细胞和NK细胞衍生的细胞之间,以及(3)在HL细胞和间变性大细胞淋巴瘤细胞之间。决策树分类确定了五种蛋白质,可用于根据分化对42个细胞系进行分类。这些结果表明,使用2-D DIGE进行定量的2-D数据库将成为研究淋巴瘤分化表型潜在机制的有用资源。

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