Iwadate Yasuo, Sakaida Tsukasa, Hiwasa Takaki, Nagai Yuichiro, Ishikura Hiroshi, Takiguchi Masaki, Yamaura Akira
Department of Neurological Surgery, Chiba University Graduate School of Medicine, Chiba, Japan.
Cancer Res. 2004 Apr 1;64(7):2496-501. doi: 10.1158/0008-5472.can-03-1254.
The biological features of gliomas, which are characterized by highly heterogeneous biological aggressiveness even in the same histological category, would be precisely described by global gene expression data at the protein level. We investigated whether proteome analysis based on two-dimensional gel electrophoresis and matrix-assisted laser desorption/ionization time-of-flight mass spectrometry can identify differences in protein expression between high- and low-grade glioma tissues. Proteome profiling patterns were compared in 85 tissue samples: 52 glioblastoma multiforme, 13 anaplastic astrocytomas, 10 atrocytomas, and 10 normal brain tissues. We could completely distinguish the normal brain tissues from glioma tissues by cluster analysis based on the proteome profiling patterns. Proteome-based clustering significantly correlated with the patient survival, and we could identify a biologically distinct subset of astrocytomas with aggressive nature. Discriminant analysis extracted a set of 37 proteins differentially expressed based on histological grading. Among them, many of the proteins that were increased in high-grade gliomas were categorized as signal transduction proteins, including small G-proteins. Immunohistochemical analysis confirmed the expression of identified proteins in glioma tissues. The present study shows that proteome analysis is useful to develop a novel system for the prediction of biological aggressiveness of gliomas. The proteins identified here could be novel biomarkers for survival prediction and rational targets for antiglioma therapy.
胶质瘤的生物学特征表现为即使在同一组织学类型中也具有高度异质性的生物学侵袭性,而蛋白质水平的全基因表达数据能够精确描述这些特征。我们研究了基于二维凝胶电泳和基质辅助激光解吸/电离飞行时间质谱的蛋白质组分析能否识别高级别和低级别胶质瘤组织之间的蛋白质表达差异。我们比较了85个组织样本的蛋白质组图谱:52例多形性胶质母细胞瘤、13例间变性星形细胞瘤、10例星形细胞瘤和10例正常脑组织。基于蛋白质组图谱的聚类分析能够将正常脑组织与胶质瘤组织完全区分开来。基于蛋白质组的聚类与患者生存率显著相关,并且我们能够识别出具有侵袭性的生物学上不同的星形细胞瘤亚组。判别分析提取出一组基于组织学分级差异表达的37种蛋白质。其中,许多在高级别胶质瘤中增加的蛋白质被归类为信号转导蛋白,包括小G蛋白。免疫组织化学分析证实了所鉴定蛋白质在胶质瘤组织中的表达。本研究表明,蛋白质组分析有助于开发一种预测胶质瘤生物学侵袭性的新系统。这里鉴定出的蛋白质可能是用于生存预测的新型生物标志物和抗胶质瘤治疗的合理靶点。