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首页> 外文期刊>Breast Cancer Research >Proteomic analysis of breast tumors confirms the mRNA intrinsic molecular subtypes using different classifiers: a large-scale analysis of fresh frozen tissue samples
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Proteomic analysis of breast tumors confirms the mRNA intrinsic molecular subtypes using different classifiers: a large-scale analysis of fresh frozen tissue samples

机译:乳腺肿瘤的蛋白质组学分析证实了使用不同分类器的mRNA内在分子亚型:新鲜冷冻组织样品的大规模分析

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Breast cancer is a complex and heterogeneous disease that is usually characterized by histological parameters such as tumor size, cellular arrangements/rearrangments, necrosis, nuclear grade and the mitotic index, leading to a set of around twenty subtypes. Together with clinical markers such as hormone receptor status, this classification has considerable prognostic value but there is a large variation in patient response to therapy. Gene expression profiling has provided molecular profiles characteristic of distinct subtypes of breast cancer that reflect the divergent cellular origins and degree of progression. Here we present a large-scale proteomic and transcriptomic profiling study of 477 sporadic and hereditary breast cancer tumors with matching mRNA expression analysis. Unsupervised hierarchal clustering was performed and selected proteins from large-scale tandem mass spectrometry (MS/MS) analysis were transferred into a highly multiplexed targeted selected reaction monitoring assay to classify tumors using a hierarchal cluster and support vector machine with leave one out cross-validation. The subgroups formed upon unsupervised clustering agree very well with groups found at transcriptional level; however, the classifiers (genes or their respective protein products) differ almost entirely between the two datasets. In-depth analysis shows clear differences in pathways unique to each type, which may lie behind their different clinical outcomes. Targeted mass spectrometry analysis and supervised clustering correlate very well with subgroups determined by RNA classification and show convincing agreement with clinical parameters. This work demonstrates the merits of protein expression profiling for breast cancer stratification. These findings have important implications for the use of genomics and expression analysis for the prediction of protein expression, such as receptor status and drug target expression. The highly multiplexed MS assay is easily implemented in standard clinical chemistry practice, allowing rapid and cheap characterization of tumor tissue suitable for directing the choice of treatment.
机译:乳腺癌是一种复杂和异质的疾病,其通常是通过组织学参数,例如肿瘤大小,细胞排列/重排,坏死,核等级和有丝分裂指数,导致大约20个亚型。与激素受体状态等临床标记一起,这种分类具有相当大的预后价值,但患者对治疗的反应存在大的变化。基因表达分析已经提供了分子谱的特征,其乳腺癌的不同亚型,反映了发散的细胞起源和进展程度。在这里,我们提出了具有匹配mRNA表达分析的477次孢子和遗传性乳腺癌肿瘤的大规模蛋白质组学和转录组分析研究。进行未经监督的层次组分,并将来自大规模串联质谱(MS / MS)分析的选定蛋白质转移到高度复用的目标选择的反应监测测定中以使用等级簇进行分类肿瘤,并支持向量机带有留出一个交叉验证。在未经监督的聚类上形成的亚组非常适合于在转录水平上发现的基团;然而,分类器(基因或其各自的蛋白质产品)几乎完全不同于两个数据集之间。深入分析表明,每种类型的途径都显示出明显的差异,这可能位于其不同的临床结果后面。靶向质谱分析和监督聚合物与RNA分类确定的亚组相关,并显示与临床参数的令人信服的协议。这项工作证明了乳腺癌分层蛋白表达分析的优点。这些发现对使用基因组学和表达分析来预测蛋白质表达,例如受体状态和药物靶表达。高度复用的MS测定在标准临床化学实践中容易实施,允许适合指导治疗选择的肿瘤组织的快速和廉价表征。

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