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PCA disjoint models for multiclass cancer analysis using gene expression data

机译:使用基因表达数据进行多类癌症分析的PCA分离模型

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Microarray expression profiling appears particularly promising for a deeper understanding of cancer biology and to identify molecular signatures supporting the histological classification schemes of neoplastic specimens. However, molecular diagnostics based on microarray data presents major challenges due to the overwhelming number of variables and the complex, multiclass nature of tumor samples. Thus, the development of marker selection methods, that allow the identification of those genes that are most likely to confer high classification accuracy of multiple tumor types, and of multiclass classification schemes is of paramount importance. A computational procedure for marker identification and for classification of multiclass gene expression data through the application of disjoint principal component models is described. The identified features represent a rational and dimensionally reduced base for under-standing the basic biology of diseases, defining targets for therapeutic intervention, and developing diagnostic tools for the identification and classification of multiple pathological states. The method has been tested on different microarray data sets obtained from various human tumor samples. The results demonstrate that this procedure allows the identification of specific phenotype markers and can classify previously unseen instances in the presence of multiple classes.
机译:微阵列表达谱分析对于更深入地了解癌症生物学和鉴定支持肿瘤标本的组织学分类方案的分子标志特别有希望。然而,由于变量的数量众多以及肿瘤样品的复杂,多类性质,基于微阵列数据的分子诊断提出了重大挑战。因此,标志物选择方法的发展是最重要的,其允许鉴定最可能赋予多种肿瘤类型和多分类方案高分类准确度的那些基因。描述了通过不相交主成分模型的应用进行标记鉴定和多类基因表达数据分类的计算程序。所识别的特征代表了对疾病的基本生物学的理解的合理且尺寸缩小的基础,它定义了治疗干预的目标,并开发了用于识别和分类多种病理状态的诊断工具。该方法已经在从各种人类肿瘤样品获得的不同微阵列数据集上进行了测试。结果表明,该程序可以识别特定的表型标记,并且可以在存在多个类别的情况下对先前未见的实例进行分类。

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