首页> 外文期刊>OMICS: A journal of integrative biology >Correlation between Gene Expression and Clinical Data through Linear and Nonlinear Principal Components Analyses: Muscular Dystrophies as Case Studies
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Correlation between Gene Expression and Clinical Data through Linear and Nonlinear Principal Components Analyses: Muscular Dystrophies as Case Studies

机译:基因表达与临床之间的相关性通过线性和非线性的主要数据成分分析:肌肉营养不良情况研究

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摘要

The large dimension of microarray data and the complex dependence structure among genes make data analysis extremely challenging. In the last decade several statistical techniques have been proposed to tackle genome- wide expression data; however, clinical and molecular data associated to pathologies have often been considered as separate dimensions of the same phenomenon, especially when clinical variables lie on a multidimensional space. A better comprehension of the relationships between clinical and molecular data can be obtained if both data types are combined and integrated. In this work we adopt a multidimensional correlation strategy together with linear and nonlinear principal component, to integrate genetic and clinical information obtained from two sets of dystrophic patients. With this approach we decompose different aspects of clinical manifestations and correlate these features with the correspondent patterns of differential gene expression.
机译:大尺寸和微阵列数据复杂的依赖结构基因中数据分析极具挑战性。十几个统计技术提出了解决基因组——广泛表达数据;然而,临床和分子数据相关联疾病往往被认为是单独的尺寸相同的现象,特别是当躺在一个临床变量多维空间。临床和分子之间的关系如果数据类型都可以获取数据结合和集成。多维关联策略在一起与线性和非线性主成分遗传和临床信息集成从两组营养不良的病人。通过这种方法我们分解不同的方面临床表现和关联特性与记者的模式差异基因的表达。

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