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Classifying six glioma subtypes from combined gene expression and CNVs data based on compressive sensing approach

机译:基于压缩感测方法对六种胶质瘤亚型进行分类,CNVS数据分类

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It is realized that a combined analysis of different types of genomic measurements tends to give more reliable classification results. However, how to efficiently combine data with different resolutions is challenging. We propose a novel compressed sensing based approach for the combined analysis of gene expression and copy number variants data for the purpose of subtyping six types of Gliomas. Experiment results show that the proposed combined approach can substantially improve the classification accuracy compared to that of using either of individual data type. The proposed approach can be applicable to many other types of genomic data.
机译:它意识到,不同类型的基因组测量的组合分析往往会提供更可靠的分类结果。但是,如何有效地将具有不同分辨率的数据结合起来是具有挑战性的。我们提出了一种基于新的压缩感测的基于基于压缩的感测方法,用于组合分析基因表达和拷贝数变体数据,以占六种类型的胶质瘤。实验结果表明,与使用单独数据类型中的任何一种相比,该组合方法可以大大提高分类准确性。所提出的方法可以适用于许多其他类型的基因组数据。

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