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首页> 外文期刊>Computers in Biology and Medicine >Nonlinear dimensionality reduction of gene expression data for visualization and clustering analysis of cancer tissue samples.
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Nonlinear dimensionality reduction of gene expression data for visualization and clustering analysis of cancer tissue samples.

机译:基因表达数据的非线性降维,用于癌组织样品的可视化和聚类分析。

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摘要

Gene expression data are the representation of nonlinear interactions among genes and environmental factors. Computing analysis of these data is expected to gain knowledge of gene functions and disease mechanisms. Clustering is a classical exploratory technique of discovering similar expression patterns and function modules. However, gene expression data are usually of high dimensions and relatively small samples, which results in the main difficulty for the application of clustering algorithms. Principal component analysis (PCA) is usually used to reduce the data dimensions for further clustering analysis. While PCA estimates the similarity between expression profiles based on the Euclidean distance, which cannot reveal the nonlinear connections between genes. This paper uses nonlinear dimensionality reduction (NDR) as a preprocessing strategy for feature selection and visualization, and then applies clustering algorithms to the reduced feature spaces. In order to estimate the effectiveness of NDR for capturing biologically relevant structures, the comparative analysis between NDR and PCA is exploited to five real cancer expression datasets. Results show that NDR can perform better than PCA in visualization and clustering analysis of complex gene expression data.
机译:基因表达数据是基因和环境因素之间非线性相互作用的表示。这些数据的计算分析有望获得基因功能和疾病机理的知识。聚类是发现相似表达模式和功能模块的经典探索技术。然而,基因表达数据通常具有高维数和相对较小的样本,这导致应用聚类算法的主要困难。主成分分析(PCA)通常用于减少数据尺寸,以进行进一步的聚类分析。虽然PCA根据欧几里得距离估计表达谱之间的相似性,但这不能揭示基因之间的非线性联系。本文将非线性降维(NDR)作为特征选择和可视化的预处理策略,然后将聚类算法应用于降维特征空间。为了评估NDR捕获生物学相关结构的有效性,将NDR和PCA之间的比较分析用于五个真实的癌症表达数据集。结果表明,在复杂基因表达数据的可视化和聚类分析中,NDR的性能优于PCA。

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