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Multidimensional Support Vector Machines for Visualization of Gene Expression Data

机译:多维支持向量机,用于基因表达数据的可视化

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摘要

DNA microarray technology has helped us to understand the biological system because of its ability to monitor the expression levels of thousands of genes simultaneously. Since DNA microarray experiments provide us with huge amount of gene expression data, they should be analyzed with statistical methods to extract the meanings of experimental results. For visualization and class prediction of gene expression data, we have developed a new SVM-based method called multidimensional SVMs, that generate multiple orthogonal axes. This method projects high dimensional data into lower dimensional space to exhibit properties of the data clearly and to visualize the distribution of the data roughly. Furthermore, the multiple axes can be used for class prediction. The basic properties of conventional SVMs are retained in our method: solutions of mathematical programming are sparse, the optimal solutions can always be found due to its convexity, and nonlinear classification is implemented implicitly through the use of kernel functions. The application of our method to the experimentally obtained gene expression datasets for patients' samples indicates that our algorithm is efficient and useful for visualization and class prediction.
机译:DNA微阵列技术能够同时监视数千个基因的表达水平,因此帮助我们了解了生物系统。由于DNA微阵列实验为我们提供了大量的基因表达数据,因此应使用统计方法对其进行分析以提取实验结果的含义。为了对基因表达数据进行可视化和类预测,我们开发了一种新的基于SVM的方法,称为多维SVM,可生成多个正交轴。此方法将高维数据投影到低维空间中,以清楚显示数据的属性并大致可视化数据的分布。此外,多个轴可以用于类别预测。我们的方法保留了常规SVM的基本属性:数学编程的解决方案稀疏,由于其凸性,总能找到最佳解决方案,并且通过使用核函数隐式地实现了非线性分类。我们的方法在通过实验获得的患者样本基因表达数据集上的应用表明,我们的算法对于可视化和类别预测是有效且有用的。

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