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A Novel Dimensionality Reduction Technique Based on Independent Component Analysis for Modeling Microarray Gene Expression Data

机译:基于型微阵列基因表达数据的独立分量分析的新型维度减少技术

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DNA microarray experiments generating thousands of gene expression measurements, are being used to gather information from tissue and cell samples regarding gene expression differences that will be useful in diagnosing disease. But one challenge of microarray studies is the fact that the number n of samples collected is relatively small compared to the number p of genes per sample which are usually in thousands. In statistical terms this very large number of predictors compared to a small number of samples or observations makes the classification problem difficult. This is known as the "curse of dimensionality problem". An efficient way to solve this problem is by using dimensionality reduction techniques. Principle Component Analysis (PCA) is a leading method for dimensionality reduction of gene expression data which is optimal in the sense of least square error. In this paper we propose a new dimensionality reduction technique for specific bioinformatics applications based on Independent component Analysis (ICA). Being able to exploit higher order statistics to identify a linear model result, this ICA based dimensionality reduction technique outperforms PCA from both statistical and biological significance aspects. We present experiments on NCI 60 dataset to show this result.
机译:产生数千个基因表达测量的DNA微阵列实验用于收集关于基因表达差异的组织和细胞样品的信息,这些差异可用于诊断疾病。但微阵列研究的一个挑战是,与每个样品的基因数相比,所收集的样品的数量N相对较小,这通常是成千上万的。在统计术语中,与少量样本或观察结果相比,这非常大量的预测因子使分类问题变得困难。这被称为“维度问题的诅咒”。解决这个问题的有效方法是使用维度减少技术。原理分析分析(PCA)是基因表达数据的维度降低的主要方法,其在最小方误差的意义上是最佳的。本文提出了基于独立分量分析(ICA)的特定生物信息学应用的新维度减少技术。能够利用高阶统计来识别线性模型结果,该ICA基于的维度减少技术优于PCA,从统计和生物学意义方面都有。我们在NCI 60 DataSet上显示实验以显示此结果。

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