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A comparative study of feature selection and multiclass classification methods for tissue classification based on gene expression

机译:基于基因表达的组织分类的特征选择和多分类方法比较研究

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This paper studies the problem of building multiclass classifiers for tissue classification based on gene expression. The recent development of microarray technologies has enabled biologists to quantify gene expression of tens of thousands of genes in a single experiment. Biologists have begun collecting gene expression for a large number of samples. One of the urgent issues in the use of microarray data is to develop methods for characterizing samples based on their gene expression. The most basic step in the research direction is binary sample classification, which has been studied extensively over the past few years. This paper investigates the next step-multiclass classification of samples based on gene expression. The characteristics of expression data (e.g. large number of genes with small sample size) makes the classification problem more challenging.
机译:本文研究了基于基因表达建立用于组织分类的多分类器的问题。微阵列技术的最新发展使生物学家能够在单个实验中量化数万个基因的基因表达。生物学家已开始收集大量样品的基因表达。使用微阵列数据的迫切问题之一是开发基于样品基因表达表征样品的方法。研究方向上最基本的步骤是二元样本分类,这在过去几年中已经进行了广泛的研究。本文研究了基于基因表达的样品的下一步多类分类。表达数据的特征(例如,大量的基因且样本量较小)使分类问题更具挑战性。

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