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Collaborative representation-based classification of microarray gene expression data

机译:基于协作表示的微阵列基因表达数据分类

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摘要

Microarray technology is important to simultaneously express multiple genes over a number of time points. Multiple classifier models, such as sparse representation (SR)-based method, have been developed to classify microarray gene expression data. These methods allocate the gene data points to different clusters. In this paper, we propose a novel collaborative representation (CR)-based classification with regularized least square to classify gene data. First, the CR codes a testing sample as a sparse linear combination of all training samples and then classifies the testing sample by evaluating which class leads to the minimum representation error. This CR-based classification approach is remarkably less complex than traditional classification methods but leads to very competitive classification results. In addition, compressive sensing approach is adopted to project the high-dimensional gene expression dataset to a lower-dimensional space which nearly contains the whole information. This compression without loss is beneficial to reduce the computational load. Experiments to detect subtypes of diseases, such as leukemia and autism spectrum disorders, are performed by analyzing the gene expression. The results show that the proposed CR-based algorithm exhibits significantly higher stability and accuracy than the traditional classifiers, such as support vector machine algorithm.
机译:微阵列技术对于在多个时间点同时表达多个基因很重要。已经开发了多种分类器模型,例如基于稀疏表示(SR)的方法来对微阵列基因表达数据进行分类。这些方法将基因数据点分配给不同的簇。在本文中,我们提出了一种基于正则化最小二乘的新型基于协作表示(CR)的分类,以对基因数据进行分类。首先,CR将测试样本编码为所有训练样本的稀疏线性组合,然后通过评估哪个类别导致最小表示误差对测试样本进行分类。这种基于CR的分类方法比传统的分类方法复杂得多,但导致非常有竞争力的分类结果。另外,采用压缩感测方法将高维基因表达数据集投影到几乎包含整个信息的低维空间。这种无损失的压缩有益于减少计算量。通过分析基因表达进行检测白血病和自闭症谱系疾病等疾病亚型的实验。结果表明,与基于支持向量机算法的传统分类器相比,基于CR的算法具有更高的稳定性和准确性。

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