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首页> 外文期刊>Computational Biology and Bioinformatics, IEEE/ACM Transactions on >Metasample-Based Sparse Representation for Tumor Classification
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Metasample-Based Sparse Representation for Tumor Classification

机译:基于元样本的稀疏表示法用于肿瘤分类

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摘要

A reliable and accurate identification of the type of tumors is crucial to the proper treatment of cancers. In recent years, it has been shown that sparse representation (SR) by l_1-norm minimization is robust to noise, outliers and even incomplete measurements, and SR has been successfully used for classification. This paper presents a new SR-based method for tumor classification using gene expression data. A set of metasamples are extracted from the training samples, and then an input testing sample is represented as the linear combination of these metasamples by l_1-regularized least square method. Classification is achieved by using a discriminating function defined on the representation coefficients. Since l_1-norm minimization leads to a sparse solution, the proposed method is called metasample-based SR classification (MSRC). Extensive experiments on publicly available gene expression data sets show that MSRC is efficient for tumor classification, achieving higher accuracy than many existing representative schemes.
机译:可靠,准确地识别肿瘤类型对于正确治疗癌症至关重要。近年来,已经显示出通过l_1范数最小化的稀疏表示(SR)对噪声,离群值甚至不完整的测量具有鲁棒性,并且SR已成功用于分类。本文提出了一种新的基于SR的使用基因表达数据进行肿瘤分类的方法。从训练样本中提取一组元样本,然后通过l_1-正则化最小二乘法将输入的测试样本表示为这些元样本的线性组合。通过使用在表示系数上定义的区分函数来实现分类。由于l_1范数最小化导致稀疏解,因此所提出的方法称为基于元样本的SR分类(MSRC)。对公开可用的基因表达数据集进行的大量实验表明,MSRC对肿瘤分类有效,比许多现有的代表性方案具有更高的准确性。

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