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首页> 外文期刊>Algorithms for Molecular Biology >ANMM4CBR: a case-based reasoning method for gene expression data classification
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ANMM4CBR: a case-based reasoning method for gene expression data classification

机译:ANMM4CBR:基因表达数据分类的基于案例的推理方法

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Background Accurate classification of microarray data is critical for successful clinical diagnosis and treatment. The "curse of dimensionality" problem and noise in the data, however, undermines the performance of many algorithms. Method In order to obtain a robust classifier, a novel Additive Nonparametric Margin Maximum for Case-Based Reasoning (ANMM4CBR) method is proposed in this article. ANMM4CBR employs a case-based reasoning (CBR) method for classification. CBR is a suitable paradigm for microarray analysis, where the rules that define the domain knowledge are difficult to obtain because usually only a small number of training samples are available. Moreover, in order to select the most informative genes, we propose to perform feature selection via additively optimizing a nonparametric margin maximum criterion, which is defined based on gene pre-selection and sample clustering. Our feature selection method is very robust to noise in the data. Results The effectiveness of our method is demonstrated on both simulated and real data sets. We show that the ANMM4CBR method performs better than some state-of-the-art methods such as support vector machine (SVM) and k nearest neighbor (kNN), especially when the data contains a high level of noise. Availability The source code is attached as an additional file of this paper.
机译:背景技术对微阵列数据的准确分类对于成功的临床诊断和治疗至关重要。但是,“维数诅咒”问题和数据中的噪声破坏了许多算法的性能。方法为了获得鲁棒的分类器,本文提出了一种新的基于案例推理的加法非参数裕量最大值(ANMM4CBR)方法。 ANMM4CBR采用基于案例的推理(CBR)方法进行分类。 CBR是微阵列分析的合适范例,其中通常很难获得训练样本,因此很难获得定义领域知识的规则。此外,为了选择信息最丰富的基因,我们建议通过累加优化非参数裕度最大标准来执行特征选择,该标准基于基因预选择和样本聚类定义。我们的特征选择方法对于数据中的噪声非常鲁棒。结果我们的方法在模拟和真实数据集上均证明了其有效性。我们表明,ANMM4CBR方法的性能优于某些最新方法,例如支持向量机(SVM)和k最近邻(kNN),尤其是在数据包含高水平噪声的情况下。可用性该源代码作为本文的附加文件随附。

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