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Dimensionality reduction and main component extraction of mass spectrometry cancer data

机译:质谱癌症数据的降维和主成分提取

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Mass spectrometry data have high dimensionality. Dimensionality reduction is a very important step to greatly improve the performance of distinguishing cancer tissue from normal tissue. In this study multilevel wavelet analysis is performed on high dimensional mass spectrometry data. A set of orthogonal wavelet basis of approximation coefficients is extracted to reduce dimensionality of mass spectra and represent main components of mass spectrometry data. The best level of wavelet decomposition of mass spectrometry data is selected based on energy distribution of approximation coefficients. Compared to traditional principal component analysis (PCA) method, which dependents on training samples to build feature space, our proposed method is using wavelet basis to extract main components of mass spectrometry, keeping local properties of data, and computing efficiently. Experiments are conducted on three datasets. The competitive performance is achieved compared to other methods of feature extraction and feature selection.
机译:质谱数据具有高维。降维是极大提高区分癌症组织与正常组织的性能的非常重要的步骤。在这项研究中,对高维质谱数据执行多级小波分析。提取一组近似系数的正交小波基,以降低质谱的维数,并表示质谱数据的主要成分。基于近似系数的能量分布,选择质谱数据的小波分解的最佳水平。与依赖于训练样本来建立特征空间的传统主成分分析(PCA)方法相比,我们提出的方法是利用小波基提取质谱的主要成分,保持数据的局部属性并有效地进行计算。实验在三个数据集上进行。与其他特征提取和特征选择方法相比,可以实现竞争性能。

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