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首页> 外文期刊>Analytical and bioanalytical chemistry >Multivariate feature selection and hierarchical classification for infrared spectroscopy: serum-based detection of bovine spongiform encephalopathy
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Multivariate feature selection and hierarchical classification for infrared spectroscopy: serum-based detection of bovine spongiform encephalopathy

机译:红外光谱的多元特征选择和分级分类:牛海绵状脑病的基于血清的检测

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A hierarchical scheme has been developed for detection of bovine spongiform encephalopathy (BSE) in serum on the basis of its infrared spectral signature. In the first stage, binary subsets between samples originating from diseased and non-diseased cattle are defined along known covariates within the data set. Random forests are then used to select spectral channels on each subset, on the basis of a multivariate measure of variable importance, the Gini importance. The selected features are then used to establish binary discriminations within each subset by means of ridge regression. In the second stage of the hierarchical procedure the predictions from all linear classifiers are used as input to another random forest that provides the final classification. When applied to an independent, blinded validation set of 160 further spectra (84 BSE-positives, 76 BSE-negatives), the hierarchical classifier achieves a sensitivity of 92% and a specificity of 95%. Compared with results from an earlier study based on the same data, the hierarchical scheme performs better than linear discriminant analysis with features selected by genetic optimization and robust linear discriminant analysis, and performs as well as a neural network and a support vector machine.
机译:基于其红外光谱特征,已经开发了用于检测血清中的牛海绵状脑病(BSE)的分级方案。在第一阶段,沿数据集内的已知协变量定义源自患病和未患病牛的样本之间的二进制子集。然后,根据变量重要性(基尼重要性)的多元度量,使用随机森林在每个子集上选择光谱通道。然后,通过脊回归将所选特征用于在每个子集中建立二元判别。在分级过程的第二阶段,来自所有线性分类器的预测将用作提供最终分类的另一个随机森林的输入。当应用于包含160个其他光谱的独立盲目验证集(84个BSE阳性,76个BSE阴性)时,分层分类器可实现92%的灵敏度和95%的特异性。与基于相同数据的早期研究结果相比,该分层方案的性能优于线性判别分析,并具有通过遗传优化和鲁棒线性判别分析选择的特征,并且具有神经网络和支持向量机的性能。

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