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Classification of High-Resolution NMR Spectra Based on Complex Wavelet Domain Feature Selection and Kernel-Induced Random Forest

机译:基于复杂小波域特征选择和核诱导的随机林的高分辨率NMR光谱分类

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High-resolution nuclear magnetic resonance (NMR) spectra contain important biomarkers that have potentials for early diagnosis of disease and subsequent monitoring of its progression. Traditional features extraction and analysis methods have been carried out in the original frequency spectrum domain. In this study, we conduct feature selection based on a complex wavelet transform by making use of its energy shift-insensitive property in a multi-resolution signal decomposition. A false discovery rate based multiple testing procedure is employed to identify important metabolite features. Furthermore, a novel kernel-induced random forest algorithm is used for the classification of NMR spectra based on the selected features. Our experiments with real NMR spectra showed that the proposed method leads to significant reduction in misclassification rate.
机译:高分辨率核磁共振(NMR)光谱含有重要的生物标志物,具有早期诊断疾病的潜力和随后监测其进展。传统的特征提取和分析方法已经在原始频谱结构域中进​​行。在本研究中,我们通过在多分辨率信号分解中利用其能量移位不敏感性来实现基于复杂小波变换的特征选择。基于虚假的发现率的多个测试过程用于识别重要的代谢物特征。此外,基于所选择的特征,使用新的内核诱导的随机林算法用于基于所选特征的NMR光谱的分类。我们具有真实NMR光谱的实验表明,所提出的方法导致错误分类率显着降低。

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