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The impact of the method of extracting metabolic signal from 1H-NMR data on the classification of samples: A case study of binning and BATMAN in lung cancer

机译:从1H-NMR数据中提取代谢信号的方法对样品分类的影响:以Binning和BATMAN为例的肺癌研究

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摘要

Nuclear magnetic resonance (NMR) spectroscopy is a principal analytical technique in metabolomics. Extracting metabolic information from NMR spectra is complex due to the fact that an immense amount of detail on the chemical composition of a biological sample is expressed through a single spectrum. The simplest approach to quantify the signal is through spectral binning which involves subdividing the spectra into regions along the chemical shift axis and integrating the peaks within each region. However, due to overlapping resonance signals, the integration values do not always correspond to the concentrations of specific metabolites. An alternate, more advanced statistical approach is spectral deconvolution. BATMAN (>Bayesian >Au>Tomated >Metabolite >Analyser for >NMR data) performs spectral deconvolution using prior information on the spectral signatures of metabolites. In this way, BATMAN estimates relative metabolic concentrations. In this study, both spectral binning and spectral deconvolution using BATMAN were applied to 400 MHz and 900 MHz NMR spectra of blood plasma samples from lung cancer patients and control subjects. The relative concentrations estimated by BATMAN were compared with the binning integration values in terms of their ability to discriminate between lung cancer patients and controls. For the 400 MHz data, the spectral binning approach provided greater discriminatory power. However, for the 900 MHz data, the relative metabolic concentrations obtained by using BATMAN provided greater predictive power. While spectral binning is computationally advantageous and less laborious, complementary models developed using BATMAN-estimated features can add complementary information regarding the biological interpretation of the data and therefore are clinically useful.
机译:核磁共振波谱学是代谢组学中的一种主要分析技术。从NMR光谱中提取代谢信息是很复杂的,这是由于以下事实:生物样品的化学成分的大量细节是通过单个光谱表示的。量化信号的最简单方法是通过光谱合并,该合并涉及将光谱细分为沿化学位移轴的区域,并对每个区域内的峰进行积分。但是,由于共振信号重叠,积分值并不总是对应于特定代谢物的浓度。另一种更高级的统计方法是频谱反卷积。 BATMAN(> B ayesian > A u > T 被删除的> M etabolite > A 分析器 > N MR数据)使用有关代谢物光谱特征的先验信息进行光谱去卷积。通过这种方式,BATMAN估计相对代谢浓度。在这项研究中,使用BATMAN进行光谱合并和光谱去卷积都应用于肺癌患者和对照组受试者血浆样品的400 MHz和900 MHz NMR光谱。将BATMAN估计的相对浓度与装箱积分值进行了比较,以区分肺癌患者和对照组。对于400 MHz数据,频谱合并方法提供了更大的区分能力。但是,对于900 MHz数据,使用BATMAN获得的相对代谢浓度提供了更大的预测能力。尽管光谱合并在计算上是有利的并且省力的,但是使用BATMAN估计特征开发的互补模型可以添加有关数据生物学解释的互补信息,因此在临床上很有用。

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