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New modes of data partitioning based on PARS peak alignment for improved multivariate biomarker/biopattern detection in 1H-NMR spectroscopic metabolic profiling of urine

机译:基于PARS峰比对的新数据分区模式用于改进1H-NMR光谱代谢尿液分析中的多元生物标志物/生物模式检测

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摘要

This paper addresses the possibility of mathematically partition and process urine 1H-NMR spectra to enhance the efficiency of the subsequent multivariate data analysis in the context of metabolic profiling of a toxicity study. We show that by processing the NMR data with the peak alignment using reduced set mapping (PARS) algorithm and the use of sparse representation of the data results in the information contained in the original NMR data being preserved with retained resolution but free of the problem of peak shifts. We can now describe a method for differential expression analysis of NMR spectra by using prior knowledge, i.e., the onset of dosing, a partitioning not possible to achieve using raw or bucketed data. In addition we also outline a scheme for soft removal of “biological noise” from the aligned data: exhaustive bio-noise subtraction (EBS). The result is a straightforward protocol for detection of peaks that appear as a consequence of the drug response. In other words, it is possible to elucidate peak origin, either from endogenous substances or from the administered drug/biomarkers. The partition of data originating from the normally regulating metabolome can, furthermore, be analyzed free of the superimposed biological noise. The proposed protocol results in enhanced interpretability of the processed data, i.e., a more refined metabolic trace, simplification of detection of consistent biomarkers, and a simplified search for metabolic end products of the administered drug.
机译:本文探讨了通过数学方法对尿液 1 H-NMR光谱进行分区和处理的可能性,以提高在毒性研究的代谢谱分析中进行后续多变量数据分析的效率。我们表明,通过使用简化集映射(PARS)算法以峰对齐方式处理NMR数据并使用稀疏表示形式的数据会导致原始NMR数据中包含的信息以保留的分辨率得以保留,但没有问题高峰变动。现在,我们可以通过使用先验知识(即加药开始,使用原始数据或存储数据无法实现的分区)来描述NMR谱差异表达分析的方法。此外,我们还概述了一种从对齐数据中软去除“生物噪声”的方案:穷举生物噪声减法(EBS)。结果是用于检测由于药物反应而出现的峰的直接方案。换句话说,有可能阐明内源性物质或所施用的药物/生物标记物的峰起源。此外,可以从正常调节的代谢组中分离数据,而不会产生叠加的生物噪声。所提出的方案导致处理数据的可解释性增强,即,更精确的代谢痕迹,对一致的生物标志物的检测的简化以及对所施用药物的代谢终产物的简化搜索。

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