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A Proposed Statistical Protocol for the Analysis of Metabolic Toxicological Data Derived from NMR Spectroscopy

机译:提出了衍生自NMR光谱的代谢毒理学数据分析的统计方案

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Nuclear magnetic resonance (NMR) spectroscopy is a non-invasive method of acquiring a metabolic profile from biofluids. This metabolic information may provide keys to the early detection of exposure to a toxin. A typical NMR toxicology data set has low sample size and high dimensionality. Thus, traditional pattern recognition techniques are not always feasible. In this paper, we evaluate several common alternatives for isolating these biomarkers. The fold test, unpaired t-test, and paired t-test wereperformed on an NMR-derived toxicological data set and results were compared. The paired t-test method was preferred, due to its ability to attribute statistical significance, to take into consideration consistency of a single subject over a time course, and to mitigate the low sample, high dimensionality problem. We then grouped the resulting statistically salient potential biomarkers based on their significance patterns and compared results to several known metabolites affected by the tested toxin. Based on these results, we present a statistical protocol of sequential t-tests and clustering techniques for identifying putative biomarkers. We then present the results of this protocol applied to a specific real world toxicological data set.
机译:核磁共振(NMR)光谱是从生物流体获取代谢型材的非侵入性方法。这种代谢信息可以提供对暴露于毒素的早期检测的键。典型的NMR毒理学数据集具有低样品大小和高维度。因此,传统的模式识别技术并不总是可行的。在本文中,我们评估了几种常见的替代方案来隔离这些生物标志物。比较折叠试验,未配对的T检验和成对的T检验在NMR衍生的毒理学数据集上形成并进行了比较结果。由于其归因于统计显着性的能力,优选配对的T检验方法,以在时间过程中考虑单个受试者的一致性,并减轻低样本,高维度问题。然后,基于其显着性模式并将结果与​​由测试的毒素影响的若干已知的代谢物进行比较,基于其显着的统计学显着的潜在生物标志物。基于这些结果,我们提出了一种统计协议,用于识别推定生物标志物的顺序T检验和聚类技术。然后,我们将本协议的结果应用于特定的现实世界毒理数据集。

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