...
首页> 外文期刊>Analytical chemistry >Cluster Analysis Statistical Spectroscopy Using Nuclear Magnetic Resonance Generated Metabolic Data Sets from Perturbed Biological Systems
【24h】

Cluster Analysis Statistical Spectroscopy Using Nuclear Magnetic Resonance Generated Metabolic Data Sets from Perturbed Biological Systems

机译:使用扰动生物系统生成的核磁共振代谢数据集进行聚类分析统计光谱

获取原文
获取原文并翻译 | 示例
           

摘要

We present a new approach for analysis, information recovery, and display of biological ~(1)H nuclear magnetic resonance (NMR) spectral data, cluster analysis statistical spectroscopy (CLASSY), which profiles qualitative and quantitative changes in biofluid metabolic composition by utilizing a novel local-global correlation clustering scheme to identify structurally related spectral peaks and arrange metabolites by similarity of temporal dynamic variation. Underlying spectral data sets are presented in a novel graphical format to represent high-dimensionality biochemical information conveying both statistical metabolite relationships and their responses to experimental perturbation simultaneously in a high-throughput and intuitive manner. The method is exemplified using multiple 600 MHz ~(1)H NMR spectra of rat (n velence 40) urine samples collected over 160 h following the development of experimental pancreatitis induced by L-arginine (ARG) and a wider range of model toxins including acetaminophen, galactosamine, and 2-bromoethanamine. The CLASSY approach deconvolutes complex biofluid mixture spectra into quantitative fold-change metabolic trajectories and clusters metabolites by commonalities of coexpression patterns. We demonstrate that the developing pathological processes cause coordinated changes in the levels of many compounds which share similar pathway connectivities. Variability in individual responses to toxin exposure is also readily detected and visualized allowing the assessment of interanimal variability. As an untargeted, unsupervised approach, CLASSY provides significant advantages in biological information recovery in terms of increased throughput, interpretability, and robustness and has wide potential metabonomic/metabolomic applications in clinical, toxicological, and nutritional studies of biofluids as well as in studies of cellular biochemistry, microbial fermentation monitoring, and functional genomics.
机译:我们提出了一种新的分析,信息恢复和生物〜(1)H核磁共振(NMR)光谱数据显示,聚类分析统计光谱(CLASSY)的新方法,该方法通过利用新颖的局部-全局相关性聚类方案,通过时间动态变化的相似性识别结构相关的光谱峰并安排代谢物。基础光谱数据集以新颖的图形格式呈现,以代表高维生化信息,同时以高通量和直观的方式传达统计代谢物关系及其对实验扰动的响应。该方法以L-精氨酸(ARG)诱发的实验性胰腺炎和更广泛的模型毒素发展为实验性胰腺炎160多小时后收集的大鼠(nvelence 40)尿液样品的多个600 MHz〜(1)H NMR光谱为例对乙酰氨基酚,半乳糖胺和2-溴乙胺。 CLASSY方法通过共表达模式的共同性,将复杂的生物流体混合物光谱解卷积为定量的倍数变化代谢轨迹,并将代谢物聚类。我们证明,发展中的病理过程会导致许多具有相似途径连接性的化合物的水平发生协调性变化。毒素暴露的个体反应的变异性也很容易检测和可视化,从而可以评估动物间的变异性。作为一种无针对性,无监督的方法,CLASSY在增加吞吐量,可解释性和鲁棒性方面在生物学信息恢复方面具有显着优势,并且在生物流体的临床,毒理学和营养学研究以及细胞研究中具有广泛的代谢组学/代谢组学应用潜力生物化学,微生物发酵监测和功能基因组学。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号