...
首页> 外文期刊>Biotechnology for Biofuels >Plant cell wall profiling by fast maximum likelihood reconstruction (FMLR) and region-of-interest (ROI) segmentation of solution-state 2D 1H–13C NMR spectra
【24h】

Plant cell wall profiling by fast maximum likelihood reconstruction (FMLR) and region-of-interest (ROI) segmentation of solution-state 2D 1H–13C NMR spectra

机译:通过溶液状态2D 1 H– 13 C NMR光谱的快速最大似然重建(FMLR)和感兴趣区域(ROI)分割对植物细胞壁进行分析

获取原文
           

摘要

Background Interest in the detailed lignin and polysaccharide composition of plant cell walls has surged within the past decade partly as a result of biotechnology research aimed at converting biomass to biofuels. High-resolution, solution-state 2D 1H–13C HSQC NMR spectroscopy has proven to be an effective tool for rapid and reproducible fingerprinting of the numerous polysaccharides and lignin components in unfractionated plant cell wall materials, and is therefore a powerful tool for cell wall profiling based on our ability to simultaneously identify and comparatively quantify numerous components within spectra generated in a relatively short time. However, assigning peaks in new spectra, integrating them to provide relative component distributions, and producing color-assigned spectra, are all current bottlenecks to the routine use of such NMR profiling methods. Results We have assembled a high-throughput software platform for plant cell wall profiling that uses spectral deconvolution by Fast Maximum Likelihood Reconstruction (FMLR) to construct a mathematical model of the signals present in a set of related NMR spectra. Combined with a simple region of interest (ROI) table that maps spectral regions to NMR chemical shift assignments of chemical entities, the reconstructions can provide rapid and reproducible fingerprinting of numerous polysaccharide and lignin components in unfractionated cell wall material, including derivation of lignin monomer unit (S:G:H) ratios or the so-called SGH profile. Evidence is presented that ROI-based amplitudes derived from FMLR provide a robust feature set for subsequent multivariate analysis. The utility of this approach is demonstrated on a large transgenic study of Arabidopsis requiring concerted analysis of 91 ROIs (including both assigned and unassigned regions) in the lignin and polysaccharide regions of almost 100 related 2D 1H–13C HSQC spectra. Conclusions We show that when a suitable number of replicates are obtained per sample group, the correlated patterns of enriched and depleted cell wall components can be reliably and objectively detected even prior to multivariate analysis. The analysis methodology has been implemented in a publicly-available, cross-platform (Windows/Mac/Linux), web-enabled software application that enables researchers to view and publish detailed annotated spectra in addition to summary reports in simple spreadsheet data formats. The analysis methodology is not limited to studies of plant cell walls but is amenable to any NMR study where ROI segmentation techniques generate meaningful results. Please see Research Article: http://www.biotechnologyforbiofuels.com/content/6/1/46/ webcite.
机译:背景技术在过去十年中,对植物细胞壁的详细木质素和多糖组成的关注激增,部分原因是旨在将生物质转化为生物燃料的生物技术研究的结果。高分辨率,溶液状态的2D 1H–13C HSQC NMR光谱已被证明是快速,可重现的指纹图谱,可快速重现未分离的植物细胞壁材料中的多种多糖和木质素成分,因此是细胞壁谱分析的有力工具基于我们能够同时识别和比较量化在相对较短的时间内生成的光谱中众多成分的能力。但是,在新光谱中分配峰,对其进行积分以提供相对的组分分布并生成颜色分配的光谱,这是此类NMR轮廓分析方法常规使用的当前瓶颈。结果我们组装了一个用于植物细胞壁谱分析的高通量软件平台,该平台使用通过快速最大似然重建(FMLR)进行光谱反卷积来构建一组相关NMR光谱中存在的信号的数学模型。结合一个简单的感兴趣区域(ROI)表,该表将光谱区域映射到化学实体的NMR化学位移分配,该重建可以提供快速且可重现的指纹,包括普通木质素单体单元的衍生,包括未分离的细胞壁材料中多种多糖和木质素成分。 (S:G:H)比率或所谓的SGH曲线。证据表明,从FMLR导出的基于ROI的幅度为后续的多变量分析提供了强大的功能集。该方法的实用性在拟南芥的一项大型转基因研究中得到了证明,该研究需要对近100个相关2D 1H-13C HSQC光谱的木质素和多糖区域中的91个ROI(包括指定和未指定区域)进行一致分析。结论我们表明,当每个样本组获得适当数量的重复样本时,即使在进行多变量分析之前,也可以可靠,客观地检测到富集和耗尽细胞壁成分的相关模式。该分析方法已在可公开访问的跨平台(Windows / Mac / Linux),基于Web的软件应用程序中实施,该应用程序使研究人员不仅可以查看和发布详细的带注释的光谱,而且还可以采用简单的电子表格数据格式汇总报告。该分析方法不仅限于植物细胞壁的研究,而且适用于ROI分割技术产生有意义结果的任何NMR研究。请参阅研究文章:http://www.biotechnologyforbiofuels.com/content/6/1/46/ webcite。

著录项

相似文献

  • 外文文献
  • 中文文献
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