Mohler Rachel E, Dombek Kenneth M, Hoggard Jamin C, Pierce Karisa M, Young Elton T, Synovec Robert E
University of Washington, Department of Chemistry, Box 351700, Seattle, WA 98195, USA.
Analyst. 2007 Aug;132(8):756-67. doi: 10.1039/b700061h. Epub 2007 May 22.
The first extensive study of yeast metabolite GC x GC-TOFMS data from cells grown under fermenting, R, and respiring, DR, conditions is reported. In this study, recently developed chemometric software for use with three-dimensional instrumentation data was implemented, using a statistically-based Fisher ratio method. The Fisher ratio method is fully automated and will rapidly reduce the data to pinpoint two-dimensional chromatographic peaks differentiating sample types while utilizing all the mass channels. The effect of lowering the Fisher ratio threshold on peak identification was studied. At the lowest threshold (just above the noise level), 73 metabolite peaks were identified, nearly three-fold greater than the number of previously reported metabolite peaks identified (26). In addition to the 73 identified metabolites, 81 unknown metabolites were also located. A Parallel Factor Analysis graphical user interface (PARAFAC GUI) was applied to selected mass channels to obtain a concentration ratio, for each metabolite under the two growth conditions. Of the 73 known metabolites identified by the Fisher ratio method, 54 were statistically changing to the 95% confidence limit between the DR and R conditions according to the rigorous Student's t-test. PARAFAC determined the concentration ratio and provided a fully-deconvoluted (i.e. mathematically resolved) mass spectrum for each of the metabolites. The combination of the Fisher ratio method with the PARAFAC GUI provides high-throughput software for discovery-based metabolomics research, and is novel for GC x GC-TOFMS data due to the use of the entire data set in the analysis (640 MB x 70 runs, double precision floating point).
本文报道了对酵母代谢产物气相色谱-质谱联用(GC x GC-TOFMS)数据的首次广泛研究,这些数据来自于在发酵(R)和呼吸(DR)条件下生长的细胞。在本研究中,使用基于统计的费舍尔比率法,实施了最近开发的用于三维仪器数据的化学计量学软件。费舍尔比率法是完全自动化的,能够快速减少数据,以精确找出区分样品类型的二维色谱峰,同时利用所有质量通道。研究了降低费舍尔比率阈值对峰识别的影响。在最低阈值(略高于噪声水平)下,鉴定出73个代谢产物峰,几乎是先前报道的鉴定出的代谢产物峰数量(26个)的三倍。除了73个已鉴定的代谢产物外,还定位了81个未知代谢产物。应用平行因子分析图形用户界面(PARAFAC GUI)对选定的质量通道进行分析,以获得两种生长条件下每种代谢产物的浓度比。根据严格的学生t检验,在通过费舍尔比率法鉴定出的73种已知代谢产物中,有54种在DR和R条件之间的变化具有95%的置信度。PARAFAC确定了浓度比,并为每种代谢产物提供了完全解卷积(即数学解析)的质谱图。费舍尔比率法与PARAFAC GUI的结合为基于发现的代谢组学研究提供了高通量软件,并且由于在分析中使用了整个数据集(640 MB x 70次运行,双精度浮点),对于GC x GC-TOFMS数据来说是新颖的。