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结合化学计量学的自动非靶向代谢谱分析,用于提高代谢物鉴定质量以增强地理来源判别能力。

Automatic untargeted metabolic profiling analysis coupled with Chemometrics for improving metabolite identification quality to enhance geographical origin discrimination capability.

作者信息

Han Lu, Zhang Yue-Ming, Song Jing-Jing, Fan Mei-Juan, Yu Yong-Jie, Liu Ping-Ping, Zheng Qing-Xia, Chen Qian-Si, Bai Chang-Cai, Sun Tao, She Yuan-Bin

机构信息

College of Pharmacy, Ningxia Medical University, Yinchuan 750004, China.

Ningxia Institute of Cultural Relics and Archeology, Yinchuan 750001, China.

出版信息

J Chromatogr A. 2018 Mar 16;1541:12-20. doi: 10.1016/j.chroma.2018.02.017. Epub 2018 Feb 10.

Abstract

Untargeted metabolic profiling analysis is employed to screen metabolites for specific purposes, such as geographical origin discrimination. However, the data analysis remains a challenging task. In this work, a new automatic untargeted metabolic profiling analysis coupled with a chemometric strategy was developed to improve the metabolite identification results and to enhance the geographical origin discrimination capability. Automatic untargeted metabolic profiling analysis with chemometrics (AuMPAC) was used to screen the total ion chromatographic (TIC) peaks that showed significant differences among the various geographical regions. Then, a chemometric peak resolution strategy is employed for the screened TIC peaks. The retrieved components were further analyzed using ANOVA, and those that showed significant differences were used to build a geographical origin discrimination model by using two-way encoding partial least squares. To demonstrate its performance, a geographical origin discrimination of flaxseed samples from six geographical regions in China was conducted, and 18 TIC peaks were screened. A total of 19 significant different metabolites were obtained after the peak resolution. The accuracy of the geographical origin discrimination was up to 98%. A comparison of the AuMPAC, AMDIS, and XCMS indicated that AuMPACobtained the best geographical origin discrimination results. In conclusion, AuMPAC provided another method for data analysis.

摘要

非靶向代谢谱分析用于筛选特定目的的代谢物,如地理来源鉴别。然而,数据分析仍然是一项具有挑战性的任务。在这项工作中,开发了一种新的结合化学计量学策略的自动非靶向代谢谱分析方法,以改善代谢物鉴定结果并增强地理来源鉴别能力。采用化学计量学的自动非靶向代谢谱分析(AuMPAC)来筛选在不同地理区域间显示出显著差异的总离子色谱(TIC)峰。然后,对筛选出的TIC峰采用化学计量学峰解析策略。对检索到的成分进一步使用方差分析进行分析,将显示出显著差异的成分用于通过双向编码偏最小二乘法建立地理来源鉴别模型。为了证明其性能,对来自中国六个地理区域的亚麻籽样品进行了地理来源鉴别,筛选出18个TIC峰。峰解析后共获得19种显著不同的代谢物。地理来源鉴别的准确率高达98%。AuMPAC、AMDIS和XCMS的比较表明,AuMPAC获得了最佳的地理来源鉴别结果。总之,AuMPAC提供了另一种数据分析方法。

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