| Literature DB >> 30509617 |
Yong-Jie Yu1, Qing-Xia Zheng2, Yue-Ming Zhang1, Qian Zhang1, Yu-Ying Zhang1, Ping-Ping Liu2, Peng Lu2, Mei-Juan Fan2, Qian-Si Chen2, Chang-Cai Bai1, Hai-Yan Fu3, Yuanbin She4.
Abstract
Data analysis for ultra-performance liquid chromatography high-resolution mass spectrometry-based metabolomics is a challenging task. The present work provides an automatic data analysis workflow (AntDAS2) by developing three novel algorithms, as follows: (i) a density-based ion clustering algorithm is designed for extracted-ion chromatogram extraction from high-resolution mass spectrometry; (ii) a new maximal value-based peak detection method is proposed with the aid of automatic baseline correction and instrumental noise estimation; and (iii) the strategy that clusters high-resolution m/z peaks to simultaneously align multiple components by a modified dynamic programing is designed to efficiently correct time-shift problem across samples. Standard compounds and complex datasets are used to study the performance of AntDAS2. AntDAS2 is better than several state-of-the-art methods, namely, XCMS Online, Mzmine2, and MS-DIAL, to identify underlying components and improve pattern recognition capability. Meanwhile, AntDAS2 is more efficient than XCMS Online and Mzmine2. A MATLAB GUI of AntDAS2 is designed for convenient analysis and is available at the following webpage: http://software.tobaccodb.org/software/antdas2.Entities:
Keywords: Automatic data analysis; Chemometrics; MATLAB GUI; UPLC-HRMS; Untargeted metabolomics
Mesh:
Year: 2018 PMID: 30509617 DOI: 10.1016/j.chroma.2018.11.070
Source DB: PubMed Journal: J Chromatogr A ISSN: 0021-9673 Impact factor: 4.759