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基于质谱的非靶向代谢组学中不同数据采集模式下发现的显著特征评估。

Evaluation of significant features discovered from different data acquisition modes in mass spectrometry-based untargeted metabolomics.

作者信息

Guo Jian, Huan Tao

机构信息

Department of Chemistry, Faculty of Science, University of British Columbia, Vancouver Campus, 2036, Main Mall, Vancouver, V6T 1Z1, BC, Canada.

Department of Chemistry, Faculty of Science, University of British Columbia, Vancouver Campus, 2036, Main Mall, Vancouver, V6T 1Z1, BC, Canada. Electronic address: https://huan.chem.ubc.ca/.

出版信息

Anal Chim Acta. 2020 Nov 15;1137:37-46. doi: 10.1016/j.aca.2020.08.065. Epub 2020 Sep 3.

Abstract

Despite the growing popularity of liquid chromatography-mass spectrometry (LC-MS)-based metabolomics, no study has yet to systematically compare the performance of different data acquisition modes in the discovery of significantly altered metabolic features, which is an important task of untargeted metabolomics for identifying clinical biomarkers and elucidating disease mechanism in comparative samples. In this work, we performed a comprehensive comparison of three most commonly used data acquisition modes, including full-scan, data-dependent acquisition (DDA), and data-independent acquisition (DIA), using a metabolomics study of human plasma samples from leukemia patients before and after one-month chemotherapy. After optimization of data processing parameters, we extracted and compared statistically significant metabolic features from the results of each data acquisition mode. We found that most significant features can be consistently found in all three data acquisition modes with similar statistical performance as evaluated by Pearson correlation and receiver operating characteristic (ROC) analysis. Upon comparison, DDA mode consistently generated fewer uniquely found significant features than full-scan and DIA modes. We then manually inspected over 2000 uniquely discovered significant features in each data acquisition mode and showed that these features can be generally categorized into four major types. Many significant features were missed in DDA mode, primarily due to its low capability of detecting or extracting these features from raw LC-MS data. We thus proposed a bioinformatic solution to rescue these missing significant features from the raw DDA data with good reproducibility and accuracy. Overall, our work asserts that data acquisition modes can influence metabolomics results, suggesting room for improvement of data acquisition modes for untargeted metabolomics.

摘要

尽管基于液相色谱-质谱联用(LC-MS)的代谢组学越来越受欢迎,但尚未有研究系统地比较不同数据采集模式在发现显著改变的代谢特征方面的性能,而这是无靶向代谢组学识别临床生物标志物和阐明比较样本中疾病机制的一项重要任务。在这项工作中,我们使用白血病患者化疗前和化疗一个月后的人体血浆样本进行代谢组学研究,对三种最常用的数据采集模式进行了全面比较,包括全扫描、数据依赖采集(DDA)和数据独立采集(DIA)。在优化数据处理参数后,我们从每种数据采集模式的结果中提取并比较了具有统计学意义的代谢特征。我们发现,通过Pearson相关性和受试者工作特征(ROC)分析评估,在所有三种数据采集模式中都能一致地发现大多数显著特征,且具有相似的统计性能。相比之下,DDA模式始终比全扫描和DIA模式产生更少的独特发现的显著特征。然后,我们手动检查了每种数据采集模式中超过2000个独特发现的显著特征,并表明这些特征通常可分为四大类。DDA模式遗漏了许多显著特征,主要是因为其从原始LC-MS数据中检测或提取这些特征的能力较低。因此,我们提出了一种生物信息学解决方案,以从原始DDA数据中挽救这些遗漏的显著特征,具有良好的重现性和准确性。总体而言,我们的工作表明数据采集模式会影响代谢组学结果,这表明无靶向代谢组学的数据采集模式还有改进的空间。

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