School of Biosciences, University of Birmingham, Edgbaston, Birmingham B15 2TT, UK.
Anal Bioanal Chem. 2013 Jun;405(15):5147-57. doi: 10.1007/s00216-013-6856-7. Epub 2013 Mar 1.
Direct infusion mass spectrometry (DIMS)-based untargeted metabolomics measures many hundreds of metabolites in a single experiment. While every effort is made to reduce within-experiment analytical variation in untargeted metabolomics, unavoidable sources of measurement error are introduced. This is particularly true for large-scale multi-batch experiments, necessitating the development of robust workflows that minimise batch-to-batch variation. Here, we conducted a purpose-designed, eight-batch DIMS metabolomics study using nanoelectrospray (nESI) Fourier transform ion cyclotron resonance mass spectrometric analyses of mammalian heart extracts. First, we characterised the intrinsic analytical variation of this approach to determine whether our existing workflows are fit for purpose when applied to a multi-batch investigation. Batch-to-batch variation was readily observed across the 7-day experiment, both in terms of its absolute measurement using quality control (QC) and biological replicate samples, as well as its adverse impact on our ability to discover significant metabolic information within the data. Subsequently, we developed and implemented a computational workflow that includes total-ion-current filtering, QC-robust spline batch correction and spectral cleaning, and provide conclusive evidence that this workflow reduces analytical variation and increases the proportion of significant peaks. We report an overall analytical precision of 15.9%, measured as the median relative standard deviation (RSD) for the technical replicates of the biological samples, across eight batches and 7 days of measurements. When compared against the FDA guidelines for biomarker studies, which specify an RSD of <20% as an acceptable level of precision, we conclude that our new workflows are fit for purpose for large-scale, high-throughput nESI DIMS metabolomics studies.
直接进样质谱(DIMS)为基础的非靶向代谢组学可以在单次实验中测量数百种代谢物。虽然在非靶向代谢组学中,每个实验都在努力减少实验内的分析变异性,但不可避免地会引入测量误差的来源。对于大规模多批实验来说尤其如此,这需要开发稳健的工作流程,最大限度地减少批间变异性。在这里,我们进行了一项精心设计的、八批 DIMS 代谢组学研究,使用纳升电喷雾(nESI)傅里叶变换离子回旋共振质谱分析哺乳动物心脏提取物。首先,我们对这种方法的固有分析变异性进行了特征描述,以确定我们现有的工作流程在应用于多批研究时是否适用。在整个 7 天的实验中,批间差异很容易观察到,无论是使用质量控制(QC)和生物学重复样本的绝对测量值,还是其对我们在数据中发现显著代谢信息的能力的不利影响。随后,我们开发并实施了一种计算工作流程,该流程包括总离子流过滤、QC 稳健样条批处理校正和光谱清理,并提供确凿的证据表明,该工作流程减少了分析变异性,并增加了显著峰的比例。我们报告了 15.9%的整体分析精度,这是通过对生物样本的技术重复进行中位数相对标准偏差(RSD)来衡量的,横跨 8 个批次和 7 天的测量。当与 FDA 生物标志物研究指南进行比较时,该指南规定<20%的 RSD 是可接受的精度水平,我们得出结论,我们的新工作流程适用于大规模、高通量 nESI DIMS 代谢组学研究。