Department of Chemistry and Chemical Biology, McMaster University , Hamilton L8S 4M1, Canada.
Department of Pediatrics, Children's Hospital of Eastern Ontario , Ottawa K1H 8L1, Canada.
Anal Chem. 2017 Aug 1;89(15):8112-8121. doi: 10.1021/acs.analchem.7b01727. Epub 2017 Jul 11.
Mass spectrometry (MS)-based metabolomic initiatives that use conventional separation techniques are limited by low sample throughput and complicated data processing that contribute to false discoveries. Herein, we introduce a new strategy for unambiguous identification and accurate quantification of biomarkers for inborn errors of metabolism (IEM) from dried blood spots (DBS) with quality assurance. A multiplexed separation platform based on multisegment injection-capillary electrophoresis-mass spectrometry (MSI-CE-MS) was developed to provide comparable sample throughput to flow injection analysis-tandem MS (FIA-MS/MS) but with greater selectivity as required for confirmatory testing and discovery-based metabolite profiling of volume-restricted biospecimens. Mass spectral information is encoded temporally within a separation by serial injection of three or more sample pairs, each having a unique dilution pattern, alongside a quality control (QC) that serves as a reference in every run to facilitate between-sample comparisons and/or batch correction due to system drift. Optimization of whole blood extraction conditions on DBS filter paper cut-outs was first achieved to maximize recovery of a wide range of polar metabolites from DBS extracts. An interlaboratory comparison study was also conducted using a proficiency test and retrospective neonatal DBS that demonstrated good agreement between MSI-CE-MS and validated FIA-MS/MS methods within an accredited facility. Our work demonstrated accurate identification of various IEM based on reliable measurement of a panel of primary or secondary biomarkers above an upper cutoff concentration limit for presumptive screen-positive cases without stable isotope-labeled reagents. Additionally, nontargeted metabolite profiling by MSI-CE-MS with temporal signal pattern recognition revealed new biomarkers for early detection of galactosemia, such as N-galactated amino acids, that are a novel class of pathognomonic marker due to galactose stress in affected neonates.
基于质谱(MS)的代谢组学方法,使用传统的分离技术,其样品通量低,数据处理复杂,这导致了错误发现。在此,我们引入了一种新策略,用于从干血斑(DBS)中明确鉴定和准确定量先天性代谢错误(IEM)的生物标志物,并提供质量保证。开发了一种基于多段进样-毛细管电泳-质谱(MSI-CE-MS)的多组分分离平台,以提供与流动注射分析-串联质谱(FIA-MS/MS)相当的样品通量,但具有更高的选择性,这是确证测试和基于发现的代谢物谱分析体积受限生物样本所必需的。通过连续注入三个或更多个具有独特稀释模式的样品对,以及作为每个运行中参考的质量控制(QC),在分离过程中按时间对质谱信息进行编码,这有助于进行样品间比较和/或由于系统漂移而进行批处理校正。首先优化 DBS 滤纸条上全血提取条件,以从 DBS 提取物中最大限度地回收广泛的极性代谢物。还进行了一项实验室间比较研究,使用能力验证和回顾性新生儿 DBS 进行研究,结果表明在认可的设施中,MSI-CE-MS 与经过验证的 FIA-MS/MS 方法之间具有良好的一致性。我们的工作证明了通过可靠测量一组原发性或次级生物标志物,可以准确鉴定各种 IEM,这些标志物的浓度高于假定筛查阳性病例的上限浓度限制,而无需稳定同位素标记试剂。此外,通过 MSI-CE-MS 进行的非靶向代谢物谱分析和时间信号模式识别,揭示了半乳糖血症早期检测的新生物标志物,例如 N-半乳糖化氨基酸,由于受影响新生儿的半乳糖应激,这些标志物是一类新的特征性标志物。