4.8 Article

High-Precision Automated Workflow for Urinary Untargeted Metabolomic Epidemiology

期刊

ANALYTICAL CHEMISTRY
卷 93, 期 12, 页码 5248-5258

出版社

AMER CHEMICAL SOC
DOI: 10.1021/acs.analchem.1c00203

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资金

  1. Gunma University Initiative for Advanced Research (GIAR)
  2. Japan Society for the Promotion of Science (JSPS) [19K17662]
  3. Swedish Heart Lung Foundation [HLF 20180290, HLF 20200693]
  4. Swedish Research Council [2016-02798]
  5. Swedish Respiratory Society
  6. Swedish Asthma and Allergy Foundation
  7. Stockholm County Council
  8. Karolinska Institutet
  9. Environment Research and Technology Development Fund (ERTDF) [5-1752]
  10. JSPS [JPJSBP-1201854, P17774]
  11. STINT [JPJSBP-1201854]
  12. Grants-in-Aid for Scientific Research [19K17662] Funding Source: KAKEN

向作者/读者索取更多资源

This study developed a method for measuring specific gravity in urine using a refractive index detector (RID) in a 96-well-plate format, providing a new solution for metabolomic research on this noninvasive biofluid. By developing an automated LC-MS workflow and utilizing multiple technical internal standards to monitor data quality, over 540 urinary metabolites were successfully identified.
Urine is a noninvasive biofluid that is rich in polar metabolites and well suited for metabolomic epidemiology. However, because of individual variability in health and hydration status, the physiological concentration of urine can differ >15-fold, which can pose major challenges in untargeted liquid chromatography-mass spectrometry (LC-MS) metabolomics. Although numerous urine normalization methods have been implemented (e.g., creatinine, specific gravity-SG), most are manual and, therefore, not practical for population-based studies. To address this issue, we developed a method to measure SG in 96-well-plates using a refractive index detector (RID), which exhibited accuracy within 85-115% and <3.4% precision. Bland-Altman statistics showed a mean deviation of -0.0001 SG units (limits of agreement: -0.0014 to 0.0011) relative to a hand-held refractometer. Using this RID-based SG normalization, we developed an automated LC-MS workflow for untargeted urinary metabolomics in a 96-well-plate format. The workflow uses positive and negative ionization HILIC chromatography and acquires mass spectra in data-independent acquisition (DIA) mode at three collision energies. Five technical internal standards (tISs) were used to monitor data quality in each method, all of which demonstrated raw coefficients of variation (CVs) < 10% in the quality controls (QCs) and < 20% in the samples for a small cohort (n = 87 urine samples, n = 22 QCs). Application in a large cohort (n = 842 urine samples, n = 248 QCs) demonstrated CVQC < 5% and CVsamples < 16% for 4/5 tISs after signal drift correction by cubic spline regression. The workflow identified >540 urinary metabolites including endogenous and exogenous compounds. This platform is suitable for performing urinary untargeted metabolomic epidemiology and will be useful for applications in population-based molecular phenotyping.

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