Combining NMR and MS with Chemical Derivatization for Absolute

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Combining NMR and MS with Chemical Derivatization for Absolute Quantification with Reduced Matrix Effects Qiang Fei, Dongfang Wang, Paniz Jasbi, Ping Zhang, G. A. Nagana Gowda, Daniel Raftery, and Haiwei Gu Anal. Chem., Just Accepted Manuscript • DOI: 10.1021/acs.analchem.8b05611 • Publication Date (Web): 25 Feb 2019 Downloaded from http://pubs.acs.org on February 25, 2019

Just Accepted “Just Accepted” manuscripts have been peer-reviewed and accepted for publication. They are posted online prior to technical editing, formatting for publication and author proofing. The American Chemical Society provides “Just Accepted” as a service to the research community to expedite the dissemination of scientific material as soon as possible after acceptance. “Just Accepted” manuscripts appear in full in PDF format accompanied by an HTML abstract. “Just Accepted” manuscripts have been fully peer reviewed, but should not be considered the official version of record. They are citable by the Digital Object Identifier (DOI®). “Just Accepted” is an optional service offered to authors. Therefore, the “Just Accepted” Web site may not include all articles that will be published in the journal. After a manuscript is technically edited and formatted, it will be removed from the “Just Accepted” Web site and published as an ASAP article. Note that technical editing may introduce minor changes to the manuscript text and/or graphics which could affect content, and all legal disclaimers and ethical guidelines that apply to the journal pertain. ACS cannot be held responsible for errors or consequences arising from the use of information contained in these “Just Accepted” manuscripts.

is published by the American Chemical Society. 1155 Sixteenth Street N.W., Washington, DC 20036 Published by American Chemical Society. Copyright © American Chemical Society. However, no copyright claim is made to original U.S. Government works, or works produced by employees of any Commonwealth realm Crown government in the course of their duties.

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Analytical Chemistry

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Combining NMR and MS with Chemical Derivatization for Absolute Quantification with

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Reduced Matrix Effects

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Qiang Fei†‡, Dongfang Wang‡§, Paniz Jasbi∥, Ping Zhang‡⊥, G. A. Nagana Gowda‡,

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Daniel Raftery*‡#∇, Haiwei Gu*∥

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†College

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‡Northwest

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University of Washington, Seattle, WA 98109, USA

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§Chongqing

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of Chemistry, Jilin University, Changchun 130021, P. R. China Metabolomics Research Center, Department of Anesthesiology and Pain Medicine,

Blood Center, Chongqing 400015, P. R. China

Arizona Metabolomics Laboratory, College of Health Solutions, Arizona State University,

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Scottsdale, AZ 85259, USA

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⊥College

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#Department

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∇Fred

of Plant Protection, Southwest University, Chongqing 400715, P. R. China of Chemistry, University of Washington, Seattle, WA 98109, USA

Hutchinson Cancer Research Center, Seattle, WA 98109, USA

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* Corresponding Authors: Daniel Raftery, PhD Department of Anesthesiology and Pain Medicine University of Washington 850 Republican St. Seattle, WA 98109 Tel: 206-543-9709 Fax: 206-616-4819 Email: [email protected] Haiwei Gu, PhD College of Health Solutions Arizona State University 13208 E. Shea Blvd Scottsdale, AZ 85004 Tel: 480-301-6016 Fax: 480-301-7017 Email: [email protected] 1

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ABSTRACT

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Absolute quantitation is a major challenge in metabolomics. Previously, we [G. A. Nagana

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Gowda et al., Anal. Chem. 2018, 20, 2001-2009] showed that nuclear magnetic resonance (NMR)

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spectroscopy can guide absolute quantitation using mass spectrometry (MS); however, this

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method does not account for the matrix effect in MS measurements. To surmount this challenge,

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we have developed a novel method, qNMR-MS, for the absolute quantitation of metabolites using

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MS by combining it with NMR and chemical derivatization. Metabolite concentrations are first

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obtained using NMR for a reference sample. Subsequently, both reference and study samples

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are chemically derivatized with isotope labeled and unlabeled reagents, respectively. The

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derivatized reference sample is then mixed with study samples and measured using MS.

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Comparison of paired isotope unlabeled and labeled MS peaks enables absolute quantitation with

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virtually no matrix effects. As a proof of concept, we applied the qNMR-MS method for absolute

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quantitation of amino acids using propyl-chloroformate (PCF) derivatization. For standards, the

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observed coefficients of determination (R2) of most amino acids were greater than 0.99 across

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concentrations of 0.2 to 20 uM. For human serum, the results of qNMR-MS method are

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comparable to the conventional isotope labeled internal standard (iSTD) method (R2  0.99), with

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an average median coefficient of variation (CV) of 5.45%. The qNMR-MS method is relatively

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simple, highly quantitative, has high cost-efficiency (no iSTD required), and offers new avenues

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for the routine quantitation of amino acids in blood samples and can, in principle, be extended to

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a wide variety of metabolites in different biological samples.

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Analytical Chemistry

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Metabolomics provides detailed and extensive information about complex biological

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processes and systems.1-10 Metabolomics studies have resulted in a number of important findings

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in systems biology and biomarker discovery, yielding a deeper understanding of cancer

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metabolism11-13 and drug toxicity,14,15 potential methods for improved early disease detection16-19

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and therapeutic monitoring,20,21 as well as applications in environmental science,22 nutrition,23-25

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and other fields related to the study of metabolism.

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A major challenge faced by the field is the lack of methods for broad-based absolute

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metabolite quantitation. This is particularly critical since the measurement of many hundreds to

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thousands of small-molecule intermediates and products has become almost routine. Most

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metabolites, including amino acids, have thus far been measured as relative abundances in the

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vast majority of metabolomics studies,26,27 which severely limits the ability to compare results

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across studies. This situation has, in turn, greatly impacted the usefulness of established

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metabolomics databases, in which the deposited data are generally semi-quantitative and less

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reliable for cross-validation analysis in another study or by different users. Moreover, relative

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abundances cannot be directly used in clinical settings and, as a result, additional research and

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development efforts are needed to quantify potential biomarker candidates prior to possible

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clinical applications. Absolute quantitation creates the possibility and opportunity for constructing

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a universal metabolomics database for a variety of biological systems, and provides the potential

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to bridge gaps between laboratory studies and clinical applications.

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Of the advanced analytical methods that have been employed in metabolomics studies, mass

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spectrometry (MS) and nuclear magnetic resonance (NMR) spectroscopy are the most heavily

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utilized.6,28,29 In general, NMR is highly quantitative and MS is highly sensitive. These two

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platforms provide both complementary and supplementary information on the identities and

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concentrations of metabolites from a variety of biological samples, including blood.4,30 Recently,

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we developed an optimized protein removal method for NMR, resulting in the quantitation of a 3

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large number of metabolites including amino acids, organic acids, carbohydrates, and

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heterocyclic compounds.31,32 However, NMR’s relatively low sensitivity requires a relatively large

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sample volume (generally ≥200 μL). Hence, NMR quantitation of a large pool of metabolites

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(>100) in blood samples continues to be challenging. Although LC-MS is much more sensitive,17,33

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large-scale external calibration for the quantitation of metabolites is laborious and often lacks

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accuracy due to confounding matrix effects. Although stable isotope labeled internal standards

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(iSTDs) provide superior quantitation in LC-MS,34,35 many iSTDs are not commercially available

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or are very expensive. Similarly, commercial standard kits usually contain structural analogues,

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the quantitative accuracy of which remains controversial given the potential for matrix effects and

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differential MS responses to non-identical chemical structures.36

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To address the absolute quantitation bottleneck in metabolomics, G. A. Nagana Gowda et. al.

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introduced a new method (NMR-guided-MS)37 in which metabolites from a single serum specimen

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are quantified on the basis of a recently developed NMR method32 and then used as a reference

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for absolute metabolite quantitation using MS. While the results of this approach are reasonably

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accurate and reproducible, the limitation of this method is that it cannot correct for matrix effects

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when present. In this study, we further improved our previous method37 and developed a novel

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quantitative approach to combine the advantages of both NMR and MS in order to minimize matrix

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effects and improve quantitation accuracy (qNMR-MS). As an example, we describe the use of

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propyl-chloroformate (PCF) derivatization in this approach to provide absolute concentrations of

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amino acids for the routine measurement of biofluids.38,39 This new approach provides quantitation

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comparable to the internal standard method, and extends to metabolites without iSTDs. In

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addition, the described method is relatively simple and easy to implement and hence offers new

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avenues for the routine quantification of amino acids and other metabolites in human serum

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samples. In principle, the new method can be extended to a variety of metabolites in different

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biological samples. 4

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Analytical Chemistry

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EXPERIMENTAL METHODS

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Development of Overall Analytical Strategy

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Given the advantages and challenges of NMR and MS, respectively, we developed a novel

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analytical strategy to use the excellent quantitative characteristics of NMR spectroscopy to

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achieve a significant improvement in metabolite quantitation using highly sensitive MS. Figure 1

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shows the overall blueprint of our analytical strategy for qNMR-MS.

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Step 1: Prepare a reference sample with similar matrix to study samples. For example, we

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can mix a small portion of each study sample (>50 in a typical metabolomics study) to obtain this

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reference sample. It is important to note that metabolite concentrations in the reference sample

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need only to be determined once and can then be used in multiple studies and/or in different labs,

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which helps to reduce experimental efforts in quantitation.

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Step 2: Divide the reference sample into two portions (with the same metabolite

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concentrations). The first one will be examined to determine the metabolite concentrations using

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quantitative NMR. The other half will be used in Step 4.

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Step 3: Derivatize each individual sample under investigation with an unlabeled tag. Although

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labeled derivatization reagent can be used for the study samples (then unlabeled derivatization

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reagent will be used for the reference sample in Step 2), Step 3 generally uses more of the

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derivatization reagent than Step 2; therefore, unlabeled derivatization reagent is preferred for the

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study samples to save the cost.

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Step 4: Derivatize the second portion of the reference sample with an isotope labeled reagent (corresponding to the reagent in Step 3).

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Step 5: After derivatization, mix each individual sample with the reference sample in a 1:1

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(v:v) ratio. As a result, the sample matrix effect will be compensated in subsequent MS analysis.

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Step 6: The mixture is then subjected to MS analysis. Given the determined concentrations

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of metabolites in the reference sample from Step 2, the metabolite concentrations in each study

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sample can be easily calculated based on the ratio between the labeled and unlabeled MS peaks.

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Figure 1. The overall analytical strategy to combine NMR and LC-MS for the absolute quantitation

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of amino acids in serum samples.

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Chemicals

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Hydrochloric acid was obtained from EMD Chemicals Inc. (Gibbstown, NJ).

Twenty amino

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acid standards, including DL-alanine, L-arginine, DL-asparagine, L-aspartic acid, DL-cystine, L-

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glutamic acid, L-glutamine, glycine, L-histidine, L-isoleucine, L-leucine, L-lysine, DL-methionine,

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L-phenylalanine, L-proline, L-serine, L-threonine, L-tryptophan, L-tyrosine, and DL-valine, were

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purchased from Sigma-Aldrich (St. Louis, MO). Derivatization reagents propyl-chloroformate and

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ethyl acetate were purchased from Fisher Scientific (Hampton, NH). Other derivatization reagents

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(sodium hydroxide, 1-propanol, 1-propanol-1,1-d2 (>99.5% D, Figure S1), 3-picoline, chloroform,

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iso-octane, hexane, monosodium phosphate (NaH2PO4), disodium phosphate (Na2HPO4), and

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sodium salt of 3-(trimethylsilyl) propionic acid-2,2,3,3-d4 (TSP)) were also purchased from Sigma6

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Analytical Chemistry

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Aldrich (St. Louis, MO). Four human serum samples were obtained from Innovative Research,

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Inc. (Novi, MI). A mixture of 20 uniformly labeled

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acids and deuterium oxide (D2O) were obtained from Cambridge Isotope Laboratories, Inc.

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(Andover, MA). DI water was obtained using an in-house Synergy Ultrapure Water System from

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Millipore (Billerica, MA).

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Serum Metabolite Extraction

13C,15N-

(97-99% enrichment) standard amino

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Frozen serum samples were thawed at room temperature (25 °C) and homogenized using a

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vortex mixer, and 50 μL of each serum sample was then pipetted into 2 mL Eppendorf vials (Fisher

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Scientific; Hampton, NH). For protein removal, the serum samples were mixed with methanol in

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a 1:2 (v/v) ratio, which was recently shown to extract metabolites with high efficiency.31,32 The

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resulting mixtures were vortexed for 30 s, incubated at −20 °C for 20 min, and centrifuged at

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19100 x g for 30 min to pellet the proteins. The supernatant was dried using an Eppendorf

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Vacufuge-Plus vacuum concentrator. The resulting residue was reconstituted with 50 uL of 0.05

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M HCl solution for derivatization and targeted LC-MS/MS analysis. Sample volumes were 400 μL

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for reference samples. The supernatant was divided into two halves. The first half was

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reconstituted with 200 uL of 0.05 M HCl solution for derivatization and targeted LC-MS/MS

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analysis. The second half was dried and then reconstituted with 200 μL of phosphate buffer (0.1

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M) in D2O containing 50 μM internal reference (TSP) for NMR analysis. For quantitation using the

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internal standard method, 10 μL of extracted serum sample was mixed with 10 μL of

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labeled amino acid standards (5.71 mg in 20 mL 0.05 M HCl solution) and was then diluted to 200

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μL by the addition of DI water. Concentrations were determined by comparing integrated MS

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areas of amino acids to the corresponding iSTDs.

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Derivatization Method

13C, 15N-

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Figure S2 shows the experimental workflow of unlabeled and labeled PCF derivatization in

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schematic form.40 First, 10 μL of each extracted serum sample was added to a 2 mL glass vial, 7

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and then diluted to 200 μL by the addition of DI water. Next, 80 μL of 3-picoline/1-propanol solution

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(23.0:77.0, v/v) was added for derivatization of the study samples, while for the reference sample,

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3-picoline/1-propanol-1,1-d2 solution (23.0:77.0, v/v) was used for isotopic derivatization. Then,

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50 μL of propyl-chloroformate/chloroform/iso-octane (17.4/71.6/11.0, v/v/v) was added to each

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sample. The solutions were vortexed for 1 min, heated at 80 oC for 30 min, and equilibrated for

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10 min at room temperature. Afterward, 250 μL of ethyl acetate was added to extract amino acid

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derivatives, and each vial was vortexed for 1 min and centrifuged at 20800 x g for 10 min.

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Following centrifugation, 200 μL of the supernatant was transferred to a new vial. This solution

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was dried for 40 min using an Eppendorf Vacufuge-Plus vacuum concentrator and reconstituted

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in 100 μL water (0.1% formic acid) for LC-MS/MS analysis.

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NMR Spectroscopy

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NMR experiments were performed at 25 °C on a Bruker AVANCE III 800 MHz spectrometer

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equipped with a cryogenically cooled probe and Z-gradients suitable for inverse detection, as

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described earlier.32 Briefly, the CPMG (Carr−Purcell−Meiboom−Gill) pulse sequence with water

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suppression using presaturation was used for 1H 1D NMR experiments. To enable absolute

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quantitation of metabolites using TSP, NMR experiments were performed with 128 transients and

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a sufficiently long recycle delay (d1=15 s). Chemical shifts were referenced to the internal

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reference (TSP) signal. Raw data were Fourier transformed after zero filling once to a total

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spectrum size of 32K points. Bruker Topspin software package version 3.0 was used for NMR

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data acquisition, processing, and analysis. Metabolite concentrations were determined using

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integrated areas of metabolite peaks with reference to the peak area of TSP reference, after

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taking into account the sample volume and number of protons represented by the peaks used for

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integration.

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LC-MS/MS

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Analytical Chemistry

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For targeted measurements of amino acid derivatives, 4 µL of each prepared sample was

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injected into an Agilent 6410 Triple Quad LC-MS system for analysis using an electrospray

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ionization (ESI) source in positive ionization mode. Chromatographic separation of the

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compounds was achieved on a Waters T3 column (4.6 mm x 150 mm, 5 μm). The mobile phase

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was composed of solvent A (DI water with 0.1% (v/v) formic acid) and solvent B (ACN with 0.1%

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(v/v) formic acid). The elution gradient started at 32% solvent A, which was reduced linearly to

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5% at t=10 min. The percentage of A remained constant (5%) for 2 mins (t=12 min), after which

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the percentage of A was rapidly increased to 32% to prepare for the next injection. The total

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experimental time for each injection was 30 min. The flow rate was 0.3 mL/min, the auto-sampler

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temperature was 4 °C, and the column compartment temperature was set to 50 °C. Multiple-

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reaction-monitoring (MRM) transitions were optimized through direct infusion of derivatives from

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a mixed standard sample containing 50 µM of each amino acid. MRM peaks for amino acid

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derivatives were integrated using MassHunter Workstation Software Quantitative Analysis for

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QQQ B.07.00 (Agilent Technologies).

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Absolute Quantitation Calculation

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For quantitation with good accuracy, the response factor of each amino acid derivative needs

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to be calculated, to at least partially correct errors due to isotope purity, derivatization efficiency,

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etc. Two reference samples (10 μL each) were separately derivatized by the unlabeled reagent

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and isotope labeled reagent, respectively. After derivatization, the two samples of equal volume

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were mixed, and the mixture was then subjected to LC-MS/MS analysis. The response factor (R)

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is the ratio between the labeled and unlabeled MS peak area of each amino acid, as represented

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by Eq. 1:

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𝐴𝑅 ― 𝑙𝑎𝑏𝑒𝑙𝑒𝑑

𝑅 = 𝐴𝑅 ― 𝑢𝑛𝑙𝑎𝑏𝑒𝑙𝑒𝑑

(1)

Where AR-unlabeled and AR-labeled represent the peak areas of amino acids derivatized by the unlabeled and isotope labeled reagents, respectively. 9

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Absolute concentrations of each amino acid in the reference sample were derived by NMR.

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After derivatization, a mixture of a single study sample and the reference sample was analyzed

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by LC-MS/MS and the absolute concentrations of amino acids in the study samples were

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calculated using Eq. 2: 𝐴𝑆𝑖

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𝐶𝑆𝑖 = 𝐴𝑅𝑖 ― 𝑙𝑎𝑏𝑒𝑙𝑒𝑑 × 𝑅 × 𝐶𝑅

(2)

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Where CSi and CR represent the concentrations of a particular amino acid in the study sample

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and reference sample, respectively. ASi and ARi-labeled represent the peak areas of that amino acid

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derivatized by the unlabeled reagent from the study sample and isotope labeled reagent from the

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reference sample, respectively.

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RESULTS

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PCF Derivatization

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This novel qNMR-MS method can be used to analyze a wide variety of biological metabolites;

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here we use amino acids only as a proof of concept, combining NMR, MS, as well as PCF

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derivatization for absolute quantitation. Targeted MS data acquisition was performed using MRM

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in positive mode. Table S1 shows the MRM parameters of 20 amino acids derivatized with the

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unlabeled reagent and isotope labeled reagent, respectively. The MRM parameters of

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labeled standard amino acids derivatized with unlabeled reagents are also included in the table

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alongside precursor ions, product ions, and associated collision energy (CE). LC-MS total ion

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chromatograms of a mixed standard sample of twenty amino acids are shown in Figure S3.

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Separation of these amino acid derivatives was achieved in 5 min, without any chemical

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interference from other compounds in the sample.

13C, 15N-

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Derivatization is an important procedure in qNMR-MS; therefore, to ensure the best

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quantitative performance, we first optimized the PCF derivatization temperature. Figure S4 shows

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the peak areas of twenty amino acid derivatives at different reaction temperatures. The reaction 10

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Analytical Chemistry

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time was set to 30 min. Peak areas were observed to be similar for most reaction temperatures;

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peak areas were slightly decreased at 40 oC and 60 oC and it was observed that some amino

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acids (such as serine and arginine) exhibited large relative differences when the reaction

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temperatures were set below 80 oC (Figure S5). Given that high temperatures can accelerate

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reactions, and as 80 oC provided acceptable variation values, 80 oC was chosen as the final

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reaction temperature.

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In addition to temperature, we optimized the PCF reaction time to obtain best quantitation.

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Figure S6 shows the peak areas of twenty amino acid derivatives at different reaction times using

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a reaction temperature of 80 oC. No significant differences in peak areas were observed between

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tested reaction times. Figure S7 shows that, with short reaction times, the relative differences of

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some amino acids, such as aspartic acid and serine, became relatively large. When the reaction

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time was longer than 30 min, the relative differences in peak areas of twenty amino acid

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derivatives was less than 20%. Therefore, we chose 30 min as the final reaction time. In addition,

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the extraction efficiency of ethyl acetate and hexane (Figure S8) as well as the effect of pH on

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chemical equilibrium (Figure S9) were also examined. Ethyl acetate was selected as the final

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extract reagent, and basic sodium hydroxide solution was excluded from the PCF derivatization

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procedure. As a result, the PCF derivatization efficiency, determined by the MS intensities of

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amino acids before and after derivatization, was measured to be >99% for all amino acids

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investigated in this study.

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Quantitation of Amino Acids

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We first examined whether qNMR-MS was applicable to amino acid standards. Based on the

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known amino acid concentration range of human blood,41 we prepared standard mixtures of

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twenty amino acids at 0.2 uM, 0.5 uM, 1 uM, 2 uM, 5 uM, 10 uM, 15 uM, and 20 uM to test the

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linearity and accuracy of concentration determinations. Table S2 lists the linear regression

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equations and their coefficients of determination (R2) of the qNMR-MS method for amino acid 11

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quantification using standard samples. The coefficients of determination of most amino acids were

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greater than 0.99, showing the excellent quantitative accuracy of our novel qNMR-MS method.

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In addition, we used human serum to demonstrate the applicability of our new method to

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samples of complicated matrices. One human serum sample was diluted 2, 10, 20,100, and 200

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times to test the concentration linearity of real samples. We also observed similar coefficients of

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determination as in the standard sample (Table S2). Here, the linear equations of serum samples

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were calculated using peak ratios against the dilution factors; therefore, the equations are different

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between the standards and serum samples.

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To further evaluate this quantitation approach, the concentrations of amino acids in four

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human serum samples were measured using the qNMR-MS method. The reference sample was

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pooled from these 4 study samples, and NMR was used to quantify the amino acid concentrations

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in this reference sample. Seventeen amino acids were quantified. Three amino acids (aspartic

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acid, cysteine, and serine) in the reference sample could not be quantified using NMR because

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either their concentrations were too low or they were overlapped with other peaks. Due to the

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high concentration of amino acids in human serum samples, each sample was diluted typically

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by a factor of 20 prior to derivatization. The median coefficient of variation values (CVs) of these

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four samples using qNMR-MS were 2.0%, 6.2%, 8.3%, and 5.2%, respectively. These results are

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indicative of the high precision and reproducibility of our method.

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The new method was also compared against the conventional internal standard method.

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Correlations of concentrations for all amino acids between the qNMR-MS method and internal

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standard method were close to unity and showed excellent coefficients of determination (R2 ≥

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0.99) for all four serum samples (Figure 2). As an example, Figure 3 shows a comparison of

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amino acid concentrations derived by the internal standard method and by our qNMR-MS method

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from a typical serum sample; the data shown here indicate excellent agreement between the two

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quantitation methods. In addition, concentrations of the same amino acids in all serum samples 12

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Analytical Chemistry

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derived by the qNMR-MS method and the internal standard method were compared individually.

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As shown in Figure 4 and Figure S10, most of the amino acids exhibited excellent agreement

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between the qNMR-MS method and internal standard method (R2 > 0.9). Notably, as we observed

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in a previous study,33 quantitation using iSTDs also requires extra care; e.g., a large variation can

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be produced if the concentration of iSTD is very different from that of the corresponding compound

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under investigation, which was observed once again in this study. However, our qNMR-MS

299

method is less affected by this concentration difference between unlabeled and labeled

300

compounds, since the reference sample, pooled from all the study samples, has less chance of

301

having concentrations dramatically different from that of the study samples. In addition, the

302

response factor (R) in Eq. 1 was designed to at least partially correct errors due to isotope purity,

303

derivatization efficiency, etc., which helps to further improve quantitative performance. As

304

evidenced by the coefficient of determination, almost all observed variance in the internal

305

standard method is accounted for by our novel quantitation method. For example, the R2 value

306

obtained from linear regression analysis of glycine (Figure 4c) indicates that roughly 94% of the

307

variance observed in our qNMR-MS is accounted for by the iSTD method. This shows the qNMR-

308

MS method to be as robust a technique as the conventional internal standard method.

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Figure 2. Linear regression equations for concentrations of all amino acids in four human serum

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samples between the qNMR-MS and internal standard methods. Coefficients of determination (R2)

312

show excellent agreement between methods with almost no discrepancy between observed

313

values.

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Figure 3. Comparison of the concentrations of 17 amino acids in the 4th human serum sample,

317

derived from the qNMR-MS and internal standard methods.

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Figure 4. Linear regression equations for four amino acids in human serum samples (see Figure

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S10 for data on 13 other amino acids). (a) Asparagine, (b) Glutamic Acid, (c) Glycine, and (d)

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Proline. Coefficients of determination (R2) values show excellent agreement between qNMR-MS

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and internal standard methods.

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In order to evaluate potential matrix effects, results of our previous NMR-guided-MS method37

325

and the qNMR-MS method were compared. These two methods were used to establish

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regression curves, and the coefficients of determination are shown in Figure 5 and Table S3.

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The standard sample has no other components except amino acids, which have less matrix

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effects in MS measurements than human serum samples that are well-known to have complicated

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matrices. Both methods achieved good results for standard samples, and average R2 values for

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the NMR-guided-MS and qNMR-MS methods were observed to be 0.9952 and 0.9965,

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respectively. Because of the complex matrix effects present in human serum samples, however,

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the NMR-guided-MS method produced somewhat poorer results, (average R2 = 0.9583). The

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qNMR-MS method compensated for any matrix effects (average R2 = 0.9953) and achieved

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results comparable to those obtained from standard samples.

335 336

Figure 5. Coefficients of determination (R2) for quantitating amino acids in human serum and

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standard samples. Each sample was tested using two quantitation calculation methods: NMR-

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guided-MS and qNMR-MS. NMR-guided-MS uses the peak area of each amino acid derivative to

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quantify, while qNMR-MS uses the peak area ratio between labeled and unlabeled MS peaks of

340

each amino acid derivative to quantify metabolites.

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DISCUSSION

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To significantly improve quantitation in metabolomics, we developed a novel approach

344

(qNMR-MS) which enables absolute metabolite quantitation, exemplified here using amino acids.

345

This method requires only a reference sample to obtain amino acid concentrations via NMR. After

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derivatization with unlabeled and labeled tags, each study sample and the reference sample are

347

mixed together and subject to LC-MS/MS analysis. Based on the concentrations from the

348

reference sample using NMR, all study samples were quantitated by LC-MS/MS, comparing the

349

corresponding isotope labeled and unlabeled peak areas. Our method combines the advantages

350

of NMR, MS, and chemical derivatization to enable absolute quantitation with high sensitivity.

351

Importantly, our novel qNMR-MS method can significantly reduce the interference of matrix

352

effects.

353

For improved absolute quantification results, it is important that the reference and study

354

samples have similar matrices. This reference sample can be a commercially-available pooled

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blood sample with enough volume for both NMR and MS analysis, or more ideally, a pooled study

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sample. The reference sample can be concentrated or diluted, so that metabolite concentrations

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are similar to those in the study sample, thereby enabling the accurate determination of metabolite

358

concentrations based on MS intensities of similar magnitude. In addition, 2D NMR methods42 can

359

be used for quantitation in case peak overlap is a problem.

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After optimized PCF derivatization in this study, structures of the derivatized amino acids are

361

different from the amino acids themselves and, as a result, their physical and chemical

362

characteristics, extraction efficiency, LC retention, and MS/MS characteristics are favorable for

363

analysis. In particular, PCF derivatization reduces the polarity of amino acids, which prevents

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coelution with other highly polar compounds in complex matrices. The derivatization process

365

increases the molecular weight of relatively low-weight molecules. As a result, the interference of

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matrix materials is reduced by increasing the retention time during reversed-phase

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chromatographic separation.

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qNMR-MS provides an alternative to the use of individual iSTDs. While our method also

369

utilizes isotope labeled iSTDs, they are introduced through a derivatization process, as has been

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exploited previously by others.38,39,43 Similarly, our qNMR-MS method also has advantages similar

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to those of the internal standard method,44 in that the amino acids in the reference sample

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derivatized by the isotope labeled reagent can compensate for variability in MS detection of study

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samples. Since amino acids derivatized by isotope labeled reagents are almost identical in

374

structure to and co-elute with amino acids derivatized by unlabeled reagents, the degree of

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ionization suppression or enhancement caused by the co-eluting matrix components should, in

376

theory, be the same for both. Therefore, while absolute response may be affected, the peak area

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ratio between labeled and unlabeled MS peaks of amino acids should be unaffected and the

378

bioanalytical method is accurate, precise, and robust. Thus, the qNMR-MS method is a valid

379

approach for correcting matrix effects.

380

In order to further assess the relative magnitude of matrix effects on real samples, we

381

compared the qNMR-MS results to our previous work (NMR-guided-MS)37 that uses peak-area

382

signals to determine concentrations. The qNMR-MS method described herein can decrease

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confounding matrix effects, significantly improving the quantitative performance of some amino

384

acids such as glycine, histidine, and valine. For example, although glutamine typically shows very

385

poor correlation due to glutamine cyclization45 as described in our previous work, the quantitation

386

of glutamine was significantly improved using our qNMR-MS method. The coefficient of

387

determination of glutamine was 0.89, as opposed to 0.31 as reported in our previous work. These

388

results indicate that matrix effects were substantially reduced by our novel qNMR-MS method.

389

The qNMR-MS method developed here has been applied to the quantitation of amino acids

390

to show the merit of this approach; in theory, other chemical classes can be analyzed using 19

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qNMR-MS by substituting appropriate derivatization reactions. Previous work on semi-

392

quantitative assays46 has shown derivatization of amines by 1-1’-13C2 acetic anhydride to enhance

393

their detection with minimal sample pretreatment. Others have shown a 10-fold increase in

394

detection of fatty acids following derivatization by N-[4-(aminomethyl)phenyl]pyridinium (AMPP).47

395

Also, application of a chemoselective smart isotope tag such as

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to increase detection of the carboxyl-containing metabolome by NMR and MS methods.48

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Therefore, a wide variety of chemical classes can be quantified using our approach by applying

398

various derivatization methods suited to the detection of particular chemical classes. In principle,

399

qNMR-MS is able to have a very wide coverage; for example, carboxyl- and amino-containing

400

compounds cover ~75% of the metabolome. In addition, NMR quantitation approaches can be

401

optimized for various types of samples, such as urine. The application of various derivatization

402

techniques can significantly increase the coverage of our novel qNMR-MS method beyond amino

403

acids, allowing for the comparison of measurements between studies and, potentially, the creation

404

of a universal, quantitative metabolomics database.

15N-cholamine

has been shown

405 406

CONCLUSIONS

407

In summary, we describe a new quantitation method, qNMR-MS, which combines the

408

advantages of NMR and MS, as well as chemical derivatization to quantify amino acids with

409

minimal matrix effects. First, the concentrations of amino acids in a reference sample are

410

determined via NMR. PCF is used to derivatize amino acids in serum samples and the reference

411

sample, and then absolute concentrations of the amino acids can be calculated as the ratio

412

between the MS peak areas of the unlabeled study samples and isotopic labeled reference

413

sample, using the concentrations provided by NMR. This qNMR-MS method provides excellent

414

quantitation, and can significantly reduce matrix effects in MS analysis. This method can achieve

415

quantitative results comparable to the internal standard method and thus, when iSTDs are not 20

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commercially available or very expensive, the qNMR-MS method is a viable alternative. Based

417

on its quantitation accuracy, small sample usage, and reduction of matrix effects, this qNMR-MS

418

approach should be a highly useful method for metabolomics research. Importantly, the analytical

419

development and application of this novel and useful quantitative tool offers new avenues for the

420

routine quantitation of amino acids in blood samples and can, in principle, be extended to a wide

421

variety of metabolites in different biological samples.

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423

ASSOCIATED CONTENT

424

Supporting Information

425

The supporting tables and figures are available free of charge via the Internet at http://

426

pubs.acs.org/.

427 428

AUTHOR INFORMATION

429

Corresponding Authors:

430

*Phone: 206-543-9709. Fax: 206-616-4819. E-mail: [email protected].

431

*Phone: 480-301-6016. Fax: 480-301-7017. E-mail: [email protected]

432 433

Notes

434

The authors declare no potential conflicts of interest.

435 436

ACKNOWLEDGMENTS

437

This work was supported by the NIH (P30 DK035816, P30 CA015704, 1R01ES030197-01), the

438

University of Washington and the College of Health Solutions at Arizona State University.

439

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