Simultaneous Profiling of Lysoglycerophospholipids in Rice (Oryza

Mar 1, 2017 - Simultaneous Profiling of Lysoglycerophospholipids in Rice (Oryza sativa L.) Using Direct Infusion-Tandem Mass Spectrometry with Multipl...
0 downloads 9 Views 642KB Size
Subscriber access provided by UNIV OF CALIFORNIA SAN DIEGO LIBRARIES

Article

Simultaneous profiling of lysoglycerophospholipids in rice (Oryza sativa L.) using direct infusion-tandem mass spectrometry with multiple reaction monitoring Dong Kyu Lim, Changyeun Mo, Long Nguyen Phuoc, Giyoung Kim, and Sung Won Kwon J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.7b00148 • Publication Date (Web): 01 Mar 2017 Downloaded from http://pubs.acs.org on March 13, 2017

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 free 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 accessible to all readers and 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.

Journal of Agricultural and Food Chemistry 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.

Page 1 of 25

Journal of Agricultural and Food Chemistry

1

Simultaneous profiling of lysoglycerophospholipids in rice (Oryza sativa L.)

2

using direct infusion-tandem mass spectrometry with multiple reaction

3

monitoring

4

Dong Kyu Lim†, Changyeun Mo‡, Nguyen Phuoc Long†, Giyoung Kim‡, Sung Won

5

Kwon*,†,§

6 7



8

National University, Seoul 08826, Republic of Korea

9



Research Institute of Pharmaceutical Sciences and College of Pharmacy, Seoul

National Institute of Agricultural Sciences, Rural Development Administration,

10

Jeonju 54875, Republic of Korea

11

§

12

Republic of Korea

Plant Genomics and Breeding Institute, Seoul National University, Seoul 08826,

13 14

*Corresponding author: Sung Won Kwon (Email address: [email protected])

1 ACS Paragon Plus Environment

Journal of Agricultural and Food Chemistry

15

Abstract

16

White rice is the final product after the hull and bran layers have been removed

17

during the milling process. Although lysoglycerophospholipids (lysoGPLs) are only

18

occupy a small proportion in white rice, they are essential for evaluating rice

19

authenticity and quality. In this study, we developed a high-throughput and targeted

20

lipidomics approach that involved direct infusion-tandem mass spectrometry with

21

multiple reaction monitoring to simultaneously profile lysoGPLs in white rice. The

22

method is capable of characterizing 17 lysoGPLs within one minute. In addition,

23

unsupervised and supervised analyses exhibited a considerably large diversity of

24

lysoGPL concentrations in white rice from different origins. In particular, a

25

classification model was built using identified lysoGPLs that can differentiate white

26

rice from Korea, China, and Japan. Among the discriminatory lysoGPLs, for the

27

lysoPE(16:0) and lysoPE(18:2) compositions, there were relatively small within-

28

group variations, and they were considerably different among the three countries. In

29

conclusion, our proposed method provides a rapid, high-throughput, and

30

comprehensive format for profiling lysoGPLs in rice samples.

Page 2 of 25

31 32

Keywords: Oryza sativa L., lysoglycerophospholipid, discriminatory marker, direct

33

infusion-mass spectrometry, partial least squares discriminant analysis

2 ACS Paragon Plus Environment

Page 3 of 25

Journal of Agricultural and Food Chemistry

34

INTRODUCTION

35

Phospholipids (PLs), an important category of lipids, are known to be involved in

36

various cellular processes such as signal transduction, membrane transport, and

37

proliferation 1. Currently, PLs can be classified into glycerophospholipids (GPLs) and

38

sphingophospholipids, in which the basic difference is the backbone molecule. GPLs

39

consist of various lipid species that share a unique molecular structure that includes

40

a polar head, a common glycerol backbone, and fatty acid chains of different lengths

41

together with units of unsaturation 2. The main GPLs include phosphatidylcholine

42

(PC), phosphatidylethanolamine (PE), phosphatidylinositol (PI), phosphatidylserine

43

(PS), and phosphatidylglycerol (PG), among others 3. Of note, typical GPLs have two

44

different acyl chains, whereas their lyso forms consist of only one acyl chain in either

45

the sn-1 or sn-2 position of the glycerol backbone 4.

46

Recently, rice has been considered to be a more attainable source of dietary PLs 4-6.

47

In addition, lysoglycerophospholipids (lysoGPLs), including lysoPCs and lysoPEs,

48

are the main lipid components found in white rice and are considered to be a rice

49

quality parameter that is associated with the texture, rheological property, storage

50

stability, and glycemic index 7-8. However, the association between the lysoGPL

51

concentration and environmental factors, such as fertility, growth temperature, and

52

precipitation, has yet to be explored 4.

53

Since the fragmentation patterns of PLs and lysoGPLs in both positive and negative

54

ion modes of electrospray ionization-mass spectrometry (ESI-MS) are predictable,

55

various MS-based techniques have been developed to characterize the composition

56

of PLs in plant and biological fluids, including rice samples 2, 9-10. High-performance

57

liquid chromatography (HPLC) coupled with MS is well-developed, and it is currently

3 ACS Paragon Plus Environment

Journal of Agricultural and Food Chemistry

Page 4 of 25

58

the method of choice for the analysis of rice PLs 4. However, despite its notable

59

sensitivity and reproducibility, one major weakness of LC-MS-based methods is the

60

time-consuming separation process, which requires approximately 15-60 minutes

61

per sample analysis 2. However, a recently developed method called direct infusion-

62

tandem mass spectrometry (DI-MS/MS) has several advantages over

63

chromatography-coupled MS 11-14. DI-MS/MS pointedly and expeditiously provides

64

concise data and comprehensive MS/MS spectra via multiple fragmentation

65

techniques, which include product-ion analysis and neutral loss scan. Therefore, it is

66

suitable for global determination of many lipid species. Most importantly, DI-MS/MS

67

facilitates high-throughput analysis, which can eventually accelerate the

68

comprehensive understanding of lipids in biological systems 15.

69

In the current paper, we developed a sophisticated analytical method for

70

simultaneously characterizing main lysoGPLs in white rice samples using DI-ESI-

71

MS/MS via the multiple reaction monitoring (MRM) approach. MRM has been utilized

72

for high-throughput and quantitative analysis in proteomics and metabolomics due to

73

its high sensitivity, specificity, and precision 16-17. The proposed method was

74

implemented to analyze lysoGPLs in white rice from Korea, China, and Japan. Using

75

this approach, we were able to characterize 17 lysoGPLs (6 lysoPCs, 7 lysoPEs, and

76

4 lysoPGs) within one minute for each sample with high specificity and sensitivity.

77

Furthermore, we also applied unsupervised hierarchical clustering, principal

78

component analysis (PCA), and supervised partial least squares discriminant

79

analysis (PLS-DA) to explore the divergence of the lysoGPL distribution in white rice

80

samples originating from different countries.

81

4 ACS Paragon Plus Environment

Page 5 of 25

Journal of Agricultural and Food Chemistry

82

MATERIALS AND METHODS

83

Materials and reagents

84

Different white rice samples were randomly collected from local markets in Korea,

85

China, and Japan. More details about the samples are available in Table 1. The

86

collected samples were stored at −70°C until processed for analysis. Caffeine was

87

purchased from Sigma-Aldrich (St Louis, MO, USA). All HPLC grade solvents,

88

including acetonitrile, methanol, and isopropanol, were obtained from J. T. Baker

89

(Avantor, Phillipsburg, NJ, USA). Polytetrafluoroethylene (PTFE) 0.20 µm pore

90

syringe filters were purchased from Advantec (Tokyo, Japan).

91

Sample preparation

92

White rice samples from Korea, China, and Japan were freeze-dried in a freeze drier

93

(Operon, Gimpo, Korea). Then, all samples were pulverized. The powdered samples

94

were sieved using two sieves (250 µm and 125 µm) and extracted as previously

95

described 7. Concisely, 150 mg of powder with 1 mg caffeine as the internal standard,

96

was initially extracted with 6 mL of 75% isopropanol at 90°C for 2 h in a water bath.

97

The individual extract was then centrifuged at 16,000 g for 5 min. Finally, 1 mL of

98

supernatant was filtered using a PTFE syringe filter and transferred to a vial. Five

99

mixtures that contained the same volume of every samples were used as quality

100

control (QC) samples.

101

DI-MS/MS and DI-MRM analysis conditions

102

An Agilent triple-quadrupole mass spectrometry 6460 system (Agilent, CA, USA)

103

equipped with an ESI ion source was employed to perform all experiments. The

104

analyses were conducted in positive (lysoPCs) and negative (lysoPEs and lysoPGs)

105

ion modes. A 50% acetonitrile flow with a velocity of 0.2 mL/min was maintained to 5 ACS Paragon Plus Environment

Journal of Agricultural and Food Chemistry

Page 6 of 25

106

reduce the contamination of the ion source during the sample injection process. The

107

analysis time was approximately one min for each sample with an injection volume of

108

5 µL. All experiments were performed using a random sequence to avoid technical

109

bias. The DI-MS/MS product-ion mode was initially used for detecting the

110

fragmentation patterns of targeted lysoGPL species, and the fragments with the

111

highest intensities were selected for MRM transition setting. The parameters for the

112

mass spectrometry were set as follows: scan time = 200 scans/sec, cell accelerator

113

voltage = 7 V, fragmentor voltage = 135 V, gas flow = 11 L/min, gas temperature =

114

325°C, nebulizer = 40 psi, and capillary voltage = 4 kV. Pure nitrogen (99.99%) was

115

utilized as the collision, nebulizing, and drying gas for the system. A mass range of

116

m/z 50 to m/z 1,000 was acquired at a collision energy of 20 eV for both positive and

117

negative ion modes. The working conditions for DI-MRM followed the settings of DI-

118

MS/MS. The information on the precursor ions and product ions from the MRM

119

experiments is provided in Table 2. Only lipid species with relative standard

120

deviations lower than 10% in the QC samples were used for statistical analysis. The

121

lipid identification was confirmed using LipidBlast, METLIN, and our in-house library

122

18-19

123

Data processing and univariate statistical analysis

124

DI-MRM-MS data of all targeted compounds were manually detected to guarantee

125

that only true analytical spectra were further processed. All data were processed

126

using Agilent Mass Hunter Workstation software version B.06.00. Relative standard

127

deviations (RSDs) from the QC samples were employed to assess the precision. The

128

RSD (%) of a specific feature was calculated by dividing the sample standard

129

deviation for the sample mean and multiplying by 100. All processed data were

130

furthered scaled using the Pareto scaling method prior to univariate and multivariate

.

6 ACS Paragon Plus Environment

Page 7 of 25

Journal of Agricultural and Food Chemistry

131

statistical analysis. Analysis of Variance (ANOVA) and Fisher’s LSD post-hoc test

132

were performed. A p-value of < 0.05 and a false discovery rate (FDR) of < 0.1 were

133

used as the level of statistical significance.

134

Multivariate Data Analysis

135

The Pareto-scaled data were utilized for all multivariate analyses. Unsupervised

136

hierarchical clustering and PCA were first performed to verify the segregation

137

tendency of different groups. Thereafter, a prediction model was built using PLS-DA

138

followed by a 10-fold cross-validation and 1,000-time permutation test. Any features

139

that had a variable importance in projection (VIP) score of > 1, a p-value of < 0.05,

140

and a false discovery rate (FDR) of < 0.1 in the univariate analysis were identified as

141

discriminatory markers, which are mainly responsible for the separation among white

142

rice samples from Korea, China, and Japan. A random forest classifier was also

143

applied for classifying the samples. All analyses were performed using

144

Metaboanalyst 3.0, which is an online platform for comprehensive metabolomics

145

data analysis 20.

146 147

RESULTS AND DISCUSSION

148

Characterization and targeted lipid profiling of white rice lysoGPLs

149

White rice is what remains after removing the hull and bran layer of rough rice during

150

the milling process 21. The quantity of PLs in white rice is much lower than in the

151

whole grain. However, the nutritional impact of PLs in white rice has been

152

acknowledged because white rice is the most consumed form of rice 22. Furthermore,

153

the PL composition, especially lysoGPLs (approximately 50% of starch lipids), is

154

considered to be an important factor that affects rice quality 4. Several efforts have 7 ACS Paragon Plus Environment

Journal of Agricultural and Food Chemistry

Page 8 of 25

155

been made to analyze lysoGPLs in rice starch using thin layer chromatography, gas

156

chromatography, and liquid chromatography coupled with mass spectrometry 7, 23.

157

However, previous studies only focused on characterizing lysoPCs and lysoPEs.

158

Additionally, there have been no reports on the divergence of lysoGPLs in white rice

159

samples that originate from different countries. In this study, we not only

160

characterized lysoPCs, lysoPEs, and lysoPGs but also investigated the diversity of

161

lysoGPL components in white rice samples from Korea, China, and Japan. In

162

particular, this study implemented the novel approach of direct infusion-multiple

163

reaction monitoring mass spectrometry (DI-MRM-MS), which requires a low amount

164

of sample and shortens the analysis time but provides concise data with high

165

sensitivity and specificity.

166

Since lysoPCs and lysoPEs are the two main lysoGPLs in white rice, our

167

experiments focused on characterizing lipid species that belong to these two classes

168

4

169

performed. As a dominant type of starch lipid located in rice endosperm, lysoPCs

170

constitute approximately 13-24% of the total starch lipids 24. It is of importance to

171

note that lysoPC(16:0) is ubiquitously present in the endosperm of rice, whereas

172

lysoPC(18:0) is primarily located in the core of the endosperm. However,

173

lysoPC(18:2) and lysoPC(18:1) are prominent in the outer region of the endosperm

174

25

175

endosperm. lysoPEs have been thought to have a close association with the quality

176

of rice, although its role was originally known for cell-mediated signaling and specific

177

enzyme activation 26. In a recent report that evaluated the unintended effects of

178

transgenic rice, lysoPEs appeared vulnerable to environmental changes 27. However,

179

a previous study applied a non-targeted approach without using a proper extraction

. Additionally, characterization of the unknown lysoPGs in white rice was also

. Similar to lysoPCs, lysoPEs are also a major type of starch lipid in the rice

8 ACS Paragon Plus Environment

Page 9 of 25

Journal of Agricultural and Food Chemistry

180

method for lysoGPLs in rice 7. lysoPGs have been regarded as minor compounds in

181

rice endosperms, and there has been no targeted analysis of lysoPGs in white rice.

182

The predominant bound fatty acids in lysoGPLs include myristic acid (C14:0, 0.2%),

183

palmitic acid (C16:0, 15.6%), palmitoleic acid (C16:1, 0.2%), stearic acid (C18:0,

184

1.4%), oleic acid (C18:1, 39.4%), linoleic acid (C18:2, 40.6%), and linolenic acid

185

(C18:3 1.5%) 22. Collectively, we targeted six important compounds that are reported

186

as follows: lysoPC(14:0), lysoPC(16:0), lysoPC(16:1), lysoPC(18:0), lysoPC(18:1),

187

and lysoPC(18:2)

188

lysoPE(18:0), lysoPE(18:1), lysoPE(18:2), and lysoPE(18:3) were also selected. In

189

particular, lysoPG(14:0), lysoPG(16:0), lysoPG(18:1), and lysoPG(18:2), which could

190

be detected in our preliminary study, were also included in the current investigation.

191

The preliminary study and the characterizations of lysophosphatidylinositol (lysoPI),

192

lysophosphatidylserine (lysoPS), and lysophosphatidic acid (lysoPA) are provided in

193

Supplementary file 1. Detailed information regarding the targeted lipid species are

194

provided in Table 2. The instrument stability was estimated via the RSDs of the

195

internal standard’s spectrum height (m/z of 195.1 to 138.1 in positive ion mode and

196

m/z of 179.0 to 164.0 in negative ion mode) of all analyzed samples. The overall

197

RSD was 1.323% in positive ion mode and 2.641% in negative ion mode.

198

Structure elucidation of the targeted lipids using DI-MS/MS

199

Lysophohsphatidylcholine (lysoPC)

200

Figure 1 and Supplementary file 2 show the product-ion mode DI-MS/MS spectra

201

of the identified lysoPCs. Theoretically, every lysoPC species shares a common

202

prominent fragment ion at m/z 184.1 [Phosphocholine]+, which is the specific head

203

group of lysoPCs. In our experiment, most lysoPCs were revealed at m/z 184.1 as

23

. For the same reason, lysoPE(14:0), lysoPE(16:0), lysoPE(16:1),

9 ACS Paragon Plus Environment

Journal of Agricultural and Food Chemistry

Page 10 of 25

204

the major spectrum. The spectrum at m/z 258.1 [M-fatty acid-OH]+ was also

205

observed in four species, except lysoPC(16:1) and lysoPC(18:0), which were

206

properly generated from the dissociation of the specific fatty acid from the precursor

207

ion. LysoPC(16:0), lysoPC(18:0), lysoPC(18:1), and lysoPC(18:2) all had unique

208

spectra generated due to the dissociation of [Phosphocholine]+ from their protonated

209

precursor ions at m/z 313.3, 341.3, 339.3, and 337.3. [Phosphocholine]+ was later

210

selected as a product ion for DI-MRM analysis. The presence of [M+H-H2O]+

211

revealed additional information about the single acyl chain of each lysoPC. Finally,

212

six lysoPCs were confirmed, as listed in Table 2. In addition, lysoPC(16:0) was

213

determined to be the most abundant type of lysoPC. Their concentrations decline in

214

the following order: lysoPC(18:2), lysoPC(18:1), lysoPC(14:0), lysoPC(18:0),

215

lysoPC(16:1). Our findings are generally similar to a previous study, except for the

216

deviation in concentration of lysoPC(16:0) 23.

217

Lysophosphatidylethanolamine (lysoPE)

218

The spectra of identified lysoPEs for product-ion mode DI-MS/MS are shown in

219

Figure 1 and Supplementary file 3. Except for lysoPE(16:1), every lysoPE species

220

exhibited a common prominent fragment ion at m/z 196.1, [M-H-fatty acid]-. The

221

spectrum with the highest intensity for every lysoPE, except lysoPE(18:0), was [fatty

222

acid-H]-. Therefore, [fatty acid-H]- was later selected as a product ion for DI-MRM

223

analysis. The [fatty acid-H]- ions of lysoPE(14:0), lysoPE(16:0), lysoPE(16:1),

224

lysoPE(18:0), lysoPE(18:1), lysoPE(18:2), and lysoPE(18:3) were [myristic acid-H]-,

225

[palmitic acid-H]-, [palmitoleic acid-H]-, [stearic acid-H]-, [oleic acid-H]-, [linoleic acid-

226

H]-, and [linolenic acid-H]-, respectively. Noticeably, there were two spectra that were

227

properly comprised of other compounds in the lysoPE(18:0) spectra. Finally, seven

228

lysoPEs were confirmed (Table 2). Similar to lysoPC(16:0), lysoPE(16:0) was 10 ACS Paragon Plus Environment

Page 11 of 25

Journal of Agricultural and Food Chemistry

229

determined to be the most abundant type of lysoPE. Their concentrations decline in

230

the following order: lysoPE(18:2), lysoPE(18:1), lysoPE(14:0), lysoPE(18:3),

231

lysoPE(18:0), lysoPE(16:1).

232

Lysophosphatidylglycerol (lysoPG)

233

Figure 1 and Supplementary file 4 show the specific fragmentation patterns of the

234

lysoPGs. Every lysoPG has three unique spectra, namely, [fatty acid-H]-, m/z 153.1

235

for [M-fatty acid-glycerol head group]-, and m/z 227.2 for [M-H-fatty acid]-. Finally,

236

four lysoPGs were identified as listed in Table 2. LysoPG(16:0), similar to

237

lysoPC(16:0) and lysoPE(16:0), were of the highest proportion in the analyzed

238

samples. However, the concentration of lysoPG(18:2), lysoPG(18:1), and

239

lysoPG(14:0) decline in this order.

240

Variation of lysoGPLs in rice samples from different countries

241

The unsupervised cluster analyses (Euclidean distance measurement, complete

242

clustering algorithm) initially showed a relative lysoGPL divergence for the white rice

243

samples from Korea, China, and Japan (Supplementary file 5). In particular, there

244

were two compact clusters of white rice samples found from Korea (cluster 1) versus

245

China and Japan (cluster 2) using the processed lysoPE data. Next, PCA and PLS-

246

DA were conducted to investigate the divergence of the white rice samples from the

247

three countries. In positive ion mode, a PLS-DA model from lysoPCs processed data

248

was shown to be a good model for classifying white rice samples from different

249

origins. The 2D score plots uses two most important components of PCA and PLS-

250

DA, which are shown in Figure 2. A considerable overlap of 95% confident intervals

251

(CIs) among the three groups was observed. The prediction accuracy, goodness-of-

252

fit (R2), class prediction ability (Q2), and B/W-based p-value were 0.85, 0.82, 0.70,

11 ACS Paragon Plus Environment

Journal of Agricultural and Food Chemistry

Page 12 of 25

253

and