Subscriber access provided by STEPHEN F AUSTIN STATE UNIV
Article
Discovering regulated metabolite families in untargeted metabolomics studies Hendrik Treutler, Hiroshi Tsugawa, Andrea Porzel, Karin Gorzolka, Alain Tissier, Steffen Neumann, and Gerd Ulrich Balcke Anal. Chem., Just Accepted Manuscript • DOI: 10.1021/acs.analchem.6b01569 • Publication Date (Web): 24 Jul 2016 Downloaded from http://pubs.acs.org on July 25, 2016
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.
Analytical 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 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
1
Discovering regulated metabolite families in
2
untargeted metabolomics studies
3
Hendrik Treutler2, Hiroshi Tsugawa4, Andrea Porzel3, Karin Gorzolka2, Alain Tissier¹, Steffen
4
Neumann2, and Gerd Ulrich Balcke¹*
5 6 7 8 9 10 11
¹Leibniz Institute of Plant Biochemistry, Dept. of Cell and Metabolic Biology, Weinberg 3, D-06120 Halle/Saale, Germany 2
Leibniz Institute of Plant Biochemistry, Dept. of Stress and Developmental Biology, Weinberg 3, D-06120
Halle/Saale, Germany 3
Leibniz Institute of Plant Biochemistry, Dept. of Bioorganic Chemistry, Weinberg 3, D-06120 Halle/Saale,
Germany 4
RIKEN Center for Sustainable Resource Science, Yokohama, Kanagawa, 230-0045, Japan
12
ABSTRACT: The identification of metabolites by mass spectrometry constitutes a major bottleneck which considerably limits the throughput of metabolomics studies in biomedical or plant research. Here, we present a novel approach to analyze metabolomics data from untargeted, data-independent LC-MS/MS measurements. By integrated analysis of MS1 abundances and MS/MS spectra, the identification of regulated metabolite families is achieved. This approach offers a global view on metabolic regulation in comparative metabolomics. We implemented our approach in the web application ‘MetFamily’, which is freely available at http://msbi.ipb-halle.de/MetFamily/. MetFamily provides a dynamic link between the patterns based on MS1-signal intensity and the corresponding structural similarity at the MS/MS level. Structurally related metabolites are annotated as metabolite families based on a hierarchical cluster analysis of measured MS/MS spectra. Joint examination with principal component analysis of MS1 patterns, where this annotation is preserved in the loadings, facilitates the interpretation of comparative metabolomics data at the level of metabolite families. As a proof of concept, we identified two trichomespecific metabolite families from wild-type tomato Solanum habrochaites LA1777 in a fully unsupervised manner and validated our findings based on earlier publications and with NMR. 13 14
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
15
INTRODUCTION
16
Metabolomics experiments provide small molecule measurements from biological samples in
17
a broad range of applications including cancer research, drug development, and plant
18
science1-5. Mass spectrometry (MS) coupled to liquid chromatography (LC) is an essential
19
analytical technology to acquire a snapshot of the metabolic state of a sample. Based on
20
untargeted MS measurements, it is possible to measure thousands of detectable signals as
21
MS1 features per chromatographic run and to acquire signal profiles of small molecules
22
based on retention time (RT), accurate mass-to-charge ratio (m/z), and abundance6.
23
Univariate or multivariate statistical analysis is then applied to signal profiles of different
24
sample groups to detect MS1 features that are group-discriminating or of interest based on
25
the experimental design.
26
Hints for the structural characterization or even identification of MS1 features are obtained
27
from tandem MS measurements (MS/MS), where the metabolites undergo fragmentation
28
resulting in MS/MS spectra. MS/MS spectra can be collected by data-dependent acquisition
29
(DDA) or in data-independent acquisition (DIA) mode, requiring a trade-off between dwell
30
time and spectral purity7,8. Using DIA, it is possible to collect thousands of MS1 features from
31
a single LC run as well as the associated MS/MS spectra9. However, in most studies, the
32
identity of the vast majority of MS1 features is unknown. Structure elucidation of each
33
individual MS1 feature from complex biological samples, e.g. by NMR and interpretation of
34
MS/MS spectra, is currently out of reach. Thus, the biochemical relation between MS1
35
features remains largely unexplained.
36
Group-discriminating MS1 features are often structurally related, e.g. if particular metabolic
37
pathways are differentially regulated as a consequence of disease10, stress11, genetic
38
manipulation12 or in the case of organ-specific accumulation of structurally related
39
metabolites13. Structurally related metabolites often exhibit latent similarity in their MS/MS
40
spectra in which characteristic fragmentation patterns arise from common functional groups
41
or structural features. For instance, upon negative mode ionization and collision-induced
42
dissociation (CID), adenylated metabolites such as adenyl nucleotides, CoA esters, and
43
NAD cofactors form a fragment ion of m/z 134.0472 Da (C5N5H4-), which corresponds to the
44
mass of the purine core element. Under the same conditions, glucosides often form a
45
fragment ion of m/z 161.0455 Da (C6H9O5-), characteristic of the hexose side-chain. Thus,
46
based on existing information, precursor ions showing these characteristic fragments could
47
be grouped together as metabolites sharing common structural features, or metabolite
48
families. However, even pre-existing MS/MS information characteristic of certain metabolite
49
families is sparse. Hence, novel approaches that turn MS1- and MS/MS-features into
50
interpretable information within a reasonable amount of time are urgently needed. These
51
approaches should be able to relate MS1 abundances to latent similarity at the MS/MS
52
spectral level.
ACS Paragon Plus Environment
Page 2 of 18
Page 3 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
53
Recently, several studies reported on the organization of hundreds of MS1 features by
54
molecular networking depicting relationships between structurally related molecules based
55
on their spectral similarity14-17. However, an explicit assignment of MS1 features to similarity
56
clusters and the source of structural similarity between up- or downregulated MS1 features
57
was not apparent. Previously, Wagner et al. used GC-MS data for hierarchical cluster
58
analysis (HCA) to arrange known and structurally related metabolites18. Using HCA, it was
59
possible to identify structural classes amongst 59 metabolites. Rasche et al. described FT-
60
BLAST19 to compare spectra and computationally derived fragmentation trees, revealing
61
clusters of structurally closely related compounds. However, neither Wagner et al. nor
62
Rasche et al. considered the abundance of MS1 features in different samples.
63
Inspired by the idea to comprehensively analyze molecular networks and to explicitly group
64
MS1 features, we performed HCA across hundreds of MS/MS spectra obtained from
65
glandular trichomes of wild-type tomato Solanum habrochaites LA1777. Glandular trichomes
66
of vascular plants such as tomato are metabolic factories producing a plethora of secondary
67
metabolites involved in plant defense and the communication with its environment13,20. We
68
considered characteristic fragments prevalent in MS/MS similarity clusters to assign MS1
69
features to certain trichome-specific metabolite families. In addition, we applied principal
70
component analysis (PCA) to metabolite profiles for the discovery of group-discriminating
71
MS1 features and combined the information on metabolite families obtained from HCA
72
(MS/MS feature similarity) with the PCA loadings (sample-specific MS1 abundance). This
73
combination of statistical analyses of MS1 feature abundances and MS/MS structural
74
annotations can not only speed-up the individual analysis steps, but allows to address new
75
questions, such as the discovery of group-discriminating metabolite families with biochemical
76
relevance. Here, we exemplarily selected two metabolite families being produced by tomato
77
glandular trichomes which play important roles in the plant defense against herbivores,
78
namely the branched chain acyl sugars21-24 and the sesquiterpene glucosides which are
79
potentially poisonous to plant herbivores25,26. We implemented the proposed methodology in
80
the Open Source web application ‘MetFamily’ and made our approach freely available
81
(accessible via http://msbi.ipb-halle.de/MetFamily/).
82
MATERIALS AND METHODS
83
Fragment matrix assembly. MetFamily processes a metabolite profile of a set of MS1
84
features together with an MS/MS library comprising MS/MS spectra for these MS1 features.
85
We obtain both data sets as output of MS-DIAL9, where the metabolite profile contains
86
extracted m/z / retention time features from MS1 scans with the corresponding feature
87
abundances (Data S-1) and the MS/MS library contains deconvoluted MS/MS spectra of the
88
MS1 features with relative intensities of the fragment ions (Fig. 1, Data S-2). Instead of MS-
89
DIAL, other tools can produce similar input data as described in Note S-3. Upon data import,
90
MetFamily aligns all MS/MS spectra with a user-defined m/z error to create the fragment
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 4 of 18
91
matrix as shown in Fig. 2, where the relative intensity of unique MS/MS fragments is
92
associated with the corresponding MS1 feature (i.e. precursor ion) and its MS1 abundance in
93
individual samples (Data S-3). For our showcase this preprocessing step takes one or two
94
minutes. The fragment matrix is assembled as follows.
95
First, we process the set of all fragments. Here, we remove fragments with an intensity
96
below a user-defined noise threshold. We normalize fragment intensities within each MS/MS
97
spectrum to a maximum of 1 (base peak). In addition, we add one neutral loss (NL) for each
98
fragment by calculating the mass of the neutral loss as the difference of fragment m/z and
99
precursor m/z in MS1 (intentionally a negative m/z value). The intensity of the NLs is chosen
100
equal to the intensity of the corresponding fragment. In this manuscript, we treat fragments
101
and NLs equally by denoting both as fragments.
102
Second, we align the individual MS/MS spectra (Figures 1 and 2). Here, we match fragments
103
from different MS/MS spectra with similar m/z and merge these to fragment groups of unique
104
m/z. We call the mean of all fragment m/z’s of one fragment group the fragment group mean.
105
For the alignment of the individual MS/MS spectra, we use an efficient algorithm
106
implemented in the R package xcms31 (version 1.44.0). This algorithm avoids the usage of
107
fixed m/z bins with a heuristic approach that groups fragments with similar m/z and
108
decomposes contiguous fragment groups using hierarchical clustering. Here, a fragment m/z
109
matches a fragment group, if
110
|
−
|≤
/
+
∗
/
/1 6,
111
where
112
parameter representing the absolute m/z error, and
113
m/z error in ppm (parts per million). See Table S-3 for a summary of user-customizable
114
parameters. After fragment group assembly, we remove fragment groups which correspond
115
to isotopic ions. Specifically, we detect fragment groups with a m/z difference of 1.0033 Da
116
(regarding the fragment group means +/- m/z error) which correspond to 13C isotopes. Third,
117
we create the fragment matrix with one row for each unique MS1 precursor and columns of
118
fragment groups (Fig. 2). We register the intensity of each fragment in the row and column of
119
the corresponding MS1 feature and fragment group, respectively. For each MS1 feature, we
120
generate an ID given by “m/z / retention time” in MS1.
121
Finally, we add the set of MS1 abundances in all samples and other annotations to each row
122
resulting in a combined data matrix. The combined data matrix represents the data basis for
123
subsequent analyses and can be examined in a spreadsheet program for complementing
124
analyses (Fig. 2 and Data S-3).
125
MS1 / MS/MS combined data analysis. A principal component analysis (PCA) for the set of
126
is the fragment m/z,
MS1 features in
is the fragment group mean, /
samples is performed as follows. Given the
ACS Paragon Plus Environment
/
is a
is representing the relative
by
matrix of scaled MS1
Page 5 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
127
abundances, we calculate the scores and the loadings. Here, MetFamily supports the
128
scaling functions log2 transformation, Pareto scaling, Centering, and Autoscaling27. The
129
scores comprise one data point per sample and reflect differences between samples. The
130
loadings comprise one data point per MS1 feature and emphasize MS1 features with
131
differential abundance between samples.
132
We perform a hierarchical cluster analysis (HCA) on MS/MS spectra of a set of MS1
133
precursor features as follows. We calculate the distance matrix of pairwise dissimilarities
134
between the MS/MS spectra of all MS1 features. Here, we provide different distance
135
functions to score common and distinct fragments. Specifically, we recommend the distance
136
function ‘Jaccard (intensity-weighted)’, which sums the intensities of common and disjoint
137
fragments:
138
!( !# ( $ ∩ !( !# ( $ ∪
( , )=1−
& ))
,
& ))
are the fragments in the MS/MS spectrum of MS1 feature ( and ) . To
139
where
140
suppress noise and emphasize the importance of intense fragments,
141
intensities of the fragments as follows. Intensities smaller than 0.2 are mapped to 0.01,
142
intensities greater or equal than 0.2 and smaller than 0.4 are mapped to 0.2, and intensities
143
greater or equal than 0.4 are mapped to 1. Given the distance matrix, we calculate a
144
hierarchical cluster dendrogram where each cluster of MS1 features represents a putative
145
metabolite family.
146
For each cluster of MS/MS spectra, we calculate the cluster-discriminating power for
147
prevalent fragments as follows. For each fragment present in more than 50% of the MS/MS
148
spectra in a cluster, we measure the ability of this fragment to discriminate spectra in the
149
cluster from spectra outside the cluster as
and
,-+(
.,/ )
=
+0−+
*+ discretizes the
1
150
where
151
3-th cluster containing the fragment
152
th cluster containing the fragment
153
cluster. If +
154
fragment is in the range from zero to one and a fragment with a cluster-discriminating power
155
close to one indicates a very specific fragment.
156
Clusters containing fragments with a cluster-discriminating power close to one indicate
157
metabolite families. Currently, the annotation of metabolite families based on characteristic
158
MS/MS fragments is performed by a mass spectrometry expert who manually evaluates the
159
hierarchy of putative metabolite families and labels a set of clusters with functional and/or
.,/
is the 2-th fragment of the 3-th cluster, + 0 is the number of MS/MS spectra in the
1
.,/ ,
.,/ ,
+
and
> + 0 , then we define ,-+(
1
is the number of MS/MS spectra outside the 3is the total number of MS/MS spectra in the 3-th
.,/ )
= 0. The cluster-discriminating power of a
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
160
structural annotations based on characteristic fragment patterns. Each MS1 feature can be
161
labeled with one annotation, i.e. membership in a metabolite family.
162
Plant growth and harvest. Solanum habrochaites LA1777 was grown on soil in a
163
greenhouse (65% humidity, light intensity: 165 µmol s-1 mm2, 21-24 °C, 16 h light period) and
164
watered with tap water every two days. The plant material was harvested 12 weeks after
165
germination during the light phase in the early afternoon. For trichome harvest, tomato
166
leaves were put on the hand palm (using gloves) and trichomes were quickly brushed off the
167
leaves by a 2 cm broad paint brush which was dipped in liquid nitrogen. The frozen
168
trichomes were collected in a mortar filled with liquid nitrogen. Trichomes from 15 plant
169
leaves were pooled under cryogenic conditions and further purified by sieving through steel
170
sieves of 150 µm mesh width (Retsch, Hahn, Germany). After removal of trichomes, the
171
plant leaves were immediately quenched in liquid nitrogen. Pooled leaves were ground in a
172
mortar under liquid nitrogen conditions. After evaporation of all liquid nitrogen during storage
173
at -80 °C leaves and trichomes were lyophilized overnight and stored in a deep freezer until
174
extraction.
175
Metabolite extraction. Using wall-reinforced cryo-tubes of 1.6 mL volume (Precellys Steel
176
Kit 2.8mm, Peqlab Biotechnologie GmbH, Erlangen, Germany) filled with 5 steel beads (3
177
mm), 25 mg aliquots of dry leaf or trichome powder was suspended in 900 µL
178
dichloromethane/ ethanol (-80 °C). Then, 200 µL of 50 mM aqueous ammonium formate/
179
formic acid buffer (0 °C, pH 3) was added to each vial and two rounds of cell rupture/
180
metabolite extraction were conducted by FastPrep bead beating (60 s, speed 5.5 m/s, 1st
181
round -80 °C, 2nd round room temperature, FastPrep24 instrument with cryo adapter, MP
182
Biomedicals LLC, Santa Ana, CA, USA). After phase separation by centrifugation at 20,000
183
g (2 min, 0°C) the aqueous phase was removed and 600 µL of the organic phase was
184
collected. Following, 500 uL tetrahydrofuran (THF) was added to exhaustively extract
185
hydrophobic metabolites and the Fastprep and centrifugation were repeated accordingly.
186
The THF supernatant was combined with the first organic phase extract and dried in a
187
stream of nitrogen gas. The dried extract was re-suspended in 150 µL 75% methanol
188
(aqueous) and filtered over 0.2 µm PVDF.
189
Analytical conditions for liquid chromatography and mass spectrometry. 0.5 µL
190
methanolic extract was injected into an Acquity-UPLC (Waters Inc.) and separated on a
191
Nucleoshell RP18 (150 mm x 2 mm x 2.7 µm; Macherey & Nagel, Düren, Germany) at 40°C.
192
The mobile phase A was 0.33 mM ammonium formate with 0.66 mM formic acid in water;
193
mobile phase B was acetonitrile. The gradient was 0 min, 5% B; 2 min, 5 % B; 19 min, 95%
194
B; 21 min, 95% B; 21.1 min, 5% B; 24 min, 5% B. The column flow rate was 0.4 mL/min, the
195
autosampler temperature was 4 °C.
ACS Paragon Plus Environment
Page 6 of 18
Page 7 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
196
ESI-(-)-Mass spectrometry was performed on an AB Sciex TripleTOF 5600 system (Q-TOF)
197
equipped with a DuoSpray ion source. All analyses were performed at the high sensitivity
198
mode for both TOF MS1 and product ion scan. The mass calibration was automatically
199
performed every 20 injections using an APCI calibrant solution via a calibration delivery
200
system (CDS). The instrument (TripleTOF 5600, Sciex, Toronto, Canada) was configured to
201
simultaneously acquire high resolution MS/MS spectra for all MS1 features (sequential
202
window acquisition of all theoretical fragment-ion spectra, SWATH)28 (Fig. S-1). The SWATH
203
parameters were MS1 accumulation time, 150 ms; MS2 accumulation time, 20 ms; collision
204
energy, -45 V; collision energy spread, 35 V; cycle time, 1160 ms; Q1 window, 25 Da; mass
205
range, m/z 65–1250. The other parameters were curtain gas, 35; ion source gas 1, 60; ion
206
source gas 2, 70; temperature, 600 °C; ion spray voltage floating, -4.5 kV; declustering
207
potential, 35 V.
208
Raw data processing. After measurement, raw data of triplicate trichome and trichome-free
209
leaf material was converted from the vendor file format (in our case *.wiff) into the common
210
file format of Reifycs Inc. (Analysis Base File format *.abf) using the freely available Reifycs
211
ABF converter (http://www.reifycs.com/AbfConverter/index.html).This process took about one
212
minute per sample. After conversion, the freely available MS-Dial software was used for
213
feature detection, ion species annotation, compound spectra extraction, and peak alignment
214
between samples9. Data processing by MS-Dial using the parameters in Table S-1 took
215
about 30 min. Data processing by MetFamily using the parameters in Table S-2 took 1 min.
216
Notably, neither the use of SWATH-triggered CID fragmentation nor the use of MS-Dial are
217
prerequisite to run MetFamily. Any data independent or data dependent acquisition to collect
218
MS/MS spectra and other peak picking and deconvolution software can alternatively be used
219
29-32
220
and a msp-type spectral library which are formatted as exemplified in Data S-1 and Fig. 1,
221
and described in Note S-3. However, as unique feature, MS-Dial jointly deconvolutes MS1
222
and MS/MS features and automatically predicts the precursor ion when DIA was applied. Via
223
the Reifycs ABF converter, MS-DIAL accepts all of major MS vendor-formats as well as the
224
common mzML data and is applicable to either DIA or DDA MS/MS fragmentation methods.
225
Substance Purification. Since NMR requires purified analytes in the upper µm range, 1 kg
226
of LA1777 leaf material was surface-extracted with methanol for 2 h. After evaporation, a
227
methanolic concentrate of this extract was produced and injected into a LC system in 100 µL
228
increments. For peak separation using semi-preparative HPLC and an analysis by mass
229
spectrometry (1260 Infinity system, Agilent), a full scan between 200-800 m/z was performed
230
after negative electrospray ionisation (ion source: API-ES, gas temperature: 350 °C, drying
231
gas 10 mL/min, nebulizer pressure 35 psig, capillary voltage 4500 V). For HPLC, a XTerra
232
prep MS C18 column (5 µm x 7.8 mm x 150 mm; Waters) was used and run at a flow rate of
233
6 mL/min at 25 °C. Solvent A was 0.3 mM ammonium formate acidified with formic acid to
. In that case, their output has to be provided as a text file containing the peak intensities
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
234
pH 6.2. Solvent B was acetonitrile. Gradient conditions were: 0-5 min 5% B; 5-87 min linear
235
gradient to 95% B; 87-88 min 95% B; 88-90 min 5% B. For fractionation, m/z 605.5, 737.5,
236
and 751.5 triggered the selective collection. A make-up pump that transferred an aliquot of
237
the eluate to the mass analyser was set to 0.5 mL/min 50% A - 50% B. Subsequently, all
238
collected fractions were dried by lyophilisation prior to NMR analysis.
239
Analytical conditions for NMR. NMR spectra were recorded on an Agilent/Varian VNMRS
240
600 NMR spectrometer operating at a proton NMR frequency of 599.83 MHz using a 5 mm
241
inverse detection cryoprobe. 2D NMR spectra were recorded using standard pulse
242
sequences (gDQCOSY, zTOCSY, gHSQCAD, gHMBCAD) implemented in Agilent (Varian)
243
VNMRJ 4.2A (CHEMPACK 7.1) spectrometer software. A TOCSY mixing time of 80 msec
244
was used. HSQC experiments were run with multiplicity editing and optimized for 1JCH = 146
245
Hz. HMBC experiments were optimized for a long-range coupling constant of 8 Hz; a 2-step
246
1
247
internal TMS (0 ppm).
248
RESULTS and DISCUSSION
249
As a proof of concept, we applied MS signal profiles to compare the metabolism of a special
250
plant organ in tomato, the glandular trichomes, to tomato leaves. Plant glandular trichomes
251
are secretory cells that protrude from the epidermis of many vascular plants. As “metabolic
252
factories”, they produce important drugs such as the antimalaria artemisinin or compounds
253
known to be involved in plant defense20,33. Here, we used Solanum habrochaites LA1777, a
254
wild type tomato accession with a rich profile of secondary metabolites produced in the
255
glandular trichomes34. We used six UPLC-(-)ESI-SWATH-MS/MS runs of triplicate trichome
256
and trichome-free leaf extracts (cf. Materials and Methods). However, MetFamily is
257
applicable to a larger number of samples and sample groups. We used MS-DIAL9 for data
258
preprocessing and exported (i) a signal profile with MS1 features and (ii) a spectral library
259
with deconvoluted MS/MS spectra extracted from the raw data (Data S-1 and Data S-2).
260
Using the software MetFamily, we aligned the MS/MS spectra of the spectral library resulting
261
in a novel fragment matrix structure and we fused this fragment matrix with the matching set
262
of MS1 features from the six individual samples to a single matrix (cf. Materials and Methods,
263
Figures 1 and 2, Data S-3, Table S-3).
JCH filter was used (130–165 Hz). Proton and carbon chemical shifts are referenced to
ACS Paragon Plus Environment
Page 8 of 18
Page 9 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
264 265
Figure 1. MS/MS library format before upload into MetFamily.
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 10 of 18
266 267
Figure 2. Combined data matrix after data pre-processing by MetFamily. The quantification
268
part (red, left) contains the MS1 features (rows; precursor ions) and the MS1 abundances in
269
individual samples. In the fragment part (green, right), the column headers are the mean of
270
binned MS/MS features (m/z or neutral loss) from the MS/MS library. Upper zoom: m/z;
271
retention time of feature (628.2452; 9.16) and its respective peak heights in two trichome
272
samples. Lower zoom: relative MS/MS intensities of fragment ion m/z 323.09570 Da. Arrows
273
to the left and to the right: MS1 abundances are analyzed using PCA and MS/MS spectra are
274
analyzed using HCA.
275
ACS Paragon Plus Environment
Page 11 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
276
MetFamily provides options to perform principal component analyses (PCA). Here, we
277
performed a PCA on 2585 MS1 features detected in glandular trichomes or leaves of LA1777
278
using Pareto-scaled data. In our example, PC1 shows a clear separation between trichomes
279
and leaves with R2=0.90, Q2=0.82 and a large number of MS1 features more abundant in
280
glandular trichomes (Fig. 3A and B). A Scree plot on additional principal components is
281
provided in Fig. S-2. Up to this point, all data has been acquired in a fully untargeted manner
282
and traditionally this is where group-discriminating MS1 features would be subjected to
283
tedious manual structure elucidation. In our approach, we amended the loadings plot of the
284
PCA (Fig. 3B) with a set of structural annotations based on characteristic MS/MS fragments
285
which we identified in different signal-clusters using HCA (Fig. 4). Using MetFamily, we
286
performed a hierarchical cluster analysis (HCA) on MS/MS spectra of the fragment matrix
287
(Data S-3). For PCA as well as for HCA, MetFamily allows the usage of thresholds for the
288
MS1 abundance of individual MS1 features (average of all samples) and for the log2-fold
289
change between the average MS1 abundance of two sample groups. Since we were
290
interested in abundant trichome-specific metabolites, we retained 135 MS1 features in the
291
HCA with MS1 abundances ≥20,000 counts and a log2-fold change ≥2 comparing trichomes
292
versus leaf. After hierarchical cluster analysis, the resulting dendrogram indicated a clear
293
segregation into two main clades with internal spectral similarity (Fig. 4).
294
The first signal-cluster contained 73 MS1 features which correspond to short branched chain
295
acyl sugars21 (AS, blue in Fig. 4). The structural similarities among members of this clade
296
was supported by prevalent fragment ions 87.0451 Da (theoretical mass for C4H7O2- is
297
87.0452) and 101.0603 Da (theoretical mass for C5H9O2- is 101.0608), which are indicative
298
for short branched acyl groups. These acyl moieties were esterified to sucrose as reflected
299
by the fragments 323.0957 Da (theoretical mass for C12H19O10- is 323.0984; sucrose-H2O-H-)
300
and 305.0864 Da (theoretical mass for C12H17O9- is 305.0878; sucrose-2H2O-H]-). MS/MS
301
fragmentation patterns and NMR analysis of two selected MS1 features of this clade ([m/z;
302
RT]: [737.3578; 14.65] and [751.3749; 15.64]) confirmed the membership to the metabolite
303
family of short branched chain acyl sugars (Figures S-3, S-4, S-7, S-8, S-11 - S-14, S-15 - S-
304
19 and Tables S-5, S-6). Our NMR analysis revealed that the feature [737.3578; 14.65]
305
comprised an isomeric mixture of isobutyl, isopentyl, and anteisobutyl acyl moieties, which
306
were not resolvable using our chromatography. MS/MS fragmentation and NMR of various
307
AS have been thoroughly studied earlier by Ghosh et al., where compounds selected here
308
for analysis were annotated as acylsucrose S4:21[2] (theoretical m/z:737.36012 Da (formate
309
adduct-H)) and acylsucrose S4:22[6] (theoretical m/z: 751.37577 Da (formate adduct-H)),
310
respectively21.
311
The second signal-cluster contained a group of four MS1 features which correspond to
312
sesquiterpene glycosides (SQT-glucosides, red in Fig. 4). The structural similarities among
313
members of this clade was supported by three prevalent fragment ions: m/z 401.2548 Da
314
(theoretical mass for C21H37O7- is 401.2545), 563.3051 Da (theoretical mass for C27H47O12- is
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 12 of 18
315
563.3073), and 605.3176 Da (theoretical mass for C29H49O13- is 605.3179) (Fig. S-5).
316
Recently, Ekanayaka et al. identified a novel class of trichome-specific sesquiterpene
317
glucosides from S. habrochaites using these fragment ions and elucidated the structures of
318
purified representatives by NMR26. In our study, CID fragmentation and preparative isolation
319
of MS1 feature [605.3160; 7.07, an abundant in-source fragment] with subsequent NMR
320
confirmed
321
glucopyranosyl)-campherenane-2-endo,12-diol, a member of the novel sesquiterpene
322
glucoside metabolite family (Figures S-3 - S-6, S-9, S-10 and Tables S-3, S-4).
323
After annotation of both metabolite families, the corresponding MS1 features are highlighted
324
by their color-code in the PCA loadings (Fig. 3B). In our case, it was evident that the
325
representatives of both metabolite families were enriched in glandular trichomes, indicating a
326
trichome-specific upregulation of short branched chain acyl sugars and sesquiterpene
327
glucosides. Please note that the hierarchical cluster dendrogram comprised more clades
328
with internal spectral similarity, but we concentrated on the short branched chain acyl sugars
329
and sesquiterpene glucosides whose structures were confirmed by NMR. A detailed
330
workflow exemplified here is given in Fig. S-1, and the full showcase protocol is given in
331
Note S-1. A general user guide for MetFamily is given in Note S-2.
the
structure
of
12-O-(6’’-O-malonyl-β-D-glucopyranosyl-(1→2)-β-D-
Figure 3. Principal component analysis of metabolite extracts of glandular trichomes and leaves of Solanum habrochaites LA1777. Comparison of 2585 MS1 features from TOF-MS measurements (n=6). a: scores, b: loadings with annotations. The PCA loadings with annotations indicate a predominant enrichment of acyl sugars in glandular trichomes. AS: acyl sugars, SQT-glucosides: sesquiterpene glucosides, Unknown: Not characterized
ACS Paragon Plus Environment
Page 13 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
here. 332 333
Figure 4. Hierarchical cluster analysis of 135 trichome-specific MS1 features using the corresponding MS/MS spectra obtained from organic extracts of S. habrochaites LA1777. For comparison of the groups trichomes versus leaf focusing on trichome-specific features, the set of 2585 MS1 features was filtered using an MS1 abundance threshold of 20,000 counts and a log2-fold change (LFC) of two. The heatmap below depicts the LFC and the absolute MS1 abundance in glandular trichomes (TRI) and trichome-free leaves (LVS), respectively. The 135 filtered MS1 features clearly segregated into two main signal-clusters which in turn further segregated into signal-clusters with different levels of similarity between MS/MS spectra. Specifically, we identified a cluster of 73 short branched chain acyl sugars (AS, in blue) and a cluster of four sesquiterpene glucosides (SQT-glucosides, in red) on the basis of a set of characteristic fragments which were prevalent in both clusters (see legend ‘Annotations’ on the right). Both signal-clusters show characteristic fragments with a cluster-discriminating power of 80% and more (size of the branch nodes, see legend ‘Cluster-discriminating power’ on the right). 58 trichome-specific MS1 features partially showed further clusters, but remained uncharacterized in this study (Unknown in black). 334
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 14 of 18
335
Additional features of MetFamily. MetFamily also supports semi-targeted analyses. In this
336
case, sets of MS1 features can be selected by certain fragment masses, neutral losses or
337
combinations thereof within a user-defined mass error in ppm as filter criteria. Using this
338
option, only selected MS1 features are considered in subsequent PCA or HCA calculations
339
and the data analysis is consequently constrained to selected metabolite families. For
340
example, to isolate only glycosylated MS1 features from all data the user can specify a
341
fragment ion of m/z 161.0455 Da (C6H9O5-) from MS/MS spectra in negative mode and can
342
then focus on the regulation of enzymatic glycosylations in a biological context (for details
343
see the MetFamily user guide in Note S-2). When we applied this filter with a mass error of
344
25 ppm, we obtained 568 MS1 features from our example data, presumably containing a
345
hexose as a structural moiety. In addition, it is possible to search MS1 features with certain
346
fragments or neutral losses post-analysis. The corresponding MS1 features can then be
347
jointly visualized in the PCA loadings and the hierarchical cluster dendrogram.
348
It is possible to export different kinds of results from MetFamily. Selected sets of precursor
349
ions can be exported and, e.g., reloaded into the original MS data acquisition software.
350
Further, it is possible to export both the hierarchical cluster dendrogram and the PCA plots
351
as publication-ready high quality images. The set of parameters used for the initial data
352
import can be exported and imported. Finally, it is possible to export the whole project
353
(including all annotations and color codes) to enable the user to share the project or to
354
continue the data analysis at a later time (Data S-4).
355
CONCLUSIONS
356
The web application ‘MetFamily’ presented here constitutes a novel approach to analyze
357
metabolomics data from untargeted, data-independent LC-MS/MS measurements. Rather
358
than relying on the time-consuming structure identification of individual metabolites,
359
MetFamily assists in the interpretation of complex metabolomics data by identifying
360
metabolite families through patterns in MS/MS. These are generated by similarity clustering
361
of associated MS/MS spectra and can be annotated with names and colors. After pre-
362
processing of LC-MS/MS raw data, MetFamily performs a joint data analysis of MS1
363
abundances and MS/MS spectra in which the annotation of metabolite families facilitates the
364
interpretation of comparative data sets. Structure elucidation at the metabolite level can be
365
performed afterwards in a much more focused way. As a proof of concept, we identified two
366
trichome-specific metabolite families from wild type Solanum habrochaites LA1777 in a fully
367
unsupervised manner and validated our findings based on earlier publications and with
368
NMR. The plethora of identified trichome-specific acyl sucroses correlates with upregulation
369
of acyltransferases of the BAHD family in tomato glandular trichomes (Schilmiller 2012). In
370
addition, the size of the clade “acyl sugar” is related to a low substrate specificity of BAHD
ACS Paragon Plus Environment
Page 15 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Analytical Chemistry
371
acyltransferases, illustrating that MetFamily can uncover links between enzymatic
372
promiscuity and organ-specific regulation of enzymes.
373
Using the proposed approach, it is now possible to obtain a comprehensive overview of data
374
sets containing thousands of mass features within a reasonable amount of time. Thus, by
375
providing a dynamic link between structural similarity at the MS/MS level (HCA) and the
376
corresponding MS1-signal intensity-based patterns (PCA) we bridge the gap between raw
377
data and structural information. Moreover, using MetFamily, precursor ions can now be
378
filtered via combinations of fragment ions and neutral losses, permitting the selection of
379
metabolite families based on characteristic fragmentation patterns.
380
While traditional compound identification is based on the comparison of MS/MS spectra (or
381
electron impact MS spectra) with reference spectra from known compounds, future
382
developments should exploit spectral patterns of MS/MS features being characteristic of
383
certain metabolite families. Public knowledge on such characteristic fragment ions or neutral
384
losses, e.g. based on metabolite families, can assist mass spectrometry specialists in the
385
elucidation of unknown features and will open new perspectives in life science.
386 387
AVAILABILITY
388
Project name: MetFamily
389
Source code: https://github.com/Treutler/MetFamily
390
Availability: http://msbi.ipb-halle.de/MetFamily/
391
Operating system(s): Platform independent
392
Programming language: R
393
Other requirements: Installation of R 3.2.2 or higher; License: GPL 3
394
Any restrictions to use by non-academics: None
395
ASSOCIATED CONTENT
396
Supporting Information
397
General work flow as flow chart (Fig. S-1) Scree plot of the first five principle components of
398
Figure 4. Exported parameter file of MS-DIAL (Table S-1) and exported parameter file from
399
MetFamily and parameter explanation (Tables S-2, S-3). Structure elucidation of three
400
selected MS1 features (Figures S-3 - S-19, Tables S-4 - S-6). Protocol for the presented
401
showcase (Note S-1) and a user guide for MetFamily (Note S-2). Detailed specification of
402
MetFamily input files (Note S-3). Metabolite profile of the showcase (Data S-1), MS/MS
403
library of the showcase (Data S-2), matrix of the showcase (Data S-3), and annotated
404
MetFamily project file (Data S-4).
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 16 of 18
405
AUTHOR INFORMATION
406
Corresponding Author
407
*E-mail:
[email protected] 408
Notes
409
The authors declare that they have no competing financial interests.
410
ACKNOWLEDGMENTS
411
We would like to thank Anja Ehrlich for the preparative isolation of metabolites, Anja Henning
412
and Nick Bergau for trichome harvest and data acquisition. We thank Prof. Masanori Arita
413
and Dr. Karin Gorzolka for fruitful discussions and review of the manuscript.
414
REFERENCES
415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447
(1) Jorge, T. F.; Rodrigues, J. A.; Caldana, C.; Schmidt, R.; van Dongen, J. T.; ThomasOates, J.; Antonio, C. Mass spectrometry reviews 2015. (2) Tonoli, D.; Varesio, E.; Hopfgartner, G. Chimia (Aarau) 2012, 66, 218-222. (3) Wishart, D. S.; Mandal, R.; Stanislaus, A.; Ramirez-Gaona, M. Metabolites 2016, 6. (4) Suhre, K.; Shin, S. Y.; Petersen, A. K.; Mohney, R. P.; Meredith, D.; Wagele, B.; Altmaier, E.; CardioGram; Deloukas, P.; Erdmann, J.; Grundberg, E.; Hammond, C. J.; de Angelis, M. H.; Kastenmuller, G.; Kottgen, A.; Kronenberg, F.; Mangino, M.; Meisinger, C.; Meitinger, T.; Mewes, H. W.; Milburn, M. V.; Prehn, C.; Raffler, J.; Ried, J. S.; RomischMargl, W.; Samani, N. J.; Small, K. S.; Wichmann, H. E.; Zhai, G.; Illig, T.; Spector, T. D.; Adamski, J.; Soranzo, N.; Gieger, C. Nature 2011, 477, 54-60. (5) Fiehn, O. Plant Mol Biol 2002, 48, 155-171. (6) Fernie, A. R.; Trethewey, R. N.; Krotzky, A. J.; Willmitzer, L. Nature reviews. Molecular cell biology 2004, 5, 763-769. (7) Roemmelt, A. T.; Steuer, A. E.; Poetzsch, M.; Kraemer, T. Anal Chem 2014, 86, 1174211749. (8) Zhu, X.; Chen, Y.; Subramanian, R. Anal Chem 2014, 86, 1202-1209. (9) Tsugawa, H.; Cajka, T.; Kind, T.; Ma, Y.; Higgins, B.; Ikeda, K.; Kanazawa, M.; VanderGheynst, J.; Fiehn, O.; Arita, M. Nature methods 2015, 12, 523-526. (10) Ferslew, B. C.; Xie, G.; Johnston, C. K.; Su, M.; Stewart, P. W.; Jia, W.; Brouwer, K. L.; Sidney Barritt, A. t. Digestive diseases and sciences 2015, 60, 3318-3328. (11) Kaling, M.; Kanawati, B.; Ghirardo, A.; Albert, A.; Winkler, J. B.; Heller, W.; Barta, C.; Loreto, F.; Schmitt-Kopplin, P.; Schnitzler, J. P. Plant Cell Environ 2015, 38, 892-904. (12) Qu, G.; Quan, S.; Mondol, P.; Xu, J.; Zhang, D.; Shi, J. J Integr Plant Biol 2014, 56, 849-863. (13) Glas, J. J.; Schimmel, B. C. J.; Alba, J. M.; Escobar-Bravo, R.; Schuurink, R. C.; Kant, M. R. Int J Mol Sci 2012, 13, 17077-17103. (14) Watrous, J.; Roach, P.; Alexandrov, T.; Heath, B. S.; Yang, J. Y.; Kersten, R. D.; van der Voort, M.; Pogliano, K.; Gross, H.; Raaijmakers, J. M.; Moore, B. S.; Laskin, J.; Bandeira, N.; Dorrestein, P. C. Proc Natl Acad Sci U S A 2012, 109, E1743-1752. (15) Garg, N.; Kapono, C. A.; Lim, Y. W.; Koyama, N.; Vermeij, M. J. A.; Conrad, D.; Rohwer, F.; Dorrestein, P. C. Int J Mass Spectrom 2015, 377, 719-727. (16) Nguyen, D. D.; Wu, C. H.; Moree, W. J.; Lamsa, A.; Medema, M. H.; Zhao, X. L.; Gavilan, R. G.; Aparicio, M.; Atencio, L.; Jackson, C.; Ballesteros, J.; Sanchez, J.; Watrous,
ACS Paragon Plus Environment
Page 17 of 18
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486
Analytical Chemistry
J. D.; Phelan, V. V.; van de Wiel, C.; Kersten, R. D.; Mehnaz, S.; De Mot, R.; Shank, E. A.; Charusanti, P.; Nagarajan, H.; Duggan, B. M.; Moore, B. S.; Bandeira, N.; Palsson, B. O.; Pogliano, K.; Gutierrez, M.; Dorrestein, P. C. P Natl Acad Sci USA 2013, 110, E2611-E2620. (17) Li, D.; Baldwin, I. T.; Gaquerel, E. Proc Natl Acad Sci U S A 2015, 112, E4147-4155. (18) Wagner, C.; Sefkow, M.; Kopka, J. Phytochemistry 2003, 62, 887-900. (19) Rasche, F.; Scheubert, K.; Hufsky, F.; Zichner, T.; Kai, M.; Svatos, A.; Bocker, S. Anal Chem 2012, 84, 3417-3426. (20) Tissier, A. Plant J 2012, 70, 51-68. (21) Ghosh, B.; Westbrook, T. C.; Jones, A. D. Metabolomics 2014, 10, 496-507. (22) Kim, J.; Kang, K.; Gonzales-Vigil, E.; Shi, F.; Jones, A. D.; Barry, C. S.; Last, R. L. Plant Physiol 2012, 160, 1854-1870. (23) Schilmiller, A.; Shi, F.; Kim, J.; Charbonneau, A. L.; Holmes, D.; Jones, A. D.; Last, R. L. Plant J 2010, 62, 391-403. (24) Schilmiller, A. L.; Charbonneau, A. L.; Last, R. L. P Natl Acad Sci USA 2012, 109, 16377-16382. (25) Ekanayaka, E. A.; Celiz, M. D.; Jones, A. D. Plant Physiol 2015. (26) Ekanayaka, E. A. P.; Li, C.; Jones, A. D. Phytochemistry 2014, 98, 223-231. (27) van den Berg, R. A.; Hoefsloot, H. C.; Westerhuis, J. A.; Smilde, A. K.; van der Werf, M. J. BMC genomics 2006, 7, 142. (28) Gillet, L. C.; Navarro, P.; Tate, S.; Rost, H.; Selevsek, N.; Reiter, L.; Bonner, R.; Aebersold, R. Mol Cell Proteomics 2012, 11, O111 016717. (29) Lommen, A. Anal Chem 2009, 81, 3079-3086. (30) Lommen, A.; Kools, H. J. Metabolomcis 2012, 8, 719-726. (31) Smith, C. A.; Want, E. J.; O'Maille, G.; Abagyan, R.; Siuzdak, G. Anal Chem 2006, 78, 779-787. (32) Kuhl, C.; Tautenhahn, R.; Bottcher, C.; Larson, T. R.; Neumann, S. Anal Chem 2012, 84, 283-289. (33) Paddon, C. J.; Westfall, P. J.; Pitera, D. J.; Benjamin, K.; Fisher, K.; McPhee, D.; Leavell, M. D.; Tai, A.; Main, A.; Eng, D.; Polichuk, D. R.; Teoh, K. H.; Reed, D. W.; Treynor, T.; Lenihan, J.; Fleck, M.; Bajad, S.; Dang, G.; Dengrove, D.; Diola, D.; Dorin, G.; Ellens, K. W.; Fickes, S.; Galazzo, J.; Gaucher, S. P.; Geistlinger, T.; Henry, R.; Hepp, M.; Horning, T.; Iqbal, T.; Jiang, H.; Kizer, L.; Lieu, B.; Melis, D.; Moss, N.; Regentin, R.; Secrest, S.; Tsuruta, H.; Vazquez, R.; Westblade, L. F.; Xu, L.; Yu, M.; Zhang, Y.; Zhao, L.; Lievense, J.; Covello, P. S.; Keasling, J. D.; Reiling, K. K.; Renninger, N. S.; Newman, J. D. Nature 2013, 496, 528-532. (34) McDowell, E. T.; Kapteyn, J.; Schmidt, A.; Li, C.; Kang, J. H.; Descour, A.; Shi, F.; Larson, M.; Schilmiller, A.; An, L. L.; Jones, A. D.; Pichersky, E.; Soderlund, C. A.; Gang, D. R. Plant Physiol 2011, 155, 524-539.
ACS Paragon Plus Environment
Analytical Chemistry
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
487
for TOC only
488
ACS Paragon Plus Environment
Page 18 of 18