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Article
Structural Characterization of Acidic Compounds in Pyrolysis Liquids Using Collision-Induced Dissociation and Fourier Transform Ion Cyclotron Resonance Mass Spectrometry Jan Zuber, Philipp Henry Rathsack, and Matthias Otto Anal. Chem., Just Accepted Manuscript • DOI: 10.1021/acs.analchem.8b02873 • Publication Date (Web): 03 Oct 2018 Downloaded from http://pubs.acs.org on October 7, 2018
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Analytical Chemistry
Structural Characterization of Acidic Compounds in Pyrolysis Liquids Using Collision-Induced Dissociation and Fourier Transform Ion Cyclotron Resonance Mass Spectrometry Jan Zuber,
∗,†
†,‡
Philipp Rathsack,
and Matthias Otto
†
†Institute of Analytical Chemistry, TU Bergakademie Freiberg, Leipziger Strasse 29, 09599
Freiberg, Germany ‡German Centre for Energy Resources, Reiche Zeche, Fuchsmuehlenweg 9, 09599 Freiberg,
Germany E-mail:
[email protected] Phone: +49 (0)3731 39 4193
1
Abstract
2
In this study, a novel approach to characterize and identify acidic oil compounds uti-
3
lizing the fragmentational behaviour of their corresponding precursor ions is presented.
4
Precursor ions of seven analyzed pyrolysis oils that were generated from pyrolysis educts
5
of dierent origin and degree of coalication were produced by electrospray ionization
6
in negative ion mode (ESI(−)). Following a fragmentation of all ions in the ion cloud by
7
collision-induced dissociation (CID), the precursor and product ions were subsequently
1
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Analytical Chemistry
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detected by ultra-high resolving Fourier transform ion cyclotron resonance mass spec-
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trometry (FT-ICR-MS). The ESI(−)-CID data sets were evaluated by applying either
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a targeted classication or untargeted clustering approach. In case of the targeted clas-
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sication, 10 % of the ionized precursor ions of the analyzed pyrolysis liquid samples
12
could be classied into one of eleven compound classes utilizing theoretical fragmenta-
13
tion pathways of these classes. In contrast, theoretical fragmentation pathways were
14
not necessary for the untargeted clustering approach, making it the more transmittable
15
method. Results from both approaches were veried by analyzing standard compounds
16
of known structure. The analysis and data evaluation methods presented in this work
17
can be used to characterize complex organic mixtures, such as pyrolysis oils, and their
18
compounds in-depth on a structural level. Intensity
m/z
m/z
m/z
m/z
Collision energy
Untargeted clustering
Targeted classication
DBE
O2, DBE = 1, EE Saturated monocarboxylic acids
180
20
160
18
16
140
- H2O
14
120
O1, DBE = 2, EE Product ion 1
- CO2
Hierarchical cluster
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- C3H6 - H2
- CO
12
100 10
80 8
60 6
40
Product ion 2
Product ion 3
Product ion 4
CcHh, DBE = 2, EE
CcHh, DBE = 0, EE
O2, DBE = 2, EE
4
20
0 100
2
0
200
300
400
500
m/z [Da]
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700
800
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Analytical Chemistry
Introduction
20
Pyrolysis liquids that are produced from coal 1 or other organic materials, for instance,
21
biomass, 24 are an interesting alternative to overcome the industrial dependence on nat-
22
ural oil and gas. Furthermore, the pyrolysis process presents a possibility to recycle carbon
23
wastes, such as scrap tyres 5,6 or plastic. 7 In general, during the pyrolysis process, macro-
24
molecular compounds of the introduced organic material are thermally decomposed into
25
smaller molecules in an oxygen-free atmosphere by cracking, elimination, isomerisation and
26
rearrangement reactions. 2,4,8 Due to the great variety of chemical reactions, ultra-complex
27
product mixtures result, 4,9 which can only be analyzed comprehensively by ultra-high resolv-
28
ing analysis techniques, such as Fourier transform ion cyclotron resonance mass spectrometry
29
(FT-ICR-MS). In general, FT-ICR-MS resolves the ionized analytes according to their indi-
30
vidual cyclotron frequencies, which are inversely related to the mass-to-charge-ratios (m/z )
31
of the ions. 1012 Depending on the applied ionization technique and ionization mode, com-
32
pounds of all polarities can be analyzed. For example, electrospray ionization (ESI) provides
33
a selective ionization for mainly polar species of petroleum related liquids. 1325
34
Nonetheless, an ESI FT-ICR-MS analysis of a complex organic mixture usually only gives
35
an overview over the dominating compound and heteroatomic classes in a multi-component
36
sample. The derivation of structural information on a single compound level is only possible
37
if tandem mass spectrometry is applied. 26 Usually, in a tandem MS expriment, a compound
38
can only be structurally characterized if its corresponding ion is isolated from the overall
39
amount of ions. Furthermore, time-consuming multiple tandem MS steps (MSn ) are often
40
necessary to identify the general structure of a molecule. If a single tandem MS event is
41
sucient, the MS/MS analysis can also be realized by hyphenating the mass spectrome-
42
ter to a chromatographic separation technique, such as liquid chromatography (LC) 2733 or
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gas chromatography (GC). 1,29,3438 The resulting data sets of this analytical combination
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can result in very large data sets that may be hard to process and evaluate, especially if a
45
high-resolving mass spectrometer, such as a FT-ICR-MS, is used. 39 Hence, a simple and fast 3
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analysis and data evaluation method to characterize the structure of single compounds or at
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least structural subunits and functional groups, would be of great interest to overcome the
48
previously mentioned problems.
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The aim of this study is the presentation of the development process of such a preparation,
50
analysis and data evaluation method and its application to seven pyrolysis liquids that were
51
produced from dierent organic materials with a varying degree of coalication. Based on
52
theoretical fragmentation pathways, structurally similar compounds in the analyzed sam-
53
ples could be assigned to one of eleven compound classes (saturated monocarboxylic acids,
54
unsaturated monocarboxylic acids, aromatic acids/ketones/aldehydes, oxocarboxylic acids,
55
saturated dicarboxylic acids, hydroxyphenylaldehydes and -ketones, dihydroxyphenylalde-
56
hydes, sulnic acids, sulfonic acids, sulfobenzoic acids and aromatic disulfonic acids), using
57
a targeted classication approach. Furthermore, an untargeted clustering approach was
58
applied that enabled an identication of compounds without any information about their
59
prior fragmentational behaviour. Tandem MS experiments for this paper were performed
60
by transferring the ionized analytes to a collision cell, where a collision-induced dissociation
61
(CID) of all ions was conducted. In general, in a CID process, precursor ions are fragmented
62
into product ions and neutral losses (e.g. H2O or CO2) by a collision event with neutral gas
63
molecules (e.g. N2 or Ar). Thus, the exact structures of the precursor ions can be recon-
64
structed by comprehending the fragmentation mechanism with the help of the detected CID
65
mass spectra. 4044 In a previous paper, we were able to successfully apply ESI(−) CID-FT-
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ICR-MS to characterize the structural building blocks of a pyrolysis liquid produced from
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a german brown coal. 45 The chemometric approaches presented in this scientic work are,
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thus, a progression of the methods used in the previous work.
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Analytical Chemistry
Experimental Section
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Sample preparation
71
The pyrolysis liquid samples were produced as reported in prior works 24,25,39,45,46 using seven
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dierent feedstocks. An overview of the produced pyrolysis liquids that were analyzed for
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this paper can be found in Table 1. Further information on the proximate and ultimate
74
analyses of the seven pyrolysis educts are given in section S1 of the Supporting Information
75
to this paper. Table 1: Pyrolysis liquids analyzed for this study.
Feedstock
Origin
Wheat straw pellets Brown coal Brown coal Brown coal Brown coal Hard coal Anthracite
Germany (location unknown) Hambach, Germany Schleenhain, Germany Schöningen, Germany V°esová, Czech Republic Poland (location unknown) Ibbenbühren, Germany
Pyrolysis Abbreviation temperature [◦ C]
800 800 800 500 500 800 800
WSTP BCHA BCSL BCSO BCCZ HCPO ANIB
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The sample standard solutions as well as the solutions used for the ESI(−) CID-FT-ICR-MS
77
analyses of the pyrolysis oils were prepared according to previously published routines. 45
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Chemometric results of the seven analyzed pyrolysis oils were veried by analyzing nine
79
analytical standard compounds, namely cerotic acid, montanic acid, melissic acid (satu-
80
rated monocarboxylic acids), α-linolenic acid, linoleic acid, oleic acid (unsaturated monocar-
81
boxylic acids), docosanedioic acid (saturated dicarboxylic acids), 4-octylbenzoic acid (aro-
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matic acids/ketones/aldehydes) and 4-dodecylbenzenesulfonic acid (sulfonic acids), using the
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same ESI(−)-CID preparation, analysis and data evaluation methods, which were utilized
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for the analysis of the oil samples. The analytical standard compounds were analyzed us-
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ing standard concentrations of 1 - 25 µmol/L (1 µmol/L: saturated monocarboxylic acids;
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2 µmol/L: unsaturated monocarboxylic acids, saturated dicarboxylic acids and sulfonic acids;
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25 µmol/L: aromatic acids/ketones/aldehydes). 5
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Mass spectrometry (FT-ICR-MS)
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MS experiments were conducted on a 15 T solariX FT-ICR-MS from Bruker Daltonics,
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equipped with an ESI source, which was operated in negative ion mode, using a scan range
91
from 46.06 to 1000.00 Da, an ion accumulation time of 100 ms and a resolving power of R
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= 800,000 (m/z = 400 Da). Resulting data sets had a size of 8 M. Furthermore, basic ESI
93
settings were chosen as follows: capillary voltage +2,800 V, end-plate-oset -500 V, nebu-
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lizer gas pressure 1.0 bar, dry gas ow 4.0 L/min, dry gas temperature 300 ◦ C and Q1 mass
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70 Da. Sample solutions were introduced with 10 µL/min using the source-integrated syringe
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pump. During tandem MS analysis of a pyrolysis liquid sample, the collision energy (CE )
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in the collision cell was varied from 0 - 100 eV in 5 eV steps, while accumulating 64 single
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mass spectra each. In general, CE is a MS instrument parameter and represents a potential
99
that is applied to accelerate the ions in the collision cell. Every CID-MS experiment was
100
performed in triplicate at each CE.
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Calibration of the FT-ICR-MS experiments was conducted in a two step process. In a rst
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step, a spiked sample was measured and internally calibrated, using the ESI-L Low Concen-
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tration Tuning Mix (Agilent) and its known masses. From these mass spectra, molecular
104
formulae were calculated using Bruker Daltonics software DataAnalysis 5.0 (SR1) and the
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resulting molecular formula lists were used to generate an internal calibration list for all
106
analyzed pyrolysis liquid samples. This calibration list was applied to calibrate the mass
107
spectra of the unspiked samples, which resulted in a mean standard deviation between the
108
observed and calculated m/z of less than 0.1 ppm. For further information on the applied
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calibration lists, see section S2 in the Supporting Information to this paper.
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Molecular formula assignment was only applied to peaks with a signal-to-noise-ratio (s/n )
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≥ 10. Furthermore, the deviation from the theoretical mass should not exceed 0.5 ppm and
112
should show a composition within the element numbers set (Cc Hh Nn Oo Ss : c = unlimited,
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h = unlimited, 0 ≤ n ≤ 3, o = unlimited, 0 ≤ s ≤ 5). Resulting molecular formula lists
114
were exported and imported into MATLAB 2017a (Mathworks) and processed further using 6
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Analytical Chemistry
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in-house scripts for molecular formula ltering and blank correction. Filtering of the molec-
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ular formula lists was conducted applying the rules established by Herzsprung 47,48 (double
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bond equivalent (DBE ) ≥ 0, 0.3 ≤ H/C ≤ 2.5, O/C ≤ 1.0, N/C ≤ 1.0, S/C ≤ 1.0). Fur-
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thermore, also the peak lists (all signals with s/n ≥ 5) for each experiment were exported
119
from DataAnalysis and imported into MATLAB 2017a. Each molecular formula and peak
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list was blank corrected in a further step by excluding all peaks and molecular formulae that
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were assigned to data sets obtained by analyzing the pure solvent at each CE. The targeted
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classication and untargeted clustering of the precursor ions based on their fragmentation
123
patterns were performed using these preprocessed molecular formula and peak lists.
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Data Analysis Targeted classication O2, DBE ≥ 2, EE Unsaturated monocarboxylic acids - H2O
Product ion 1
- CO2 Product ion 2
- H2
- C6H6
Product ion 3
Product ion 4
- C5H6O2 Product ion 5
- C8H8O2 Product ion 6
O2, DBE ≥ 0, CcHh, DBE ≥ 0, CcHh, DBE ≥ 0, EE EE EE ≥ 4 ≥ 5 ≥3 double bonds double bonds double bonds
O1, DBE ≥ 3, CcHh, DBE ≥ 1, O2, DBE ≥ 3, EE EE EE = 3 =0-6 ≥3 double bonds double bonds double bonds
Figure 1: Theoretical fragmentation tree for the compound class of unsaturated monocarboxylic acids. Precursor ions, product ions or fragmentation pathways that are illustrated in red could be veried by the analysis of standard compounds. Precursor ions or product ions, which are illustrated in blue, as well as pathways that are illustrated in black are parts of the fragmentation tree that are only described in literature 33,49,50 and which could not be veried by our analyses. 126
The targeted classication approach was based on fragmentation pathways for eleven com-
127
pound classes that were reported by other research groups. For this purpose, only papers
128
were reviewed where a soft ionization (e.g. ESI or fast atom bombardment (FAB)) and
129
CID as tandem MS method were applied. With the help of this literature research, ex-
130
pectable fragmentation trees for saturated monocarboxylic acids, 33,5153 unsaturated mono-
131
carboxylic acids, 33,49,50 aromatic acids/ketones/aldehydes, 31 oxocarboxylic acids, 54 saturated
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dicarboxylic acids, 55 hydroxyphenylaldehydes and -ketones, 56,57 dihydroxyphenylaldehydes, 57
133
sulnic acids, 58 sulfonic acids, 5861 sulfobenzoic acids 59 and aromatic disulfonic acids 59 could
134
be constructed. For instance, Figure 1 summarizes the theoretical pathways for the com-
135
pound class of unsaturated monocarboxylic acids. Fragmentation pathways, which we could
136
verify by analyzing the standard compounds α-linolenic acid, linoleic acid and oleic acid,
137
are illustrated in red, whereas black pathways correspond to pathways only reported in the 8
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Analytical Chemistry
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literature. The theoretical fragmentation trees of the other ten classiable compound classes
139
are given in section S3 of the Supporting Information.
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Both, the targeted classication and untargeted clustering of the precursor ions, were per-
141
formed using a newly developed in-house MATLAB program (ClassicationTool ), which is
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given as Supporting Material to this paper. In case of the targeted classication, in a rst
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step, all detected ions in each CID experiment (CE variation) with their individual m/z and
144
molecular formula were summarized in a comprehensive matrix and sorted according to their
145
m/z. Furthermore, a separate matrix was created that contained the relative intensity of
146
each peak and, thus, m/z in every mass spectrum at each CE. For classication purposes, all
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molecular ions were evaluated to nd matching precursor ion - product ion pairs. Based on
148
observable neutral losses that induced changes of the m/z, molecular formula, DBE and elec-
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tron conguration (even number of electrons (EE) or odd number of electrons (OE)) of the
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precursor ions, possibly resulting product ions were searched in the comprehensive matrix.
151
If a potential product ion of a precursor ion was found, the CE 's of the relative intensity
152
maximum of both ions were compared. This procedure is based on our assumption that
153
the intensity maximum of a precursor ion should occur at lower CE 's than the maximum of
154
a product ion, due to the degradation of the precursor ion and the ongoing production of
155
the product ion with increasing CE. If an appropriate intensity-based relationship between
156
the precursor and the product ion was observed, both ions were placed in the result matrix.
157
In contrast, if the relative intensity maximum of the product ion was observed at equal or
158
lower CE 's than the maximum of the potential precursor ion, both ions were excluded from
159
the result matrix. In case of a fragmentation, which involved multiple neutral losses, for
160
example a H2O and CO loss (saturated monocarboxylic acids), the CE at which the relative
161
intensity maximum of the product ion after both losses was observed had to be lower than
162
the intensity maximum CE of the intermediate product ion, which was exclusively formed
163
by the rst (e.g. H2O) loss. In the process of relating precursor and product ions multiple
164
assignments of both ion types occurred. These ions were agged as inconclusive assigned 9
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Analytical Chemistry
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ions, placed in a separate part of the result matrix and excluded from further statistical
166
evaluation. A precursor ion was considered as correctly classied if at least one unique cor-
167
responding product ion could be found. For further information on the detailed structure of
168
the result matrix, the reader is referred to section S4 of the Supporting Information.
169
Untargeted clustering
170
Beside the targeted classication approach, the fragmentational behaviour of the precur-
171
sor ions was also utilized for an untargeted clustering. By applying this approach, ionized
172
molecules can be structurally characterized without the knowledge of their fragmentation
173
pathways. Thus, this method allows the comparison of data evaluation results based on
174
analyses obtained by dierent ionization techniques, ionization modes or tandem MS meth-
175
ods. A owchart of the developed untargeted clustering approach that was used for the data
176
processing of the ESI(−)-CID data sets of the seven analyzed pyrolysis oils is illustrated in
177
Figure 2. Possible neutral losses
Precursor
Precursor
S U B T R A C T I O N
m/z C H N O S 1 0 1 0 0 0 2 0
2 0 0
0
15 1
Binary matrix
Scoring matrix Neutral loss
Neutral loss
Loss H
0
1 0 0 0
H2
0
0
0
1 0
1
0.0 6.6 0.00.00.0 8.2 0.0 3.4
1 1 0 0 1
0
0.0 0.0 6.2 8.10.00.0 5.30.0
3 0 0
0
16 0
0 0 1
0
O
18 0
2 0 1
0
H2O
41 2
3 1 0
0 C2H3N1
44 1
0 0 2
0
CO2
0
0 0 0 1
44 3
8 0 0
0 C3H8
0
0
CH3
1 0
1 0 0 1 0
1 0 0 0 0
0
Precursor ion
Entirety of all m/z m/z C H N O S DBE e-
Precursor ion
1 1
0 0
1 1 0 0 1
1 0 0 0 0 1
0
0 1
0.0 7.1 0.0 5.5 0.0 0.0 4.2 0.0 7.3 0.0 0.00.0 6.18.0 0.00.0 0.0 0.0 6.4 8.10.00.0 5.4 0.0 4.9 0.0 0.00.00.0 3.10.0 7.7
0 0
1
0.0 0.00.00.0 5.10.00.0 7.0
1 1 0 0 1
0
0.0 0.0 6.3 8.10.00.0 5.4 0.0
Dendrogram
Diagram of m/z vs. cluster number 100 90
RESULT MATRICES
GENERATION OF SUBTRACTION MATRICES
C L U S T E R I N G
TRANSFORMATION INTO RESULT MATRICES
80 70
Hierarchichal cluster
INITIAL MATRICES
60 50 40 30 20 10
SCORING
140
120
100
80
60
40
20
0 100
200
300
Features
400
500
m/z [Da]
Distance
VISUALISED RESULTS OF THE CLUSTER ANALYSIS
Score
Score
or
- Check possible neutral losses matrix - m/z neutral loss vs. m/z precursor ion - Pure C- or N-clusters - Intensity product ion vs. precursor ion - Rel. intensity precursor - Heteroatom to C ratio
SUBTRACTION MATRICES
160
FILTERING
rs
m/z C H N O S DBE e
-
Pr ec u
Possible neutral losses of each precursor ion
Neutral losses
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
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ENTIRETY OF FILTERED SUBTRACTION MATRICES
Figure 2: Flowchart of the untargeted clustering of precursor ions based on their fragmentational behaviour. The applied scoring mechanism was inspired by previous works from Rasche, Böcker 6266 and Kind. 67
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800
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Analytical Chemistry
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Using the newly developed MATLAB program, in a rst step of the untargeted clustering
179
approach, all pre-processed peak lists and molecular formula lists at each CE were sum-
180
marized to median peak and molecular formula lists, containing only peaks and molecular
181
formulae observable in all three analyses. In a following step, comprehensive peak list and
182
molecular formula list matrices for all median lists were created, as well as matrices only
183
comprising the lists at CE = 0 eV, which contained all potential precursor ions. Furthermore,
184
a list of possible neutral losses for tandem MS experiments was used. This list was imported
185
as a separate matrix and was created based on previous research by Rasche and Böcker
186
on computing fragmentation trees. 6266 The list of possible neutral losses can be found in
187
section S5 of the Supporting Information to this paper. During the process of untargeted
188
clustering, only those neutral losses were assumed as possible that were a linear combination
189
of maximum three single losses.
190
In a second step, subtraction matrices for each precursor ion were constructed. This was
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possible by determining the position of the precursor ion in the matrices, comprising all ions
192
detected throughout the ESI(−)-CID analysis of a sample. Beginning at this position, the
193
m/z and molecular formula dierence to all ions with a lower m/z in the comprehensive
194
matrix were calculated. Hence, an individual subtraction matrix for each precursor ion re-
195
sulted. Dierence entries with a negative C, H, N, O or S number were excluded from these
196
matrices. The evaluation of the subtraction matrices could be subsequently performed in two
197
ways using the MATLAB program. Utilizing the rst approach, all product ions and their
198
corresponding neutral losses were checked against the list of possible neutral losses, excluding
199
all product ions that could not be related to a neutral loss from the list or a linear combi-
200
nation of these losses. These ltered subtraction matrices were subsequently transformed to
201
the result matrix. The number of rows in this matrix corresponded to the overall number
202
of precursor ions, the number of columns to the number of possible neutral losses and their
203
linear combinations. If a possible neutral loss could be logically related to a precursor ion,
204
a 1 was placed at the corresponding position in the result matrix. In contrast, if a neutral 11
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loss could not be logically related to a precursor ion, a 0 was placed in the matrix. Thus, a
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binary result matrix was constructed by this procedure.
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For the second approach, every entry in the subtraction matrices was evaluated based on a
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scoring mechanism, inspired by the work of Rasche, Böcker and Kind. 6267 For every prod-
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uct ion a score was calculated by applying strict rules. An exact description of this scoring
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mechanism is given in section S6 of the Supporting Information. The result matrix of this
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approach was constructed similar to the binary matrix. The number of rows in this matrix
212
also corresponded to the overall number of precursor ions, whereas, the number of columns
213
corresponded to the overall number of all found neutral losses. If a possible neutral loss could
214
be related in any way to a precursor ion, the corresponding score for this fragmentation event
215
was placed at the corresponding position in the scoring result matrix, hence, distinguishing
216
in-silico between likely and unlikely fragmentation pathways.
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In a further step of the untargeted clustering of the precursor ions, the binary or scoring
218
result matrix was used for a hierarchical or a k-means cluster analysis. To determine the
219
number of necessary clusters for both analyses, the number of occupied heteroatomic classes
220
multiplied by two was utilized. For instance, if only precursor ions assigned to heteroatomic
221
classes O1, O2, O3 and O4 could be observed, a cluster number of eight would result due to
222
the four occupied classes. This factor was optimised during the development of this approach
223
using the results of the ESI(−)-CID analyses of the standard compounds. Utilizing a factor
224
of two, a correct clustering of standard compounds, belonging to the same compound class,
225
into the same cluster could be observed.
226
Finally, the results of the cluster analyses were bundled by the MATLAB program to a clus-
227
ter result matrix where each precursor ion with its m/z, molecular formula, DBE, electron
228
conguration, hierarchical cluster number and k-means cluster number was listed. The result
229
matrices for all analyzed pyrolysis oils are given as Supporting Material to this paper. In this
230
work, only results of the hierarchical clustering are presented to demonstrate the potential
231
of the untargeted clustering approach. 12
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Analytical Chemistry
Results and Discussion
233
Targeted classication
234
The targeted classication approach was applied to study the dierences of seven pyrolysis
235
liquids in terms of compounds, which could be allocated to the eleven compound classes (satu-
236
rated monocarboxylic acids, unsaturated monocarboxylic acids, aromatic acids/ketones/aldehydes,
237
oxocarboxylic acids, saturated dicarboxylic acids, hydroxyphenylaldehydes and -ketones, di-
238
hydroxyphenylaldehydes, sulnic acids, sulfonic acids, sulfobenzoic acids and aromatic disul-
239
fonic acids), using the class specic fragmentational behaviour. In general, more than 10 %
240
of the precursor ions of the pyrolysis oils BCSL (10.6 %, on average), BCSO (10.4 %) and
241
ANIB (10.8 %) could be assigned to one of the eleven compound classes. In contrast, only
242
4.6 % of the precursor ions of WSTP could be classied. In absolute numbers, most precur-
243
sor ions could be classied for samples BCHA (239, on average), BCSL (246), BCSO (236)
244
and HCPO (226), whereas only 75 and 86 precursor ions of oil samples WSTP and ANIB
245
could be classied. An overview over the relative number of classied precursor ions for each
246
analyzed pyrolysis liquid is given in section S7 of the Supporting Information to this paper.
247
Figure 3 illustrates the total number of precursor ions of the seven pyrolysis oils assigned to
248
the eleven compound classes. Most precursor ions were assigned to the compound classes
249
of saturated and unsaturated monocarboxylic acids, as well as oxocarboxylic acids, for all
250
analyzed samples. Especially samples BCHA, BCSL, BCSO and, in parts, BCCZ exhibit
251
comparable numbers of assigned precursor ions to most compound classes. Most likely, this
252
observation can be explained by the comparable degree of coalication of the pyrolysis educts
253
of all four oil samples. Nonetheless, also dierences between these pyrolysis oils can be ob-
254
served using the targeted classication approach. For instance, a higher number of precursor
255
ions of sample BCSO were assigned to sulfur-containing compound classes, such as sulnic
256
acids or sulfobenzoic acids, compared to all other pyrolysis liquids produced from a brown
257
coal. Thus, the origin of the pyrolysis educt, the conditions during the coalication and 13
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258
a slightly dierent degree of coalication are probably the essential factors leading to the
259
dierences discovered.
260
Furthermore, a higher number of precursor ions of sample HCPO were allocated to the
261
compound class of unsaturated monocarboxylic acids, compared to all other analyzed py-
262
rolysis liquids. Due to partially dierent pyrolysis temperatures during the production of
263
the pyrolysis liquids as well as increasing dehydration and condensation reactions during the
264
coalication process, a higher number of unsaturated and aromatic compounds is present in
265
sample HCPO, in comparison to the other six pyrolysis oils. Pyrolysis liquid ANIB should
266
also contain a high number of unsaturated and (polycyclic) aromatic compounds, which
267
we could not comprehend by the number of assigned precursor ions to the corresponding
268
compound classes. Probably, oil sample ANIB contains mostly non-acidic high-aromatic
269
compounds with a low amount of heteroatoms that are dicult to ionize by means of ESI.
270
Hence, the compound classes mainly comprised in this pyrolysis liquid are not veriable
271
by the developed ESI(−)-CID based targeted classication approach. For further informa-
272
tion on the exact number of assigned precursor ions to the eleven compound classes for all
273
analyzed pyrolysis oils, the reader is referred to section S8 of the Supporting Information. Total number of classied precursor ions
120 WSTP BCHA
100
BCSL BCSO BCCZ
80
HCPO ANIB
60
40
20
s ac id
id ac
ni
c
c oi nz
di
be om
at
ic
lfo
su lfo
ni Su
s
s
s id
ac id
ac
c
c ni l Su
ld yla
en
lfo Su
Ar
es
s
yd eh
to -k e d
an
ph
D
ih
yd
ld
ro
eh
xy
yd
ph
es
ca di t. Sa
yla en
ne
id
id
ac c yli
ox rb
rb
ke
ca xo
O
at
H
yd
ro
Ar
xy
om
U
s
s
s c yli ox
ne to
ac
id
ac id s/
ac
de
hy
de
s/
ar al ic
ns
at
t.
.m
m
on
on oc
oc
ar
bo
bo
xy
xy
lic
lic
ac id
s
s
0
Sa
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Page 14 of 31
Compound class
Figure 3: Number of precursor ions assigned to the eleven compound classes using the targeted classication approach. 14
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Page 15 of 31
274
Semiquantiative statements on the relative amount of ionizable and classiable compounds
275
between all analyzed samples were possible by comparing the relative abundance of each
276
compound class for all analyzed pyrolysis oils. The relative abundance for one compound
277
class was calculated by summing up the relative intensities of all precursor ions assigned to
278
this compound class. Figure 4 illustrates the relative abundance of the eleven classiable
279
compound classes for each pyrolysis liquid. Comparative statements between all samples
280
analyzed should only be based on a compound class specic comparison and not, in general,
281
for all compound classes, due to the varying response factors of each compound class. Thus,
282
the ionization eciencies of dierent compound classes might vary signicantly, which makes
283
a comparison of the relative abundances of dierent compound classes almost impossible.
284
According to Figure 4, the highest relative amount of ionizable and classiable saturated
285
monocarboxylic acids can be observed for samples BCHA, BCSL, BCSO and ANIB. In
286
comparison, samples BCCZ and HCPO exhibit the highest relative amount of unsaturated
287
monocarboxylic and sulfonic acids. Furthermore, higher relative amounts of saturated di-
288
carboxylic acids were found for pyrolysis liquid samples BCHA, BCSL, BCSO and HCPO
289
in comparison to all other analyzed samples. 100
WSTP BCHA
Relative abundance [%]
BCSL BCSO BCCZ
1
HCPO ANIB
0.01
en
s id
id
id Ar
om
at
ic
di
su lfo
ni
c
c oi nz be
ac
ac
ac c ni lfo
Su
Su lfo
c ni Su l
s
s
s id
s
ac
de
es yla
ld e
hy
on
nd
en
ro
xy
ph
sa ih yd
H
yd
ro
Ar
xy
om
ph
D
ld e
hy
de
ca di t. Sa
yla
al ic
-k et
ac
rb
rb
ox
ox
yli
yli
c
c
ac
id
id
s
s
s id ac s/
ne to ke
ca xo
O
de
hy
de
s/
ar on oc
.m
at ns
at
Sa
t.
m on oc
ar
bo
bo
xy
xy
lic
lic
ac
ac
id
id
s
s
0.0001
U
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
Compound class
Figure 4: Relative abundance of the eleven compound classes of the targeted classication approach. 15
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Analytical Chemistry
290
Untargeted clustering
291
The untargeted clustering approach enables the evaluation of tandem MS data sets of com-
292
plex organic mixtures without the necessity for knowing the fragmentation pathways of all
293
compounds present. Hence, this approach gives the opportunity to structurally characterize
294
a higher number of compounds, compared to the targeted classication approach.
295
By applying a hierarchical clustering to the binary and scoring result matrices, various ho-
296
mologous series could be identied in the pyrolysis oils. These homologous series can be
297
visualized by plotting the m/z of each precursor ion in dependence on its assigned clus-
298
ter number. Ideally, compounds belonging to the same homologous series were assigned to
299
the same cluster. Furthermore, each compound of the homologous series exhibited a sim-
300
ilar m/z dierence of 14.015650 Da, corresponding to a CH2 unit, to its homologues with
301
lower or higher alkyl chain length. Thus, the m/z -cluster number-plots can be read similar
302
to spectro chromatograms, usually obtained by LC- or GC-MS analyses. As an example,
303
the m/z -cluster number-plots obtained by the untargeted clustering of the precursor ions of
304
pyrolysis liquid BCSO using the binary and scoring result matrix are illustrated in Figure 5. 200
A: Binary result matrix
DBE
B: Scoring result matrix
DBE
20
200
180
18
180
18
160
16
160
16
140
14
140
14
120
12
120
12
100
10
100
10
80
8
80
8
60
6
60
6
40
4
40
4
20
2
20
2
0 200
0
400
600
800
1000
Hierarchical cluster
Hierarchical cluster
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 31
0 200
m/z [Da]
20
0
400
600
800
1000
m/z [Da]
Figure 5: m/z -cluster number-plots of sample BCSO obtained by using the binary (A) and scoring (B) result matrices for a hierarchical clustering. In total, the precursor ions of sample BCSO could be grouped into 198 hierarchical clusters. 16
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Analytical Chemistry
305
The assignment of analyzed standard compounds to clusters, containing precursor ions of
306
compounds of unknown structures, helped to identify these unknown compounds. For in-
307
stance, saturated monocarboxylic acids with an alkyl chain length from C24 to C50 could
308
be identied in the seven analyzed pyrolysis oils by this procedure. For the identication
309
of saturated monocarboxylic acids, only corresponding precursor ions that were allocated to
310
the same cluster as the ions of the standard compounds cerotic acid (C26H52O2), montanic
311
acid (C28H56O2) and melissic acid (C30H60O2) were considered correctly clustered. Utilizing
312
the binary result matrix for the hierarchical clustering, saturated monocarboxylic acids with
313
an alkyl chain length of C24 - C46 were identied. In contrast, if the scoring result matrix
314
was used for the clustering process, saturated monocarboxylic acids from C32 to C50 could be
315
identied. Thus, the usage of the scoring result matrix leads to a joint clustering of acids of
316
higher alkyl chain length in comparison to the usage of the binary result matrix. Nonethe-
317
less, the same saturated monocarboxylic acids were identied in an alkyl chain length region
318
from C32 to C46 for each pyrolysis oil, independent from the application of the binary or the
319
scoring result matrix for hierarchical clustering.
320
Figure 6 summarizes the identied saturated monocarboxylic acids for each analyzed pyroly-
321
sis liquid, combining the results from the hierarchical clustering using the binary and scoring
322
result matrix. As illustrated, the least amount of identied saturated monocarboxylic acids
323
can be observed for sample BCCZ. Applying the targeted classication approach, the lowest
324
number of classied saturated monocarboxylic acid precursor ions could be also observed
325
for this pyrolysis oil. Hence, the results from the untargeted clustering conrm these previ-
326
ous results. Furthermore, comparable amounts of saturated monocarboxylic acids with an
327
alkyl chain length from C24 to C44 could be identied for samples BCHA, BCSL and BCSO.
328
Most likely, the similar degree of coalication of the pyrolysis educts of these three oils is
329
responsible for this trend. Due to the highest number of identied compounds for these py-
330
rolysis liquids compared to all other samples, an extraction of compounds belonging to the
331
compound class of saturated monocarboxylic acids seems to be most economical if samples 17
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332
BCHA, BCSL or BCSO are utilized, based on the results of the untargeted clustering.
333
The results of the untargeted clustering approach in terms of identied saturated mono-
334
carboxylic acids should visualize the general potential of this chemometric method. An
335
enumeration of all identied compounds, contained in the analyzed pyrolysis oils, is not in
336
the scope of this paper. For further information on the results of the untargeted clustering,
337
the reader is referred to the MATLAB result matrices, comprising all identied compounds
338
and assigned compound clusters, which are given as Supporting Material to this paper. An
339
overview of the identied monounsaturated monocarboxylic acids for all seven analyzed py-
340
rolysis oils, using the untargeted clustering approach, is furthermore presented in section S9
341
in the Supporting Information.
WSTP BCHA BCSL
Sample
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 18 of 31
BCSO BCCZ HCPO ANIB C25
C30
C35
C40
C45
C50
Alkyl chain length
Figure 6: Identied saturated monocarboxylic acids, utilizing the untargeted clustering approach. The fragmentational behaviour of the precursor ions was evaluated using the binary and scoring result matrices along with a hierarchical clustering.
18
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Analytical Chemistry
Conclusion
343
In this study, ESI(−) CID-FT-ICR-MS analyses results of seven dierent pyrolysis oils, pro-
344
duced from pyrolysis educts of dierent origin and degree of coalication, were evaluated
345
using a targeted classication and untargeted clustering to structurally characterize acidic
346
oil compounds. The targeted classication approach enables an evaluation of the tandem MS
347
experiments in terms of product ions that can be related to their precursor ions by compound
348
class specic neutral losses. Thus, this chemometric method utilizes fragmentation pathways
349
of eleven compound classes reported in studies from other research groups. In contrast, the
350
untargeted classication approach is based on an evaluation, if an observed product ion can
351
be related to a precursor ion. The advantage of this method over the targeted classication
352
approach is its potential to structurally characterize a higher number of compounds and
353
compound classes, due to the unnecessity for theoretical fragmentation pathways. Hence,
354
using the untargeted classication approach, results obtained from analyses utilizing dier-
355
ent ionization techniques, ionization modes or ion activation methods can be compared. The
356
current version of the developed targeted classication approach is exclusively designed for
357
ESI(−)-CID analyses of complex organic mixtures, which inevitably limits its application to
358
data sets received by dierent ionization or tandem MS methods.
359
By applying both approaches, dierences between the analyzed pyrolysis liquids were dis-
360
covered. For instance, the results of the targeted classication indicate to a comparable
361
amount of saturated and unsaturated monocarboxylic acids, as well as aromatic aldehydes,
362
ketones and acids and saturated dicarboxylic acids in the brown coal pyrolysates BCHA,
363
BCSL and BCSO. In contrast, hard coal pyrolysate HCPO seems to contain a higher num-
364
ber of unsaturated monocarboxylic acids and sulfonic acids than all other analyzed pyrolysis
365
oils. Using the untargeted clustering approach, similar trends for these pyrolysis oils were
366
found. In general, the results from both chemometric methods could be used, for example, to
367
construct compound class specic extraction strategies to achieve a more expedient pyrolysis
368
oil production and a more ecient application of the pyrolysis liquids in terms of material 19
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369
utilization.
370
Further advancements of the analyses and data evaluation methods presented should involve
371
an implementation to analyze data sets obtained from LC-MS/MS or GC-MS/MS experi-
372
ments. Hence, also a chromatographic separation of isomers would be possible, leading to
373
further structural information on the compounds in complex organic mixtures.
20
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Analytical Chemistry
Acknowledgement
375
This work has been funded by the European Social Fund (ESF) and the Development
376
Bank of Saxony (SAB). Furthermore, we would like to thank Denise Klinger and Michaela
377
Ngyuen from the Institute of Energy Process Engineering and Chemical Engineering at TU
378
Bergakademie Freiberg for kindly providing the pyrolysis liquid samples.
379
380
381
Supporting Information Available The following les are available free of charge as Supporting Material to this paper: Supporting_Information_Zuber_et_al_2018_Fragmentation_Classication_Clustering.pdf:
382
Additional information on the feedstocks used to produce the pyrolysis oils analyzed
383
for this paper, as well as calibration lists used for the ESI(−)-CID analyses, theoretical
384
fragmentation trees utilized for the targeted classication, a visualization of the result
385
matrix of the targeted classication approach, a list of possible neutral losses used for
386
the untargeted clustering, an in-depth description of the scoring mechanism utilized
387
for this approach and an overview of the identied monounsaturated monocarboxylic
388
acids in the analyzed oils, using the untargeted clustering approach, are presented.
389
ClassicationTool.m: Executable MATLAB code of the newly developed program for
390
the targeted classication and untargeted clustering.
391
Result_matrices_classication_and_clustering.mat: MATLAB result matrices of the
392
targeted classication and untargeted clustering (binary and scoring matrix) of the
393
precursor ions of the seven analyzed and evaluated oil samples.
21
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Graphical TOC Entry Intensity
m/z
m/z
m/z
m/z
Collision energy
600 Untargeted clustering
Targeted classication
DBE
O2, DBE = 1, EE Saturated monocarboxylic acids
180
20
160
18
16
140
- H2O
14
120
O1, DBE = 2, EE Product ion 1
- CO2
Hierarchical cluster
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
- C3H6 - H2
- CO
12
100 10
80 8
60 6
40
Product ion 2
Product ion 3
Product ion 4
CcHh, DBE = 2, EE
CcHh, DBE = 0, EE
O2, DBE = 2, EE
4
20
0 100
2
0
200
300
400
500
600
m/z [Da]
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800