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DART-MS: A New Analytical Technique for Forensic Paint Analysis Mark Maric, James Marano, Robert Bernard Cody, and Candice Bridge Anal. Chem., Just Accepted Manuscript • DOI: 10.1021/acs.analchem.8b01067 • Publication Date (Web): 03 May 2018 Downloaded from http://pubs.acs.org on May 5, 2018
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Analytical Chemistry
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DART-MS: A New Analytical Technique for Forensic Paint Analysis
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Mark Marić1, James Marano2, Robert B. Cody3, Candice Bridge1,4
3 4
1
5 6
2
7
3
8 9
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National Center for Forensic Science, University of Central Florida, PO Box 162367, Orlando, FL 32816-2367 Florida Department of Law Enforcement, Orlando Regional Operations Center, 500 W. Robinson, St, Orlando, FL 32801 JEOL USA, Inc., 11 Dearborn Rd. Peabody, MA 01960
Department of Chemistry, University of Central Florida, 4000 Central Florida Blvd, Orlando, FL 32816
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Abstract:
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Automotive paint evidence is one of the most significant forms of evidence obtained in
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automotive related incidents. Therefore, the analysis of automotive paint evidence is imperative
14
in forensic casework. Most analytical schemes for automotive paint characterization involve
15
optical microscopy, followed by infrared spectroscopy and pyrolysis-gas chromatography mass
16
spectrometry (py-GCMS) if required. The main drawback with py-GCMS aside from its
17
destructive nature, is that this technique is relatively time intensive in comparison to other
18
techniques. Direct analysis in real time-time of flight mass spectrometry (DART-TOFMS) may
19
provide an alternative to py-GCMS, as the rapidity of analysis and minimal sample preparation
20
affords a significant advantage. In this study, automotive clear coats from four vehicles were
21
characterized by DART-TOFMS and a standard py-GCMS protocol. Principal component
22
analysis was utilized to interpret the resultant data and suggested the two techniques provided
23
analogous sample discrimination. Moreover, in some instances DART-TOFMS was able to
24
identify components not observed by py-GCMS and vice versa, which indicates that the two
25
techniques
26
desorption/pyrolysis DART-TOFMS methodology was also evaluated to characterize the intact
27
paint chips from the vehicles, in order to ascertain if the linear temperature gradient provided
28
additional discriminatory information. All the paint samples were able to be discriminated based
29
on the distinctive thermal desorption plots afforded from this technique, which may also be
30
utilized for sample discrimination.
31
additional tool to the forensic paint examiner.
may
provide
complimentary
information.
Additionally,
a
thermal
Based on the results, DART-TOFMS may provide an
32 33 34 35 36 37 38 39
Keywords: Automotive paint evidence, DART-TOFMS, py-GCMS, thermal
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desorption/pyrolysis 2 ACS Paragon Plus Environment
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Analytical Chemistry
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Introduction:
42
Automotive paint evidence is located at incident scenes including; hit-and-run accidents,
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vehicular homicides, automobile crashes or any scene where a vehicle has been used in the
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commission of a crime. In the absence of eyewitness accounts or closed circuit television
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footage, automotive paint evidence is often one of the more significant forms of trace contact
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evidence located at these scenes. As a result, increased emphasis must be placed on the analysis
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of automotive paint evidence to procure investigative information. Automotive paint is a
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complex multilayered system, designed to provide aesthetic appeal and protect the frame of the
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vehicle.1 An original equipment manufacturer (OEM) automotive finish system, typically
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consists of four layers; electrocoat primer, primer surfacer, basecoat and a clear coat. However,
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some new OEM paint systems, i.e. quad coats, will contain up to four tinted mid-coat layers
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between the basecoat and the clear coat to produce a higher quality color finish.2 The electrocoat
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primer is the first layer applied to the vehicle and provides corrosion resistance. Then, a
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relatively thick primer surfacer is applied to conceal surface imperfections and provide a smooth
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foundation for the application of the basecoat. The basecoat is a comparatively thin pigmented
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coating that provides the desired color and finish to the vehicle. The final coating applied is the
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clear coat, which is an unpigmented layer containing ultraviolet (UV) absorbers and hindered
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amine light stabilizers designed to protect the underlying layers and vehicle from UV
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degradation and weathering.3
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Although no current universal methodology exists for forensic paint examination, a general
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framework has been developed by the Scientific Working Group on Materials Analysis
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(SWGMAT)4 and the American Society for Testing and Materials (ASTM).5 These guidelines
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endorse microscopical examinations be conducted first, in order to determine layer structure and
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morphology. After this, forensic examiners typically use a combination of instrumental
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techniques to characterize the coating(s), which may include but are not limited to;
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microspectrophotometry,6-8
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spectroscopy,12-14 dual column pyrolysis-gas chromatography (py-GC)15-16 and/or py-GC mass
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spectrometry (py-GCMS),17-19 and elemental analysis techniques.20-22 The analytical scheme
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utilized to characterize the sample is flexible and is entirely dependent on the amount, quality,
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morphology, physical/chemical characteristics of the sample and the analytical techniques
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available to the forensic examiner.23 Most forensic examiners begin every automotive paint
Fourier transform-infrared
(FT-IR)
spectroscopy,9-11
Raman
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examination with some form of microscopy, usually followed by FT-IR spectroscopy of the
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individual layers and py-GC or py-GCMS if required. FT-IR spectroscopy is routinely the most
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employed instrumental technique for automotive paint layer analysis, owing to its ability to
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rapidly, non-destructively interrogate the paint system and provide information regarding the
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binder/resin, extender and pigment components.23 An advantageous feature of this technique is
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that many paint reference databases, such as the Paint Data Query (PDQ) database, are compiled
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entirely of IR data. This may provide actionable information in instances when there is no known
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sample to compare to the questioned paint sample.24-25 While this technique rapidly provides
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generic information regarding the binder, additives and main pigments; if two paint samples
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contain similar binder systems, further characterization is required by a more sensitive technique,
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such as py-GC or py-GCMS.19, 26 These techniques are arguably the gold standard in automotive
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paint analysis, as they are the most sensitive techniques available for differentiating between
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samples with similar paint binder formulations.27-28
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In fact, previous research by Burns and Doolan has demonstrated that py-GCMS is capable of
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discriminating between automotive clear coat formulations indistinguishable by FTIR
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spectroscopy.17 While this technique is typically utilized to identify the various binder
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monomer(s) employed in paint systems, it can also be sensitive to additive(s), pigment(s) and
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residual solvents.19,
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destructive techniques (e.g. FTIR spectroscopy) typically precede py-GCMS. Another drawback
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to py-GCMS for forensic paint analysis is that it is relatively time intensive, with an analytical
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run (including a bake method) potentially taking up to an hour. This could be a significant
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limitation in forensic casework and result in lengthy backlogs. Therefore, the rationale behind
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this study was to investigate if an ambient ionization source, direct analysis in real time-time of
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flight mass spectrometry (DART-TOFMS) could be utilized to provide analogous information to
96
py-GCMS, in a shorter timeframe.
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DART-TOFMS is capable of rapidly analyzing samples in any physical state, with minimal
98
sample preparation. This technique could be a viable alternative to py-GCMS, as the high
99
resolution and accurate mass detection afforded by DART-TOFMS enables component
100
identification based upon accurate mass measurements and isotopic ratios, thus preventing the
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need for lengthy chromatographic separation. DART-TOFMS has routinely been utilized in the
26
It should be noted that this technique is destructive; consequently non-
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Analytical Chemistry
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discipline of forensic science to analyze a variety of trace evidence including; drugs,29-32 inks,33-
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35
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a Q-Orbitrap tandem MS was recently utilized to characterize the organic pigments in
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automotive paint basecoats.42 The authors embedded organic pigments into a resin and coated it
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onto a metal panel. Small paint chips were crushed, suspended in water and introduced into the
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DART stream using a glass tip. DART-MS was capable of rapidly and accurately identifying the
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organic pigments in these simulated samples, as well as real world samples obtained from hit-
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and-run accidents in New Taipei City.42 This study centered entirely on the identification of the
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organic pigments in the basecoat of automotive paint systems and did not investigate the other
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components, such as binder(s), additive(s) and solvent.
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The main emphasis in this study will be on the analysis of automotive clear coats. The rationale
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behind this is that automotive paint evidence typically comes in the form of paint chips or
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smears; paint chips have the entire layer system intact, while paint smears are comprised of the
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clear coat and in some instances the basecoat. As the only constant in paint chips and smears is
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the clear coat, this study will focus predominantly on the analysis of the clear coat. The objective
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of this study was to develop a DART-TOFMS protocol capable of rapidly pyrolyzing automotive
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clear coats. The information obtained from this technique was compared to a standard py-GCMS
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methodology
120
desorption/pyrolysis DART-TOFMS was utilized to investigate if a temperature dependent
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DART protocol could characterize intact paint systems and provide additional information to the
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examiner.
explosives,36-38 sexual assault evidence39-40 and chemical warfare agents.41 DART interfaced to
that
is
utilized
in
forensic
paint
casework.
Additionally,
thermal
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Experimental:
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Automotive Paint Samples
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A subset of paint chips from four black (i.e. 2012 or newer) vehicles were randomly selected
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from a large collection of samples assembled by the Florida Department of Law Enforcement
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(FDLE). Paint samples were selected from black vehicles, in an effort to limit the contribution of
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the basecoat pigments to sample discrimination. The make, model, year, generic paint clear coat
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formulation type, presence of metallic and pearlescent pigments in the basecoat and the Vehicle
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Identification Number (VIN) for each vehicle is provided below in Table 1. It is important to
142
note, the information provided in Table 1 was not known prior to sample selection.
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Table 1: Table containing information regarding the manufacturer, model, year, paint formulation, the presence of metallic or pearlescent pigments in the basecoat and the VIN for the paint samples utilized in this study (ACR – acrylic, MEL – melamine, STY – styrene, PUR – polyurethane).
Sample Manufacturer No.
Model
Year
Formulation
F1104
Hyundai
Elantra
2013
ACR-MEL-STY
F1111
Toyota
Camry
2012
ACR-STY
F1126
Chevrolet
Camaro
2014
ACR-PUR
F1177
Toyota
Camry
2012
ACR-STY
Metallic or Pearlescent Pigments Sparse Pearlescent Moderate Pearlescent Metallic and Pearlescent Moderate Pearlescent
VIN KMHDH4AE1DU850483 4T1BF1FK6CU189901 2G1FG1E30E9147410 4T1BD1FK0CU010497
146 147
DART-TOFMS Methodology
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Mass spectra were acquired in the positive-ion mode using a IonSense® DART® ion source
149
equipped with an AccuTOF™ 4G LC-plus mass spectrometer (JEOL USA, Peabody, MA, USA).
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The DART ion source was operated using a helium gas flow rate of approximately 3.6 L/min and
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a gas heater temperature of 550 °C. The gas heater temperature was maintained at 550 °C, as this 6 ACS Paragon Plus Environment
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Analytical Chemistry
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temperature was required to pyrolyze and thermolytically breakdown the polymeric
153
macromolecules of the clear coat samples. The needle electrode potential was held at 3 kV and
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an exit grid voltage of 250 V was utilized. As automotive paint systems are chemically complex
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consisting of a number of components, the orifice 1, orifice 2 and ring lens voltages were set at
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20 V, 5 V and 5 V respectively, so as to minimize fragmentation of the molecular ions and aid in
157
interpretation. The peaks or ion-guide voltage was fixed at 600 V. All mass spectra were
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obtained over the m/z range of 60-1000, at a sampling interval of 0.25 ns and a recording interval
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of 1 s. The microchannel plate (MCP) detector voltage was maintained at 2150 V for the
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duration of analysis.
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Thin shavings of the clear coat (~ 15 µg) were obtained from each paint sample using a scalpel
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and a stereomicroscope and these shavings were mounted onto the mesh grid of 12-sample
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QuickStrip™ cards (IonSense, Saugus, MA, USA). The sample cards were placed on a linear rail
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system (IonSense, Saugus, MA, USA), which allowed lateral movement of the sample between
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the DART source and mass spectrometer inlet. The linear rail was used to optimally position the
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samples reliably in the sample gap, and the samples were held at this position until analysis was
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complete. The DART ion source was positioned 1 mm away from the QuickStrip™ sample cards
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and 1.5 cm away from the mass spectrometer inlet. Samples were held in the metastable stream
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for a period of approximately 2 minutes, to allow for sufficient time to pyrolyze and characterize
170
the specimens. Each clear coat sample was characterized in triplicate. Polyethylene glycol, with
171
an average molecular weight of 400 was used as the internal mass calibration standard, in order
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to provide accurate mass measurements. All data acquisition was performed using JEOL Mass
173
Center. TSS Unity (version 1.0.6.1; Schrader Software Solutions, Inc., Detroit, MI, USA) was
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used to produce high resolution, spectrally averaged (i.e. over the two minute analysis period),
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background subtracted, peak centroided mass spectra. Mass spectral interpretation, elemental
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composition determination and isotope ratio matching was conducted using Mass Mountaineer™
177
(version 3.3.2.0; RBC Software, Peabody, MA, USA). The individual data files were collated
178
into a data matrix, by using diagnostic ions with a relative intensity greater than 10 % to define
179
the variable list, and a 5 millimass unit tolerance to ensure all masses were binned correctly.
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Py-GCMS Methodology
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Thin shavings of the clear coat (~ 7.5 µg) were pyrolyzed using a CDS Analytical 5150
182
pyroprobe. The pyrolysis temperature was fixed at 750 °C for 20 seconds and the temperature of
183
the interface was maintained at 300 °C. The pyroprobe was coupled to a Hewlett Packard HP
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6890 GC equipped with a 30 m phenyl methyl siloxane (5 %) capillary column and interfaced to
185
a Hewlett Packard 5973 quadropole mass selective detector with an electron ionization source.
186
Helium was used as the carrier gas at a constant flow rate of 1 mL/min. The GC oven
187
temperature was held at 45 °C for 4 minutes and ramped at 15 °C/min to a final temperature of
188
260 °C, which was maintained for an additional 10 minutes. Each clear coat was characterized in
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triplicate. Between analytical runs any residual organic matter was removed from the pyrolysis
190
coil by heating the quartz tube to 1100 °C for 10 seconds, a total of four different times.
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Additionally, any trace pyrolysates in the column were removed by utilizing a bake method with
192
a starting temperature of 120 °C which was ramped to 270 °C at a rate of 30 °C/min. This final
193
temperature was held for an additional 10 minutes.
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Thermal desorption/pyrolysis DART-TOFMS Methodology
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The paint chips were characterized using the temperature gradient system ionRocket
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(BioChromato, San Diego, CA, USA) interfaced to the DART-TOFMS. Fine particles of the
197
intact paint chips (roughly 1 mm in diameter) were mounted onto a copper sampling “pot”,
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which was placed onto the heating block and positioned in the sample gap. The temperature
199
program was 50 °C with a 0.5 minute hold time, followed by a ramp rate of 100 °C/min to a final
200
temperature of 600 °C and this final temperature was held for 1 minute. A glass T-junction was
201
positioned over the sample mounted on the copper sampling stage and as the heating element
202
desorbs components from the paint chips they were directed into the sample gap. Mass spectra
203
were acquired in the positive-ion mode utilizing a gas heater temperature of 550 °C and a 1
204
second spectral storage rate. The ion-guide voltage was 600 V and the orifice 1, 2 and ring lens
205
voltages were set to 20, 5 and 5 V, respectively. Thermal desorption plots were generated by
206
using MZmine 2.28.43
207
Statistical Analysis
208
An unsupervised pattern recognition technique in the form of principal component analysis
209
(PCA) were performed on the individual datasets using Rx64 (version 3.1.2). This statistical
210
technique was used to objectively interrogate the structure of the data, reduce the dimensionality 8 ACS Paragon Plus Environment
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Analytical Chemistry
211
of the dataset and identify relationships between the samples and variables (i.e. retention time
212
and m/z). PCA was conducted using the non-linear iterative partial least squares algorithm and
213
the first two principal components (PCs) were utilized to reconstruct and model the datasets.
214
Scores plots were generated to visualize the position of samples by projecting them into a 2-
215
dimensional PC space, in order to group similar samples together whilst simultaneously
216
discriminating samples that have markedly different scores. The loadings plots provided further
217
information by detailing the variables in the original datasets, which provide a significant
218
contribution to the PCs and aided in identifying unique chemical markers that discriminate
219
between groups of samples.
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Results & Discussion:
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A small subset of automotive paint samples were utilized in this study. By decoding the VIN,
222
which is a 17-digit alphanumeric code, we were able to obtain unique latent information about
223
the vehicles (Table 1).44 Sample F1104, which was obtained from a Hyundai Elantra, was
224
determined to be manufactured in South Korea based upon the first three characters of the VIN,
225
which is designated as the World Manufacturer Identifier (WMI). The paint specimens obtained
226
from the two Toyota Camry vehicles (i.e. F1111 and F1177) were determined to be both
227
manufactured at the Georgetown, Kentucky manufacturing plant in the US. While these two
228
vehicles are markedly similar based upon information extracted from the VIN, sample F1111
229
was finished using midnight black metal (218) and sample F1177 contained a cosmic grey mica
230
(1H2) finish. Sample F1126, obtained from the Chevrolet Camaro, was manufactured in Canada
231
according to the WMI of the VIN. These descriptors identified were used to rationalize the
232
similarity or dissimilarity between the paint samples.
233
DART-TOFMS
234
The high resolution mass spectra obtained from the automotive clear coats revealed that DART-
235
TOFMS was capable of thermolytically decomposing the polymeric macromolecules into the
236
individual binder monomers, additives and cross-linking agents. By examining the spectra
237
displayed in Figure 1, all samples contained acrylic as the main binder type, however variations
238
were identified in the acrylic co-polymers utilized to create the backbone of the clear coat
239
enamels. Table S-1 provided in the supplementary information contains the peak identification
240
and mass information for the main peaks in the spectra obtained from the four clear coat 9 ACS Paragon Plus Environment
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enamels. As can be seen from Table S-1, characteristic peaks were identified that were indicative
242
of a variety of different acrylic binder monomers including; methyl acrylate, methyl
243
methacrylate, glycidyl methacrylate, n-butyl acrylate and allyl methacrylate. Another major
244
component, styrene, was also identified in 3 of the automotive clear coats (i.e. F1104, F1111 and
245
F1177), due to the fact that this component imparts favorable qualities such as gloss and
246
hardness to the finished film.3 Only one sample, F1104, contained unique peaks indicative of an
247
amino resin melamine, which was utilized to cross-link the acrylic backbone. Based upon the
248
components identified in the clear coats (Table S-1), sample F1104 was correctly classified as an
249
acrylic-melamine-styrene enamel, samples F1104 and F1177 were classified as an acrylic-
250
styrene enamel and sample F1126 was categorized as an acrylic urethane coating. As can be seen
251
from Figure 1, spectra acquired from samples F1111 and F1177 appear visually similar, which is
252
not surprising considering these samples were obtained from Toyota Camry vehicles assembled
253
in the same manufacturing plant in the same year. However, PCA was also used to objectively
254
determine the inter-sample variability.
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Analytical Chemistry
258 259 260
Figure 1: Representative peak centroided high resolution DART mass spectra obtained from the clear coats for the four black vehicles.
261
PCA performed on the entire mass spectral dataset revealed that 87.02 % of the variability in the
262
dataset could be accounted for in the first two PCs. A 2-dimensional scores plot was generated
263
by projecting the scores of the samples from the first two PCs. Additionally, the factor loadings 11 ACS Paragon Plus Environment
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for the relevant PCs were examined to identify variables (m/z) in the original data that have a
265
significant weighting on the PCs. The scores and loadings plots are presented in Figure 2. The
266
scores plot (left) revealed that samples F1104 and F1126 formed distinct non-overlapping
267
classes, while samples F1111 and F1177 attained very similar scores. The loadings plot (right)
268
for the first PC revealed strong positive correlations for the peaks at an m/z of 115.0760 and
269
143.0713 and significant negative correlations for the peaks with an m/z of 139.0731, 141.0896
270
and 153.0895. The positive correlations at 115.0760 and 143.0713 were indicative of the
271
protonated molecules [M+H]+ of caprolactone and glycidyl methacrylate. Samples F1111 and
272
F1177 were caprolactone modified acrylic enamels that contained a relatively large amount of
273
both components and thus attained large positive scores on PC1. The negative correlations for
274
the peaks at an m/z of 139.0731, 141.0896 and 153.0895 were characteristic for alkylated
275
melamine derivatives that cross-link the enamel. As only sample F1104 contained melamine in
276
its clear coat formulation, it is not surprising that these samples have substantial negative scores.
277
The factor loadings for PC2 also revealed strong positive correlations for caprolactone and
278
glycidyl methacrylate; however, positive correlations were also identified for peaks with an m/z
279
of 105.0687 and 113.0597. These peaks were characteristic for the protonated molecules [M+H]+
280
of styrene and the acrolein dimer respectively, both of which are common components in modern
281
automotive coatings. A significant negative correlation was observed for the peak with an m/z of
282
127.0758 was characteristic of allyl methacrylate. Samples that contained large amounts of
283
styrene and acrolein dimer (i.e. F1104, F1111 and F1177) attained large positive scores on PC2,
284
while the sample devoid of these components and contained a large amount of allyl methacrylate
285
(i.e. F1126) attained significant negative scores on PC2.
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286 287 288
Analytical Chemistry
Figure 2: (Left) 2-dimensional scores plot highlighting the distribution of the automotive clear coats based upon their corresponding DART-MS data; (Right) Factor loadings for the first two PCs.
289 290
Py-GCMS
291
The total ion chromatograms (TICs) obtained from py-GCMS of the automotive clear coats is
292
displayed in Figure 3. By examining Figure 3 it is clearly evident that much like the DART-MS
293
data, samples F1111 and F1177 provided near visually identical pyrograms. Table 2 provided
294
below lists all the significant components identified in the pyrograms. A large amount of styrene
295
was detectable in samples F1104, F1111 and F1177 (Rt ~ 6.70), but not present in sample F1126,
296
which coincided with the information obtained from the DART data. The main differences
297
between the pyrograms of these clear coatings was based on variations in the
298
acrylate/methacrylate monomers and additives identified. Samples F1111 and F1177 contained
299
detectable amounts of butyl acrylate and methacrylate, as well as substantial amounts of
300
camphene. Butyl acrylate and methacrylate were also identified in the DART mass spectral data,
301
but the relative intensities of the peaks attributable to these components were low in comparison
302
to the main components. Sample F1126 was comprised of substantial quantities of acrylic-based
303
monomers including; cyclohexyl methacrylate, 6-methylheptyl acrylate and octyl methacrylate,
304
as well as large amounts of cyclohexene and 2-ethylhexene additives. Only cyclohexyl
305
methacrylate was identified in the DART data for sample F1126, based on the presence of a peak
306
with an m/z of 169.1210 (Figure 1). On the other hand, sample F1104 was comprised of
307
substantial amounts of methyl and n-butyl methacrylate, and detectable amounts of hexyl and 13 ACS Paragon Plus Environment
Analytical Chemistry
308
octyl methacrylate. These components were identified in the DART data for sample F1104, but
309
the intensities of these peaks were diminished in comparison to other components.
310 311
Table 2: Table revealing the relative abundance of components identified from the pyrograms of the clear coats.
Compound
F1104
F1111
F1126
F1177
6.70
Styrene
Large
Large
Large
2.20
Methyl acrylate
Trace
6.80
n-Butyl acrylate
Trace
Small
Small
11.10
6-Methylheptyl acrylate
3.15 7.52 7.86 8.13 8.98 10.89 11.88 2.75 2.76 3.35 4.20 4.67 6.16 7.68 8.18 8.80 10.22 12.35
Methyl methacrylate n-Butyl methacrylate 2-Hydroxypropyl methacrylate Hexyl methacrylate Unknown Cyclohexyl methacrylate Octyl methacrylate Vinylcyclobutane Cyclohexene Ethenamine, N-methyleneToluene 2-Ethyl-1-hexene Ethylbenzene Camphene α-Methylstyrene 2-Ethylhexan-1-ol 2-Oxepanone Ethylidenecyclobutane
Moderate Moderate Moderate Small Small
Small
Moderate Moderate Large
Small
Small
Small Moderate
Moderate
Small
Moderate
Large Small
Small Small Small Small Small Moderate Small
Small Small Small
Other Additive(s)
Small Small Small Trace
Small Trace
Methacrylate(s)
Rt (min)
Acrylate(s)
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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Small Small
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Figure 3: Representative pyrograms obtained from py-GCMS of the automotive clear coats.
315
Although melamine and alkylated melamine derivatives were identified in the DART mass
316
spectral data, they were not observed in the pyrograms without methylation.45 Conversely,
317
various additives such as camphene and 2-ethyl-1-hexene were readily identifiable in the py-
318
GCMS data but not in the DART mass spectral data. While the majority of components were 15 ACS Paragon Plus Environment
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readily identifiable with both techniques, the fact that some components were unique to the
320
DART-TOFMS and py-GCMS infers that these methodologies may also afford complimentary
321
information.
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PCA performed on the significant variables identified in the pyrograms (Table 2) revealed that
323
96.71 % of the variance in the dataset could be accounted for in the first two PCs. The factor
324
loadings for PC1, revealed a significant positive correlation with a peak with an Rt ~ 6.70
325
minutes, which is characteristic for styrene and a significant negative correlation with a peak
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with an Rt ~ 11.88 minutes, indicative of octyl methacrylate. Samples that contained large
327
amounts of styrene in their formulation (i.e. F1104, F1111 and F1177) attained positive scores
328
on PC1, while sample F1126 that did not contain styrene but contained a substantial amount of
329
octyl methacrylate in its formulation obtained significant negative scores on PC1. The factor
330
loadings for PC2 revealed two significant positive correlations with peaks that had retention
331
times of approximately 3.15 and 7.52 minutes, which were characteristic for methyl methacrylate
332
and n-butyl methacrylate, respectively. A large negative correlation peak was also observed (Rt ~
333
7.68 min) which was indicative of the bicyclic monoterpene camphene. Sample F1104 had large
334
positive scores on PC2 based on the relatively large presence of methyl methacrylate and n-butyl
335
methacrylate in the clear coat formulation. Conversely, samples F1111 and F1177 attained
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negative scores on PC2, due to the substantial amount of camphene in the clear coat samples. By
337
examining the scores plots presented in Figures 2 and 4, it is evident that the distribution of
338
samples is almost identical, based on their DART spectra and pyrograms respectively. Although
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the intra-sample variability is slightly higher in the DART data based on the greater variance in
340
scores, the similar structure in the datasets indicates that the two techniques provide comparable
341
discriminatory information.
342
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Figure 4: (Left) 2-dimensional scores plot depicted the variance in the pyrograms obtained from the automotive clear coats; (Right) Loadings plot for PC1 and PC2.
346 347
Thermal desorption/pyrolysis DART-TOFMS
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The thermal desorption and pyrolysis system ionRocket was interfaced to the DART-TOFMS to
349
investigate if any additional information could be elucidated from the temperature profiles
350
afforded by this technique. An example thermal desorption plot from the full paint chips of
351
sample F1104 is provided in Figure 5. The thermal desorption plots were highly reproducible
352
and the intra-sample variability between replicates was relatively small, with only minimal
353
variability in the time reproducibility attributable to minor inconsistencies in the sizes of the
354
paint chips. The thermal desorption plots displayed in Figure 5, are base peak chronograms
355
(BPCs) which reflects changes in the molecular base peak of the spectrum as a function of time,
356
which in this instance is temperature dependent. By examining the mass spectral information
357
from different temperature regions of the thermal desorption plot, we were able to visualize
358
latent compounds from the clear coat that was not readily identifiable by the py-GCMS and
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DART-TOFMS protocols. For instance, upon examination of the low temperature mass spectral
360
profile (i.e. 100-350 °C), the base peak (m/z - 101.0580) was identified as the binder methyl
361
methacrylate. However, interestingly a peak was also observed with a m/z of 352.2385, which
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was indicative of a hydroxyphenylbenzotriazole ultraviolet (UV) absorber known as tinuvin 328.
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UV absorbers are utilized in only automotive clear coatings to protect the vehicle from
364
environmental degradation. It is important to note that this component was not observed when 17 ACS Paragon Plus Environment
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the clear coat from sample F1104 was characterized by py-GCMS and the DART-TOFMS
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protocol. In fact, information pertaining to the UV absorbers used in the automotive clear coat
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formulations can only typically by obtained upon analysis with UV microspectrophotometry.7, 46
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It is worth noting that as the thermal desorption/pyrolysis DART-TOFMS was performed on the
369
intact paint chips, there were also contributions from the underlying layers and not just the clear
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coats. This was reflected in observable differences in the thermal desorption plots from the clear
371
coat and paint chip from sample F1126 provided in the supplementary information (Figure S1).
372
Additionally, paint chips obtained from the bumper and the body (i.e. above the tire) of a 2011
373
Toyota Matrix were characterized by thermal desorption/pyrolysis DART-TOFMS. As can be
374
seen from Figure S2 in the supplementary information, there are visual differences in the thermal
375
desorption plots from the bumper and vehicle body paint systems, reinforcing the notion that
376
these parts of the vehicle are finished differently.
377 378 379
Figure 5: Thermal desorption plots for sample F1104 in triplicate. Mass spectral data was acquired across three temperature profiles (i.e. 100-350 °C, 350-450 °C and 450-600 °C).
380
Moreover, the results from thermal desorption/pyrolysis DART-TOFMS of the intact paint chips
381
revealed that there was a clear and reproducible temperature dependence of pyrolysis products
382
and paint components for each paint sample. It is important to note that while the total ion
383
chronograms (TICs) were visually identical between the samples, the thermal desorption plots 18 ACS Paragon Plus Environment
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(i.e. BPCs) displayed in Figure 6, revealed marked differences in the profile of the four paint
385
samples. Interestingly, even samples F1111 and F1177 which were obtained from vehicles from
386
the same manufacturer, model and manufacturing plant, still have visually different thermal
387
desorption plots (Figure 6). This is most likely attributable to the fact that thermal
388
desorption/pyrolysis DART-TOFMS was used to characterize the entire paint system, as
389
components were detected in the mass spectral data that were characteristic from the underlying
390
layers (i.e. basecoat and primer surfacer). Specifically, samples F1111 and F1177 have slightly
391
different basecoat finishes, based on information provided by the FDLE, which may have
392
contributed to the difference observed in the BPCs.
393 394 395
Figure 6: Averaged thermal desorption plots highlighting the differences between the paint chips obtained from the four vehicles.
396
One major advantage of the thermal desorption plots produced from thermal desorption/pyrolysis
397
DART-TOFMS, is that they are reproducible but also very simplistic, allowing for comparisons
398
between samples to be made easily. The ease of interpretation is in stark contrast to the
399
pyrograms and DART mass spectral data, which can oftentimes be convoluted and very difficult
400
to interpret. This may aid in making questioned vs. known comparisons, and specifically in
401
demonstrating to a jury in a courtroom setting. Additionally, much like the DART-TOFMS
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402
protocol, samples can be characterized rapidly (i.e. 7 min), which may aid in casework due to the
403
high sample throughput potential.
404
Conclusion:
405
Preliminary results obtained has demonstrated that DART-TOFMS is capable of providing
406
comparable information to py-GCMS for the analysis of automotive paint coatings. In fact, in
407
some instances they provide complementary information. The main advantage of the DART-
408
TOFMS protocol is that it enables sample analysis to be completed within 2-3 minutes, while a
409
standard py-GCMS method could take up to an hour (including a bake method). Subsequently,
410
the DART-TOFMS has shown to provide comparable sample discrimination to py-GCMS in a
411
fraction of the time, which could potentially provide an avenue for forensic casework.
412
Additionally, thermal desorption/pyrolysis DART-TOFMS has shown the capability to
413
characterize paint specimens and visualize latent compounds not observed by the other two
414
protocols. This technique has demonstrated, albeit in this limited sample set, that the thermal
415
desorption plots are highly reproducible, with minimal intra-sample variability but a large inter-
416
sample variability. Consequently, a large validation study is currently being undertaken to
417
investigate the discriminating capabilities of the DART protocols, in comparison to standard
418
techniques such as FTIR spectroscopy and py-GCMS.
419
Acknowledgements:
420
The authors would like to acknowledge Chikako Takei at BioChromato for providing the
421
ionRocket used in this research. Additionally, the authors acknowledge Kristen Taylor for
422
assisting in the analysis of the clear coats by py-GCMS. This research has been funded by the
423
Lucas Research Grant from the Forensic Sciences Foundation.
424 425 426 427
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For TOC only
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Table 1: 1 column
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Analytical Chemistry
Figure 1: Representative peak centroided high resolution DART mass spectra obtained from the clear coats for the four black vehicles. 164x190mm (150 x 150 DPI)
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Figure 2: (Left) 2-dimensional scores plot highlighting the distribution of the automotive clear coats based upon their corresponding DART-MS data; (Right) Factor loadings for the first two PCs. 179x79mm (150 x 150 DPI)
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Analytical Chemistry
Figure 3: Representative pyrograms obtained from py-GCMS of the automotive clear coats. 166x191mm (150 x 150 DPI)
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