Citation: Transl Psychiatry (2012) 2, e91, doi:10.1038/tp.2012.19
& 2012 Macmillan Publishers Limited All rights reserved 2158-3188/12 http://www.nature.com/tp
Web End =www.nature.com/tp
A novel blood-based biomarker for detection of autism spectrum disorders
N Momeni1, J Bergquist2, L Brudin3, F Behnia4, B Sivberg5, MT Joghataei6 and BL Persson1
Autism spectrum disorders (ASD) are classied as neurological developmental disorders. Several studies have been carried out to nd a candidate biomarker linked to the development of these disorders, but up to date no reliable biomarker is available. Mass spectrometry techniques have been used for protein proling of blood plasma of children with such disorders in order to identify proteins/peptides that may be used as biomarkers for detection of the disorders. Three differentially expressed peptides with masscharge (m/z) values of 20201, 18641 and 19781 Da in the heparin plasma of children with ASD that were signicantly changed as compared with the peptide pattern of the non-ASD control group are reported here. This novel set of biomarkers allows for a reliable blood-based diagnostic tool that may be used in diagnosis and potentially, in prognosis of ASD. Translational Psychiatry (2012) 2, e91; doi:http://dx.doi.org/10.1038/tp.2012.19
Web End =10.1038/tp.2012.19 ; Published online 13 March 2012
Introduction
Autism spectrum disorders (ASD) are characterized by impairments in social orientation, communication and repetitive or restricted patterns of interests or behaviors appearing during the rst 3 years of life with onset from birth or gradually in a regressive process from the end of the rst year but mainly during the second year1,2 and is in Diagnostic and Statistical Manual of Mental Disorders (DSM)-IV classied as a developmental disorder.3 The pathogenesis of ASD is not yet known. Diagnosis is based on DSM-IV criteria and consists of a triad of symptoms, including social impairment, language disturbances and a rigid adherence to sameness.
In children diagnosed with ASD there is a spectrum of severity of these symptoms reecting a variation in cognitive development ranging from above average to intellectual disability.4,5 Boys are 45 times more likely than girls to have autism.6 Although the genetic determinants of ASD are so far largely unknown a recent report describes enrichments in different gene sets known to be linked to ASD.7 Pathophysiology of ASD involves affected cellular and neuronal development and function possibly associated with abnormal patterns of proteins/peptides in the blood and the cerebrospinal uid,810 increased levels of neurotransmitter serotonin and b-endorphin,1113 low levels of melatonin,14 increased levels
of opioid,15 high levels of homocysteine,16 Ca2 channel deciency,17 geneenvironment interactions,18 altered levels of serine protease prolyl endopeptidase activity,19 low plasma
levels of the neuropeptide hormone oxytocin,20 elevated immune response21 and abnormal activation of the complement system.2224 Complement-system activation in response to a foreign antigen or a genetic disorder leads to degradation of complement protein C to C3a and C3b
protein fragments with molecular masses of about 9 kDa and 177 kDa, respectively.25 Complement factor I-mediated cleavage of the C3b a-chain liberates three protein fragments with molecular masses of 68, 43 and 2 kDa,26
of which the last one is known as C3f.27,28 The C3f peptide
has been shown to have weak spasmogenic and anaphylatoxic functions and enhances vascular permeability as shown in guinea pig skin tests.28 Further degradation of C3f to C3f-desArg mediated by carboxypeptidase N was shown to result in stronger spasmogenic and anaphylatoxic properties.28 Figure 1 illustrates the location of the C3f domain in the crystal structure of the C3 protein.29
Detection of low-molecular-weight peptides by proteomic proling of blood plasma and cerebrospinal uid may reveal altered protein/peptide patterns associated with diseases and disorders.3033 In a recent study, adults with Aspergers
syndrome was shown to exhibit sex-specic expression of serum biomarkers.33 Previous attempts to nd a reliable biomarker for ASD by use of proteomics and protein/peptide proling have led to a set of potential biomarkers. A proteomic study on autopsied autism brains using 2-D gel electrophoresis revealed a single-nucleotide polymorphism in glyoxalase I.34 Another proteomic study of serum from children with autism showed differential expression of apolipoproteins and other components of complement proteins.35
In this study, we undertook a proteomic approach using surface-enhanced laser desorption/ionization time-of-ight (SELDI TOF) mass spectrometry to compare peptide proles of blood plasma from children with ASD and control children (Table 1) with the aim of discovering novel peptide biomarkers with diagnostic utility and to understand the role of these in the pathophysiology of ASD.
1School of Natural Sciences, Linnaeus University, Kalmar, Sweden; 2Department of ChemistryBiomedical Centre, Analytical Chemistry, Uppsala University, Uppsala, Sweden; 3Department of Clinical Physiology, Kalmar County Hospital, Kalmar, Sweden; 4Department of Occupational Therapy, University of Social Welfare and Rehabilitation Sciences, Tehran, Iran; 5Department of Health Sciences, Lund University, Lund, Sweden and 6Cellular and Molecular Research Centre, Tehran Medical University, Tehran, IranCorrespondence: Professor BL Persson, School of Natural Sciences, Linnaeus University, Norra vagen 49, Kalmar SE-39182, Sweden.
E-mail: mailto:[email protected]
Web End [email protected] Keywords: ASD; autism spectrum disorders; biomarker; blood
Received 3 Feburary 2012; accepted 4 February 2012
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Figure 1 Crystal structure of complement protein C3 (C3b/A/1) with location of C3f domain. Location of C3f domain (boxed) in structure model from PyMol (DeLano Scientic LLC, San Carlos, CA, USA).
Table 1 Participant details
ASD (n 28)
Controls (n 30)
Difference Pa
Gender
Males 23 14Females 5 16 0.007
Age
Mean (s.d.) 5.0 (1.7) 6.1 (2.3)
Median (range) 5 (39) 6 (312) 0.060
Medication
Risperdal only or in combination 18 0 Ritalin only or in combination 4 0 No specic medication 6 30
Abbreviation: ASD, autism spectrum disorders.
aFishers exact test for categorical and Mann Whitneys U-test for continuous
parameters.
Subjects and methods
Participants. Thirty-two children with ASD and thirty-one healthy control children were initially selected for this study. Children in the ASD group were recruited from the autism rehabilitation centre at the University of Social Welfare and Rehabilitation Sciences in Tehran, Iran. After receiving the informed consent from the parents, blood samples were collected. All children with ASD were examined by clinical experts on autism. A child psychiatrist examined all the
children who were also examined by a child neurologist or a child psychiatrist. All consultants agreed on the diagnosis of autism according to the DSM-IV criteria.3 However, diagnostic procedures applied in Europe and USA/Canada using the Autism Diagnostic Observation Schedule36 and the
Autism Diagnostic InterviewRevised37 were not used in the diagnostic process applied in Iran. This shortcoming was met by long clinical experience by the child neurologist/child psychiatrist who was aware of the core behaviors in autism stated by the American Academy of Pediatrics in its Embargo from 2007.38 All children in the ASD group were diagnosed as having autistic syndrome (infantile or Kanner autism) with varying degree of mental retardation but no information about other psychiatric disorders like autoimmune disorders was available besides that none of the children were schizophrenic. The control group consisted of healthy and typically developed children with no signs or diagnoses of neuro-developmental disorders and was recruited from the same area in order to minimize toxic inuences from different environments. Children both in the ASD and control groups who had any kind of infection or disease less than 2 weeks before the time of examination were excluded.
Blood samples for one healthy control (female) and four patients (two females and two males) were not possible to analyze owing to the too small sample volume, resulting in 30 controls and 28 children for children with ASD for further studies (For participant details, see Table 1). The ASD group comprised more males and was insignicantly younger.
The study was approved (MT/1247) by the ethics committee of the University of Medical Sciences, Tehran.
Procedure. All blood samples were collected by a pediatric nurse and the children diagnosed with autism were supervised by a pediatric psychiatrist with special training in the eld of childhood psychosis. Venous blood was collected into 3-ml Heparin tubes (Vacutainer System; Becton-Dickinson, Plymouth, UK) and plasma was separated immediately by centrifugation at 1300 g for 10 min at 4 1C. Immediately thereafter, an EDTA-free inhibitor cocktail (Halt protease inhibitor; Thermo Scientic Pierce Protein Research Products, Rockford, IL, USA) and Prefablock SC (Pentapharm, Munich, Germany) were added at a concentration of 10 ml ml 1
plasma and 20 ml ml 1 plasma, respectively. The produced plasma was aliquoted in small portions and immediately frozen on dry ice and stored at 80 1C.
Peptide proling. SELDI-TOF mass spectrometry (MS) was used to prole low-molecular weight peptides, less than 10 kDa, in the plasma of children with ASD and the healthy control group, suitable for the subsequent MS/MS analysis (described below) by matrix-assisted laser desorption/ionization (MALDI)-TOF/TOF MS and post source decay fragmentation. Carboxy methyl CM10 protein chip array surfaces (a weak-cation exchanger bearing the COOH functional group) with eight application spots were prepared according to the manufacturers protocol (BioRad, Hercules, CA, USA). CM10 protein chip arrays were equilibrated twice with 100 ml buffer(0.1 M sodium acetate, pH 5.0) for 5 min at 25 1C. Plasma samples diluted 1:50 with sodium phosphate buffer (25 mM,
pH 7.0) were applied onto the bioprocessor well. After 45 min
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of incubation with shaking at 25 1C samples were washed three times with 150 ml of dilution buffer, followed by two quick rinses with 150 ml of 1 mM HEPES buffer, pH 7.0. The chip array was removed from the bioprocessor, air-dried and0.8 ml of saturated (25 mg/ml) CHCA (a-cyano-4-hydroxycinnamic acid; BioRad) was added to each spot, allowed to air-dry, and this step was repeated once. The chip array was read on BioRad protein chip reader (PCS 4000) on SELDI system personal edition. Before reading the chip arrays an external calibration was performed by use of all-in-one peptide standard (BioRad) containing a mixture of seven different peptides in the molecular range of 17 kDa.
Sequencing of peptides. 100 ml of plasma samples were diluted with 300 ml of 25 mM sodium phosphate buffer, pH 7.0, and subjected to ultraltration by use of a 10-kDa Microne membrane (Millipore, Bedford, MA, USA). Ultraltrate was dried in a Speed Vacuum centrifuge, reconstituted in 10 ml of 20 mM sodium phosphate buffer, pH 7.0, and desalted on
ZipTip C-18 columns (Millipore). Five microliters of the sample was applied on the prepared SELDI chip, incubated, washed and dried (as described above). One microliter of saturated (25 mg ml 1) CHCA was added to the spots, allowed to air-dry, and this step was repeated once.
The MALDI TOF/TOF MS instrument used for sequence verication of the peptides was an Ultraex II TOF/TOF
(Bruker Daltonics GmbH, Bremen, Germany) equipped with a SmartBeam laser. All spectra were acquired using the reectron mode. To acquire MS/MS spectra, post source decay TOF/TOF by laser-induced dissociation was performed. The target of choice for the MALDI approach was a SELDI-TOF target (BioRad). The prepared matrix/sample spots were introduced into the Ultraex II and MS spectra were recorded from each prepared sample spot. The calibration used was an external near-neighbor calibration. The samples used for calibration were a mixture of peptides covering the mass range of 15 kDa. From the acquired peptide masses (TOF MS), the candidate peptides were selected manually for subsequent experiments. Spectra were annotated with data processing software, FlexAnalysis (Bruker Daltonics GmbH, Bremen, Germany), and nally interpreted by software assisted de novo sequence analysis (BioTools, Bruker Daltonics GmbH). The results from MALDI TOF/TOF MS were conrmed by analysis using high-resolution nano-LCESI FTICR MS.
Data analysis and statistics. The peak intensity from the SELDI TOF mass spectra were analyzed in triplicate and mean values were calculated. These were log-normally distributed and the following analyses were, therefore, made using logarithmic values. Group differences of the individual peaks were analyzed using Students t-test, and for combination of
Figure 2 Typical SELDI TOF-derived mass spectra of plasma from children diagnosed with ASD and control children. Non-hemolytic samples were from three children diagnosed with ASD (d-1, d-2, d-3) and from three control children (c-1, c-2, c-3). The analysis was a blind test with the identities of the children unknown. Following analysis the identities of the children were revealed: d-1 (male, age 5), c-1 (female, age 5), d-2 (male, age 6), c-2 (male, age 7), d-3 (female, age 4) and c-3 (female, age 5). The positions of the three peptides, 18641, 19781, and 20201 Da, are indicated.
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the peaks, two-group discrimination analysis was used.39
Discrimination analysis gives a linear combination of three peaks (composite variable) that maximizes the distance between the mean values of the two groups (the so-called general distance) that is calculated as (zAzB/O variance of z between groups, where zA and zB are the mean values for the two groups A and B for a specic set of parameters (ASD index). Because of uncertainties of the impact of hemolysis,40
the analysis was made using non-hemolytic samples only (n 49), but the ASD index was calculated for all subjects
(Table 3). Receiver operating characteristic curves41 were
then constructed for all 58 subjects and for those 49 without hemolysis (Figure 3). Of all 58 participants comprising 30 control children and 28 children in the ASD group, 11 outliers, 7 in the control group and 4 in the ASD group, were identied. Of the 49 participant samples without hemolysis (27 control children and 22 ASD group children) ve outliers, four in the control group and one in the ASD group, were observed. Fishers exact test was used to test differences between sex and age-categories, and age differences were also tested with MannWhitneys U-test (Table 1). For receiver operating characteristic analysis the statistical
program MedCalc (version 6.10, 2001; Frank Schoonjans, Mariakerke, Belgium) was used and all other statistical analyses were carried out using Statistica (version 8, Statsoft, Tulsa, OK, USA). A P-value of less than 0.05 was considered signicant.
Results
The results show signicant group differences of the intensity of the three different peaks with mass to charge ratios (m/z) 1864, 1978, and 20201 Da (Figure 2; Table 2) both in univariate (individual peaks; not shown) and in the multivariate (composite peaks) analysis (Table 3; Figure 3). The peaks with an m/z of 1864 and 20201 Da were upregulated and overrepresented in children with ASD, whereas the peptide of 19781 Da was downregulated in the children with ASD as compared with the healthy control children. The peptides were selected based on their discriminating abilities. In addition, the mass and intensity of the peptides is determining the possibility to subsequently identify and sequence them with MALDI-TOF/TOF MS and ESI-FTICR MS. From the acquired peptide masses (SELDI TOF MS data), the candidate peptides, for example, those with an m/z of 20201, were selected (Figure 4) and the amino-acid sequences were determined using tandem MS (MALDI TOF/TOF MS) as shown in Table 2. These sequences were also conrmed by nano-LC-ESI FTICR MS (not shown). The rst peptide with an m/z of 20201 Da consists of 17 amino-acid residues corresponds to the peptide known as C3f (NCBI accession number 1413205A) of the complement protein C3 (Figure 1). The second peptide with an m/z of 18641 Da corresponds to a peptide of 16 residues with the same sequence as C3f but lacks the C-terminal arginine and is known as C3fdesArg. The third peptide with an m/z of 19781 Da that appears at higher concentration in the group of healthy control children has the same sequence as C3f but carries a
Table 2 Peptides that expressed differentially in children with ASD in comparison with the control children
Average mass
Monoisotopic mass
Sequence P-value
2021.31 2020.10 SSKITHRIWHESASLLR o0.001 1865.12 1864.00 SSKITHRIWHESASLL 0.003 1979.27 1978.08 SSKITHRIWHESASLLR* 0.026
Abbreviation: ASD, autism spectrum disorders.
R*: modied arginine residue at the C-terminal of C3f where arginine loses NH C-NH2 moiety at the R-chain.
P-values calculated by log value and Students t-test.
Table 3 Results from ROC curve analysis showing individual peaks and the composite variable (combined) for all subjects (top) and those without sample hemolysis (bottom).
All subjects (n 58) Combined 2021 Da 1865 Da 1979 Da
ROC area (AUC) 0.724 0.745 0.668 0.814 95% CI 0.5910.833 0.6140.850 0.5320.786 0.6900.904 P-valuea o0.001 o0.001 0.018 o0.001
Cutoff valuesb 45.40 43.10 p4.53 43.92 Sens/spec 54/93 89/57 75/63 86/77
Cutoff valuesb 45.22 43.52 p3.88 44.33 Sens. at spec. X80% 64/80 57/80 32/87 79/83
Samples without hemolysis (n 49)
ROC area (AUC) 0.818 0.754 0.749 0.923 95% CI 0.6820.914 0.6100.866 0.6050.862 0.8090.979 P-valuea o0.001 o0.001 o0.001 o0.001
Cutoff valuesb 45.13 43.10 p4.50 44.21 Sens/spec 82/74 91/52 82/67 95/85
Cutoff valuesb 45.22 43.54 p4.07 44.21 Sens. at spec. X80% 73/81 55/81 50/81 95/85
Abbreviations: ASD, autism spectrum disorders; AUC, area under the curve; CI, condence interval; ROC, receiver operating characteristic; sens., sensitivity; spec., specicity.
aAUC different from 0.5.
bLogarithm of peak energy.
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modied arginine residue, corresponding to ornithine, in the C-terminus.
The results show a signicant difference between the mean of the an m/z values of these peptide intensities from children
with ASD and the control group with P-values o0.05 of the selected peptides (Table 2).
Discussion
Before starting this study, different aspects that might have an impact on the resulting spectra such as collection, handling and processing of samples, including choice of protease inhibitors, temperature, freezing and thawing cycles have been evaluated. We believe that the optimized procedures during the sample handling secure reproducible spectra of good quality. In collection of serum samples, it is not uncommon to have hemolytic events due to rupturing of red blood cells during the processing steps. We noticed that, of the 58 subjects, 9 showed moderate hemolysis and were subjected to separate statistical evaluation. Hemolysis in the samples was evaluated by examination of the mass peaks at7.6 and 15.1 kDa corresponding to the double-charged and single-charged a-subunit of hemoglobin, respectively.40 To
avoid interference of the hemoglobin subunits in the proteomic proling of the multiple serum specimens where the subunits may compete for or alter the binding afnity of other serum proteins to the surface40 samples with values 480 were excluded (see Table 3 and Figure 3). In the ASD group some children with severe autism were on medication with Risperdal to reduce hyperactivity and violent behavior, and a few children were on medication with Ritalin to improve attention (Table 1). It would have been ethically questionable to discontinue the medication with the purpose of controlling the research design. Although we did not see any detectable correlation between medication and the presence of the biomarker peptides in plasma samples of the ASD children it can not be excluded that some differences may be inuenced by medications, as previously discussed.35 In a recently
published study on complement factor I activity,42 we could
Figure 3 Receiver operating characteristic curves for all 58 subjects and for those 49 corrected for hemolysis. A composite of data for the peptides 18641, 19781 and 20201 in the group of 58 participants (hatched line) and in the group of 49 non-hemolytic participants (solid line). For the group of non-hemolytic participants, sensitivity and specicity is 95.5 and 85.2, respectively. Criterion value is 44.2068. Differences between curves, 0.9230.814 0.109, is not statistically
signicant (P 0.141).
Figure 4 Typical MALDI TOF/TOF mass spectrum for sequence analysis. Fragmentation of C3f (2020.1 Da) to C3f-des-arginine (1864.2 Da) is identied with monoisotopic mass of arginine of 174.8 (M H), and to C3f-modied arginine (1978.1 Da).
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not nd any clear inuences of the medications also used by subjects in this study. Only six of the children in the ASD group had no medication. Of these ve were correctly classied in the discrimination analysis and 1 was a sample with hemolysis and was incorrectly classied. Of the three biomarkers, 20201, 19781 and 18641, identied in this proteomic proling study of children with ASD and control children, the 1978-kDa ornithine-containing peptide identied by tandem MS is interesting as is suggest that the arginine of the 2020-kDa peptide is recognized as a target for enzymatic conversion. As arginase requires a free arginine for conversion to ornithine43 an interesting alternative possibility is that this C-terminal arginine residue is ADP-ribosylated by an argininespecic ADP-ribosyltransferase (ART) catalyzing the transfer of ADP-ribose from NAD (ref. 44) with the possibility of a secondary modication of the ADP-ribosylated arginine resulting in replacement of ADP-ribosylarginine by ornithine as shown for HNP-1.45 Lack of ART expression, that is ART2, has previously been correlated with enhanced susceptibility to autoimmune diseases (see Laing et al.44 and
references therein). Altered immune function and complement-system deciency has been reported for children with ASD indicating a recurrent incidence of immunological diseases.4650 Other investigations has shown signicantly increased levels of inammatory markers such as TNF-a,
IL-6, IL-8, GM-CSF and IFN-g in the post mortem brain tissue of individuals with autism and immune dysfunction has also been proposed as a potential mechanism for the pathogenesis of ASD.21,51,52
By the proteomic approach used in this study we have identied differentially expressed peptides that correspond to fragments of the C3 complement protein. Although the study was based on a relatively limited group of children it demonstrates the potential of the proteomic approach in which the relevance and potential diagnostic utility of the panel of biomarkers was further strengthened by known associations between the protein or peptides and pathogenesis of ASD. By use of the proteomic approach we have discovered a unique set of biomarkers, which carries the potential for an early detection of ASD with an improved diagnostic accuracy that would enable an early intervention in the development of this disorder.
Conict of interest
Naghi Momenis PhD studentship was supported by Autism Biodiagnostics Sweden AB (ABSAB). ABSAB had no role in the design of the study, the collection or analysis of data. Dr Momeni has no nancial holdings in that company, although he may receive some further compensation if his work leads to a commercial product. All the other authors declare no conict of interest.
Acknowledgements. We thank Dr Maria Bergstrm at the Linnaeus University for her help with the experiments and the SELDI TOF MS analysis. Drs Jrg Hanrieder and Konstantin Artemenko at the Uppsala University are acknowledged for their assistance with high-resolution MS, and Dr Mohammad A Karbasian and staff at the Robat Karin Medical Diagnostic Laboratory, Tehran, for their assistance with collection of samples. We also thank all the children and their families who have contributed to this study. The principal funder of this project
was Siamak Shahnooshi (Managing Director and company owner of Autism Biodiagnostics Ltd and Asbestos Consultants to the Environment LtdACEPSI). Michael Krause was the nancial director and Carl-Gunnar Nyquist was the Managing Director of the Swedish subsidiary company, Autism Biodiagnostics AB. The funder and his directors had no role in the study design, the data collection and analysis, or the preparation of the manuscript. The Swedish Research Council is acknowledged for grant 621-2008-3562 to JB.
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Translational Psychiatry is an open-access journal published by Nature Publishing Group. This work is licensed under the Creative Commons Attribution-Noncommercial-No Derivative Works 3.0 Unported License. To view a copy of this license, visit http://creativecommons.org/licenses/by-nc-nd/3.0/
Translational Psychiatry
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Copyright Nature Publishing Group Mar 2012
Abstract
Autism spectrum disorders (ASD) are classified as neurological developmental disorders. Several studies have been carried out to find a candidate biomarker linked to the development of these disorders, but up to date no reliable biomarker is available. Mass spectrometry techniques have been used for protein profiling of blood plasma of children with such disorders in order to identify proteins/peptides that may be used as biomarkers for detection of the disorders. Three differentially expressed peptides with mass-charge (m/z) values of 2020±1, 1864±1 and 1978±1 Da in the heparin plasma of children with ASD that were significantly changed as compared with the peptide pattern of the non-ASD control group are reported here. This novel set of biomarkers allows for a reliable blood-based diagnostic tool that may be used in diagnosis and potentially, in prognosis of ASD.
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Neither ProQuest nor its licensors make any representations or warranties with respect to the translations. The translations are automatically generated "AS IS" and "AS AVAILABLE" and are not retained in our systems. PROQUEST AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY, ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR PURPOSE. Your use of the translations is subject to all use restrictions contained in your Electronic Products License Agreement and by using the translation functionality you agree to forgo any and all claims against ProQuest or its licensors for your use of the translation functionality and any output derived there from. Hide full disclaimer