Research Article |
Open Access |
|
|
Proteome Expression Database of Ewing Sarcoma: a Segment
of the Genome Medicine Database of Japan Proteomics |
Kazutaka Kikuta1,2, Yukako Tsunehiro1, Akihiko Yoshida3, Naobumi Tochigi4,
Setsuo Hirohahsi1, Akira Kawai2, Tadashi Kondo1*
|
1Proteome Bioinformatics Project, National Cancer Center Research Institute |
2Orthopedics Division, National Cancer Center Hospital |
3Clinical Laboratory Division, National Cancer Center Hospital |
4Pathology Division, National Cancer Center Research Institute |
| *Corresponding author: |
Dr. Tadashi Kondo, MD, PhD,
Proteome
Bioinformatics Project, National Cancer Center Research Institute,
5-1-
1 Tsukiji, Chuo-ku, Tokyo 104-0045, Japan,
Tel : +81-3-3542-2511
ext.3004,
Fax : +81-3-3547-5298,
E-mail :takondo@ncc.go.jp |
|
Received December 07, 2009; Accepted December 19, 2009; Published
December 20, 2009 |
|
Citation: Kikuta K, Tsunehiro Y, Yoshida A, Tochigi N, Hirohahsi S, et al.
(2009) Proteome Expression Database of Ewing sarcoma: a segment
of the Genome Medicine Database of Japan Proteomics. J Proteomics
Bioinform 2: 500-504. doi:10.4172/jpb.1000112 |
| |
Copyright:© 2009 Kikuta K, et al. This is an open-access article distributed
under the terms of the Creative Commons Attribution License,
which permits unrestricted use, distribution, and reproduction in any
medium, provided the original author and source are credited. |
| |
|
Ewing sarcoma is the second most common primary malignant
bone tumor in children and adolescents worldwide.
Here, we report an open-access proteome expression database
of eight Ewing sarcoma cases using proteome data
obtained by two-dimensional difference gel electrophoresis
(2D-DIGE) and mass spectrometry. Proteins extracted
from primary tumor tissues were labeled with CyDye
DIGE Fluor saturation dye, and separated using a large
format electrophoresis device, generating 2431 protein
spots. Mass spectrometry following in-gel digestion identified
330 protein spots corresponding to 220 proteins.
Multiple proteins were observed from single protein spots,
and single proteins generated multiple protein spots, suggesting
diversity of the proteome observed by 2D-DIGE.
The results of 2D-DIGE and protein identification by mass
spectrometry, and part of the corresponding clinico-pathological
data such as prognosis after treatments are freely
accessible in the public proteome database Genome Medicine
Database of Japan Proteomics (GeMDBJ Proteomics,
https://gemdbj.nibio.go.jp/dgdb/DigeTop.do). |
Keywords |
Ewing sarcoma proteomics; GeMDBJ proteomics;
Proteome database;
Two-dimensional difference gel electrophoresis
(2D-DIGE); Mass spectrometry |
Ewing sarcoma is the second most common primary malignant
bone tumor in children and adolescents. The prognosis of
the patients with Ewing sarcoma remains dismal despite of
progress of intensive chemotherapy and local control protocols;
30-40% of patients with localized tumor and 80% of patients
with metastatic tumor at diagnosis die due to disease progression
within five years (Cotterill et al., 2000). More intensified
first-line chemotherapy regimens and combinations of chemotherapeutic
agents demonstrated improved clinical outcome.
However, as such modern therapies often result in serious toxicity,
risk- adapted treatment strategies have been required (Atra
et al., 1997; Diaz et al., 2000; Bernstein et al., 2006; Engelhardt
et al., 2007; McTiernan et al., 2006). The studies on molecular
background of malignant features of Ewing sarcoma, followed
by identification of biomarkers to predict the responses to treatment,
were conducted by global expression studies (Ohali et al.,
2004; Cheung et al., 2007; Armengol et al., 1997; Hattinger et
al., 2002; Schaefer et al., 2008). By a proteomics approach, we
previously reported nucleophosmin as a novel prognostic
biomarker in Ewing sarcoma (Kikuta et al., 2009). The aberrant
expression of nucleophosmin was observed in several types of
cancers (Tanaka et al., 1992; Nozawa et al., 1996; Zhang et al.,
2004; Tsui et al., 2004). However, the prognostic utility of
nucleophosmin was not reported in Ewing sarcoma until our
proteomic study (Ohali et al., 2004; Cheung et al., 2007;
Armengol et al., 1997; Hattinger et al., 2002; Schaefer et al.,
2008), suggesting the unique advantage of proteomics. |
An open-access database is a useful platform to integrate the
proteome data to share the proteome data in a proteomics community.
Such database should be beneficial especially for the
studies on rare cancers such as Ewing sarcoma. However, there
was no proteome expression database practically applicable in
studies on Ewing sarcoma. For this reason, we constructed a
proteome database for Ewing sarcoma using eight surgically
resected frozen tissue samples, two-dimensional difference gel
electrophoresis (2D-DIGE) (Unlu et al.,1997), highly sensitive
fluorescent dyes (CyDye DIGE Fluor saturation dye)( Shaw et
al., 2003) and our original large format electrophoresis
device(Kondo et al., 2006). In 2D-DIGE, different protein
samples are labeled with fluorescent dyes with different emission
and excitation wavelength, mixed together and separated
by two-dimensional gel electrophoresis. By including a common
internal control sample labeled with a fluorescent dye different
from that for the individual samples, the gel-to-gel variations
can be canceled out, and reproducible results can be expected
across a large number of samples. 2D-DIGE can improve
the aspects of classical 2D-PAGE that place critical limitations
and provide a platform for unique applications such as for the
use of laser microdissected tissues (Kondo et al., 2003). |
In this study, primary tumor tissues from eight incisional biopsy
samples of Ewing sarcoma were subjected to proteomics.
The corresponding clinico-pathological information is available
in GeMDBJ Proteomics (Figure 1) including prognosis after
chemotherapy and surgery. The sample numbers corresponded to those in our previous report, and more detailed clinico-pathological
data are available there (Kikuta et al., 2009). This project
was approved by the ethical board of the National Cancer Center
and written informed consent was obtained from all donors. |
|
Figure1: Appearance of GeMDBJ Proteomics (https://gemdbj.nibio.go.jp/dgdb/DigeTop.do). The proteins are searchable by protein name from a page of “Search
by Protein” (1), and by the localization of 2D image from a page of “Search by Gel Image” (2). In the page of “Search by Gel Image”, clicking “Ewing sarcoma” leads
to the 2D image page with protein annotation (3). By selecting “Expression”, the heat map of proteins across the samples appears (4). The list of proteomics project
that generated the data for GeMDBJ Proteomics is available in a page of “Project Overview” (5). The 80 databases using 2D-PAGE data are listed in a page of “Link
to 2D Database”, where the databases are organized in an alphabetical order or according to the nations of database or species of sample sources (6).
|
|
Protein samples were prepared by homogenizing frozen Ewing sarcoma tissues as previously described (Kikuta et al., 2009). In
brief, proteins were extracted from snap frozen tissues using a
urea lysis buffer and a Multi-beads shocker (Yasui-kikai, Osaka,
Japan). For preparative purposes, 100 micrograms of the extracted
proteins were labeled with a CyDye DIGE Fluor saturation
dye according to the manufacturer’s instructions. For analytical
purposes, the internal control sample was prepared by
mixing a small portion of all eight individual samples. Five micrograms
of the internal control sample and the individual samples were labeled with Cy3 and Cy5 respectively, and mixed
together. Then the labeled protein samples were separated by
2D-PAGE using our original large format electrophoresis device
(Kondo et al., 2006). The gel images were obtained by scanning
the gels with a laser scanner (Typhoon Trio, GE Healthcare
Biosciences, Uppsala, Sweden) at the appropriate wavelength.
All protein spots were numbered by the Progenesis SameSpots
software (Nonlinear Dynamics, Newcastle, UK) according to
the spot numbers in the master gel image, which was shown in
the GeMDBJ Proteomics. Proteins in the recovered protein spots
were subjected to in-gel digestion, and the trypsin digests were
subjected to liquid chromatography coupled with tandem mass
spectrometry, using a Finnigan LTQ linear ion trap mass spectrometer
(Thermo Electron Co., San Jose, CA) equipped with a
nano-electrospray ion (NSI) source (AMR Inc., Tokyo, Japan).
The Mascot software (version 2.1, Matrix science, London, UK)
was used to search for the mass of the peptide ion peaks against
the SWISS-PROT database. All procedures for protein identification
were reported in our previous report (Kikuta et al., 2009). |
The proteome data of Ewing sarcoma, which included the data
of 2D-DIGE and the annotation of protein spots can be obtained
in GeMDBJ Proteomics (Figure 1). Clicking “Search by Protein”
opens the page for text search. Selecting “Search by Gel Image” leads the page of a list of projects including Ewing sarcoma
proteomics. The clickable 2D image of Ewing sarcoma
sample is appeared by clicking “Ewing sarcoma”. This page includes
the annotation of protein spots, and the following page
includes the intensity of protein spots, which is visualized by
color spectrum, a heat map, across the eight samples. The mass
spectrometric data supporting the protein identification and the
prognostic information are available from this page. The number
of protein spots in GeMDBJ Proteomics corresponds to that
in our previous publication for Ewing sarcoma proteome (Kikuta
et al., 2009). A page of “Project Overview” exhibits a list of
projects, a brief description of projects, the number of observed
or identified protein spots, samples, and identified proteins. “Link
to 2D Database” summarizes the status of presently available
proteome database using 2D-PAGE data. |
|
Figure 2: The characteristics of 2D-DIGE data of Ewing sarcoma. A: Single
spots contain multiple proteins. The number of proteins included in the single
spots is demonstrated. B: Single proteins may appear in multiple protein spots.
The number of protein spots representing the same protein is demonstrated.
|
|
Among the 330 protein spots identified, we found that 168
protein spots contained multiple proteins, accounting for 50.9%
of all protein spots with annotations. Figure 2A demonstrates
the number of proteins that may be observed in a single protein
spot. We had similar results in our database study for the pancreatic
cancer proteome (Yamada et al., 2008) and lung cancer
proteome (Kosaihira et al., 2009), being consistent with the results
of previous proteome studies (Campostrini et al., 2005;
Nawrocki et al., 1998; Westbrook et al., 2001). The limited separation
performance of 2D gels, the relatively large number of
protein spots with detectable intensity, and the high sensitivity
of protein identification by mass spectrometry, can cause the
overlapping of protein spots. Although the extensive fractionation
and the use of large format gel apparatus may solve this
problem some extent, the mass spectrometry with improved sensitivity
will eventually detect multiple proteins in single protein
spots. As only a few proteins contained at each location may
contribute to the detectable signal due to the fact that the intensity
of the rest is lower than the detection limit (Hunsucker et al.,
2006), this feature of 2D-DIGE may not be practically a serious
problem in comparative expression studies. However, the confirmation
of differential expression proteins by western blotting
should be achieved when the further experiments are considered.
In case western blotting resulted in the discordant results
with those by 2D-DIGE, the proteins secondly or thirdly ranked
in protein identification studies should be considered as those
contributed to the intensity differences. GeMDBJ Proteomics
demonstrates all candidate proteins for positive protein identifications,
which were low-ranked because of low but significant
MasCot score. Such protein identification data will be helpful to
interpret the data by western blotting and 2D-DIGE. |
Among 220 unique proteins identified as those ranked top by
mass spectrometry, we found that 58 unique proteins were identified
in multiple protein spots, accounting for 26.4% of all identified
unique proteins. We had similar results in our previous
study on the pancreatic cancer proteome (Yamada et al., 2008)
and lung cancer proteome (Kosaihira et al ., 2009), a finding
that may be explained by the presence of alternative splicing or
posttranslational modifications. Figure 2B demonstrates the number
of unique proteins as a function of the number of protein
spots where they observed. Proteins repeatedly observed in seven
protein spots include actin, alpha-1-antitrypsin, haptoglobin,
serum albumin, vimentin; those in four protein spots include
complement factor B, fibrinogen beta chain, haptoglobin-related protein, heat shock protein HSP 90-beta, nucleolin (protein C23),
serotransferrin; those in three protein spots included alpha-1-
antichymotripsin, angiotensinogen, antithrombin-III, heat shock
cognate 71 kDa protein, hepatoma-derived growth factor
(HDGF), Ig kappa chain C region, L-lactate dehdydrogenase B
chain, nucleophosmin, protein disulfide-isomerase A6, 60S acidic
ribosomal protein P0, transaldolase, transitional endoplasmic
reticulum ATPase, tubulin beta chain, tropomyosin alpha-3 chain
and vinculin. Plasma proteins in tissues may tend to generate
multiple protein spots, probably because of glycosylation. There
are many examples of the proteins, the functions of which are
appeared after they are digested by proteases or phosphorylated
by kinases. Structural characterization of protein spots generated
by identical genes will generate more proteome information
from 2D-DIGE data. As the amount of proteins recovered
from gel is limited and not enough for the mass spectrometric
analysis for posttranslational modifications, molecular probes
specific to posttranslational modifications may be one of the
solutions for this issue. |
Presently, the GeMDBJ Proteomics includes the 2D-DIGE
proteome data derived from pancreatic cancer cell lines, esophageal
cancer, Ewing’s sarcoma, lung adenocarcinoma, malignant
pleural mesothel ioma tissues, colorectal cancer, and
cholagniocarcinoma, and the proteome data of the other malignancies
are under preparation. The GeMDBJ Proteomics will
be the largest proteome expression database containing data from
a wide range and number of clinical cases. The integration of
proteome data of different malignancies for cancer research will
be our next challenge. |
This work was supported by a grant from the Ministry of
Health, Labor and Welfare and by the Program for the Promotion
of Fundamental Studies in Health Sciences of the National
Institute of Biomedical Innovation of Japan. |
References |
- Armengol G, Tarkkanen M, Virolainen M, Forus A, Valle J, et al. (1997)
Recurrent gains of 1q, 8 and 12 in the Ewing family of tumours by comparative
genomic hybridization. Br J Cancer 75: 1403-1409.» CrossRef » PubMed » Google Scholar
- Atra A, Whelan JS, Calvagna V, Shankar AG, Ashley S, et al. (1997) Highdose
busulphan/melphalan with autologous stem cell rescue in Ewing’s sarcoma.
Bone Marrow Transplant 20: 843-846.» CrossRef » PubMed » Google Scholar
- Bernstein ML, Devidas M, Lafreniere D, Souid AK, Meyers PA, et al. (2006)
Intensive therapy with growth factor support for patients with Ewing tumor
metastatic at diagnosis: Pediatric Oncology Group/Children’s Cancer Group
Phase II Study 9457—a report from the Children’s Oncology Group. J Clin
Oncol 24: 152-159. » CrossRef » PubMed » Google Scholar
- Campostrini N, Areces LB, Rappsilber J, Pietrogrande MC, Dondi F, et al.
(2005) Spot overlapping in two-dimensional maps: a serious problem ignored
for much too long. Proteomics 5: 2385-2395. » CrossRef » PubMed » Google Scholar
- Cotterill SJ, Ahrens S, Paulussen M, Jurgens HF, Voûte PA, et al. (2000)
Prognostic factors in Ewing’s tumor of bone: analysis of 975 patients from
the European Intergroup Cooperative Ewing’s Sarcoma Study Group. J Clin
Oncol 18: 3108-3114.» CrossRef » PubMed » Google Scholar
- Cheung IY, Feng Y, Danis K, Shukla N, Meyers P, et al. (2007) Novel markers
of subclinical disease for Ewing family tumors from gene expression
profiling. Clin Cancer Res 13: 6978-6983.» CrossRef » PubMed » Google Scholar
- Diaz MA, Kanold J, Vicent MG, Halle P, Madero L, et al. (2000) Using
peripheral blood progenitor cells (PBPC) for transplantation in pediatric patients: a state-of-the-art review. Bone Marrow Transplant 26: 1291-1298» CrossRef » PubMed » Google Scholar
- Engelhardt M, Zeiser R, Ihorst G, Finke J, Muller CI (2007) High-dose chemotherapy
and autologous peripheral blood stem cell transplantation in adult
patients with high-risk or advanced Ewing and soft tissue sarcoma. J Cancer
Res Clin Oncol 133: 1-11. » CrossRef » PubMed » Google Scholar
- Hattinger CM, Potschger U, Tarkkanen M, Squire J, Zielenska M, et al. (2002) Prognostic impact of chromosomal aberrations in Ewing tumours.
Br J Cancer 86: 1763-1769. » CrossRef » PubMed » Google Scholar
- Hunsucker SW and Duncan MW (2006) Is protein overlap in two-dimensional
gels a serious practical problem? Proteomics 6: 1374-1375. » CrossRef » PubMed » Google Scholar
- Kikuta K, Tochigi N, Shimoda T, Yabe H, Morioka H, et al. (2009)
Nucleophosmin as a candidate prognostic biomarker of Ewing’s sarcoma
revealed by proteomics. Clin Cancer Res 15: 2885-2894.» CrossRef » PubMed » Google Scholar
- Kondo T and Hirohashi S (2006) Application of highly sensitive fluorescent
dyes (CyDye DIGE Fluor saturation dyes) to laser microdissection and twodimensional
difference gel electrophoresis (2D-DIGE) for cancer proteomics.
Nat Protoc 1: 2940-2956.» CrossRef » PubMed » Google Scholar
- Kondo T, Seike M, Mori Y, Fujii K, Yamada T, et al. (2003) Application of
sensitive fluorescent dyes in linkage of laser microdissection and two-dimensional
gel electrophoresis as a cancer proteomic study tool. Proteomics
3: 1758-1766.» CrossRef » PubMed » Google Scholar
- Kosaihira S, Tsunehiro Y, Tsuta K, Tochigi N, Gemma A, et al. (2009)
Proteome expression database of lung adenocarcinoma: a segment of Genome
Medicine Database of Japan proteomics. J Proteome Bioinform 2:
463-465 » Google Scholar
- Maurici D, Perez-Atayde A, Grier HE, Baldini N, Serra M, et al. (1998)
Frequency and implications of chromosome 8 and 12 gains in Ewing sarcoma.
Cancer Genet Cytogenet 100: 106-110.» CrossRef » PubMed » Google Scholar
- McTiernan A, Driver D, Michelagnoli MP, Kilby AM, Whelan JS (2006)
High dose chemotherapy with bone marrow or peripheral stem cell rescue
is an effective treatment option for patients with relapsed or progressive
Ewing’s sarcoma family of tumours. Ann Oncol 17: 1301-1305. » CrossRef » PubMed » Google Scholar
- Nawrocki A, Larsen MR, Podtelejnikov AV, Jensen ON, Mann M, et al.
(1998) Correlation of acidic and basic carrier ampholyte and immobilized
pH gradient two-dimensional gel electrophoresis patterns based on mass
spectrometric protein identification. Electrophoresis 19: 1024-1035. » PubMed » Google Scholar
- Nozawa Y, Van Belzen N, Van der Made AC, Dinjens WN, Bosman FT
(1996) Expression of nucleophosmin/B23 in normal and neoplastic colorectal
mucosa. J Pathol 178: 48-52» CrossRef » PubMed » Google Scholar
- Ohali A, Avigad S, Zaizov R, Ophir R, Horn-Saban S, et al. (2004) Prediction
of high risk Ewing’s sarcoma by gene expression profiling. Oncogene
23: 8997-9006.» CrossRef » PubMed » Google Scholar
- Schaefer KL, Eisenacher M, Braun Y, Brachwitz K, Wai DH, et al. (2008)
Microarray analysis of Ewing’s sarcoma family of tumours reveals characteristic
gene expression signatures associated with metastasis and resistance
to chemotherapy. Eur J Cancer 44: 699-709.» CrossRef » PubMed » Google Scholar
- Shaw J, Rowlinson R, Nickson J, Stone T, Sweet A, et al. (2003) Evaluation
of saturation labelling two-dimensional difference gel electrophoresis fluorescent
dyes. Proteomics 3: 1181-1195.CrossRef » PubMed » Google Scholar
- Tanaka M, Sasaki H, Kino I, Sugimura T, Terada M (1992) Genes preferentially
expressed in embryo stomach are predominantly expressed in gastric
cancer. Cancer Res 52: 3372-3377.» CrossRef » PubMed » Google Scholar
- Tsui KH, Cheng AJ, Chang PL, Pan TL, Yung BY (2004) Association of
nucleophosmin/B23 mRNA expression with clinical outcome in patients
with bladder carcinoma. Urology 64: 839-844.» CrossRef » PubMed » Google Scholar
- Unlu M, Morgan ME, Minden JS (1997) Difference gel electrophoresis: a
single gel method for detecting changes in protein extracts. Electrophoresis
18: 2071-2077. » PubMed » Google Scholar
- Westbrook JA, Yan JX, Wait R, Welson SY, Dunn MJ (2001) Zooming-in
on the proteome: very narrow-range immobilised pH gradients reveal more
protein species and isoforms. Electrophoresis 22: 2865-2871. » CrossRef » PubMed » Google Scholar
- Yamada M, Fujii K, Koyama K, Hirohashi S, Kondo T (2008) The proteomic
profile of pancreatic cancer cell lines corresponding to carcinogenesis and
metastasis. J Proteomics Bioinform 2: 1-18.
- Zhang Y (2004) The ARF-B23 connection: implications for growth control
and cancer treatment. Cell Cycle 3: 259-262. » CrossRef » PubMed » Google Scholar
|
| |
| |
|
| This Article |
| DOWNLOAD |
|
| CONTRIBUTE |
|
| SHARE |
|
| EXPLORE |
|
|
|
|