18 research outputs found
Target Proteomic Profiling of Frozen Pancreatic CD24+ Adenocarcinoma Tissues by Immuno-Laser Capture Microdissection and Nano-LC–MS/MS
Cellular
heterogeneity of solid tumors represents a common problem
in mass spectrometry (MS)-based analysis of tissue specimens. Combining
immuno-laser capture microdissection (iLCM) and mass spectrometry
(MS) provides a means to study proteins that are specific for pure
cell subpopulations in complex tissues. CD24, as a cell surface marker
for detecting pancreatic cancer stem cells (CSCs), is directly correlated
with the development and metastasis of pancreatic cancer. Herein,
we describe an in-depth proteomic profiling of frozen pancreatic CD24<sup>+</sup> adenocarcinoma cells from early stage tumors using iLCM and
LC–MS/MS and a comparison with CD24<sup>–</sup> cells
dissected from patient-matched adjacent normal tissues. Approximately
40 nL of tissue was procured from each specimen and subjected to tandem
MS analysis in triplicate. A total of 2665 proteins were identified,
with 375 proteins in common that were significantly differentially
expressed in CD24<sup>+</sup> versus CD24<sup>–</sup> cells
by at least a 2-fold change. The major groups of the differentially
overexpressed proteins are involved in promoting tumor cell migration
and invasion, immune escape, and tumor progression. Three selected
candidates relevant to mediating immune escape, CD59, CD70, and CD74,
and a tumor promoter, TGFBI, were further validated by immunohistochemistry
analysis on tissue microarrays. These proteins showed significantly
increased expression in a large group of clinical pancreatic adenocarcinomas
but were negative in all normal pancreas samples. The significant
coexpression of these proteins with CD24 suggests that they may play
important roles in the progression of pancreatic cancer and could
serve as promising prognosis markers and novel therapeutic targets
for this deadly disease
Target Proteomic Profiling of Frozen Pancreatic CD24+ Adenocarcinoma Tissues by Immuno-Laser Capture Microdissection and Nano-LC–MS/MS
Cellular
heterogeneity of solid tumors represents a common problem
in mass spectrometry (MS)-based analysis of tissue specimens. Combining
immuno-laser capture microdissection (iLCM) and mass spectrometry
(MS) provides a means to study proteins that are specific for pure
cell subpopulations in complex tissues. CD24, as a cell surface marker
for detecting pancreatic cancer stem cells (CSCs), is directly correlated
with the development and metastasis of pancreatic cancer. Herein,
we describe an in-depth proteomic profiling of frozen pancreatic CD24<sup>+</sup> adenocarcinoma cells from early stage tumors using iLCM and
LC–MS/MS and a comparison with CD24<sup>–</sup> cells
dissected from patient-matched adjacent normal tissues. Approximately
40 nL of tissue was procured from each specimen and subjected to tandem
MS analysis in triplicate. A total of 2665 proteins were identified,
with 375 proteins in common that were significantly differentially
expressed in CD24<sup>+</sup> versus CD24<sup>–</sup> cells
by at least a 2-fold change. The major groups of the differentially
overexpressed proteins are involved in promoting tumor cell migration
and invasion, immune escape, and tumor progression. Three selected
candidates relevant to mediating immune escape, CD59, CD70, and CD74,
and a tumor promoter, TGFBI, were further validated by immunohistochemistry
analysis on tissue microarrays. These proteins showed significantly
increased expression in a large group of clinical pancreatic adenocarcinomas
but were negative in all normal pancreas samples. The significant
coexpression of these proteins with CD24 suggests that they may play
important roles in the progression of pancreatic cancer and could
serve as promising prognosis markers and novel therapeutic targets
for this deadly disease
Altered Expression of Sialylated Glycoproteins in Ovarian Cancer Sera Using Lectin-based ELISA Assay and Quantitative Glycoproteomics Analysis
Herein,
we identify and confirm differentially expressed sialoglycoproteins
in the serum of patients with ovarian cancer. On the basis of <i>Sambucus nigra</i> (SNA) lectin enrichment and on an isobaric
chemical labeling quantitative strategy, clusterin (CLUS), leucine-rich
alpha-2-glycoprotein (LRG1), hemopexin (HEMO), vitamin D-binding protein
(VDB), and complement factor H (CFH) were found to be differentially
expressed in the serum of patients with ovarian cancer compared to
benign diseases. The abnormal sialylation levels of CLUS, CFH, and
HEMO in serum of ovarian cancer patients were verified by a lectin-based
ELISA assay. ELISA assays were further applied to measure total protein
level changes of these glycoproteins. Protein levels of CLUS were
found to be down-regulated in the serum of ovarian cancer patients,
while protein levels of LRG1 were increased. The combination of CLUS
and LRG1 (AUC = 0.837) showed improved performance for distinguishing
stage III ovarian cancer from benign diseases compared to CA125 alone
(AUC = 0.811). In differentiating early stage ovarian cancer from
benign diseases or healthy controls, LRG1 showed comparable performance
to CA125. An independent sample set was further used to confirm the
ability of these candidate markers to detect patients with ovarian
cancer. Our study provides a comprehensive strategy for the identification
of candidate biomarkers that show the potential for diagnosis of ovarian
cancer. Further studies using a large number of samples are necessary
to validate the utility of this panel of proteins
Altered Expression of Sialylated Glycoproteins in Ovarian Cancer Sera Using Lectin-based ELISA Assay and Quantitative Glycoproteomics Analysis
Herein,
we identify and confirm differentially expressed sialoglycoproteins
in the serum of patients with ovarian cancer. On the basis of <i>Sambucus nigra</i> (SNA) lectin enrichment and on an isobaric
chemical labeling quantitative strategy, clusterin (CLUS), leucine-rich
alpha-2-glycoprotein (LRG1), hemopexin (HEMO), vitamin D-binding protein
(VDB), and complement factor H (CFH) were found to be differentially
expressed in the serum of patients with ovarian cancer compared to
benign diseases. The abnormal sialylation levels of CLUS, CFH, and
HEMO in serum of ovarian cancer patients were verified by a lectin-based
ELISA assay. ELISA assays were further applied to measure total protein
level changes of these glycoproteins. Protein levels of CLUS were
found to be down-regulated in the serum of ovarian cancer patients,
while protein levels of LRG1 were increased. The combination of CLUS
and LRG1 (AUC = 0.837) showed improved performance for distinguishing
stage III ovarian cancer from benign diseases compared to CA125 alone
(AUC = 0.811). In differentiating early stage ovarian cancer from
benign diseases or healthy controls, LRG1 showed comparable performance
to CA125. An independent sample set was further used to confirm the
ability of these candidate markers to detect patients with ovarian
cancer. Our study provides a comprehensive strategy for the identification
of candidate biomarkers that show the potential for diagnosis of ovarian
cancer. Further studies using a large number of samples are necessary
to validate the utility of this panel of proteins
Single Amino Acid Variant Profiles of Subpopulations in the MCF‑7 Breast Cancer Cell Line
Cancers
are initiated and developed from a small population of
stem-like cells termed cancer stem cells (CSCs). There is heterogeneity
among this CSC population that leads to multiple subpopulations with
their own distinct biological features and protein expression. The
protein expression and function may be impacted by amino acid variants
that can occur largely due to single nucleotide changes. We have thus
performed proteomic analysis of breast CSC subpopulations by mass
spectrometry to study the presence of single amino acid variants (SAAVs)
and their relation to breast cancer. We have used CSC markers to isolate
pure breast CSC subpopulation fractions (ALDH+ and CD44+/CD24–
cell populations) and the mature luminal cells (CD49f–EpCAM+)
from the MCF-7 breast cancer cell line. By searching the Swiss-CanSAAVs
database, 374 unique SAAVs were identified in total, where 27 are
cancer-related SAAVs. 135 unique SAAVs were found in the CSC population
compared with the mature luminal cells. The distribution of SAAVs
detected in MCF-7 cells was compared with those predicted from the
Swiss-CanSAAVs database, where we found distinct differences in the
numbers of SAAVs detected relative to that expected from the Swiss-CanSAAVs
database for several of the amino acids
Isobaric Protein-Level Labeling Strategy for Serum Glycoprotein Quantification Analysis by Liquid Chromatography–Tandem Mass Spectrometry
While peptide-level labeling using
isobaric tag reagents has been
widely applied for quantitative proteomics experiments, there are
comparatively few reports of protein-level labeling. Intact protein
labeling could be broadly applied to quantification experiments utilizing
protein-level separations or enrichment schemes. Here, protein-level
isobaric labeling was explored as an alternative strategy to peptide-level
labeling for serum glycoprotein quantification. Labeling and digestion
conditions were optimized by comparing different organic solvents
and enzymes. Digestions with Asp-N and trypsin were found highly complementary;
combining the results enabled quantification of 30% more proteins
than either enzyme alone. Three commercial reagents were compared
for protein-level labeling. Protein identification rates were highest
with iTRAQ 4-plex when compared to TMT 6-plex and iTRAQ 8-plex using
higher-energy collisional dissociation on an Orbitrap Elite mass spectrometer.
The compatibility of isobaric protein-level labeling with lectin-based
glycoprotein enrichment was also investigated. More than 74% of lectin-bound
labeled proteins were known glycoproteins, which was similar to results
from unlabeled and peptide-level labeled serum samples. Finally, protein-level
and peptide-level labeling strategies were compared for serum glycoprotein
quantification. Isobaric protein-level labeling gave comparable identification
levels and quantitative precision to peptide-level labeling
Quantitative Analysis of Single Amino Acid Variant Peptides Associated with Pancreatic Cancer in Serum by an Isobaric Labeling Quantitative Method
Single
amino acid variations are highly associated with many human
diseases. The direct detection of peptides containing single amino
acid variants (SAAVs) derived from nonsynonymous single nucleotide
polymorphisms (SNPs) in serum can provide unique opportunities for
SAAV associated biomarker discovery. In the present study, an isobaric
labeling quantitative strategy was applied to identify and quantify
variant peptides in serum samples of pancreatic cancer patients and
other benign controls. The largest number of SAAV peptides to date
in serum including 96 unique variant peptides were quantified in this
quantitative analysis, of which five variant peptides showed a statistically
significant difference between pancreatic cancer and other controls
(<i>p</i>-value < 0.05). Significant differences in the
variant peptide SDNCEDTPEAGYFA<i><u>V</u></i>AVVK from serotransferrin were detected between pancreatic cancer
and controls, which was further validated by selected reaction monitoring
(SRM) analysis. The novel biomarker panel obtained by combining α-1-antichymotrypsin
(AACT), Thrombospondin-1 (THBS1) and this variant peptide showed an
excellent diagnostic performance in discriminating pancreatic cancer
from healthy controls (AUC = 0.98) and chronic pancreatitis (AUC =
0.90). These results suggest that large-scale analysis of SAAV peptides
in serum may provide a new direction for biomarker discovery research
Mass-Selected Site-Specific Core-Fucosylation of Ceruloplasmin in Alcohol-Related Hepatocellular Carcinoma
A mass
spectrometry-based methodology has been developed to study
changes in core-fucosylation of serum ceruloplasmin that are site-specific
between cirrhosis and hepatocellular carcinoma (HCC). The serum samples
studied for these changes were from patients affected by cirrhosis
or HCC with different etiologies, including alcohol, hepatitis B virus,
or hepatitis C virus. The methods involved trypsin digestion of ceruloplasmin
into peptides followed by Endo F3 digestion, which removed most of
the glycan structure while retaining the innermost <i>N</i>-acetylglucosamine (GlcNAc) and/or core-fucose bound to the peptide.
This procedure simplified the structures for further analysis by mass
spectrometry, where four core-fucosylated sites (sites 138, 358, 397,
and 762) were detected in ceruloplasmin. The core-fucosylation ratio
of three of these sites increased significantly in alcohol-related
HCC samples (sample size = 24) compared to that in alcohol-related
cirrhosis samples (sample size = 18), with the highest AUC value of
0.838 at site 138. When combining the core-fucosylation ratio of site
138 in ceruloplasmin and the alpha-fetoprotein (AFP) value, the AUC
value increased to 0.954 (OR<sub>site138</sub> = 12.26, <i>p</i> = 0.017; OR<sub>AFP</sub> = 3.64, <i>p</i> = 0.022), which
was markedly improved compared to that of AFP (AUC = 0.867) (LR test <i>p</i> = 0.0002) alone. However, in HBV- or HCV-related liver
diseases, no significant site-specific change in core-fucosylation
of ceruloplasmin was observed between HCC and cirrhosis
Large-Scale Identification of Core-Fucosylated Glycopeptide Sites in Pancreatic Cancer Serum Using Mass Spectrometry
Glycosylation has significant effects
on protein function and cell
metastasis, which are important in cancer progression. It is of great
interest to identify site-specific glycosylation in search of potential
cancer biomarkers. However, the abundance of glycopeptides is low
compared to that of nonglycopeptides after trypsin digestion of serum
samples, and the mass spectrometric signals of glycopeptides are often
masked by coeluting nonglycopeptides due to low ionization efficiency.
Selective enrichment of glycopeptides from complex serum samples is
essential for mass spectrometry (MS)-based analysis. Herein, a strategy
has been optimized using LCA enrichment to improve the identification
of core-fucosylation (CF) sites in serum of pancreatic cancer patients.
The optimized strategy was then applied to analyze CF glycopeptide
sites in 13 sets of serum samples from pancreatic cancer, chronic
pancreatitis, healthy controls, and a standard reference. In total,
630 core-fucosylation sites were identified from 322 CF proteins in
pancreatic cancer patient serum using an Orbitrap Elite mass spectrometer.
Further data analysis revealed that 8 CF peptides exhibited a significant
difference between pancreatic cancer and other controls, which may
be potential diagnostic biomarkers for pancreatic cancer
Enjoy your food, but eat less [tipsheet] (2017)
DG TipSheet No. 18 December 2011 Revised October 2016, Reviewed 06/17/5M