| |
Citation: Stalder D, Cung T, Gloekler S, Meier P, Schlappritzi E, et al. (2008) Apolipoprotein(a) Size and Lipoprotein(a)
Concentrations in Patients with Good and Poor Coronary Collateral Flow–an Interrelation Discovered by Proteomic Screening
of Pooled Plasma Samples. J Proteomics Bioinform 1: 389-400.
|
Copyright: © 2008 Stalder D, 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.
|
Abstract
We discovered and validated medium sized apolipoprotein(a) as a marker for good myocardial collaterization.
A total of 80 subjects were investigated in two serial studies: a discovery study (n=14) applying a pooling strategy
to a gel- and label-free proteomics platform followed by a validation study (n=80) measuring apolipoprotein(a)
isoforms and concentration in individual subjects. Degree of myocardial collaterization as well as apolipoprotein(a)
concentration and isoform determination were performed by state-of-the-art methodologies. As apolipoprotein(a)
concentration negatively correlates with isoform size (variable number of Kringle-IV type 2 repeats in human
population), subjects were grouped into patients with small, medium and large apolipoprotein(a) isoforms for the
statistical analysis. Among the 70 subjects with medium and large apolipoprotein(a) isoforms (>17 Kringle-IV
type 2 repeats), subjects with insufficient collaterization (n=57) had a median apolipoprotein(a) concentration of
11.9 nmol/L, while patients with sufficient collaterization (n=13) had a median concentration of 31.3 nmol/L (p=0.033,
Mann-Whitney U-test). Among the 52 subjects with medium sized apolipoprotein(a) isoforms (30< Kringle IV
type 2 repeats >17) the difference in concentration was even more significant (13.4 vs 33.5 nmol/L, p=0.008).
Abbreviations
%RSD, relative standard deviation; apo(a),
apolipoprotein(a); CAD, coronary artery disease; CFI, collateral
flow index; CID, collision-induced dissociation;
FWHM, full width at half maximum (peak intensity);
GlcNAc, N-acetylglucosamine; HCII, Heparin Cofactor II;
IEF, isoelectric focusing; IPG, immobilized pH gradient;
LACB, beta-lactoglobulin; Lp(a), lipoprotein(a); OGE, Off-
GelTM electrophoresis; PMSS, peptide match score summation;
RP-HPLC, reversed phase HPLC
Introduction
Blood vessels connecting left and right coronary arteries
are referred to as “coronary collateral vessels” or “coronary anastomoses”. In the presence of obstructive or occlusive
coronary artery disease, anastomoses between different
vascular regions may serve as natural bypass for
blood to reach myocardial territories distal to an arterial
obstruction or occlusion, thereby preventing or mitigating
myocardial infarction. The therapeutic promotion of
collaterals would offer an alternative treatment strategy for
coronary artery disease (CAD) patients. Today, the presence
of sufficient collaterals to prevent ischemia during
coronary occlusion can only be determined by invasive methods.
The collateral flow index (CFI) determination, using
ultra thin Doppler and pressure angioplasty guide wires, is
currently the only quantitative method for the determination
of coronary collateral flow in human patients. It has been
determined empirically that a CFI 0.25 is sufficient to prevent
myocardial ischemia in the event of a one-minute coronary
occlusion (Pohl et al., 2001). Furthermore it has been
shown that sufficient collateral arterioles occur more frequently
in the presence of stenotic lesions in coronary arteries
(Urban et al., 1987; Wustmann et al., 2003). However
the response of collateral development to a certain
obstructive stimulus (higher flow rates and high shear stress
in preexisting interconnecting arterioles) is highly variable
and it is adequate only in about 1/3 of patients with CAD to
prevent myocardial ischemia during occlusion (Pohl et al.,
2001). Both, angiogenesis and arteriogenesis are involved
in enhancing the degree of collaterization. The latter is
thought of being the more important factor, as increasing
the diameters of already existing arterioles contributes more
to the blood supply than the formation of new capillaries.
That is why any supporting remodeling agent or therapy
which improves revascularization is of great interest. Most
insight on the molecular biology of arteriogenesis in context
with collateral growth has come from animal models. In
short, increased shear stress in preexisting arterioles induces
inflammation of the endothelium. The attracted mononuclear
blood cells together with the endothelium then orchestrate
the remodeling process, which includes cell proliferation,
degradation and rebuilding of extra cellular matrix (Heil and
Schaper, 2007).
Current therapeutic approaches to obstructive CAD include
pharmacologic reduction of myocardial oxygen demand
and mechanical restoration of blood flow to regions
lacking sufficient supply. No agents stimulating arteriogenesis
or angiogenesis are currently used in therapy, although some
studies indicate that certain angiogenic factors do enhance
collateral flow in the short term (Seiler et al., 2001; Zbinden
S. et al., 2005), but are not applicable because most angiogenic
factors are also atherogenic. Recently, a clinical study testing a 3-month physical endurance exercise program has
shown to augment coronary collateral supply to healthy and
stenotic coronary arteries (Zbinden R. et al., 2007).
In our study we searched for plasma protein biomarkers
correlating with the degree of myocardial collaterization by
comparing pooled plasma samples of patients with very well
developed collaterals (CFI>0.25) to patients with very badly
developed collaterals (CFI<0.1). The comparison was performed
with our recently developed gel- and label-free
proteomic screening platform (Stalder et al., 2008) employing
immunodepletion of the twelve most abundant plasma
proteins followed by protein fractionation prior to LC-MS/
MS based protein identification of the tryptically digested
fractions. We used the probability based peptide match score
summation (PMSS) as relative protein abundance indicator,
an approach first shown by Allet and Colinge (Allet et al.,
2004; Colinge et al., 2005) and adapted in our laboratory
(Heller et al., 2007; Stalder et al., 2008). PMSS is based on
spectrum sampling (Liu et al., 2004), and is based on the
assumption that the frequency of detecting peptides of a
certain protein correlates with its relative concentration.
While spectrum counting counts the frequency of identified
peptides, PMSS uses the quality (z-score) of the peptide
identification as a weighting factor. The finding of differential
apo(a) expression discovered with the proteomics study
was then successfully validated by measuring specific protein
concentrations in all 80 subjects.
Material and Methods
Patient Samples
Patients undergoing coronary angiography because of
chest pain or a positive treadmill exercise test were enrolled
for this study after written consent of the patients and
with approval of the local ethical committee. Blood samples
of 80 patients (age 61±11 years, 15 women) referred for
diagnostic coronary angiography and undergoing invasive
collateral assessment were drawn into EDTA containing
tubes. Clinical parameters of all subjects are given in Appendix
C and no statistical significance was apparent between
the two groups with sufficient or non-sufficient
collateralization based on a two-tailed students t-test assuming
equal variance. After blood cells were depleted by
centrifugation at 2,000 g (20°C) for 20 minutes, protease
inhibitor cocktail CompleteTM from Roche was added according
to manufacturers’ recommendations. Aliquots of 250μL and 1 mL were stored at -80°C. After all samples were
collected, seven aliquots of patients with very high and seven
patients with very low collateral flow index (CFI>0.25: Pool A, CFI<0.1: Pool B) were thawed at 37°C for 5 minutes,
pooled into two pools, divided into 100 μL aliquots and stored
at -80°C.
Assessment of Collateral Flow
Invasive assessment of coronary collateral flow index was
performed by simultaneous measurement of distal coronary
occlusive pressure (Poccl), aortic pressure (Pao) and central
venous pressure (CVP) during a 1-minute coronary balloon
occlusion. CFI was calculated with the following formula:
CFI=( Poccl-CVP)/( Pao-CVP) (Seiler et al., 1998).
Fractionation of Plasma Proteins
Plasma pool samples (100 μL) were thawed at 37°C for
5 minutes and 32 μL of plasma was depleted of the 12 most
abundant plasma proteins (Albumin, IgG, Transferrin, Haptoglobin,
Alpha-1-Antitrypsin, Alpha-2-Macroglobulin, IgA,
IgM, Orosomucoid, ApoA-I, ApoA-II, Fibrinogen) through
immunodepletion using SepproTM IgY-12 depletion kit
(GenWay, San Diego, CA, USA) according to the provided
standard protocol. Depleted plasma proteins (~250 μg) were
immediately fractionated into 51 fractions according to their
hydrophobicity by RP-HPLC on a Summit HPLC System
(Dionex, Idstein, Germany) using a GRACE VIDAC C4
column (4.5 mm i.d. x 150 mm length), which was kept at
58°C, and a Foxy fraction collector under the control of
Chromeleon Software (Dionex, Idstein, Germany). The
samples were acidified by addition of TFA to the final concentration
of 0.1% (v/v), incubated, centrifuged and loaded
onto the column by two consecutive injections of 200 microL
at a flow rate of 0.75 mL/min of solvent A (0.1% TFA in
water/acetonitrile 97:3). Columns were developed by a sigmoid
acetonitrile gradient of 3 to 100% solvent B (0.1%
TFA in water/acetonitrile 3:97) in 54 min at a flow rate of
0.75 mL/min. Fractions of 0.75 mL were collected each
minute. The UV trace at 214 nm and 280 nm as well as the
back pressure of the column was recorded by the software.
Fractions were collected in 1.5 mL Eppendorf tubes which
were closed, labeled, and pierced in the cap with a needle
before storage at -80°C. The frozen fractions were then
lyophilized overnight in a Christ Alpha 2-4 LSC freeze dryer
(Kühner AG, Birsfelden, Switzerland). The lyophilized protein
fractions were kept at -20°C until further use.
Protein Digestion, LC-MS/MS and Protein Identification
Sequencing-grade modified trypsin was obtained from
Promega (Catalys, Wallisellen, Switzerland). Formic acid,
LC-MS grade acetonitrile, Tris buffer and ammonium bicarbonate, were purchased from Fluka (Buchs, Switzerland).
Lyophilized RP-HPLC samples were reconstituted
and digested by adding 14 microL of 0.1 M Tris pH 8, 5 mM
DTT, 50 ng/microL trypsin and snapping the tube with the
index finger, in order to dissolve all of the lyophilized proteins.
The liquid was spun down and incubated overnight at
room temperature. In order to maximize reproducibility, proteins
were not alkylated prior to digestion, but constantly
kept in a reducing environment. The digestions were stopped
by adding 2 microL of concentrated formic acid. Digests
were analyzed by LC-MS/MS by loading 95% of the sample
on a homemade 0.15 x 50 mm C8 RP column, applying a
40-minutes acetonitrile gradient on an Esquire3000 ion trap
mass spectrometer (Bruker Daltonics, Bremen, Germany)
essentially as described elsewhere (Heller et al., 2007).
Peak lists from the raw data were created by Data Analysis
version 3.1 (Bruker Daltonics, Bremen, Germany) using the
following parameters. MS/MS compounds exceeding a total
ion chromatogram intensity of 4000 ion counts were exported
and all spectra from the same precursor eluting within
a retention time window of 0.5 minutes were compiled to
one MS/MS peak list. MS/MS peak detection was made
with the Apex peak finder algorithm using a peak width at
half maximum (FWHM) of 0.1 m/z, a signal-to-noise ratio
(S/N) of one, a relative to base peak intensity threshold of
2%, and an absolute intensity threshold of 10 ion counts as
parameters. A mixed list of deconvoluted and nondeconvoluted
MS and MS/MS signals, with an allowance
for only the 200 most abundant peaks from non-deconvoluted
MS/MS signals of each spectrum, were exported into Mascot
generic file format text (mgf) files. MS signal
deconvolution was set to “Auto” for resolved isotope, and a
maximum charge of four with minimally three peaks in set
and a molecular weight agreement of 0.05% for related ion
deconvolution, respectively. MS/MS peak deconvolutions
were allowed for a maximum charge of one only. S/N and
FWHM values were also exported into the mgf files.
CID spectra interpretation was performed with the
PHENYX v2.1 search engine on the vital-it.ch server operated
by GeneBio (Geneva, Switzerland) against the latest
human UniProt-SwissProt 51.0 (295981 individual entries)
protein database allowing variable modifications of Met
oxidation, Asn/Gln deamidation and formylation of free amino
groups. Parent and fragment mass tolerances were set to 2
and 0.8 Da. Up to two missed cleavages and half tryptic
peptides were allowed. Peptide identifications with z-scores>8 were accepted, but reconsidered if a protein identification
was based on a single peptide. Each CID spectrum
was allocated to only one peptide identification, thus preventing identification redundancy.
Protein Identification Acceptance Criteria
False positive rates (FPR) were determined by applying
five representative vivid peak lists from different regions of
the fractionations to the human UniProt-SwissProt 51.0
(295981 individual entries) database and to the reversed
decoy database of equal size. The FPR are shown in appendix
A. A FPR of zero was observed with z-scores above
9.2, which corresponds to p-value <1016. A false positive
rate of less than 3% was observed at z-scores >8. Thus
protein identifications were automatically accepted when
at least two different peptides with z-scores >8 were found
(FPR: 0.032). Protein identifications were considered reproduced
when found in identical fractions across all runs.
A shift of one RP-HPLC fraction was tolerated.
Data Processing and Peptide Match Score Summation
(PMSS)
Several Perl scripts were developed and used in this study.
They are available upon request from the authors. We hereby
offer a short description of the dataflow and the involved
scripts:CID spectra interpretation was performed on the
PHENYX web server, which is based on the probabilistic
OLAV scoring algorithm (Colinge et al., 2003; Magnin
et al., 2004; Colinge et al., 2004). The resulting xml files
(one result file per protein fraction) containing peptide identifications
and their probabilistic identification scores, were
downloaded from the server. Semi quantitative protein abundance
scores and abundance distributions were calculated
within individual fractions and the complete analysis by summing
peptide match scores (z-scores >7), a technique called
peptide match score summation (PMSS) (Colinge et al., 2005;
Heller et al., 2007). This resulted in comparable PMSS based
protein abundance scores and abundance distribution patterns for every protein identification. Some details: In case
a peptide could be assigned to two different protein identifications,
the score of the peptide was only added to the one
with the higher sequence coverage. If a peptide was identified
several times, all z-scores were added to the PMSS
score, as long as it was derived from a different MS/MS
spectrum. Peptide identification acceptance criteria (zscores>8) were more stringent than criteria allowing peptides
to contribute to PMSS based abundance scores (zscores>7). The Phenyx z-score is a true probabilistic score
without bias by peptide length or charge. Z-score based
PMSS abundance representation therefore correlates extremely
well with the spectrum sampling approach (Colinge
et al., 2005; Heller et al., 2007).
Apolipoprotein(a) Size and Molar Lp(a) Concentration
Determinations
The levels of Lp(a) in plasma were measured in all 80
subjects by a double monoclonal antibody-based ELISA.
The detecting monoclonal antibody in this assay is specific
to a unique epitope in apo(a), namely Kringle 4 (K4) type 9
and therefore, the accuracy of the assay is not affected by
apo(a) size polymorphism (Marcovina et al., 1995). Lp(a)
concentrations were reported in nmol/L. The apo(a) isoform
size was determined in all 80 subjects by high-resolution
sodium dodecyl sulfate-agarose gel electrophoreses followed
by immunoblotting as previously reported (Marcovina et al.,
1993). Briefly, individuals with two apo(a) isoforms well defined
in the gel were immediately assigned the relative kringle
number to each isoform. Analysis of all samples with only
one apparent isoform were repeated using an increased
amount of plasma to verify whether or not it was possible to
detect a second isoform present in a very small amount.
Samples with no clear separation between two closely migrating
bands were also reanalyzed. It has been determined
that the logarithm of the number of K4 obtained by genotyping is highly correlated with the mobility of the
isoforms on agarose gel (Marcovina et al., 1996b). Therefore,
the apo(a) isoforms are designated by the relative number
of Kringle 4 type 2 domains.
Table 1: Potential biomarkers for myocardial collaterization.
* Number of non-redundant peptide identifications
** Total peptide match score summation (PMSS) represents protein abundance
*** RP-HPLC fraction number (1-51 minutes) with the highest abundance indicator (PMSS)
|
Statistical Analysis
For the relative protein abundance assessment from the
proteomics screen, a random ratio analysis (Stalder et al.,
2008) using PMSS values of protein identification was performed.
Proteins standing out from the normal noise level
were considered as potential biomarkers for myocardial
collateralization (Table 1). Due to reasons of availability only
concentration levels of apo(a) was chosen for validation
and measured in all 80 patient samples by immuno-affinity
methods and tested for significant differences in median
protein concentrations between patients with sufficient and
insufficient collateral flow index by the non-parametrical
Mann-Whitney U-test.
Results and Discussion
Proteome Screening of Plasma Pools
The comparative protein profile analysis of the two pools
was performed twice, which allowed for a rough estimation
of the reproducibility of the comparison. Furthermore the
two pooled samples were compared in a preliminary analysis
using a different RP-HPLC column (mRP-C18, Agilent
Technologies, Waldbronn, Germany). The results are not
shown, but were used to confirm the results from the presented
screen. The PMSS based abundance profiles of protein
identifications were well reproduced in the four runs,
with abundance profiles from replicates matching better than
the ones from differing pool samples (Figure 1). In the four
runs a total of 1601 different peptides were identified,
whereof 1505 possessed one or more sibling peptide describing
the same parent protein. In total, 121 different proteins
were identified by at least two non-redundant peptides.
|
Figure 1: PMSS profiles of proteins identified in all four samples. This figure demonstrates the high reproducibility
of the profiling platform and gives an impression over the fractionation power of the system. Each line on the y-axis
represents an identified protein of a non redundant protein list, which was sorted by fraction of maximal identification,
whereas white pixels stand for high PMSS scores.
|
The additional 94 one peptide protein identifications
(all with a z-score >8) were not used for the screen, but
might still be of interest with respect to the characterization
of the human plasma proteome. From the 121 different protein
identifications based on two or more peptides, 84 identifications
were found in all four runs and nine identifications
were only found with pool A (CFI>0.25), six proteins
were found solely in pool B (CFI<0.1) and eight identifications
were not reproduced in pool A or pool B, despite possessing
two peptide identifications (Appendix B). Furthermore
fourteen protein identifications could be accredited to
keratin and IgG chains. A non-redundant list of peptide identifications is shown in Appendix A and a non-redundant list
of all protein identifications and their four varying abundance
indicators, the peptide match score summations (PMSS),
are shown in Appendix B.
Table 2: Underlying peptide identifications and their spectral count.
|
Spectrum sampling methods, like PMSS, as well as peak
area based approaches require several reproducible peptide
identifications per protein in order to produce accurate
abundance ratios, thus no significant statements can be made
of the numerous protein identifications near the detection
limit. Therefore, we considered protein identifications as
potential markers discriminating sufficient from poor CFI
when one of the following conditions was observed: 1) protein
identifications based on at least two peptides found in
both samples of one pool but not in the samples of the other,
2) protein identifications found in both samples of both pools
with strongly differing abundance indicators between the
samples of the two; 3) qualitative difference represented
by differing abundance distribution based on HPLC retention
time. Furthermore, all findings from the doubly performed
comparison had to be confirmed by the third stand
alone comparison using a different RP-HPLC column. Protein
identifications which met those conditions and were
considered for validation are listed in Table 1 and the underlying
peptide identifications are listed in Table 2.
The three times higher abundance indicator of
apolipoprotein(a) in the pooled samples of patients with very
good myocardial collaterization represents the most solid
result of the screen, mainly because it was identified in all
three comparative studies and because the abundance indicator
ratios were very well reproduced. One
apolipoprotein(a) protein is covalently linked to one LDL
molecule via ApoB-100 through a single disulfide bond connecting
their C-terminal regions. This dimeric macro protein
forms lipoprotein(a) (Lp(a)), a lipid transporting particle
in plasma. ApoB-100 was also identified in the HPLC
fractions 44 and 45 where apo(a) was detected. However,
ApoB-100 exists in many isoforms of variable molecular
size. Consistently, ApoB-100 eluted as a dispersed peak from
HPLC fraction 42 to the end of fractionation therefore confounding
the real ratio of Lp(a) derived ApoB-100. Thus, it
was not possible to confirm the apo(a) ratio with the ApoB-
100 ratio.
Lp(a) is a very interesting particle for several reasons.
First of all its physiological function is unknown but as it
independently evolved in primates and hedgehogs it must
have a specific function. Secondly, Lp(a) is known as risk
factor for cardiovascular disease and has shown atherogenic
properties. As atherogenesis and arteriogenesis, which is responsible for collateral growth, are based on similar
mechanisms, it is conceivable that apo(a) is involved in the
promotion of atherosclerosis and arteriogenesis. The high
heterogeneity in protein size (300-800 kDa) in the human
population makes apo(a) a very special protein. The heterogeneity
is based on a varying number of kringle 4 type 2
(K4 type 2) repeats (2-40) coding region in the
apolipoprotein(a) gene. This large variation was caused by
neutral evolution in the absence of any selection advantage.
It has been shown, that individuals with short apo(a) isoforms
have higher concentrations of lipoprotein(a) and a higher
risk for CAD or preclinical vascular changes (Berglund et
al., 2004). On the other hand, elevated Lp(a) levels have
been found in centenarians (Thillet et al., 1998). It has been
shown that apo(a), especially the variable K4 type 9 repeats
at the N-terminus of the protein, may be physiologically
operative in modulating angiogenesis, a process involved
in the early formation of collateral vessels (Morishita et al.,
2001; Schulter et al., 2001). Furthermore apo(a) competitively
inhibits fibrinolysis due to its homology to plasminogen
(Hajjar et al., 1989) and contributions to plaque and
stenosis formation due to interference with transforming
growth factor-b activation (Grainger et al., 1994). It is also
worth mentioning that Lp(a) levels are particularly affected
by apo(a) synthetic rate, which is subject to strong genetic
regulation. Thus Lp(a) plasma levels are affected only to a
minor extent by age, sex and environmental factors
(Utermann, 1989). However, there is a published study
which showed that the serum level of apo(a) is inversely
associated with the development of the coronary collateral
circulation (Aras et al., 2006), which completely contradicts
our findings.
Apolipoprotein(a) Isoform and Concentration Determination
in All 80 Samples
Apolipoprotein(a) concentration was determined with a
state-of-the-art ELISA assay, using antibodies targeting a
non-repetitive section of apo(a), the only proven assay to
determine isoform independent concentrations (Marcovina
et al., 1995). The apo(a) size was determined with pulsedfield
electrophoresis (Marcovina et al., 1996a). The immunoassays
confirmed the result of our proteomics screen.
The seven patients with sufficient CFI from pool A had significantly
higher apo(a) concentrations than the seven patients
with very poor CFI values used for pool B (97 and 46
nmol/L). Including all 80 patient samples the result was confirmed
too, but was not significant when applying the Mann-
Whitney-U-Test. The known negative correlation between
apo(a) size and Lp(a) concentration (Rifai et al., 2004) was
also detected with our samples (Figure 2).
|
Figure 2: Apolipoprotein(a) size and concentration in relation to sufficient and insufficient myocardial collaterization
(CFI value). The obvious negative correlation between apo(a) size and concentration lead to the formation of three groups
of patients (small, medium and large sized apo(a) isoforms) and their testing for differences in apo(a) concentration
between patients with sufficient and insufficient CFI values.
|
We concluded that the strong negative correlation between apo(a) size and
apo(a) concentration could overshadow the less strong correlation
between apo(a) concentration and the degree of
myocardial collaterization, we were testing for as described
by Marcovina and colleagues testing Lp(a) concentration
differences between black and white Americans (Marcovina
et al., 1996b). Based on this assumption, we grouped the 80
patients according to their apo(a) size: patients with less
than 18 K4 type 2 repeats, patients with 18 to 29 K4 type 2
repeats and patients with more than 29 K4 type 2 repeats.
Within the group with medium sized apo(a) isoforms (52 of
80 patients) a significantly higher apo(a) concentration was
found in patients with sufficient CFI levels (33.5 and 13.4
nmol/L, p=0.009, Mann-Whitney-U-Test). Even when combining
the groups with medium and large sized isoforms (70
of 80 patients) the correlation between apo(a) concentration
and CFI value remained significant (31.3 and 11.9 nmol/
L, p=0.033). Within the patient groups with very short and very long isoforms on the other hand, no significant correlation
between apo(a) size and CFI value was observed. The
complete dataset is available in Appendix C and the results
are summarized in Figure 3. Receiver operating characteristic
curves revealed that Lp(a) concentrations are not sensitive
or specific enough to predict myocardial collaterization
by its own (Figure 4). Our results are based on an opportunistic
study with a limited data set. Additionally, there is a
considerable variation in Lp(a) levels across individuals for
a given apo(a) size. These factors might blur somewhat
statistical significance. From other studies it is already known
that Lp(a) has some, but still ill defined functional implications
in vessel biology as reviewed by Berglund and
Ramakrishnan (Berglund and Ramakrishnan, 2004). One
explanation being that apo(a) is only one factor in a system
where many factors are needed in order to tip the balance
on one side or the other, e.g. atherogenesis or arteriogenesis.
|
Figure 3: Box plots of Lp(a) concentration as a function of CFI. Median Lp(a) concentration, the number of
patients per group (n) and the possibility of the hypothesis being confirmed by coincidence (p, Mann-Whitney-U-Test)
are added in the figure. Hypothesis: Patients with sufficient CFI (>0.25) possess higher Lp(a) concentrations than
patients with insufficient CFI values. A: All 80 patients B: 70 patients with medium and big sized apo(a) isoforms (K4
type 2 repeats >17) C: 52 patients with medium sized apo(a) isoforms (30< K4 type 2 repeats >17)
|
Interestingly our results do not confirm a recently published
study on this subject (Aras et al., 2006), in fact they
are contradictory. In this study the authors did not distinguish
between apo(a) isoforms and the apo(a) concentrations
measurements. Especially, the apo(a) concentration
determination used was dependant on apo(a) isoform size
which is not very accurate in a population containing different
isoforms. Furthermore, the degree of collaterization was
assessed by a qualitative interpretation by echocardiograms
rather than an absolute and quantitative measurement as
done in our study.
|
Figure 4: Receiver operating characteristic curves (ROC) of Lp(a) concentration as a function of CFI. ROC curves
were calculated with apo(a) having more than 17 K4 type 2 repeats (left panel) and medium size with more than 17 but
less than 30 repeats (right panel). The area under the curve were 0.668 and 0.771, respectively. The gray lines represent
the lower and upper 95% confidence interval. ROC curves were calculated with a web-based, publicly available tool
(Eng J. ROC analysis: web-based calculator for ROC curves. Baltimore: Johns Hopkins University. Available from:
http://www.jrocfit.org).
|
Concluding Remarks
Results show that the recently developed screening platform
(Stalder et al., 2008) is applicable to clinical questions
and is capable of delivering preliminary results. With the
equipment used, the approach is limited to the ~120 most
abundant proteins and thus is not capable to detect lower
abundant proteins.
The screen suggests a correlation between the degree of
myocardial collaterization, represented by the CFI value,
and the concentration of apo(a) in blood plasma. While validating
this result by determining apo(a) concentration and
apo(a) size in the 80 patient samples, the negative correlation
between apo(a) concentration and apo(a) size was confirmed
as well as the result from the proteomics screen.
We hypothesized that the strong negative correlation between
apo(a) size and concentration overshadows the less
strong correlation between apo(a) concentration and the
degree of myocardial collaterization, thus grouped patients
according to their apo(a) size isoform. Within the group of
patients with medium sized apo(a) isoforms a significant
difference in apo(a) concentration (33.5 and 13.4 nmol/L,
p=0.009, Mann-Whitney-U-Test) between patients with sufficient and insufficient myocardial collateralization was
detected. The mass spectrometry response for any substance
is dependent on the amount of moles ionized. The
correlation of apo(a) concentration measured by immunoaffinity
means and mass spectrometry as done in our study
suggests that mass spectrometric analysis of apo(a) could
be a promising alternative for antibody-based apo(a) concentration
determination in serum. In combination with spiking
of isotopically labeled, kringle specific peptides (AQUA)
it would even become possible to determine the isoform of
apo(a) (Gerber et al., 2003).
Reference
-
Allet N, Barrillat N, Baussant T, Boiteau C, Botti P, etal.
(2004) In vitro and in silico processes to identify differentially
expressed proteins. Proteomics 4: 2333-2351. [ FIND THIS ARTICLE ONLINE ]
- Aras D, Geyik B, Topaloglu S, Ergun, K, Ayaz S, etal.
(2006) Serum level of lipoprotein(a) is inversely associated
with the development of coronary collateral circulation.
Coron Artery Dis 17: 159-163. [ FIND THIS ARTICLE ONLINE ]
- Berglund L, Ramakrishnan R (2004) Lipoprotein(a): an
elusive cardiovascular risk factor. Arterioscler. Thromb
Vasc Biol 24: 2219-2226. [ FIND THIS ARTICLE ONLINE ]
- Colinge J, Masselot A, Giron M, Dessingy T, Magnin J
(2003) OLAV: towards high-throughput tandem mass
spectrometry data identification. Proteomics 3:1454-
1463. [ FIND THIS ARTICLE ONLINE ]
- Colinge J, Masselot A, Cusin I, Mahé E, Niknejad A,
etal. (2004) High-performance peptide identification by
tandem mass spectrometry allows reliable automatic data
processing in proteomics. Proteomics 4: 1977-1984. [ FIND THIS ARTICLE ONLINE ]
- Colinge J, Chiappe D, Lagache S, Moniatte M,
Bougueleret L (2005) Differential proteomics via probabilistic
peptide identification scores. Anal Chem 77: 596-
606. [ FIND THIS ARTICLE ONLINE ]
- Gerber SA, Rush J, Stemman O, Kirschner MW, Gygi
SP (2003) Absolute quantification of proteins and phosphoproteins
from cell lysates by tandem MS. Proc Natl
Acad Sci USA 100: 6940-6945. [ FIND THIS ARTICLE ONLINE ]
- Grainger DJ, Kemp PR, Liu AC, Lawn RM, Metcalfe
JC (1994) Activation of transforming growth factor- is
inhibited in transgenic apolipoprotein(a) mice. Nature 370:
460-462. [ FIND THIS ARTICLE ONLINE ]
- Hajjar KA, Gavish D, Breslow JL, Nachmann RL (1989)
Lipoprotein(a) modulation of endothelial cell surface fibrinolysis
and its potential role in atherosclerosis. Nature
339: 303-330. [ FIND THIS ARTICLE ONLINE ]
- Heil M, Schaper W (2007) Insights into pathways of
arteriogenesis. Current Pharmaceutical Biotechnology
8: 35-42. [ FIND THIS ARTICLE ONLINE ]
- Heller M, Schlappritzi E, Stalder D, Nuoffer JM, Haeberli
A (2007) Compositional protein analysis of high density
lipoproteins in hypercholesterolemia by shotgun LC-MS/
MS and probabilistic peptide scoring. Mol Cell
Proteomics 6: 1059-1072. [ FIND THIS ARTICLE ONLINE ]
- Liu H, Sadygov RG, Yates JR III (2004) A model for
random sampling and estimation of relative protein abundance
in shotgun proteomics. Anal Chem 76: 4193-4201. [ FIND THIS ARTICLE ONLINE ]
- Magnin J, Masselot A, Menzel C, Colinge J (2004)
OLAV-PMF: a novel scoring scheme for high-throughput
peptide mass fingerprinting. J Proteome Res 3: 55-
60. [ FIND THIS ARTICLE ONLINE ]
- Marcovina SM, Zhang ZH, Gaur VP, Albers JJ (1993)
Identification of 34 apolipoprotein(a) isoforms: Differential
expression of apolipoprotein(a) alleles between
American Blacks and Whites. Biochem Biophys Res
Commun 191: 1192-1196. [ FIND THIS ARTICLE ONLINE ]
- Marcovina SM, Albers JJ, Gabel B, Koschinsky ML,
Gaur VP (1995) Effect of the number of apo(a) kringle
4 domains on the immunochemical measurements of
Lp(a). Clin Chem 41: 246-255. [ FIND THIS ARTICLE ONLINE ]
- Marcovina SM, Hobbs HH, Albers JJ (1996a) Relationship
between the number of apolipoprotein(a) kringle
4 repeats and mobility of the isoforms in agarose gel:
bases for a standardized isoform nomenclature. Clin
Chem 42: 436-439. [ FIND THIS ARTICLE ONLINE ]
- Marcovina SM, Albers JJ, Wijsman E, Zhang Z,
Chapman NH, etal. (1996b) Differences in Lp(a) concentrations
and apo(a) polymorphs between black and
white Americans. J Lipid Res 37: 2569-2585. [ FIND THIS ARTICLE ONLINE ]
- Morishita R, Sakaki M, Yamamoto K, Iguchi S, Aoki M,
etal. (2001) Impairment of collateral formation in
lipoprotein(a) transgenic mice: therapeutic angiogenesis
induced by human hepatocyte growth factor gene. Circulation
105: 1491-1496. [ FIND THIS ARTICLE ONLINE ]
- Pohl T, Seiler C, Billinger M, Herren E, Wustmann K,
etal. (2001) Frequency distribution of collateral flow and
factors influencing collateral channel development. Functional
collateral channel measurement in 450 patients with
coronary artery disease. J Am Coll Cardiol 38: 1872-
1878. [ FIND THIS ARTICLE ONLINE ]
- Rifai N, Ma J, Sacks FM, Ridker PM, Hernandez WJ,
etal. (2004) Apolipoprotein(a) size and lipoprotein(a)
concentration and future risk of angina pectoris with
evidence of severe coronary atherosclerosis in men: The
physicians’ health study. Clin Chem 50: 1364-1371. [ FIND THIS ARTICLE ONLINE ]
- Schulter V, Koolwijk E, Peters E, Frank S, Hrzenjak A,
etal. (2001) Impact of apolipoprotein(a) on in vitro angiogenesis.
Arterioscler Thromb Vasc Biol 21: 433-438. [ FIND THIS ARTICLE ONLINE ]
- Seiler C, Fleisch M, Garachemani AR (1998) Coronary
collateral quantitation in patients with coronary artery
disease using intravascular flow velocity or pressure
measurements. J Am Coll Cardiol 32: 1272-1279. [ FIND THIS ARTICLE ONLINE ]
- Seiler C, Tilmann P, Wustmann K, Hutter D, Nicolet PA,
etal. (2001) Promotion of collateral growth by granulocyte-macrophage colonoy-stimulating factor in patients
with coronary artery disease. Circulation 104: 2012-2017. [ FIND THIS ARTICLE ONLINE ]
- Stalder D, Haeberli A, Heller M (2008) Evaluation of
protein identification results after multidimensional human
serum protein separation. Proteomics 8: 414-424. [ FIND THIS ARTICLE ONLINE ]
- Thillet J, Doucet C, Chapman J, Herberth B, Cohen D,
etal. (1998) Elevated lipoprotein(a) levels and small
apo(a) isoforms are compatible with longevity: evidence
from a large population of French centenarians. Atherosclerosis
136: 389-394. [ FIND THIS ARTICLE ONLINE ]
- Urban P, Meier B, Finci L (1987) Flow reversal in coronary
collaterals. Eur Heart J 8: 1346-1350. [ FIND THIS ARTICLE ONLINE ]
- Utermann G (1989) The mysteries of lipoprotein(a). Science 246: 904-910. [ FIND THIS ARTICLE ONLINE ]
- Wustmann K, Zbinden S, Windecker S, Meier B, Seiler
C (2003) Is there functional collateral flow during vascular
occlusion in angiographically normal coronary arteries?
Circulation 107: 2213-2220. [ FIND THIS ARTICLE ONLINE ]
- Zbinden R, Zbinden S, Meier P, Hutter D, Billinger M,
etal. (2007) Coronary collateral flow in response to endurance
exercise training. Eur J Cardiovasc Prev Rehabil
14: 250-257. [ FIND THIS ARTICLE ONLINE ]
- Zbinden S, Zbinden R, Meier P, Windecker S, Seiler C
(2005) Safety and efficacy of subcutaneous-only granulocyte-
macrophage colony-stimulating factor for collateral
growth promotion in patients with coronary artery
disease. J Am Coll Cardiol 46: 1636-1642.
[ FIND THIS ARTICLE ONLINE ]
Top
|
|