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. Author manuscript; available in PMC: 2009 Nov 1.
Published in final edited form as: Eur J Hum Genet. 2008 Jun 18;16(11):1372–1379. doi: 10.1038/ejhg.2008.114

Genome-wide Linkage Analysis for Identifying Quantitative Trait Loci Involved in the Regulation of Lipoprotein a (Lpa) Levels

Sonia López 1, Alfonso Buil 1,2, Jordi Ordoñez 3,4, Juan Carlos Souto 1, Laura Almasy 5, Mark Lathrop 6, John Blangero 5, Francisco Blanco-Vaca 3,4,7, Jordi Fontcuberta 1, José Manuel Soria 1,2
PMCID: PMC2749722  NIHMSID: NIHMS91849  PMID: 18560444

Abstract

Lipoprotein Lp(a) levels are highly heritable and are associated with cardiovascular risk. We performed a genome-wide linkage analysis to delineate the genomic regions that influence the concentration of Lp(a) in families from the Genetic Analysis of Idiopathic Thrombophilia (GAIT) Project. Lp(a) levels were measured in 387 individuals belonging to 21 extended Spanish families. A total of 485 DNA microsatellite markers were genotyped to provide a 7.1 cM genetic map. A variance component linkage method was used to evaluate linkage and to detect quantitative trait loci (QTLs). The main QTL that showed strong evidence of linkage with Lp(a) levels was located at the structural gene for apo(a) on Chromosome 6 (LOD score=13.8). Interestingly, another QTL influencing Lp(a) concentration was located on Chromosome 2 with a LOD score of 2.01. This region contains several candidate genes. One of them is the tissue factor pathway inhibitor (TFPI), which has antithrombotic action and also has the ability to bind lipoproteins. However, quantitative trait association analyses performed with 12 SNPs in TFPI gene revealed no association with Lp(a) levels. Our study confirms previous results on the genetic basis of Lp(a) levels. In addition, we report a new QTL on Chromosome 2 involved in the quantitative variation of Lp(a). These data should serve as the basis for further detection of candidate genes and to elucidate the relationship between the concentration of Lp(a) and cardiovascular risk.

Keywords: Lipoprotein Lp(a), Quantitative Trait Locus (QTL), genome-wide linkage analysis, cardiovascular risk, Genetic Analysis of Idiopathic Trombophilia (GAIT)

INTRODUCTION

Lipoprotein Lp(a) is an independent risk factor for atherosclerosis and cardiovascular disease 13. The mechanism by which Lp(a) favours this pathological state may be related to its particular structure. It has many properties in common with low density lipoprotein (LDL), but Lp(a) contains apolipoprotein apo(a). Apo(a) is an hydrophilic glycoprotein structurally similar to plasminogen. It is linked to apolipoprotein B-100 by a single disulfide bond. The size of the apo(a) gene (LPA) is highly variable, resulting in different-sized Lp(a) isoforms in the population. The size of the apo(a) isoforms is inversely correlated with Lp(a) concentration. The concentrations vary greatly among individuals and populations. In addition to the apo(a) polymorphism coding for different-sized Lp(a) isoforms, an upstream pentanucleotide repeat (TTTTA(n); n=5 to 12) affects Lp(a) levels. Thus, the variability of the LPA gene contributes to the heterogeneity of Lp(a), and influences the metabolic and physiochemical characteristics of this lipoprotein 4. In fact, the genetic variation in the LPA gene has been estimated to be responsible for 42% and even >90% of the variation of Lp(a) concentration 5,6. According to epidemiological studies, a high concentration of Lp(a) and/or small sizes of apo(a) isoforms increase the risk of cardiovascular disease 7.

There are several hypotheses that attempt to describe the pathophysiologic mechanism of Lp(a) in atherosclerosis and cardiovascular disease. For example, oxidized phospholipids in plasma bind preferentially to Lp(a) and may contribute significantly to the increased atherogenicity of this lipoprotein 8. On the other hand, the high homology of Lp(a) to plasminogen suggests that Lp(a) plays a key role as a proatherothrombotic agent in atherosclerosis and cardiovascular disease due to its antifibrinolytic and procoagulant properties.

It is well known that Lp(a) levels are highly heritable. Until recently, most of the studies used genome-wide scan analyses and focused on the genetic determinants that influence Lp(a) levels. Some studies described a strong linkage at the structural gene for apo(a) on Chromosome 6q26-q27. So, it is now well-established that Lp(a) levels are genetically determined by a variable number of kringle (K) IV type 2 repeats in LPA, which lead to apo(a) isoforms of different sizes. In addition, the wide variability of Lp(a) levels may be affected also by sequence polymorphisms/mutations in coding and non-coding regions of LPA. Several functionally significant single-nucleotide polymorphisms (SNPs) have been described in LPA. These polymorphisms could be responsible in part for the large quantitative variation of Lp(a) among individuals and populations 912. Apart from the many publications that describe association for Lp(a) located at its structural gene on Chromosome 6, several recent studies have described new potential genetic determinants that may control quantitative variation of Lp(a) 1315.

The major aim of the present study was to localize the quantitative trait loci (QTLs) that influence Lp(a) levels in the Spanish population. A genome-wide variance component linkage analysis of data from the GAIT Project was used to accomplish this aim.

MATERIALS AND METHODS

Subjects and Phenotyping

Our study included 387 individuals belonging to 21 Spanish families from the GAIT Project. An extensive description of the GAIT Project has been published previously 16. Each family was composed of 3 to 5 generations of individuals and the subjects ranged in age from 2 to 87 years, with a mean of 37.8 years. There were an equal number of males (46%) and females (54%) in our study. Twelve families were selected through a proband with idiopathic thrombophilia and the remaining 9 families were randomly selected without regard to phenotype. Thrombophilia was defined as recurrent thrombotic episodes (at least one of which was spontaneous) a single spontaneous thrombotic event with a first-degree relative also affected, or early-onset thrombosis (before age 45 years). The proband’s thrombophilia was considered idiopathic when all known biological causes of thrombophilia (ie., Protein S and Protein C deficiencies, antithrombin deficiency, activated Protein C resistance, plasminogen deficiency) at the time of recruitment (since 1995 to 1997) were excluded.

All protocols were approved by the Institutional Review Board of the Hospital de la Santa Creu i Sant Pau (Barcelona). Adult subjects gave informed consent for themselves and for their minor children.

Blood was collected by venipuncture in 1/10 volume of 0.129 mol/l sodium citrate from fasting subjects. Thrombophilic participants were not using oral anticoagulants at the time of sampling. Platelet-poor serum samples were stored at −80°C before assaying for Lp(a) levels. Serum Lp(a) levels were measured by ELISA (Apo-Tek, Organon Teknica, Turnhout, Belgium) as a part of a clinical workup, between 1995 and 1997. Normal levels of Lp(a) in serum were considered to be <300 mg/l.

Genotyping

DNA was extracted by a standard method 17. All individuals were genotyped for 485 highly informative DNA microsatellite markers, distributed through the autosomal genome at a density of 7.1 cM. The average heterozygosity of the microsatellite markers was 0.79. Microsatellites consisted primarily of the ABI-Prism (Applied Biosystems, Foster City, CA) genotyping set MD-10. Linkage mapping was undertaken with the PE LMS II fluorescent marker set (ABI Prism, Foster City, CA) with multiplex polymerase chain reaction 18. The products from the polymerase chain reaction were analyzed on the PE 310, PE 377, and PE 3700 automated sequencers, and genotyped using the Genotyper software. Information on microsatellite markers can be found in the public-accessible genomic database (http://www.gdb.org). Marker maps for multipoint analyses were obtained from the Marshfield Medical Research Organization (http://research.marshfieldclinic.org/genetics/).

In additon, 12 SNPs (Table 3) in the structural TFPI gene were genotyped by using Taqman probes from Applied Biosystems (ABI Prism, Foster City, CA).

Table 3.

List of SNPs Genotyped in the TFPI Gene.

SNP Chr. 2 Position (bp) p-value* MAF beta Ebeta§
rs5940 188039949 0.873 0.015 −0.010 −1.010
rs10153820 188127835 0.784 0.124 −0.086 −1.090
P151L 188057188 0.616 0.004 0.388 1.474
rs2268300 188042980 0.714 0.008 −0.108 −1.114
rs6736363 188067265 0.124 0.031 0.521 1.684
rs2300412 188076120 0.544 0.392 0.044 1.045
rs3755248 188078477 0.506 0.316 0.036 1.037
rs4667168 188101185 0.639 0.107 −0.065 −1.067
rs35935664 188104581 0.768 0.259 −0.051 −1.052
rs13427829 188112528 0.611 0.103 −0.080 −1.084
rs7594359 188117093 0.952 0.448 0.021 1.021
rs6434222 188120489 0.621 0.133 −0.089 -1.093
*

p-value of association with Lp(a) levels.

Minimal Allele Frequency of the SNP in our sample.

represents the effect of one copy of the rare allele in Lp(a) levels when it is expressed in logarithmic scale.

§

represents the effect of one copy of the rare allele in Lp(a) levels when it is expressed in original scale.

The genotypic data were entered into a database and were analyzed for discrepancies (ie., violations of Mendelian inheritance) using the program INFER (PEDSYS) 19. Mistypings and markers for discrepant individuals were either corrected or excluded from the analyses.

Linkage Analysis

A standard multipoint variance component linkage method was used to assess linkage between autosomal markers and levels of plasma Lp(a). This analysis was performed using the Sequential Oligogenic Linkage Analysis Routines (SOLAR) computer package 20. Previous studies suggested that such a method might be vulnerable to deviations from multivariate normality and particularly to high levels of kurtosis in the trait’s distribution, giving inflated logarithm of odds (LOD) scores 21. Levels of Lp(a) in the GAIT sample exhibited a kurtosis of 0.8 after a logarithmic transformation, which does not affect the distribution of LOD scores (probability of linkage). Thus, the standard nominal p values for LOD scores are appropiate for the Lp(a) linkage screen 22. Quantitative trait association analyses were performed using the measured genotyped method 23 by testing for genotype-specific differences in the means of the trait while allowing for the non-independence among family members. As 12 of the families were ascertained through thrombophilic probands, all analyses included an ascertaiment correction achieved by conditioning the likelihood of these pedigrees on the likelihoods of their respective probands 24. To control the multiple testing effect, genome-wide p values were calculated using the method of Feingold et al. 25.

RESULTS

The pedigree data extracted from the GAIT database consisted of 21 families with 387 individuals providing data for Lp(a) levels and for the covariates used in the analysis, such as gender, age, total cholesterol, smoking behaviour, use of oral contraceptives and the household effect. Table 1 summarizes the phenotypic characteristics of the individuals in our study.

Table 1.

Phenotypic Characteristics of the 387 Individuals Included in the Study.

Characteristics Frequency (%) or Mean
± SD
No. of families 21
No. of individuals 387
Sex
   Males 178 (46%)
   Females 209 (54%)
Age (years) 37.8 ± 19.81
Smokers* 146 (38%)
Total cholesterol (mmol/l) 5.19 ± 1.15
Lp(a) (mg/l) 33.38 ± 38.35
*

Individuals in the study were defined as smokers when they usually smoke, independently of the number of cigarettes.

Total cholesterol levels and smoking behaviour were the only covariates that showed a significant effect over Lp(a) levels (p=0.0042 and p=0.019, respectively). Neither the gender nor age effects were significant. No significant household effect was found in our samples. The range of Lp(a) levels in the GAIT sample was 0.21 mg/l to 242.30 mg/l, with a mean of 33.38 mg/l.

The overall genetic heritability (h2) of the concentration of Lp(a) was estimated to be 0.79±0.07, indicating that 79% of the phenotypic variation in this trait is due to the additive effect of genes.

A standard multipoint variance-component method was used to assess linkage between autosomal DNA markers, spaced at ~7.1 cM, and quantitative values of Lp(a). The proportion of the Lp(a) variance due to the covariates used in the analysis was estimated as 5%. Their effects were estimated simultaneously with the genetic effects.

The results from the linkage analysis revealed strong evidence for a quantitative trait locus (QTL) on the long arm of Chromosome 6 (6q), which may influence Lp(a) levels (LOD=13.8; nominal p=7.77e-16 and genome-wide p=2.54e-13) (Figure 1). The QTL on Chromosome 6 was detected through a peak LOD score located in the interval flanked by markers D6S441 and D6S264 in a region that maps to 6q25.2–6q27. Specific data from the linkage analysis can be found in Table 2. This region contains the structural gene of apo(a). Another linkage signal was detected on the long arm of Chromosome 17 (17q) with a genome-wide p value of 0.0179, indicating a potential additional genomic region that may be involved in the control of the concentration of Lp(a).

Figure 1.

Figure 1

Results of the linkage screen for lipoprotein Lp(a). There is a major linkage signal on Chromosome 6 (LOD=13.8). Significant linkage response was detected also on Chromosome 17 (LOD=3.4).

Table 2.

Results of the Sequential Oligogenic Linkage Analysis of Variation in Lp(a) Levels.


First Pass Second Pass

Chr. Flanking markers Chr. Position
(cM)
LOD
score
Nominal
P-value
Genome-wide
P-value
LOD
score
Nominal
P-value
Genome-wide
P-value
6 D6S441-D6S264 184 13.8 7.77e-16 2.54e-13
17 D17S787-D17S944 95 3.4 3.61e-05 0.01791 0.7 0.0363 NS
2 D2S335-D2S2289 206 2.01 0.0011 0.5394

NS: not significant

To look for additional genomic regions controlling Lp(a) levels, we carried out a multilocus linkage analysis, which took into account the effect of the QTL on Chromosome 6, by fixing this position in the model and rescanning the genome (Figure 2 and Table 2). In the second linkage pass, which was conditioned on Chromosome 6 QTL detected in the initial screen, evidence of linkage on Chromosome 17 disappeared (LOD=0.7) indicating that the initial signal was a false positive. It is important to note that we were able to detect a new genomic region on the long arm of Chromosome 2 (2q) with suggestive linkage (LOD=2.01; p=0.0011). The new QTL on Chromosome 2 was located between markers D2S335 and D2S2289, at chromosome position 206cM, in a region that maps to 2q31.1–2q33.2 (Figure 3 and Table 2). A bioinformatic search in this region showed several potential candidate genes. One of them was the tissue factor pathway inhibitor (TFPI: Ensembl Gene ID: ENSG00000003436). This gene encodes a protein that has an antithrombotic action and also the ability to associate with lipoproteins in plasma. Encouraged by this result, we genotyped 12 SNPs in the TFPI gene (Table 3) including three reported as functional (rs5940; rs10153820 and P151L), and looked for association with Lp(a) levels. However, the measured genotype analysis revealed no significant association of any of these polymorphisms and the Lp(a) levels (Table 3). In addition, 23 haplotypes were analyzed using all these SNPs; however no significant association with Lp(a) levels was found (data not shown).

Figure 2.

Figure 2

Results of the second linkage pass conditioned on Chromosome 6 QTL.

Figure 3.

Figure 3

Detailed linkage results for Chromosome 2. Significant linkage signal was detected by a peak LOD score of 2.01 (nominal p=0.0011 and genome-wide p=0.5394) defining a quantitative trait locus for Lp(a) between markers D2S335 and D2S2289 at chromosome position 206cM, in a region that maps to 2q31.1–2q33.2.

DISCUSSION

Lipoprotein Lp(a) is a low-density lipoprotein particle linked to apolipoprotein apo(a). It is one of the well-established risk factors for atherosclerosis and cardiovascular disease. The understanding of the physiologic mechanisms and genetic determinants of Lp(a) should help to elucidate the contribution of this quantitative trait to the risk of cardiovascular disease. Accordingly, the concentration of Lp(a) is highly heritable and a large number of studies have attempted to identify the genomic regions that influence Lp(a) levels. Specifically, heritability (h2) for Lp(a) was estimated in several studies and ranged from 0.69 to 0.94 1315,2628. In agreement with these results, we estimated the h2 of Lp(a) in the Spanish population in 0.79. This means that 79% of the variance of Lp(a) is attributable to genetic factors. Given the high heritability for Lp(a) obtained in our GAIT sample, we conducted a genome-wide scan analysis to identify the genomic regions that influence the Lp(a) concentration.

We detected a strong linkage signal at the LPA gene on Chromosome 6q25.2–q27 with a LOD score of 13.8. This result agrees with results from previous studies that investigated the Lp(a) trait, and found a highly significant linkage at the structural LPA gene on Chromosome 6 6,1315,28,29. On the other hand, it is noteworthy that when we conditioned the linkage analysis to the strong signal on Chromosome 6 (where the structural LPA gene maps) a new QTL involved in the control of Lp(a) levels became evident. This QTL is located in a region that maps to Chromosome 2q31.1–2q33.2. According to our results, the genomic regions that influence Lp(a) concentration are not limited to the structural LPA gene on Chromosome 6. Accordingly, recently several genome-wide scans have described other new potential genetic determinants that may control quantitative variation of Lp(a). However, any of them showed a significant signal on Chromosome 2. This may be possible due to the fact that the genetic factors contributing to a complex trait may differ among populations. In agreement with this argument, it is possible that the new QTL on Chromosome 2 may play a functional role on Lp(a) levels only in the Spanish population. In addition, given that the major genetic factor that influence Lp(a) levels accounts for >90% of variance, other genes that have a small effect on this trait must be hard to find. Another reason for such differences in reporting QTLs between different studies might be that there is insufficient statistical power because of the study design or the sample size or the small effect of these QTLs. Finally, exists the possibility that these other gene(s) involved in affecting small quantitative variation of Lp(a) in different populations may actually respond to different biological causes that could indeed may be controlling the participation of these genes in the control of Lp(a) levels. A review of these results is summarized in Table 4.

Table 4.

Genomic Regions that Influence Lp(a) Levels Reported in Recent Studies as of this Date.

Author Chr. LOD score Flanking markers Chr. Position (cM) Population studied

Barlera et al. 2007 (13) 6 108.3 D6S1581-D6S1599 189 1812 families, including 4012 individuals, from the PROCARDIS coronary artery disease (CAD) study, in which 80% of individuals analysed were affected by CAD.
13 7.0 D13S156-D13S265 85
11 3.5 D11S902-D11S904 35
15 2.9 D15S131-D15S205 76
19 2.7 D19S571-D19S418 97
1 1.5 D1S498-D1S484 ---

Barkley et al. 2003 (15) 18.62 --- 160 1046 Non-Hispanic white individuals**.
6 14.27 --- 164 1556 African American 6 individuals**.
12.97 --- 163 1061 Hispanic white individuals**.
12 1.60 --- 38 1046 Non-Hispanic white individuals**.
14 2.56 --- 17 1061 Hispanic white individuals**.
19 3.8/2.52 --- 30/47 1046 Non-Hispanic white individuals**.

Beekman et al. 2003 (29) 6 9.8 → 8.2* --- 163 483 dizygotic and 967 monozygotic twin pairs recruited regardless of their health status
1 →---* 1.6 → 0* --- 251

Broeckel et al. 2002 (14) 6 26.99 D6S305 166 513 Western European families, including 1406 individuals, with at least two members affected of early-onset myocardial infarction and/or severe premature coronary artery disease
1 3.81 D1S1679 170
*

In the study of Beekman et al., evidence for linkage on Chromosome 1 completely disappeared (LOD=0) when further analysis in a two locus model was performed, while the strong linkage signal for Chromosome 6 remained unaltered.

**

All the individuals were recruited from the Genetic Epidemiology Network of Arteriopathy study of the Family Blood Pressure Program. Further genetic linkage evidence has been found on Chromosomes 12 and 19 in non-Hispanic whites, as well as on Chromosome 14 in Hispanic whites. However, there has been a lack of linkage response on these chromosomes in African Americans.

This genomic region influencing Lp(a) on Chromosome 2q contains several genes that could be candidate genes involved in the control of Lp(a) levels. One of them is the tissue factor pathway inhibitor (TFPI). This gene encodes a protein that inhibits factor X activated (X(a)) directly and, in a Xa-dependent way, inhibits VIIa/tissue factor activity, presumably by forming a quaternary Xa/LACI/VIIa/TF complex. It has antithrombotic action and also the ability to associate with lipoproteins. Accordingly, a recent study 30 shows that Lp(a) binds and inhibits TFPI in vitro. This biologic interaction promotes the prothrombotic action of Lp(a) mediated through the inhibition of the anticoagulant activity of TFPI, and suggest a new important link between lipoproteins and thrombosis. With these studies as background, we performed quantitative trait association analyses with a extensive set of SNPs in the TFPI gene and Lp(a) concentration. Although, the lack of association of these SNPs and Lp(a) levels does not rule out the possibility that other polymorphisms in the TFPI gene could be associated with Lp(a), the most plausible hypothesis is that another gene in this region different from TFPI is responsible of the linkage signal.

Interestingly, the genomic region between markers defining the QTL located on Chromosome 2 also includes four additional genes that need to be considered. These genes are OSBPL6 (oxysterol-binding protein-related protein 6); NDUFB3 (mitochondrial NADH dehydrogenase 1 beta subcomplex subunit 3), COQ10 B (mitochondrial precursor protein coenzyme Q10 homolog B) and AOX1 (aldehyde oxidase).

The OSBPL6 gene encodes a protein involved in the transport of lipids, in the regulation of cholesterol homeostasis and in signal transduction pathways of lipid metabolism 31. We believe that the OSBPL6 protein might be involved in the regulation of Lp(a) levels by an unknown mechanism, probably related with the action of oxysterols as potential signalling molecules, which accumulate in the atherosclerotic lesions in arterial walls.

In addition, both the NDUFB3 and the CoQ10 B genes encode proteins of the mitochondrial respiratory chain. These proteins are part of two important sites of free radicals generated in mitochondria. These free radicals increase the oxidative stress and cellular damage 32. Furthermore, the enzyme aldehyde oxidase, which belongs to the xanthine dehydrogenase family, also causes an increase in oxidative cell damage by producing hydrogen peroxide and, under certain conditions, catalyzes the formation of superoxide 33. It is widely known that oxidative stress plays a key role in the development of cardiovascular disease and atherosclerosis. Moreover, oxidized phospholipids in plasma circulate, preferentially, on Lp(a) and may contribute significantly to the increased atherogenicity of this lipoprotein 8.

In this complex scenario, with several potential candidate genes which may explain the genetic variability of Lp(a) levels, further analyses are needed that focus on fine mapping. With these new data the mechanism by which the locus on Chromosome 2 modulates Lp(a) levels may become clear. Our results provide a framework for these additional studies.

Finally, despite the fact that other genes different from LPA genewould probably have a small effect on Lp(a) levels, it is prudent to think in terms of networks of genes and systems when considering control of this trait, rather than of individual genes.

ACKNOWLEDGMENTS

We acknowledge the advice and helpful discussion of Professor W.H. Stone. This study was supported partially by grants No. 2 R01 HL070751-05 from the USA NIH, PI-05/1361, PI-05/1382 and Redes Temáticas de Investigación Cooperativa (RETIC) Cardiovascular (RECAVA: Exp-06/0014/0016RD Ministerio de Sanidad y Consumo, Spain), SAF2005-04738 from Ministerio de Ciencia y Tecnología and FEDER (Spain), SGR 01068 from Agència de Gestió d’ajuts Universitaris i de Recerca and ‘Red FIS de Diabetes y Enfermedades Metabólicas Asociadas RD06/0015’. J.M. Soria was supported by “Programa d'Estabilització d'Investigador de la Direcció d'Estrategia i Coordinació del Departament de Salut” (Generalitat de Catalunya). Finally, we are indebted to all of the families who participated in the GAIT Project.

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