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Novel hypotheses emerging from GWAS in migraine?

  • Arn M. J. M. van den Maagdenberg
  • Dale R. Nyholt
  • Verneri Anttila
Open Access
Review article

Abstract

Recent technical advances in genetics made large-scale genome-wide association studies (GWAS) in migraine feasible and have identified over 40 common DNA sequence variants that affect risk for migraine types. Most of the variants, which are all single nucleotide polymorphisms (SNPs), show robust association with migraine as evidenced by the fact that the vast majority replicate in subsequent independent studies. However, despite thorough bioinformatic efforts aimed at linking the migraine risk SNPs with genes and their molecular pathways, there remains quite some discussion as to how successful this endeavour has been, and their current practical use for the diagnosis and treatment of migraine patients. Although existing genetic information seems to favour involvement of vascular mechanisms, but also neuronal and other mechanisms such as metal ion homeostasis and neuronal migration, the complexity of the underlying genetic pathophysiology presents challenges to advancing genetic knowledge to clinical use. A major issue is to what extent one can rely on bioinformatics to pinpoint the actual disease genes, and from this the linked pathways. In this Commentary, we will provide an overview of findings from GWAS in migraine, current hypotheses of the disease pathways that emerged from these findings, and some of the major drawbacks of the approaches used to identify the genes and pathways. We argue that more functional research is urgently needed to turn the hypotheses that emerge from GWAS in migraine to clinically useful information.

Keywords

Genetics Genome-wide association study Disease pathway Single-nucleotide polymorphism 

Abbreviations

CADASIL

Cerebral autosomal dominant arteriopathy with subcortical infarcts and leukoencephalopathy

CSD

Cortical spreading depolarisation

DEPICT

Data-driven expression-prioritized integration for complex traits

FASPS

Familial advanced sleep phase syndrome

FHM

Familial hemiplegic migraine

GWAS

Genome-wide association study

IHGC

International Headache Genetics Consortium

SNP

Single nucleotide polymorphism

Background

It has long been recognised that migraine is a disease with a strong genetic component [1, 2, 3]. Migraine runs in families, and epidemiological studies in twins and families have indicated that risk for migraine is conferred by a combination of genetic and environmental factors, both contributing equally [2, 3]. These studies also indicated that the genetic contribution seems stronger in migraine with aura than the more common migraine without aura subtype. Considerable progress has been made with elucidating the pathophysiological mechanisms in migraine. Evidence is accumulating that cortical spreading depolarisation (CSD) is the electrophysiological substrate of the migraine aura [4, 5]. Activation of the trigeminovascular system that consists of meningeal perivascular nerves, the trigeminal ganglion and brainstem centres reaches thalamus and ultimately the cortex to give the sensation of head pain in migraineurs during attacks [6]. Several animal studies showed that CSD can activate the headache mechanisms [7, 8], but proof that this also occurs in humans is essentially lacking. Knowledge on the underlying molecular mechanisms, to large extent, comes from genetic studies of very rare monogenic forms of migraine — i.e., hemiplegic migraine and syndromes in which migraine is prominent (for review see [9]). In brief, genes in familial hemiplegic migraine (FHM) (CACNA1A, ATP1A2 and SCN1A) encode subunits of ion transporters (neuronal voltage-gated CaV2.1 Ca2+, NaV1.1 Na+ channels, and glial Na+K+ ATPases, respectively) and functional studies in cellular and animal models suggest neuronal hyperexcitability as a common theme. Genes with vascular and/or glial cell function emerged from investigating syndromes in which migraine is prevalent, such as NOTCH3 in cerebral autosomal dominant arteriopathy with subcortical infarcts and leukoencephalopathy (CADASIL) and CSNK1D in familial advanced sleep phase syndrome (FASPS). Since one such high impact mutation is causative for disease, the identification of these genetic factors directly benefits the clinical diagnosis of patients with these rare disorders and may lead to the development of better treatment.

Parallel research aimed to identify genetic factors for the common forms of migraine, foremost migraine with aura and migraine without aura, suggests that these migraine types are brought about by a combination of multiple genetic variants, each with low impact, and environmental factors [10]. The most effective approach thus far to identify genetic factors for these forms of migraine are genome-wide association studies (GWAS), which test for differences in allele frequencies of several million single nucleotide polymorphisms (SNPs) spread over the genome in large groups of cases and controls [11]. Allelic differences at SNPs with a p-value < 5 × 10− 8 are taken as proof that a migraine risk factor is located at that position. Due to their small effect size (allelic odds ratio of 1.03–1.28), no single SNP can have clinical use in migraine risk prediction; however, one can envisage that combined knowledge from many variants will highlight which genes and pathways are involved in migraine pathophysiology, as well as more direct applications through approaches like polygenic risk scoring, where additive effects of multiple migraine risk SNPs can be used to score patients and then analyse those scores against clinical variables. Spearheaded by the International Headache Genetics Consortium (IHGC; www.headachegenetics.org/), which brought together headache geneticists and clinicians from around the globe, various large-scale association studies were conducted. Here we will review the main findings of their studies: the DNA variants that were identified, what efforts were made to link these to genes and molecular pathways, and whether any hypotheses emerged that may guide the development of migraine treatments.

Main text

Genome-wide association studies in migraine

In the past decade IHGC researchers have conducted several GWAS for migraine (for review see [10, 12]). With increasing samples sizes available for investigation, the number of associated gene variants also increased. Initial sample sizes consisted of a few thousand patients with migraine with aura (in the 2010 GWAS [13]) or migraine without aura (in the 2012 GWAS [14]) that had been recruited in specialised headache clinics and yielded one and six associated SNPs, respectively. A SNP refers to a specific location on the genome with two alleles, indicated by an rs-number (e.g., rs9349379, the Reference SNP cluster ID number for that SNP that is searchable in the SNP database [dbSNP: www.ncbi.nlm.nih.gov/SNP/]). In the 2011 GWAS [15], 5122 women with migraine from the Women’s Genome Health Study were investigated and three associated SNPs were identified, two of which surfaced also in the 2012 GWAS. In more recent efforts, meta-analyses were performed on genotypic data of the previous cohorts that was combined with data of other cohorts to yield much larger groups of migraine patients; i.e., 23,285 cases in the 2013 GWAS [16] and 59,674 cases in the 2016 GWAS) [17], which led to 13 and 44 associated SNPs, respectively. In GWAS, genotypic information of migraine cases is compared with data of ever-increasing numbers (in the latest study 316,078) of control subjects. Notably, it is customary to not screen for (and remove) cases (~ 15% in the case of migraine) from the control sets that typically are from large population-based cohorts. An important message from these GWAS is that migraine-associated SNPs are generally very robust findings due to their stringent statistical methodology and consequently most of them have been replicated in subsequent studies. Secondly, all associated SNPs have a small genetic effect with allelic odds ratio of 1.03–1.28 (for the disease-increasing risk allele) [13, 14, 15, 16, 17], which resonates earlier claims that no single genetic factor is sufficient to cause migraine, which is no different for any other disorder studied with GWAS [18].

The difficult road from associated SNPs to genes and mechanisms

Whereas there is little doubt that the identified variants (indicated by their rs ID number) are genuine findings, robustly linking those variants to genes and pathways is difficult due to the complexity of local genomic effects. Firstly, most attention in literature goes to reporting the index SNP (i.e., the SNP with the lowest p-value in a genomic region), but there can be multiple independent association signals at the same locus, called secondary SNPs, which may affect, for example, other regulatory features of the same (or neighbouring) gene. The 2016 GWAS, with its 44 migraine-associated SNPs (associations were with the subtype migraine without aura), implicated 38 distinct genomic loci, of which six contained an independent secondary signal (Table 1).
Table 1

Migraine-associated single nucleotide polymorphisms and the molecular pathways they are linked to

Genomic regiona

Index

SNPb

Secondary

SNPc

Gene nearest index SNP

Genes overlapping credible SNPs

Genes prioritised with DEPICT

Pathways identified with g:GOSt tool

1

rs10218452

 

PRDM16

PRDM16

PRDM16

Vascular function; Metal ion homeostasis

  

rs12135062

    

2

rs1572668

 

LRRIQ3

   

3

rs2078371

 

TSPAN2

 

NGF

 
  

rs7544256

    

4

rs6693567

 

ADAMTSL4

RPRD2

ECM1

Vascular function

5

rs1925950

 

MEF2D

MEF2D

 

Vascular function

6

rs138556413

 

CARF

CARF

NBEAL1

 

7

rs10166942

 

TRPM8

TRPM8

 

Ion channel activity

  

rs566529

    

8

rs6791480

 

TGFBR2

 

TGFBR2

Vascular function; Metal ion homeostasis

9

rs13078967

 

GPR149

 

ARHGEF26

Vascular function

10

rs7684253

 

SPINK2

 

REST

Vascular function; Metal ion homeostasis; Ion channel activity

11

rs9349379

 

PHACTR1

PHACTR1

 

Vascular function

12

rs140002913

 

NOTCH4

   

13

rs10456100

 

KCNK5

KCNK5

 

Ion channel activity

14

rs67338227

 

FHL5

FHL5

 

Vascular function

  

rs4839827

    

15

rs28455731

 

GJA1

 

GJA1

Vascular function

16

rs1268083

 

HEY2

HEY2, NCOA7

HEY2

Vascular function

17

rs186166891

 

SUGCT

SUGCT

  

18

rs10155855

 

DOCK4

   

19

rs6478241

 

ASTN2

ASTN2

  

20

rs2506142

 

NRP1

NRP1

NRP1

Vascular function; Metal ion homeostasis

21

rs10786156

 

PLCE1

PLCE1

PLCE1

Vascular function

  

rs75473620

    

22

rs12260159

 

HPSE2

HPSE2

HPSE2

 

23

rs2223089

 

ARMS2

PLEKHA1, HTRA1

HTRA1

Vascular function

24

rs4910165

 

MRVI1

MRVI1

MRVI1

 

25

rs11031122

 

MPPED2

MPPED2

  

26

rs10895275

 

YAP1

YAP1

YAP1

Vascular function

27

rs561561

 

IGSF9B

IGSF9B

  

28

rs1024905

 

FGF6

 

FGF6

Vascular function

29

rs11172113

 

LRP1

LRP1

LRP1

Vascular function; Metal ion homeostasis

  

rs11172055

    

30

rs11624776

 

ITPK1

   

31

rs77505915

 

CFDP1

CFDP1, TMEM170A

  

32

rs4081947

 

ZCCHC14

 

ZCCHC14

Vascular function; Metal ion homeostasis

33

rs75213074

 

WSCD1

   

34

rs17857135

 

RNF213

RNF213

 

Metal ion homeostasis

35

rs111404218

 

JAG1

 

JAG1

Vascular function; Metal ion homeostasis

36

rs4814864

 

SLC24A3

SLC24A3

 

Ion channel activity

37

rs144017103

 

CCM2L

CCM2L

CCM2L

Vascular function

38

rs12845494

 

MED14

   

aGenomic region is an independent genomic region (> 250 kb apart) that harbours at least one migraine risk SNP; bIndex SNP is the SNP with the lowest p-value at a genomic region. cSecondary SNP is a genome-wide significant SNP that is not in linkage disequilibrium with the index SNP. Associations were identified for the migraine without aura subtype. DEPICT, data-driven expression-prioritized integration for complex traits; g:GOSt tool refers to web-based gene functional profiling software g:Profiler128 (http://biit.cs.ut.ee/gprofiler/) (depicted are only the more prominent pathways vascular function, metal ion homeostasis, ion channel activity pathways) (Compiled and adapted from [17, 33])

Secondly, traditionally the most straightforward approach in interpreting a GWAS signal was to link the index SNP to the nearest gene, under evidence that regulatory effects tend to largely act on short distances [19, 20]. The strength of this inference depends on a number of factors, such as the size and gene density of the identified locus; while long-range trans-eQTL (‘expression quantitative trait loci’ which explain small fractions of the genetic variance of a gene expression phenotype) effects exist in the genome, the preponderance towards short distance cis-eQTLs suggest we can be fairly confident in linking a locus where only a single gene resides within the associated SNPs to hypothesise about function. One way to combat this is to combine the evidence from association-test statistics with linkage disequilibrium information (i.e., prior information on how haplotype patterns [alleles of close by SNPs] behave at each locus) in a Bayesian approach [21], to define what is called a credible set of SNPs (i.e., the set of SNPs that with a 99% chance contain the causal SNP at a locus). Using the genomic location of the credible SNPs the most likely gene(s) associated with migraine were identified (Table 1). Since causal variants are often located in intronic or intergenic regions in gene-dense areas, inferring which of the many genes within the credible set is involved based on SNP data alone can be tricky. In practice, this means that all the genes at such loci need to be taken forward to post-hoc analyses, which imposes power challenges to such analyses. Information on the gene’s function and participation in known biological pathways can be used to prioritise causative genes using methods such as DEPICT [22], which prioritises genes if their predicted function is shared with that of genes at other associated loci more often than expected. Together, analysis of credible SNPs and DEPICT analysis identified 37 genes that are likely to be causal (Table 1).

Thirdly, even in cases where only a single gene is implicated, the complexity of gene regulation can provide additional challenges; this was clearly demonstrated by the fact that intronic SNP rs9349379 that had been linked in this way to PHACTR1 in multiple migraine GWAS (as well as coronary artery disease, cervical artery dissection, fibro-muscular dysplasia, and hypertension) and where the credible set comprises only rs9349379, detailed functional follow-up analyses revealed that this SNP influences the expression of EDN1 (coding for endothelin-1 (ET-1), 600,000 base pairs [bp] upstream) [23]. ET-1 is a potent vasoconstrictor that acts on smooth muscle cells and has previously been implicated in migraine [24]. Although hypothesis-free methods such as GWAS and sequencing studies are meant to provide the roadmap towards core pathophysiology of a disease, they rely on direct and well-designed ‘wet-lab’ functional follow-ups to nail down the key molecular mechanisms. As the type of assay, whether animal- or cell-based, needed for a functional follow-up very much depends on the actual variant and the gene it affects, it is not possible to give specific directions on how to go about for a particular variant (for recent reviews on technical possibilities see [25, 26]).

Emerging molecular pathways from GWAS hits?

The most profound hypothesis that emerged from the 2016 IHGC GWAS publication [17] (with only a minute fraction of the genes/loci identified thus far) was the enrichment of genes involved in the vascular system among the identified genetic risk factors for migraine. Briefly, tissue expression enrichment analysis was performed, where the expression of genes (from GTEx data) within 50,000 bp of credible-set SNPs was assessed in 42 different human tissue types. These analyses identified that arterial and gastrointestinal tissues were significantly enriched for expression of migraine-associated genes. Indeed, no less than 15 of the implicated genes are related to vascular function of which four (MEF2D, YAP1, LRP1, JAG1) were significantly enriched in vascular tissues, as shown by in silico tissue expression enrichment analysis [17].

The 2016 gene expression enrichment results suggested that vascular dysfunction is important in migraine susceptibility and fuelled the long-running debate whether migraine is a disease of vascular dysfunction, or of neuronal dysfunction with vascular changes playing a secondary role. However, the 2016 finding by no means suggests that a neuronal origin of migraine is now excluded, already because at least five genes (PRDM16, MEF2D, FHL5, ASTN2, LRP1) (also) have a neuronal function. Another, rather unexpected, hypothesis that emerges is that metal ion homeostasis might contribute to migraine susceptibility, as 11 genes (PRDM16, TGFBR2, REST, FHL5, NRP1, MMPED2, LRP1, ZCCHC14, RNF213, JAG1, SLC24A3) with such function are among the 37 genes. Of note, ion channel activity (TRPM8, REST, KCNK5, SLC24A3), which emerged from genetic studies in monogenic FHM, and pain signalling (TRPM8) were much less prominent signals [27].

A more recent [28] tissue enrichment analysis of the 2016 IHGC GWAS summary statistics ― utilising two gene expression datasets (GTEx and ‘Franke lab’) and chromatin data (highlighting active regulatory regions) from the Roadmap Epigenomics and ENCODE (EN-TEx) projects ― reported enrichment of both vascular and neurological enrichment. More specifically, cardiovascular enrichments were found for migraine without aura with gene expression data, and for migraine without aura and ‘all’ migraine with EN-TEx data. Whereas, analysis using Roadmap data found the strongest enrichment for migraine (all subtypes) was neurological (neurospheres and fetal brain, neither of which were present in GTEx and EN-TEx). These results highlight the importance utilising multiple tissues, cell types and regulatory measures in such enrichment analyses aimed at interpreting GWAS risk loci.

It is useful to keep in mind that a GWAS SNP only ‘tags’ the disease locus, implying that the identified SNP is only correlated — because of linkage disequilibrium — with the disease-causing variant, which is not ‘the end of the road’ as far as understanding the functional consequences. Efforts at combining information across phenotypes either directly at the summary statistic phase [29] or by comparative analysis of correlated phenotypes [30] as well as increasing the size of the migraine GWAS itself (leading to more implicated loci) will yield improvements on the locus side of the analysis; concurrently, considerable efforts are being focused on improving the quality of the next layer of information, which links SNPs to function, through various -omics studies assaying the genome in general [26, 31], and the improvement of these resources and better methodology will increase the statistical power on the post-hoc side of the analysis. However, it is crucial to realise that rapid progress can also be made in migraine specifically by targeted follow-ups (such as for the rs9349379/EDN1/ET-1 study) [23], given that we now have a set of well-characterised loci waiting for such detailed characterisation. For example, several of the mechanisms implied by the two latest GWAS (such as regulation of vascular tone, ion homeostasis) may present directly testable hypotheses.

What lies ahead?

GWAS in migraine have been fruitful in the sense that they yielded several dozens of robustly identified loci in the genome that harbour genetic risk factors. Despite clear challenges how to link associated SNPs to actual genes and pathways, the likelihood that the correct genes are identified is increased by bioinformatics tools. Emerging hypotheses suggest that vascular function and metal ion homeostasis are among the pathways involved in migraine pathophysiology. Other pathways such as neuronal function and ion channel activity are less prominent among the genes identified thus far. Current initiatives of IHGC to conduct even larger GWAS (close to 100 K cases) appear to identify many more risk loci (> 100) [32] that may support current hypotheses and likely generate new ones. Over time, the genetic landscape of migraine will be more complete so one may predict migraine risk using approaches like polygenic risk scores, which is not yet sufficiently accurate [33, 34, 35]. One major challenge will be to elucidate the functional consequences of the associated SNPs and identify how they may affect migraine risk at the individual level. Efforts to functionally characterise GWAS signals, for other diseases than migraine, have been considering high-throughput cell-based (e.g., induced pluripotent stem cells [iPSCs]) and animal models (e.g., Drosophila) [26]. Considerable amount of research is needed before migraine GWAS findings will show diagnostic or prognostic value and lead to the development of (personalised) treatment options.

Notes

Acknowledgements

None.

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No funding was obtained for this review.

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All authors co-wrote and revised the manuscript. All authors read and approved the final manuscript.

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The authors declare that they have no competing interests.

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© The Author(s). 2019

Open AccessThis article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.

Authors and Affiliations

  1. 1.Department of Human GeneticsLeiden University Medical CentreLeidenThe Netherlands
  2. 2.Department of NeurologyLeiden University Medical CentreLeidenThe Netherlands
  3. 3.School of Biomedical Sciences, Faculty of HealthQueensland University of TechnologyBrisbaneAustralia
  4. 4.Institute of Health and Biomedical InnovationQueensland University of TechnologyBrisbaneAustralia
  5. 5.Analytical and Translational Genetics Unit, Department of MedicineMassachusetts General Hospital and Harvard Medical SchoolBostonUSA
  6. 6.Stanley Center for Psychiatric ResearchBroad Institute of MIT and HarvardCambridgeUSA
  7. 7.Program in Medical and Population GeneticsBroad Institute of MIT and HarvardCambridgeUSA

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