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                <title><![CDATA[Perspective
and a brief overview of genome-wide association studies in moderate to severe asthma]]></title>

                                    <author><![CDATA[Md Monirul Hoque]]></author>
                
                <link data-url="https://imcjms.com/registration/journal_full_text/389">
    https://imcjms.com/registration/journal_full_text/389
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                <pubDate>Sun, 22 Aug 2021 01:44:03 +0000</pubDate>
                <category><![CDATA[Review]]></category>
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                <description>Abstract
Asthma is a common chronic respiratory disease that shares
phenotypic heritability and shows clusters of symptoms among the relatives. A
large number of studies have been conducted to examine the genetic
susceptibility of asthma over the past three decades. In the last decade,
genome-wide association studies (GWAS) have readdressed the perspective of
viewing asthma and have identified some novel genes associated with the
susceptibility of asthma. However, few genetic studies have been conducted
focusing the moderate to severe asthma, and the molecular targets explain a
small proportion of asthma heritability. This review focuses on the principal
findings of the genomic studies investigating the genome-wide association of moderate
to severe asthma and how it is transitioning the phenotype-based approach
towards the fundamental genomic studies. It further illustrates the integrative
perspectives aimed towards the translation of the findings in precision
medicine. Therefore, a better understanding of asthma pathogenesis would focus
the individual at the center of asthma care.
IMC J Med Sci 2021; 15(2): 008.&amp;nbsp;DOI: https://doi.org/10.3329/imcjms.v15i2.55880  
*Correspondence:
Md Monirul Hoque, Department of
Pathobiology, College of Veterinary Medicine, Auburn University, Alabama, USA.
Email: hoquemonir@yahoo.com
&amp;nbsp;
Introduction
Asthma is a complex, non-communicable disease of the airways characterized
by recurrent episodes of shortness of breath, cough, wheezing, reversible
airflow obstruction, bronchial hyper-responsiveness, mucus overproduction, and
abnormal inflammation of the respiratory mucosa. According to the WHO report,
262 million people suffered from asthma in 2019 worldwide. There were 383,000
deaths due to asthma in 2015 and this death toll jumped to 461,000 in 2019, most
of which occurred in low and lower-middle income countries. Asthma is a common
disease among children and cases are increasing at a rate of 50 percent every
ten years [1]. An increase in the incidence of asthma has been associated with
urbanization. Recurrent attacks of asthma symptoms are responsible for frequent
sleeplessness, daytime fatigue, reduced activity, and absenteeism from school
and work. Moreover, in some patients, airflow may be intractably compromised
and the airway may be remodeled irreversibly making them refractory to the
conventional treatment options with high dose inhaled corticosteroids (ICS) and
long-acting β2-adrenergic receptor agonists (LABA) [2]. This
subgroup of patients requires a different management approach for their
treatment. Researches on the genetic basis of asthma have been evidenced as a
promising field of study to develop newer treatment modalities as well as novel
preventive protocols for severe asthmatic patients. There are significant
differences in asthma prevalence not only among different countries and populations
but also among different ethnic groups within the same country. Complex
interactions among genetic and environmental factors are responsible for these
variations, where genetic factors are assumed to contribute to 35-95% of the
susceptibility to develop asthma [3]. Active researches are going on to find
out the fundamental causes and underlying pathobiological pathways responsible
for the development of asthma. Several genomic approximations have been done to
find out the genes underlying the pathogenesis of asthma. The expedition
started with linkage analysis studies followed by positional cloning and later
by candidate-gene association studies. High-throughput polymorphism genotyping
led to the development of methods for much denser genomic scans and initiated
the era of genome-wide association studies (GWAS) [4].
Moffatt MF et al.
conducted the first GWAS of asthma in 2007 [5]. Ninety three papers were found
reported in the GWAS catalog (https://www.ebi.ac.uk/gwas/) till June 1, 2021,
on 51 asthma or asthma-related traits. Among them, 9 are GWASs of severe asthma
or asthma exacerbations. Validation of the genomic findings from GWAS through
the studies of biological mechanistic pathways is opening up the prospect of
discovery of potential targets and newer biological drugs, which can modify the
progression of disease and prevent the development of severe diseases. This
will lead to a paradigm shift in the management approach of asthma that will
prioritize the endotype than the phenotype of the disease. It will ultimately
lead to a better understanding of asthma heterogeneity and progression, and
will help to develop new targeted treatments.
&amp;nbsp;
Phenotypic view
of asthma
Asthma has long been managed conventionally based on the
phenotypic characteristics which are diagnosed by different clinical
parameters, such as, history of the patient, lung function test, spirometry,
FEV1 (forced
expiratory volume) and chest X-ray. Different studies have been
conducted to precisely classify asthma so that management protocol can be
tailored according to the requirement of the patient cohort. Moore et al. studied asthmatic patients
of over 12 years old (726 patients), registered with the Severe Asthma Research
Program (SARP) of National Heart Lung and Blood Institute (NHLBI). They
conducted cluster analysis using different respiratory function tests and other
parameters and categorized the asthmatic patients into 5 clusters emphasizing
the clinical course and treatment response for better compliance and greater
outcome. Although their algorithm was used for the differential diagnoses of
asthma in research studies, it could not be applied in different levels of
asthma severity [6,7].
Even though newer drugs are being discovered to combat asthma, the
mainstay of treatment remains the inhaled corticosteroids, β2-adrenoceptor
agonists, and cholinergic antagonists. None of these drugs prevents or cure
asthma, though patients get some level of symptomatic relief but a large
proportion continues to suffer [8,9]. A genetic basis can explain this
discrepancy of response to the drugs. Asthma susceptibility genes cause mild or
intermittent asthma by interacting with environmental factors. Later, different
genes lead to disease progression by interacting with other environmental
exposures. Thus genetic profiles combined with environmental factors create the
platform of different pathophysiological abnormalities and lead to varied
clinical asthma patterns. So, a prospective approach is required to categorize
the severity of asthma and improve asthma control by personalization of asthma
management and identifying the patients at risk for adverse outcomes [5].
&amp;nbsp;
Insight into the
genetic epidemiology of asthma and associated contributing factors
Asthma is not merely a single disease rather it is an umbrella for
multiple diseases with similar clinical features. It has different genetic and
environmental contributors. The risk of developing asthma in a person depends
not only on his/her degree of genetic relatedness to his/her relative with the
disease but also on the severity and the age of onset of asthma in that
relative. There is more chance of the development of asthma among the offspring
of the asthmatic parents. This supports the genetic predisposition of asthma.
The risk of developing asthma in children is 25% if one parent is affected, but
it becomes 50% if both parents are affected. Studies on twin further support
the genetic basis of asthma. The recurrence risk of asthma is much higher among
monozygotic twins than in dizygotic twins [10,11]. However, the concordance of
asthma in monozygotic twins is 75% rather than 100%. Even though the
monozygotic twins share all their genes, this discordance of asthma among them
points out that not only the genetic factors but also environmental risk
factors play an important role in asthma [10]. Hence, although family
background plays an important role in the development of asthma, the phenotypic
expression of asthma may be influenced by environmental and other genetic
factors. A small number of genes are responsible for setting the individual
risk background which is then acted upon by another set of modifying genes and
environmental factors.
Markus J. Ege et
al. conducted a genome-wide interaction analysis for candidate genes of asthma
and atopy in a farming environment and they found 5 SNPs (Single Nucleotide
Polymorphism) interact with farm-related exposures [12]. This indicates the
presence of a potential interaction between the genotype and the environmental
factors. Classic GWASs without considering the environmental exposures may not
detect the involved SNPs. However, gene-environment interaction provides the
opportunity to unravel genetic effects masked by environmental exposures.
Moreover, the non-linear expression of the asthma phenotypes makes it even more
variable. This adds more difficulty in the prediction of asthma status for a
genotype or combination of genotypes. Asthma is more prevalent in the Western
population (up to 20%) whereas it is around 1% in the
developing world [13]. People in urban areas suffer more from asthma
than rural people. Occurrence of symptom frequency, degree of airway
responsiveness, level of lung function, and airway inflammation has been found
to aggregate within families. So, a person is prone to develop severe asthma if
he has a positive family history of severe asthma. A better understanding of
the causative factors for the variation of diseases along with the host-related
differences in genetic makeup would facilitate the personalized treatment [14].
&amp;nbsp;
Approaches for
discovering asthma genes: the study of molecular genetics
Over a hundred genes have been found associated with the
development of asthma and the list is still growing. Different experimental
approaches have been used to unravel the genetic determinants of asthma.
Technology has continuously evolved over the time to overcome the limitation of
existing techniques to reach the desires goal. The candidate gene approach and
genome-wide approaches are the principal approaches. Candidate gene association
study is conducted in a case-control manner and enrichment of a marker allele
(SNP) or haplotype (the group of alleles) are compared among the cases and
controls. Another approach is the candidate gene analysis where course of the
disease is investigated in the cohort and cross-sectional study designs.
Candidate genes are selected based on their known function and the role they
play in pathogenesis. As a result, these studies become biased towards studies
of immune-related genes and they are unable to discover novel genes or pathways
by themselves. These approaches are confined to what we already know or what we
think we know about disease pathogenesis and gene functions [15,16]. To
overcome the drawback of the candidate gene analysis study, the genome-wide
approach was adopted. In this gene discovery approach, the whole genome is
taken into consideration without any prior hypotheses about the location of the
most important genetic contributors to disease risk. So this approach is called
the “hypothesis-free” or “hypothesis-generating” approach. Genome-wide
approaches can discover novel genes and pathways involved in the pathogenesis
of the disease. Thus this approach introduces new targets and potential
pathways for further exploration of the diseases process. Genome-wide linkage
study and genome-wide association study (GWAS) are the two methods of
genome-wide approach.
Genome-wide linkage studies require the availability of families
with at least two affected relatives (affected sibling pairs) where the disease
locus co-segregates within the families. The susceptibility loci are also
shared among affected relatives more often than expected by chance. This
linkage disequilibrium (LD) is utilized in such studies. Linkage studies
require relatively few genetic markers and they reveal multiple rare alleles
that confer risk for disease, even if the specific variant differs among
families. However, they identify very broad regions that contain hundreds of
genes and this limits the resolution of the method. Moreover, these studies
have low power to detect risk variants with modest effect sizes on disease risk
[15]. The next approach that came into play to deal with the shortcomings of
linkage studies is GWAS. GWAS has excellent resolution and good power to detect
risk variants with modest effect sizes. It does not need to study families for
linkage analysis. It extends the candidate gene approach to include markers
that tag all common variations in the genome. GWAS can test for associations
with more than a million Single Nucleotide Polymorphisms (SNPs). To achieve
genome-wide levels of significance, very large sample sizes and very stringent
thresholds of significance (typically with p&amp;lt;10-7) are required
to deal with the statistical issues while performing millions of SNP
association analyses. To fulfill the criteria researchers collaborate at
national and international levels, combine different smaller GWASs and conduct
meta-analysis to increase the power of the study [15]. Several GWASs have been
conducted to find out the genetic basis of severe asthma.
&amp;nbsp;
Perspectives of genome-wide
association studies
GWAS is a form of genetic association study where hundreds of
thousands of SNPs are assessed in a large group of subjects (in a case-control
manner) for relationships to a specific phenotype (such as asthma) or a
disease-related phenotype (such as IgE level). Unbiased interrogation of the
whole genome is the main driving power of GWAS. It is viewed in the context of
the Human Genome Project as a whole [17]. The GWASs enable the detection of
previously un-described and un-suspected genetic components. But, variants
detected as significantly associated in a GWAS do not certify that they are
pathogenic. These variants might be in linkage disequilibrium with other rarer
and untyped variants [18]. Moreover, the relationship between the genotype and
disease is moderated by early environmental exposures, including tobacco smoke,
respiratory infection [19], and place of residence. In particular,
gene-environment interaction in childhood may determine the platform of risk
factors so that associations become apparent only in the exposed individuals.
Such gene-environment interactions are common in asthma, and they are very
difficult to detect in a GWAS. Thirty eight loci have been found associated
with asthma with a threshold of the genome-wide significance level. Among these
loci, the cluster of genes on chromosome 17q12-21 is the most consistently
replicated locus among the childhood-onset disease across a diverse range of
ethnic backgrounds [20]. Variation at this locus is not associated with atopy,
indicating that it is an asthma susceptibility locus and it acts through
non-atopic pathways (non-IgE-mediated) [15]. Thus, GWASs are redefining the
conventional view of looking at the disease and treatment by identifying novel
findings. Genome-wide association studies perform genotyping arrays with up to
millions of SNP markers in an unbiased manner throughout the genome to detect
the underlying genetic variants responsible for the disease. It requires a very
large sample size to maximize the statistical power to detect risk alleles with
modest size effects. This requirement is achieved by pooling the samples from
multiple independent investigations where the participating members get the
chance to agree on standard methods of analysis. A well-developed plan for a
large meta-analysis provides the platform for examining genetic factors that
are common to or variable between various studies&amp;nbsp;[21].
Meta-analyses of asthma GWASs have been conducted by the GABRIEL
(A Multidisciplinary Study to Identify the Genetic and Environmental Causes of
Asthma in the European Community) and the EVE (a collection of US-based
investigators assembled to investigate asthma-susceptibility genes in
ethnically diverse populations) consortiums. Subjects only from European
ancestry were included in GABRIEL meta-analysis, whereas the EVE study included
racially and ethnically diverse subjects from the U.S. and Mexico. The combined
results of these two large studies showed highly replicable ethnic or
race-specific as well as ethnically diverse associations with asthma [15]. Novel
genetic variants, as well as new biological pathways, came under the focus of
study. Rose Du et al. conducted the
first genome-wide association study of severe or exacerbated asthma among non-Hispanic
white children in 2011 [22]. They found that the class I MHC-restricted T
cell-associated molecule gene (CRTAM) expression (in the activated CD8+ and
NK-T cells) was associated with asthma exacerbation at a low level of vitamin
D. This study referred to the importance of maintenance of an adequate level of
vitamin D in the high-risk asthmatic patients. Another study to determine the
genetic determinants of severe asthma found the role of ORMDL3/GSDMB locus on
chromosome 17q12-21, which was identified as associated with mild to moderate
asthma. Proper study design, control of the population heterogeneity with
adequate sample size might discover variants responsible for severe asthma
masked as a variant of mild asthma. This study found another two novel genes PRPS1L1
and intergenic associated with severe asthma [2]. These genes play biological
roles in the pathogenic inflammation of asthma through dendritic cells or Th2
cytokines. Genetic variants identified underlying moderate to severe asthma are
summarized in Table-1. All these variants are related to the biological
pathways of asthma at different levels of pathogenesis. They will reveal
fundamental information regarding severe asthma pathogenesis through a
multi-dimensional approach.
&amp;nbsp;
Table-1:
Genome-wide association studies
identifying moderate to severe asthma risk variants*
&amp;nbsp;
&amp;nbsp;
The largest GWAS conducted among European
ancestry for moderate to severe asthma was published in 2019. It identified 3
novel genes expressed in airway epithelium and in the blood eosinophil [21].
SEMA3D gene codes for a signaling protein for endothelial cell migration and
angiogenesis which is responsible for airway remodeling and asthma
exacerbation. It causes immune cell recruitment during inflammation. CTNNA3
plays a role in muscle cell coherence, which has brought bronchial smooth
muscle under study for insight into its possible role in asthma exacerbation [24].
Target genes of
asthma risk variants and functional study
The aim of asthma GWAS is to identify genetic variants (or another
variant in strong linkage disequilibrium) associated with disease risk which
affects the protein sequence or the transcription patterns of a gene (target
gene) that ultimately plays a role in disease pathophysiology. Disease risk-associated
variants highlight specific genes and molecular pathways which are dysregulated
in asthma and they help understand the underlying cause of the development of
asthma. There are at least 24 genes that are likely targets of severe asthma
risk variants. Target genes of risk variants can be identified in two ways. Based
on the published risk variants or variants in strong LD with them, a
statistical approach, such as ANNOVAR is used to see if these variants are
non-synonymous coding variants. Assessment of the variants for a reproducible
association with asthma in the UK Biobank study can be performed. This approach
identified 8 likely (non-synonymous variants) target genes: GSDMA, GSDMB,
HLA-DQA1, HLA-DQB1, IL1RL1, IL6R, TLR1, and ZPBP2 in asthma risk variants [26].
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