Abstract
There is currently limited understanding of the genetic aetiology of obstructive sleep apnoea (OSA). We aimed to identify genetic loci associated with OSA risk, and to test if OSA and its comorbidities share a common genetic background.
We conducted the first large-scale genome-wide association study of OSA using the FinnGen study (217 955 individuals) with 16 761 OSA patients identified using nationwide health registries.
We estimated 0.08 (95% CI 0.06–0.11) heritability and identified five loci associated with OSA (p<5.0×10−8): rs4837016 near GAPVD1 (GTPase activating protein and VPS9 domains 1), rs10928560 near CXCR4 (C-X-C motif chemokine receptor type 4), rs185932673 near CAMK1D (calcium/calmodulin-dependent protein kinase ID) and rs9937053 near FTO (fat mass and obesity-associated protein; a variant previously associated with body mass index (BMI)). In a BMI-adjusted analysis, an association was observed for rs10507084 near RMST/NEDD1 (rhabdomyosarcoma 2 associated transcript/NEDD1 γ-tubulin ring complex targeting factor). We found high genetic correlations between OSA and BMI (rg=0.72 (95% CI 0.62–0.83)), and with comorbidities including hypertension, type 2 diabetes, coronary heart disease, stroke, depression, hypothyroidism, asthma and inflammatory rheumatic disease (rg>0.30). The polygenic risk score for BMI showed 1.98-fold increased OSA risk between the highest and the lowest quintile, and Mendelian randomisation supported a causal relationship between BMI and OSA.
Our findings support the causal link between obesity and OSA, and the joint genetic basis between OSA and comorbidities.
Abstract
Five OSA-associated loci were found, highlighting the causal link between obesity and OSA, and providing evidence for non-BMI-dependent effects. OSA comorbidities were correlated genetically for OSA, showing these diseases may have a shared genetic basis. https://bit.ly/36Rfq1Y
Introduction
Obstructive sleep apnoea (OSA) is a severe sleep disorder affecting at least 9% of the population. Prevalence increases with higher age, reaching >35% in individuals >60 years of age [1]. Despite a recognised health impact, and available diagnostic tools and treatments, the condition remains underdiagnosed [2, 3]. OSA is characterised by repetitive episodes of nocturnal breathing cessation due to upper airway collapse resulting in mild to severe sleep deprivation and dysregulation of sleep, breathing and blood pressure. These conditions may lead to serious comorbidities through intermittent hypoxia, systemic inflammation and sympathetic activation [4]. Furthermore, OSA is influenced by multiple risk factors such as obesity, male sex, family history of OSA, high age and problems of upper airway flow or jaw anatomy [5].
Consequently, OSA is a serious public health problem due to its many cardiometabolic comorbidities, including an increased risk for coronary heart disease (CHD), type 2 diabetes (T2D) and its complications, and ultimately increased mortality [6, 7]. In addition, comorbidities such as depression, hypothyroidism, asthma and inflammatory rheumatic disease (IRD) are linked with OSA [8–11]. IRD might manifest as a comorbidity of OSA through effects on the temporomandibular joint, which rotates the lower jaw backward causing narrowing of the upper airway [12].
Genetic studies provide a tool to identify independent genetic risk factors that modulate disease risk and to examine causal pathways between comorbidity traits. Genome-wide association studies (GWASs) in OSA patients have previously identified associations with OSA severity measured using the apnoea–hypopnoea index (AHI) or respiratory event duration. The genome-wide significant findings from these studies and the corresponding associations from our previous study are shown in supplementary table S1 [13–15]. Larger-scale GWASs have been performed on OSA-related phenotypes such as snoring [16]. However, knowledge about OSA predisposing genetic loci is thus far limited [17].
To test genetic associations with OSA we utilised the FinnGen study with genetic profiling for 217 955 individuals and OSA diagnosis based on International Statistical Classification of Diseases and Related Health Problems, Ninth (ICD-9) and Tenth (ICD-10) Revision codes obtained from the Finnish National Hospital Discharge Registry and the Causes of Death Registry. The registries have excellent validity and coverage [18]. Combining the OSA diagnosis (ICD-10: G47.3; ICD-9: 3472A) and related risk factors and comorbidities with the genotyping data allows identification of risk variants, helps elucidate biological disease mechanisms and enables evaluation of OSA-related disease burden on a population level.
The aim of the study is to identify genetic loci associated with OSA risk, and to test if OSA and its comorbidities share a common genetic background. While there are previous small-scale GWASs on OSA severity, to the best of our knowledge this is the first large-scale GWAS on the risk of OSA.
Materials and methods
General information
We selected into further analyses those comorbidities which have previously been shown to associate with OSA in epidemiological studies, including obesity, hypertension, T2D, CHD, stroke, depression, hypothyroidism, asthma and IRD [8–12, 19–22].
Variant positions are reported in Genome Reference Consortium Human genome build 38 coordinates (GRChb38). All effect sizes and allele frequencies are reported in terms of the alternate allele.
Study sample in FinnGen
FinnGen (www.finngen.fi/en) is a large biobank study that aims to genotype 500 000 Finns, including prospective and retrospective epidemiological and disease-based cohorts as well as hospital biobank samples (supplementary table S2). FinnGen combines this data with longitudinal registry data that record healthcare events over the entire lifespan, including the National Hospital Discharge Registry (available from 1968), Causes of Death Registry (available from 1969), Cancer Registry (available from 1953) and Medication Reimbursement Registry (available from 1995), all these using unique national personal identification codes. Registry data were available from the beginning of the registry until December 31, 2018 (supplementary figure S1). The data consist of 218 792 censored individuals until spring of 2020. FinnGen's genotyping and imputation protocols are described in the supplementary material.
To examine OSA patients more specifically, 837 individuals who had ICD-10: G47 (Sleep disorders) were excluded from the controls and thus the remaining sample size was 217 955 participants. Of them, 16 761 (7.7%) had an OSA diagnosis and 10 557 (63.0%) of OSA patients were male. Baseline characteristics and OSA comorbidities of the participants are presented in table 1. Differences in baseline demographics and clinical characteristics were tested using a logistic regression model. The model was adjusted for sex, age and the 10 first principal components (PCs); the model for age was adjusted for sex and the 10 first PCs and the model for sex was adjusted for age and the 10 first PCs.
Baseline characteristics and previously known obstructive sleep apnoea (OSA) comorbidities between OSA and non-OSA individuals in the FinnGen cohort
The diagnosis of OSA was based on ICD codes (ICD-10: G47.3; ICD-9: 3472A), which were obtained from the Finnish National Hospital Discharge Registry and the Causes of Death Registry. This diagnosis is based on subjective symptoms, clinical examination and sleep registration applying AHI ≥5 events·h−1 or respiratory event index ≥5 events·h−1. By combining ICD codes from different registries, we generated disease end-points. Supplementary table S3 describes how end-points were constructed for each phenotype.
All prescription medicine purchases were retrieved from the Social Insurance Institution of Finland (KELA) registry for prescription drug purchases (available from 1995; excluding over-the-counter medicines and medication administered at hospitals). The drugs are coded by the Anatomical Therapeutic Chemical Classification System (supplementary figure S1).
Study samples in other cohorts
The UK Biobank (UKBB; www.ukbiobank.ac.uk) is a major national and international health resource, with the aim of improving the prevention, diagnosis and treatment of a wide range of serious and life-threatening illnesses. UKBB recruited 500 000 people during 2006–2010 from across the UK. OSA diagnosis was based on ICD-10: G47.3. The UKBB study sample included 4471 OSA cases and 403 723 controls.
The Estonian Biobank is a population-based biobank of the Estonian Genome Center at the University of Tartu (EGCUT; www.biobank.ee). The cohort size is currently close to 150 000 participants. Patients were selected by ICD-10: G47.3. For additional conformation of the diagnosis, treatment service codes from the Health Insurance Fund were also used. The EGCUT study sample included 4930 OSA patients and 61 056 controls.
All New Diabetics in Scania (ANDIS; www.andis.ludc.med.lu.se) aims to recruit all incident cases of diabetes within Scania County in Southern Sweden. All healthcare providers in the region were invited; the current registration covered 14 625 patients. OSA was defined by ICD-10: G47.3. The ANDIS study sample included 947 OSA patients and 9829 controls.
Validation of OSA diagnosis
For validation of OSA diagnosis, we collected 1000 OSA patients treated in the Hospital District of Helsinki and Uusimaa (HUS) during 2008–2011 and 2016–2019 using the diagnoses derived from HUS's Hospital Discharge Registry and the individual-level medical records.
The diagnosis for OSA was confirmed using the International Classification Criteria for Sleep Disorders, which requires either signs/symptoms (e.g. associated sleepiness, fatigue, insomnia, snoring, subjective nocturnal respiratory disturbance or observed apnoea) or associated medical or psychiatric disorder (i.e. hypertension, coronary artery disease, atrial fibrillation, congestive heart failure, stroke, diabetes, cognitive dysfunction or mood disorder) coupled with five or more predominantly obstructive respiratory events per hour. Alternatively, a frequency of obstructive respiratory events of 15 h−1 satisfies the criteria, even in the absence of associated symptoms or disorders [23].
Genome-wide association testing
218 792 samples from FinnGen Data Freeze 5 with 2925 disease end-points were analysed using SAIGE (Scalable and Accurate Implementation of GEneralised mixed model), which uses the saddlepoint approximation to calibrate unbalanced case–control ratios [24]. Analyses were adjusted for current age or age at death, sex, genotyping chip, genetic relationship and the first 10 PCs. For OSA, we performed a GWAS in a similar manner (n=217 955, including 16 761 OSA patients and 201 194 controls), but adjusting also for body mass index (BMI) (n=159 731, including 12 759 OSA patients and 146 972 controls).
For replication of the FinnGen OSA GWAS results, we merged the evidence from the UKBB, EGCUT and ANDIS cohorts. The results were combined using inverse variance weighted fixed-effect meta-analysis using β estimates and β standard errors in the Metagen R package as implemented in R version 4.0.2 (www.r-project.org). The merged data consisted of 10 348 OSA cases and 474 608 controls.
The GWAS using UKBB data was calculated using SAIGE [24]. This subset included 4471 OSA cases and 403 723 controls, and was adjusted for birth year, sex, genetic relatedness and the first four PCs. In EGCUT, the data were analysed using SAIGE, and the model was adjusted for current age or age at death, sex, genetic relatedness and the first 10 PCs. The analysis included 4930 OSA patients and 61 056 controls. In ANDIS, the GWAS was calculated using the logistic regression model, which was adjusted for current age or age at death, sex and the first 10 PCs. The analysis included 947 cases and 9829 controls.
Linkage disequilibrium score regression
We used LDSC software to estimate single nucleotide polymorphism (SNP)-based heritability, genetic correlation and tissue-specific SNP heritability [25]. LDSC uses the linkage disequilibrium score regression method, which quantifies the contribution of each variant by examining the relationship between test statistics and linkage disequilibrium. In calculations we used linkage disequilibrium scores calculated from the European ancestry subset of the 1000 Genomes dataset [26]. To restrict the calculation to a set of common, well-imputed variants, we retained only those SNPs in the HapMap 3 reference panel [27].
To study genetic correlations between OSA, BMI, hypertension, T2D, CHD, stroke, depression, hypothyroidism, asthma and IRD, we used summary statistics from the FinnGen data. For sleep traits, we used summary statistics derived from the UKBB data. Study subjects self-reported snoring, sleep duration, sleepiness and chronotype [16, 28, 29]. Sleep efficiency (sleep duration divided by the time between the start and end of the first and last nocturnal inactivity period, respectively) was based on accelerometer-derived measures [30]. For tissue-specific SNP heritability, we used a method that combined data from the Encyclopedia of DNA Elements (ENCODE; www.encodeproject.org) and Genotype-Tissue Expression (GTEx; www.gtexportal.org/home) resources [31, 32].
Polygenic risk score and Mendelian randomisation
The polygenic risk score (PRS) for BMI was calculated using summary statistics for 996 250 variants [33]. The posterior effect sizes were calculated using the PRS-continuous shrinkage method (PRS-CS) [34]. PRS for OSA replication was calculated using dosage-weighted β estimates for each lead variant (p<5×10−8; n=5 variants). The scores were generated using Plink2 (www.cog-genomics.org/plink/2.0) in the FinnGen data and the weights from FinnGen were projected to the UKBB individual-level data.
We performed Mendelian randomisation analysis to investigate the causality between BMI and OSA using independent BMI SNPs [33]. A genetic variant associated with the exposure of interest (genetic instrument) was used to test the causal relationship with the exposure (BMI) and outcome (OSA) [35].
Gene-based analysis
Gene-based tests were performed using MAGMA (Multi-marker Analysis of GenoMic Annotation) as implemented on the Functional Mapping and Annotation (FUMA) platform, which provides aggregate association p-values based on all variants located within a gene and its regulatory region using information from 18 biological data repositories and tools [36]. This analysis includes a gene-based test to detect significant SNPs associated with OSA using FinnGen OSA summary statistics.
Results
OSA diagnosis shows excellent validity
We validated the OSA diagnosis using HUS's Hospital Discharge Registry, collecting information of 1000 patients and compared the registry data with the patients' medical records. OSA diagnosis has a validity showing >98% positive predictive value (supplementary figure S2).
OSA correlates strongly with cardiovascular and metabolic traits
To estimate strengths of associations between OSA and comorbidities, we utilised data from 217 955 individuals who participated in the FinnGen project. 16 761 (7.7%) had an OSA diagnosis and 10 557 (63%) of cases were male. The diagnoses were derived from ICD codes in the Finnish National Hospital Discharge Registry and from the Causes of Death Registry. Baseline characteristics of the FinnGen participants and odds for OSA-associated comorbidities are presented in table 1. Two-thirds (66.2%) of patients had BMI ≥25 kg·m−2, as suggested by previous epidemiological reports [37].
GWAS of OSA reveals BMI-dependent and -independent associations
We estimated the heritability for OSA in FinnGen to be 0.08 (95% CI 0.06–0.11) before and 0.06 (95% CI 0.04–0.08) after adjusting for BMI. In a genome-wide association test, five distinct genetic loci were associated with OSA (p<5.0×10−8), as outlined in table 2, figure 1a and supplementary figure S3a, and with regional associations in supplementary figure S4. The lead variant in a locus on chromosome 16 was rs9937053, an intronic variant near FTO (fat mass and obesity-associated protein), p=4.3×10−16. In chromosome 12, the lead variant was rs10507084 near RMST/NEDD1 (rhabdomyosarcoma 2 associated transcript/NEDD1 γ-tubulin ring complex targeting factor), p=2.8×10−11, where RMST, a long noncoding RNA, was the nearest gene and NEDD1 was the nearest protein coding gene. On chromosome 10, the lead variant was rs185932673, an intronic variant near CAMK1D (calcium/calmodulin-dependent protein kinase ID), p=2.4×10−8. In chromosome 9, the lead variant was rs4837016 near GAPVD1 (GTPase activating protein and VPS9 domains 1), p=1.5×10−8. In chromosome 2, the lead variant rs10928560 was near CXCR4 (C-X-C motif chemokine receptor 4), p=2.8×10−8. Four out of five of these OSA-associated lead variants have also been previously associated with BMI (p<0.01) [38–40], with the exception of rs10507084 at the RMST/NEDD1 locus. Conditional analyses of the associated loci did not suggest any additional associations. Adjusting for BMI did not affect the association for variant rs10507084 (ORunadjusted 1.11 (95% CI 1.08–1.15); p=2.8×10−11 versus ORBMI-adjusted 1.12 (95% CI 1.08–1.17); p=9.7×10−10) (table 2, figure 1b, and supplementary figures S3b and S4), suggesting BMI-independent mechanisms for rs10507084 in OSA predisposition. As a sensitivity analysis we conducted a GWAS where individuals with snoring (ICD-10: R06.5) were removed, after which 197 797 individuals remained in the control group. This did not reveal any new associations nor did it notably affect our estimates (supplementary figures S5 and S6, and supplementary table S4).
Characterisation of five genome-wide significant obstructive sleep apnoea (OSA) loci in GRChb38
a) Manhattan plot for obstructive sleep apnoea (OSA) including 16 761 OSA cases and 201 194 controls. For each genetic variant, the x-axis shows the chromosomal position and the y-axis shows the −log10 p-value. The dashed horizontal line indicates the genome-wide significance threshold of p=5×10−8. Five genetic loci were identified at the genome-wide significance level: CXCR4 (C-X-C motif chemokine receptor 4), GAPVD1 (GTPase activating protein and VPS9 domains 1), CAMK1D (calcium/calmodulin-dependent protein kinase ID), RMST/NEDD1 (rhabdomyosarcoma 2 associated transcript/NEDD1 γ-tubulin ring complex targeting factor) and FTO (fat mass and obesity-associated protein). b) Manhattan plot for OSA after body mass index adjustment including 12 759 OSA cases and 146 972 controls. For each genetic variant, the x-axis shows the chromosomal position and the y-axis shows the −log10 p-value. The dashed horizontal line indicates the genome-wide significance threshold of p=5×10−8. One genetic locus was identified at the genome-wide significance level: RMST/NEDD1.
As an exploratory analysis we used MAGMA. We detected 25 significant associations (p<2.54×10−6) with various biological processes, which were driven by the same loci as the significant GWAS variants in FTO and GAPVD1 (supplementary figure S7a). These may be potential target genes at these loci for the variants that associate with OSA and overall indicate that the genes at this region may be relevant for OSA. Similarly, the gene-based test for BMI-adjusted OSA revealed three further associated genes (supplementary figure S7b).
We performed a phenome-wide association analysis (PheWAS) using FinnGen data and examined the associations between the lead SNPs and 2925 disease end-points. rs10507084 was specific for OSA also after adjusting for BMI, suggesting an independent role from cardiometabolic traits for the association between rs10507084 and OSA (figure 2a). While FTO was detected to be associated with OSA, it was also associated with a wide spectrum of cardiometabolic diagnoses, as shown previously [33, 38], and also with coffee consumption [41]. The strongest PheWAS associations were observed with OSA-related comorbidities, including obesity (p=4.14×10−41), T2D (p=5.67×10−28) and hypertension (p=1.40×10−10) (supplementary table S5). In addition, there was a strong correlation between rs10507084 and the use of antidepressants (OR 1.013 (95% CI 1.007–1.019); p=4.4×10−6) (figure 2b). This result remained significant after further adjusting for OSA (OR 1.011 (95% CI 1.005–1.017); p=1.9×10−4).
a) Phenome-wide association analysis (PheWAS) associations between rs10507084 and 2925 disease end-points after adjusting for body mass index. The Bonferroni corrected significance threshold was defined at p=0.05/2925=1.71×10−5. Associated p-values are shown on the −log10 scale on the y-axis. Sleep apnoea represents a validated disease. Primary healthcare diagnoses have not been validated. Sleep disorders, episodal and paroyxsmal disorders, and neurological diseases include sleep apnoea. The disease definition is shown along the horizontal axis (Roman numerals indicate International Statistical Classification of Diseases and Related Health Problems, 10th Revision (ICD-10) chapter numbers): 1) I Certain infectious and parasitic diseases, 2) II Neoplasms, from hospital discharges, 3) II Neoplasms, from cancer registry, 4) III Diseases of the blood and blood-forming organs and certain disorders involving the immune mechanism, 5) IV Endocrine, nutritional and metabolic diseases, 6) Diabetes end-points, 7) V Mental and behavioural disorders, 8) Psychiatric end-points, 9) Alcohol-related diseases, 10) VI Diseases of the nervous system, 11) Neurological end-points, 12) VII Diseases of the eye and adnexa, 13) VIII Diseases of the ear and mastoid process, 14) IX Diseases of the circulatory system, 15) Cardiometabolic end-points, 16) X Diseases of the respiratory system, 17) Asthma and related end-points, 18) Chronic obstructive pulmonary disease and related end-points, 19) Interstitial lung disease end-points, 20) XI Diseases of the digestive system, 21) Dental end-points, 22) Gastrointestinal end-points, 23) XII Diseases of the skin and subcutaneous tissue, 24) XIII Diseases of the musculoskeletal system and connective tissue, 25) Rheumatoid arthritis end-points, 26) XIV Diseases of the genitourinary system, 27) XV Pregnancy, childbirth and the puerperium, 28) XVI Certain conditions originating in the perinatal period, 29) XVII Congenital malformations, deformations and chromosomal abnormalities, 30) XVIII Symptoms, signs and abnormal clinical and laboratory findings, not elsewhere classified, 31) XIX Injury, poisoning and certain other consequences of external causes, 32) XX External causes of morbidity and mortality, 33) XXI Factors influencing health status and contact with health services, 34) Drug purchase end-points, 35) Diseases marked as autoimmune origin, 36) Common end-point, 37) Demonstration end-points, 38) ICD-10 main chapters, 39) Operation end-points, 40) Other, not yet classified end-points, 41) Miscellaneous, not yet classified end-points, 42) Comorbidities of asthma, 43) Comorbidities of chronic obstructive pulmonary disease, 44) Comorbidities of diabetes, 45) Comorbidities of gastrointestinal end-points, 46) Comorbidities of interstitial lung disease end-points, 47) Comorbidities of neurological end-points, 48) Comorbidities of rheumatoid arthritis end-points. b) PheWAS analysis concerning drug purchases. The x-axis shows phenotypes based on Anatomical Therapeutic Chemical Classification System (ATC) drug codes and the y-axis shows the Bonferroni corrected significance threshold −log10 p-value, which was defined as 0.05/69=7.25×10−4. The numbers of drug purchases were coded as continuous variables and inverse normalised to ensure normal distribution for analysis. Other antidepressant: ATC N06AX; hypnotics and sedatives: ATC N05C; psycholeptics: ATC N05; antidepressants: ATC N06A; cyclopyrrolones: ATC N05CF; antipsychotics: ATC N05A.
Genetic correlations and Mendelian randomisation connect OSA with cardiovascular outcomes and dysregulation of metabolism
To study the potential common genetic background of OSA and its known epidemiological correlates, we computed genetic correlations between OSA and its comorbidities using FinnGen summary statistics. The results showed strong genetic correlations between OSA and BMI (rg=0.72 (95% CI 0.62–0.83); p=3.49×10−40) and between OSA and comorbidities: hypertension (rg=0.35 (95% CI 0.23–0.48); p=4.06×10−8), T2D (rg=0.52 (95% CI 0.37–0.66); p=6.40×10−12), CHD (rg=0.38 (95% CI 0.17–0.58); p=3.84×10−4), stroke (rg=0.33 (95% CI 0.03–0.63); p=2.93×10−2), depression (rg=0.43 (95% CI 0.27–0.60); p=2.79×10−7), hypothyroidism (rg=0.40 (95% CI 0.27–0.54); p=7.07×10−9), asthma (rg=0.50 (95% CI 0.33–0.68); p=1.53×10−8) and IRD (rg=0.34 (95% CI 0.09–0.58); p=6.97×10−3). Furthermore, we observed high genetic correlations between OSA comorbidities. Since many OSA comorbidities are correlated with BMI, we calculated the genetic correlations after adjusting for BMI. This analysis showed somewhat lower estimates for genetic correlations between OSA and CHD (rg=0.24 (95% CI 0.01–0.47); p=0.04), depression (rg=0.33 (95% CI 0.17–0.50); p=1.1×10−3), asthma (rg=0.33 (95% CI 0.11–0.54); p=2.6×10−3) and hypothyroidism (rg=0.28 (95% CI 0.11–0.44); p=8.0×10−4). Genetic correlations between OSA and BMI (rg=0.08 (95% CI −0.05–0.22); p=0.22), hypertension (rg=0.05 (95% CI −0.10–0.20); p=0.51), T2D (rg=0.15 (95% CI −0.03–0.33); p=0.11), stroke (rg=0.32 (95% CI −0.05–0.69); p=0.09) and IRD (rg=0.27 (95% CI −0.01–0.54); p=5.7×10−2) attenuated after adjusting for BMI (figure 3). We also estimated a strong genetic correlation between males and females (rg=1.00 (95% CI 1.15–0.85); p=1.85×10−12).
Genetic correlations (rg) between obstructive sleep apnoea (OSA), body mass index (BMI) and previously known comorbidities using linkage disequilibrium score regression. CHD: coronary heart disease; T2D: type 2 diabetes; IRD: inflammatory rheumatic disease. The colour scale represents the strength of the correlation. Correlations between OSA and other traits have been calculated with and without adjusting for BMI.
To estimate genetic correlations between FinnGen OSA summary statistics and other sleep traits, we used UKBB-derived summary statistics for sleep variables. We observed genetic correlation with snoring (rg=0.81 (95% CI 0.69–0.93); p=1.24×10−38) and sleep efficiency (rg= −0.31 (95% CI −0.44– −0.17); p=9.80×10−6), and this was reflected by higher genetic correlation with daytime sleepiness (rg=0.44 (95% CI 0.33–0.54); p=1.27×10−15) [16, 28, 30]. These associations also remained significant after adjusting for BMI (rg=0.68 (95% CI 0.55–0.81); p=2.93×10−26, rg= −0.19 (95% CI −0.36– −0.03); p=0.02 and rg=0.42 (95% CI 0.29–0.55); p=1.06×10−10, respectively). We did not find significant genetic correlations between OSA and sleep duration or chronotype (table 3) [29].
Genetic correlations between obstructive sleep apnoea (OSA) and other sleep traits
To investigate the biological mechanisms behind OSA, we also examined tissue enrichment of association signals using partitioned heritability analysis using LDSC, an approach that combines data from the ENCODE and GTEx resources [31, 32] to FinnGen OSA summary statistics. Concordantly with the association of BMI and cardiometabolic traits, we observed the strongest associations with cardiovascular tissues and connective and bone tissues (p<0.05). Furthermore, enrichments with BMI-adjusted OSA implicated the central nervous system as the strongest associating single tissue (p<0.05) when a nominal α-level of 0.05 is shown (supplementary figure S8).
To test if there is a causal relationship between OSA and its comorbidities, we performed analysis of PRS followed by formal Mendelian randomisation analysis using FinnGen OSA summary statistics and independent BMI SNPs [33]. The BMI PRS showed a strong association with OSA risk (table 4) and the individuals in the highest BMI PRS quintile had 1.98 (95% CI 1.88–2.09)-fold increased (p=3.38×10−140) OSA risk after adjustment for age, sex and the 10 first PCs. Similarly, this association was further accentuated in formal Mendelian randomisation. We used 64 independent BMI SNPs [33] as instrumental variables to predict OSA. In line with epidemiological observations and genetic correlation, we discovered a strong causal predictive effect from BMI to OSA (inverse variance weighted: β=0.67; p=8.32×10−16) (figure 4 and supplementary table S6).
Estimated effect coefficients for body mass index (BMI) polygenic risk score (PRS) as a predictor of obstructive sleep apnoea (OSA)
Formal Mendelian randomisation (MR) suggesting a strong causal relationship between body mass index (BMI) and obstructive sleep apnoea (OSA) where BMI predicts OSA as an outcome. SNP: single nucleotide polymorphism; IVW: inverse variance weighted.
Replication
For each lead variant associated with OSA, we examined the estimates from the additional, comparable cohorts, i.e. UKBB, EGCUT and ANDIS. The results were combined using inverse variance weighted fixed-effect meta-analysis. These additional independent datasets support the role of FTO and GAPVD1 loci in OSA (p<0.05) (supplementary table S7a).
In addition, we calculated the PRS using the lead variants from our study and UKBB's individual-level data to predict OSA. The OSA PRS showed an association with OSA risk and the individuals in the highest OSA PRS quintile had a modest 1.24 (95% CI 1.15–1.33)-fold increased (p=6.89×10−9) OSA risk compared with the lowest quintile after adjusting for birth year, sex and the 10 first PCs. Furthermore, the association was adjusted for BMI in addition to the aforementioned covariates, showing a somewhat lower but significant estimate (OR 1.11 (95% CI 1.03–1.20); p=4.70×10−3) (supplementary table S8).
Discussion
In this study, using biobank data of over 217 000 individuals, we show that OSA risk has a strong genetic component and identify five genetic loci that are associated with the risk for OSA. Our results show high genetic correlations between OSA and cardiometabolic diseases and risk factors, with the strongest connections between OSA and BMI, hypertension, T2D and CHD, which are in line with previous epidemiological and clinical observations. These genetic correlations tracked with phenotypic correlations and comorbidities for OSA. In addition, both our association findings and the Mendelian randomisation results support the causal role of obesity in OSA.
These results allow us to draw several conclusions. First, genetic variation plays an important role in the development of OSA. This is supported by both the SNP heritability estimates and the associated loci.
Second, our results show that obesity plays a central causal role in OSA risk. This is supported by high genetic correlations between OSA and BMI. We found that four out of five associated loci were mediated through their associations with BMI. These findings are in line with the finding that weight loss is an important contributor to lowering AHI and the severity of OSA [42, 43].
Third, we also identified an association near RMST/NEDD1 that was specific for OSA independent of BMI. The lead SNP was associated with antidepressant purchases, which connects this locus with regulation of sleep and mood. The finding may also reflect the earlier observation that depression is prevalent among patients with OSA [8].
Fourth, a strong genetic correlation was observed between OSA and sleep traits, especially sleepiness and sleep efficiency. These findings highlight the pathological effects of OSA on sleep. As OSA is manageable with continuous positive airway pressure (CPAP) or an oral appliance, these findings support OSA treatment as it may reduce sleepiness and increase sleep efficiancy.
Our study does have some limitations. First, registry-based ascertainment through hospitalisation may miss nonhospitalised cases (false negatives) and treatment information such as CPAP compliance or oral sleep apnoea appliance usage. However, to the best of our knowledge, this is the largest number of cases combined for a GWAS. Second, due to the relatively small number of cases in the replication datasets, our statistical power was limited in the replication analysis. The finding of rs185932673 should be interpreted cautiously as the variant is rare in the Finnish population and the association was not replicated in the other study samples.
Here we present associations between five genetic loci and OSA. Two of these were replicated in independent cohorts. Our findings highlight the causal links between obesity and OSA, but also provide evidence for non-BMI-dependent genetic effects. In addition to BMI, we show that genetic effects that modify the risk of cardiometabolic diseases, depression, hypothyroidism, asthma and IRD are also correlated with genetic effects for OSA, showing that the observed comorbidities between OSA and these diseases may have a joint genetic basis. Our results support that OSA is a heterogenic disease with several distinct comorbidities, which would be beneficial to consider when treating patients with OSA.
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Acknowledgements
We would like to thank all participants of the FinnGen study for their generous participation. We would also like to thank Sari Kivikko (Institute for Molecular Medicine Finland (FIMM), University of Helsinki, Helsinki, Finland) for management assistance. Patients and controls in FinnGen provided informed consent for biobank research, based on the Finnish Biobank Act. Alternatively, older research cohorts, collected prior to the start of FinnGen (August 2017), were collected based on study-specific consents and later transferred to the Finnish biobanks after approval by Valvira, the National Supervisory Authority for Welfare and Health. Recruitment protocols followed the biobank protocols approved by Valvira. The Coordinating Ethics Committee of the Hospital District of Helsinki and Uusimaa approved the FinnGen study protocol (HUS/990/2017). The FinnGen study is approved by the Finnish Institute for Health and Welfare (approval THL/2031/6.02.00/2017, amendments THL/1101/5.05.00/2017, THL/341/6.02.00/2018, THL/2222/6.02.00/2018, THL/283/6.02.00/2019, THL/1721/5.05.00/2019), Digital and Population Data Service Agency (VRK/43431/2017-3, VRK/6909/2018-3, VRK/4415/2019-3), Social Insurance Institution (KELA 58/522/2017, KELA 131/522/2018, KELA 70/522/2019, KELA 98/522/2019) and Statistics Finland (TK-53-1041-17). The Biobank Access Decisions for FinnGen samples and data utilised in FinnGen Data Freeze 5 include: THL Biobank BB2017_55, BB2017_111, BB2018_19, BB_2018_34, BB_2018_67, BB2018_71, BB2019_7, BB2019_8 and BB2019_26; Finnish Red Cross Blood Service Biobank 7.12.2017; Helsinki Biobank HUS/359/2017; Auria Biobank AB17-5154; Biobank Borealis of Northern Finland 2017_1013; Biobank of Eastern Finland, 1186/2018; Finnish Clinical Biobank Tampere MH0004; Central Finland Biobank, 1-2017; and Terveystalo Biobank STB 2018001. This research has been conducted using the UK Biobank Resource under application number 22627. The validation study is approved by the Hospital District of Helsinki and Uusimaa (HUS/466/2019). The following biobanks are acknowledged for collecting the FinnGen project samples: Auria Biobank (www.auria.fi/biopankki), THL Biobank (https://thl.fi/fi/web/thl-biopankki), Helsinki Biobank (www.terveyskyla.fi/helsinginbiopankki), Biobank Borealis of Northern Finland (www.oulu.fi/university/node/38474), Finnish Clinical Biobank Tampere (www.tays.fi/en-US/Research_and_development/Finnish_Clinical_Biobank_Tampere), Biobank of Eastern Finland (https://ita-suomenbiopankki.fi), Central Finland Biobank (www.ksshp.fi/fi-FI/Potilaalle/Biopankki), Finnish Red Cross Blood Service Biobank (www.veripalvelu.fi/verenluovutus/biopankkitoiminta) and Terveystalo Biobank (www.terveystalo.com/fi/Yritystietoa/Terveystalo-Biopankki/Biopankki/). All Finnish biobanks are members of BBMRI.fi infrastructure (www.bbmri.fi).
The FinnGen research group collaborators are as follows.
Steering Committee: Aarno Palotie, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Mark Daly, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland. Pharmaceutical Companies: Howard Jacob, AbbVie, Chicago, IL, USA; Athena Matakidou, AstraZeneca, Cambridge, UK; Heiko Runz, Biogen, Cambridge, MA, USA; Sally John, Biogen, Cambridge, MA, USA; Robert Plenge, Celgene, Summit, NJ, USA; Mark McCarthy, Genentech, San Francisco, CA, USA; Julie Hunkapiller, Genentech, San Francisco, CA, USA; Meg Ehm, GlaxoSmithKline, Brentford, UK; Dawn Waterworth, GlaxoSmithKline, Brentford, UK; Caroline Fox, Merck, Kenilworth, NJ, USA; Anders Malarstig, Pfizer, New York, NY, USA; Kathy Klinger, Sanofi, Paris, France; Kathy Call, Sanofi, Paris, France; Tim Behrens, Maze Therapeutics, San Francisco, CA, USA; Patrick Loerch, Janssen Biotech, Beerse, Belgium. University of Helsinki and Biobanks: Tomi Mäkelä, HiLIFE, University of Helsinki, Helsinki, Finland; Jaakko Kaprio, Institute for Molecular Medicine Finland, HiLIFE, Helsinki, Finland; Petri Virolainen, Auria Biobank/University of Turku/Hospital District of Southwest Finland, Turku, Finland; Kari Pulkki, Auria Biobank/University of Turku/Hospital District of Southwest Finland, Turku, Finland; Terhi Kilpi, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Markus Perola, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Jukka Partanen, Finnish Red Cross Blood Service/Finnish Hematology Registry and Clinical Biobank, Helsinki, Finland; Anne Pitkäranta, Helsinki Biobank/Helsinki University and Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Riitta Kaarteenaho, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Seppo Vainio, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Miia Turpeinen, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital; Raisa Serpi, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital; Tarja Laitinen, Finnish Clinical Biobank Tampere/University of Tampere/Pirkanmaa Hospital District, Tampere, Finland; Johanna Mäkelä, Finnish Clinical Biobank Tampere/University of Tampere/Pirkanmaa Hospital District, Tampere, Finland; Veli-Matti Kosma, Biobank of Eastern Finland/University of Eastern Finland/Northern Savo Hospital District, Kuopio, Finland; Urho Kujala, Central Finland Biobank/University of Jyväskylä/Central Finland Health Care District, Jyväskylä, Finland. Other Experts/Non-Voting Member: Outi Tuovila, Business Finland, Helsinki, Finland; Minna Hendolin, Business Finland, Helsinki, Finland; Raimo Pakkanen, Business Finland, Helsinki, Finland.
Scientific Committee. Pharmaceutical Companies: Jeff Waring, AbbVie, Chicago, IL, USA; Bridget Riley-Gillis, AbbVie, Chicago, IL, USA; Athena Matakidou, AstraZeneca, Cambridge, UK; Heiko Runz, Biogen, Cambridge, MA, USA; Jimmy Liu, Biogen, Cambridge, MA, USA; Shameek Biswas, Celgene, Summit, NJ, USA; Julie Hunkapiller, Genentech, San Francisco, CA, USA; Dawn Waterworth, GlaxoSmithKline, Brentford, UK; Meg Ehm, GlaxoSmithKline, Brentford, UK; Dorothee Diogo, Merck, Kenilworth, NJ, USA; Caroline Fox, Merck, Kenilworth, NJ, USA; Anders Malarstig, Pfizer, New York, NY, USA; Catherine Marshall, Pfizer, New York, NY, USA; Xinli Hu, Pfizer, New York, NY, USA; Kathy Call, Sanofi, Paris, France; Kathy Klinger, Sanofi, Paris, France; Matthias Gossel, Sanofi, Paris, France; Robert Graham, Maze Therapeutics, San Francisco, CA, USA; Tim Behrens, Maze Therapeutics, San Francisco, CA, USA; Beryl Cummings, Maze Therapeutics, San Francisco, CA, USA; Wilco Fleuren, Janssen Biotech, Beerse, Belgium. University of Helsinki and Biobanks: Samuli Ripatti, Institute for Molecular Medicine Finland, HiLIFE, Helsinki, Finland; Johanna Schleutker, Auria Biobank/University of Turku/Hospital District of Southwest Finland, Turku, Finland, Markus Perola, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Mikko Arvas, Finnish Red Cross Blood Service/Finnish Hematology Registry and Clinical Biobank, Helsinki, Finland; Olli Carpén, Helsinki Biobank/Helsinki University and Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Reetta Hinttala, Northern Finland Biobank Borealis/University of Oulu/Northern, Ostrobothnia Hospital District, Oulu, Finland; Johannes Kettunen, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Johanna Mäkelä, Finnish Clinical Biobank Tampere/University of Tampere/Pirkanmaa Hospital District, Tampere, Finland; Arto Mannermaa, Biobank of Eastern Finland/University of Eastern Finland/Northern Savo Hospital District, Kuopio, Finland; Jari Laukkanen, Central Finland; Biobank/University of Jyväskylä/Central Finland Health Care District, Jyväskylä, Finland; Urho Kujala, Central Finland Biobank/University of Jyväskylä/Central Finland Health Care District, Jyväskylä, Finland. Other Experts/Non-Voting Member: Outi Tuovila, Business Finland, Helsinki, Finland; Minna Hendolin, Business Finland, Helsinki, Finland; Raimo Pakkanen, Business Finland, Helsinki, Finland.
Clinical Groups. Neurology Group: Hilkka Soininen, Northern Savo Hospital District, Kuopio, Finland; Valtteri Julkunen, Northern Savo Hospital District, Kuopio, Finland; Anne Remes, Northern Ostrobothnia Hospital District, Oulu, Finland; Reetta Kälviäinen, Northern Savo Hospital District, Kuopio, Finland; Mikko Hiltunen, Northern Savo Hospital District, Kuopio, Finland; Jukka Peltola, Pirkanmaa Hospital District, Tampere, Finland; Pentti Tienari, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Juha Rinne, Hospital District of Southwest Finland, Turku, Finland; Adam Ziemann, AbbVie, Chicago, IL, USA; Jeffrey Waring, AbbVie, Chicago, IL, USA; Sahar Esmaeeli, AbbVie, Chicago, IL, USA; Nizar Smaoui, AbbVie, Chicago, IL, USA; Anne Lehtonen, AbbVie, Chicago, IL, USA; Susan Eaton, Biogen, Cambridge, MA, USA; Heiko Runz, Biogen, Cambridge, MA, USA; Sanni Lahdenperä, Biogen, Cambridge, MA, USA; Janet van Adelsberg, Celgene, Summit, NJ, USA; Shameek Biswas, Celgene, Summit, NJ, USA; John Michon, Genentech, San Francisco, CA, USA; Geoff Kerchner, Genentech, San Francisco, CA, USA; Julie Hunkapiller, Genentech, San Francisco, CA, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; Edmond Teng, Genentech, San Francisco, CA, USA; John Eicher, Merck, Kenilworth, NJ, USA; Vinay Mehta, Merck, Kenilworth, NJ, USA; Padhraig Gormley, Merck, Kenilworth, NJ, USA; Kari Linden, Pfizer, New York, NY, USA; Christopher Whelan, Pfizer, New York, NY, USA; Fanli Xu, GlaxoSmithKline, Brentford, UK; David Pulford, GlaxoSmithKline, Brentford, UK. Gastroenterology Group: Martti Färkkilä, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Sampsa Pikkarainen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Airi Jussila, Pirkanmaa Hospital District, Tampere, Finland; Timo Blomster, Northern Ostrobothnia Hospital District, Oulu, Finland; Mikko Kiviniemi, Northern Savo Hospital District, Kuopio, Finland; Markku Voutilainen, Hospital District of Southwest Finland, Turku, Finland; Bob Georgantas, AbbVie, Chicago, IL, USA; Graham Heap, AbbVie, Chicago, IL, USA; Jeffrey Waring, AbbVie, Chicago, IL, USA; Nizar Smaoui, AbbVie, Chicago, IL, USA; Fedik Rahimov, AbbVie, Chicago, IL, USA; Anne Lehtonen, AbbVie, Chicago, IL, USA; Keith Usiskin, Celgene, Summit, NJ, USA; Tim Lu, Genentech, San Francisco, CA, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; Danny Oh, Genentech, San Francisco, CA, USA; John Michon, Genentech, San Francisco, CA, USA; Vinay Mehta, Merck, Kenilworth, NJ, USA; Kirsi Kalpala, Pfizer, New York, NY, USA; Melissa Miller, Pfizer, New York, NY, USA; Xinli Hu, Pfizer, New York, NY, USA; Linda McCarthy, GlaxoSmithKline, Brentford, UK. Rheumatology Group: Kari Eklund, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Antti Palomäki, Hospital District of Southwest Finland, Turku, Finland; Pia Isomäki, Pirkanmaa Hospital District, Tampere, Finland; Laura Pirilä, Hospital District of Southwest Finland, Turku, Finland; Oili Kaipiainen-Seppänen, Northern Savo Hospital District, Kuopio, Finland; Johanna Huhtakangas, Northern Ostrobothnia Hospital District, Oulu, Finland; Bob Georgantas, AbbVie, Chicago, IL, USA; Jeffrey Waring, AbbVvie, Chicago, IL, USA; Fedik Rahimov, AbbVie, Chicago, IL, USA; Apinya Lertratanakul, AbbVie, Chicago, IL, USA; Nizar Smaoui, AbbVie, Chicago, IL, USA; Anne Lehtonen, AbbVie, Chicago, IL, USA; David Close, AstraZeneca, Cambridge, UK; Marla Hochfeld, Celgene, Summit, NJ, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; John Michon, Genentech, San Francisco, CA, USA; Dorothee Diogo, Merck, Kenilworth, NJ, USA; Vinay Mehta, Merck, Kenilworth, NJ, USA; Kirsi Kalpala, Pfizer, New York, NY, USA; Nan Bing, Pfizer, New York, NY, USA; Xinli Hu, Pfizer, New York, NY, USA; Jorge Esparza Gordillo, GlaxoSmithKline, Brentford, UK; Nina Mars, Institute for Molecular Medicine Finland, HiLIFE, Helsinki, Finland. Pulmonology Group: Tarja Laitinen, Pirkanmaa Hospital District, Tampere, Finland; Margit Pelkonen, Northern Savo Hospital District, Kuopio, Finland; Paula Kauppi, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Hannu Kankaanranta, Pirkanmaa Hospital District, Tampere, Finland; Terttu Harju, Northern Ostrobothnia Hospital District, Oulu, Finland; Nizar Smaoui, AbbVie, Chicago, IL, USA; David Close, AstraZeneca, Cambridge, UK; Susan Eaton, Biogen, Cambridge, MA, USA; Steven Greenberg, Celgene, Summit, NJ, USA; Hubert Chen, Genentech, San Francisco, CA, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; John Michon, Genentech, San Francisco, CA, USA; Vinay Mehta, Merck, Kenilworth, NJ, USA; Jo Betts, GlaxoSmithKline, Brentford, UK; Soumitra Ghosh, GlaxoSmithKline, Brentford, UK. Cardiometabolic Diseases Group: Veikko Salomaa, Finnish Institute for Health and Welfare, Helsinki, Finland; Teemu Niiranen, Finnish Institute for Health and Welfare, Helsinki, Finland; Markus Juonala, Hospital District of Southwest Finland, Turku, Finland; Kaj Metsärinne, Hospital District of Southwest Finland, Turku, Finland; Mika Kähönen, Pirkanmaa Hospital District, Tampere, Finland; Juhani Junttila, Northern Ostrobothnia Hospital District, Oulu, Finland; Markku Laakso, Northern Savo Hospital District, Kuopio, Finland; Jussi Pihlajamäki, Northern Savo Hospital District, Kuopio, Finland; Juha Sinisalo, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Marja-Riitta Taskinen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Tiinamaija Tuomi, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Jari Laukkanen, Central Finland Health Care District, Jyväskylä, Finland; Ben Challis, AstraZeneca, Cambridge, UK; Andrew Peterson, Genentech, San Francisco, CA, USA; Julie Hunkapiller, Genentech, San Francisco, CA, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; John Michon, Genentech, San Francisco, CA, USA; Dorothee Diogo, Merck, Kenilworth, NJ, USA; Audrey Chu, Merck, Kenilworth, NJ, USA; Vinay Mehta, Merck, Kenilworth, NJ, USA; Jaakko Parkkinen, Pfizer, New York, NY, USA; Melissa Miller, Pfizer, New York, NY, USA; Anthony Muslin, Sanofi, Paris, France; Dawn Waterworth, GlaxoSmithKline, Brentford, UK. Oncology Group: Heikki Joensuu, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Olli Carpén, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Tuomo Meretoja, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Lauri Aaltonen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Johanna Mattson, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Johanna Schleutker, University of Turku, Turku, Finland; Annika Auranen, Pirkanmaa Hospital District, Tampere, Finland; Peeter Karihtala, Northern Ostrobothnia Hospital District, Oulu, Finland; Saila Kauppila, Northern Ostrobothnia Hospital District, Oulu, Finland; Päivi Auvinen, Northern Savo Hospital District, Kuopio, Finland; Klaus Elenius, Hospital District of Southwest Finland, Turku, Finland; Relja Popovic, AbbVie, Chicago, IL, USA; Jeffrey Waring, AbbVie, Chicago, IL, USA; Bridget Riley-Gillis, AbbVie, Chicago, IL, USA; Anne Lehtonen, AbbVie, Chicago, IL, USA; Athena Matakidou, AstraZeneca, Cambridge, UK; Jennifer Schutzman, Genentech, San Francisco, CA, USA; Julie Hunkapiller, Genentech, San Francisco, CA, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; John Michon, Genentech, San Francisco, CA, USA; Vinay Mehta, Merck, Kenilworth, NJ, USA; Andrey Loboda, Merck, Kenilworth, NJ, USA; Aparna Chhibber, Merck, Kenilworth, NJ, USA; Heli Lehtonen, Pfizer, New York, NY, USA; Stefan McDonough, Pfizer, New York, NY, USA; Marika Crohns, Sanofi, Paris, France; Diptee Kulkarni, GlaxoSmithKline, Brentford, UK. Ophthalmology Group: Kai Kaarniranta, Northern Savo Hospital District, Kuopio, Finland; Joni A. Turunen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Terhi Ollila, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Sanna Seitsonen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Hannu Uusitalo, Pirkanmaa Hospital District, Tampere, Finland; Vesa Aaltonen, Hospital District of Southwest Finland, Turku, Finland; Hannele Uusitalo-Järvinen, Pirkanmaa Hospital District, Tampere, Finland; Marja Luodonpää, Northern Ostrobothnia Hospital District, Oulu, Finland; Nina Hautala, Northern Ostrobothnia Hospital District, Oulu, Finland; Heiko Runz, Biogen, Cambridge, MA, USA; Stephanie Loomis, Biogen, Cambridge, MA, USA; Erich Strauss, Genentech, San Francisco, CA, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; Hao Chen, Genentech, San Francisco, CA, USA; John Michon, Genentech, San Francisco, CA, USA; Anna Podgornaia, Merck, Kenilworth, NJ, USA; Vinay Mehta, Merck, Kenilworth, NJ, USA; Dorothee Diogo, Merck, Kenilworth, NJ, USA; Joshua Hoffman, GlaxoSmithKline, Brentford, UK. Dermatology Group: Kaisa Tasanen, Northern Ostrobothnia Hospital District, Oulu, Finland; Laura Huilaja, Northern Ostrobothnia Hospital District, Oulu, Finland; Katariina Hannula-Jouppi, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Teea Salmi, Pirkanmaa Hospital District, Tampere, Finland; Sirkku Peltonen, Hospital District of Southwest Finland, Turku, Finland; Leena Koulu, Hospital District of Southwest Finland, Turku, Finland; Ilkka Harvima, Northern Savo Hospital District, Kuopio, Finland; Kirsi Kalpala, Pfizer, New York, NY, USA; Ying Wu, Pfizer, New York, NY, USA; David Choy, Genentech, San Francisco, CA, USA; John Michon, Genentech, San Francisco, CA, USA; Nizar Smaoui, AbbVie, Chicago, IL, USA; Fedik Rahimov, AbbVie, Chicago, IL, USA; Anne Lehtonen, AbbVie, Chicago, IL, USA; Dawn Waterworth, GlaxoSmithKline, Brentford, UK. Odontology Group: Pirkko Pussinen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Aino Salminen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Tuula Salo, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; David Rice, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Pekka Nieminen, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Ulla Palotie, Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Maria Siponen, Northern Savo Hospital District, Kuopio, Finland; Liisa Suominen, Northern Savo Hospital District, Kuopio, Finland; Päivi Mäntylä, Northern Savo Hospital District, Kuopio, Finland; Ulvi Gursoy, Hospital District of Southwest Finland, Turku, Finland; Vuokko Anttonen, Northern Ostrobothnia Hospital District, Oulu, Finland; Kirsi Sipilä, Northern Ostrobothnia Hospital District, Oulu, Finland.
FinnGen Analysis Working Group: Justin Wade Davis, AbbVie, Chicago, IL, USA; Bridget Riley-Gillis, AbbVie, Chicago, IL, USA; Danjuma Quarless, AbbVie, Chicago, IL, USA; Fedik Rahimov, AbbVie, Chicago, IL, USA; Sahar Esmaeeli, AbbVie, Chicago, IL, USA; Slavé Petrovski, AstraZeneca, Cambridge, UK; Eleonor Wigmore, AstraZeneca, Cambridge, UK; Jimmy Liu, Biogen, Cambridge, MA, USA; Chia-Yen Chen, Biogen, Cambridge, MA, USA; Paola Bronson, Biogen, Cambridge, MA, USA; Ellen Tsai, Biogen, Cambridge, MA, USA; Stephanie Loomis, Biogen, Cambridge, MA, USA; Yunfeng Huang, Biogen, Cambridge, MA, USA; Joseph Maranville, Celgene, Summit, NJ, USA; Shameek Biswas, Celgene, Summit, NJ, USA; Elmutaz Shaikho Elhaj Mohammed, Celgene, Summit, NJ, USA; Samir Wadhawan, Bristol-Meyers-Squibb; Erika Kvikstad, Bristol-Meyers-Squibb; Minal Caliskan, Bristol-Meyers-Squibb; Diana Chang, Genentech, San Francisco, CA, USA; Julie Hunkapiller, Genentech, San Francisco, CA, USA; Tushar Bhangale, Genentech, San Francisco, CA, USA; Natalie Bowers, Genentech, San Francisco, CA, USA; Sarah Pendergrass, Genentech, San Francisco, CA, USA; Dorothee Diogo, Merck, Kenilworth, NJ, USA; Emily Holzinger, Merck, Kenilworth, NJ, USA; Padhraig Gormley, Merck, Kenilworth, NJ, USA; Xing Chen, Pfizer, New York, NY, USA; Åsa Hedman, Pfizer, New York, NY, USA; Karen S. King, GlaxoSmithKline, Brentford, UK; Clarence Wang, Sanofi, Paris, France; Ethan Xu, Sanofi, Paris, France; Franck Auge, Sanofi, Paris, France; Clement Chatelain, Sanofi, Paris, France; Deepak Rajpal, Sanofi, Paris, France; Dongyu Liu, Sanofi, Paris, France; Katherine Call, Sanofi, Paris, France; Tai-he Xia, Sanofi, Paris, France; Beryl Cummings, Maze Therapeutics, San Francisco, CA, USA; Matt Brauer, Maze Therapeutics, San Francisco, CA, USA; Mitja Kurki, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland/Broad Institute, Cambridge, MA, USA; Samuli Ripatti, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Mark Daly, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Juha Karjalainen, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland/Broad Institute, Cambridge, MA, USA; Aki Havulinna, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Anu Jalanko, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Priit Palta, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Pietro della Briotta Parolo, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Wei Zhou, Broad Institute, Cambridge, MA, USA; Susanna Lemmelä, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Manuel Rivas, University of Stanford, Stanford, CA, USA; Jarmo Harju, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Aarno Palotie, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Arto Lehisto, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Andrea Ganna, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Vincent Llorens, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Hannele Laivuori, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Sina Rüeger, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Mari E. Niemi, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Taru Tukiainen, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Mary Pat Reeve, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Henrike Heyne, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Nina Mars, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Kimmo Palin, University of Helsinki, Helsinki, Helsinki, Finland; Javier Garcia-Tabuenca, University of Tampere, Tampere, Finland; Harri Siirtola, University of Tampere, Tampere, Finland; Tuomo Kiiskinen, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Jiwoo Lee, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland/Broad Institute, Cambridge, MA, USA; Kristin Tsuo, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland/Broad Institute, Cambridge, MA, USA; Amanda Elliott, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland/Broad Institute, Cambridge, MA, USA; Kati Kristiansson, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Mikko Arvas, Finnish Red Cross Blood Service, Helsinki, Finland; Kati Hyvärinen, Finnish Red Cross Blood Service, Helsinki, Finland; Jarmo Ritari, Finnish Red Cross Blood Service, Helsinki, Finland; Miika Koskinen, Helsinki Biobank/Helsinki University and Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Olli Carpén, Helsinki Biobank/Helsinki University and Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Johannes Kettunen, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Katri Pylkäs, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Marita Kalaoja, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Minna Karjalainen, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Tuomo Mantere, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Eeva Kangasniemi, Finnish Clinical Biobank Tampere/University of Tampere/Pirkanmaa Hospital District, Tampere, Finland; Sami Heikkinen, Biobank of Eastern Finland/University of Eastern Finland/Northern Savo Hospital District, Kuopio, Finland; Arto Mannermaa, Biobank of Eastern Finland/University of Eastern Finland/Northern Savo Hospital District, Kuopio, Finland; Eija Laakkonen, Central Finland Biobank/University of Jyväskylä/Central Finland Health Care District, Jyväskylä, Finland; Csilla Sipeky, University of Turku, Turku, Finland; Samuel Heron, University of Turku, Turku, Finland; Antti Karlsson, Auria Biobank/University of Turku/Hospital District of Southwest Finland, Turku, Finland; Dhanaprakash Jambulingam, University of Turku, Turku, Finland; Venkat Subramaniam Rathinakannan, University of Turku, Turku, Finland.
Biobank Directors: Lila Kallio, Auria Biobank/University of Turku/Hospital District of Southwest Finland, Turku, Finland; Sirpa Soini THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Jukka Partanen, Finnish Red Cross Blood Service/Finnish Hematology Registry and Clinical Biobank, Helsinki, Finland; Eero Punkka, Helsinki Biobank/Helsinki University and Hospital District of Helsinki and Uusimaa, Helsinki, Finland; Raisa Serpi, Northern Finland Biobank Borealis/University of Oulu/Northern Ostrobothnia Hospital District, Oulu, Finland; Johanna Mäkelä, Finnish Clinical Biobank Tampere/University of Tampere/Pirkanmaa Hospital District, Tampere, Finland; Veli-Matti Kosma, Biobank of Eastern Finland/University of Eastern Finland/Northern Savo Hospital District, Kuopio, Finland; Teijo Kuopio, Central Finland Biobank/University of Jyväskylä/Central Finland Health Care District, Jyväskylä, Finland.
FinnGen Teams. Administration: Anu Jalanko, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Risto Kajanne, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Mervi Aavikko, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Manuel González Jiménez, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland. Analysis: Mitja Kurki, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland/Broad Institute, Cambridge, MA, USA; Juha Karjalainen, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland/Broad Institute, Cambridge, MA, USA; Pietro della Briotta Parola, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Sina Rüeger, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Arto Lehistö, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Wei Zhou, Broad Institute, Cambridge, MA, USA; Masahiro Kanai, Broad Institute, Cambridge, MA, USA. Clinical Endpoint Development: Hannele Laivuori, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Aki Havulinna, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Susanna Lemmelä, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Tuomo Kiiskinen, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland. Communication: Mari Kaunisto, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland. Data Management and IT Infrastructure: Jarmo Harju, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Elina Kilpeläinen, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Timo P. Sipilä, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Georg Brein, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Oluwaseun A. Dada, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Ghazal Awaisa, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Anastasia Shcherban, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland. Genotyping: Kati Donner, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Timo P. Sipilä, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland. Sample Collection Coordination; Anu Loukola, Helsinki Biobank/Helsinki University and Hospital District of Helsinki and Uusimaa, Helsinki, Finland. Sample Logistics: Päivi Laiho, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Tuuli Sistonen, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Essi Kaiharju, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Markku Laukkanen, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Elina Järvensivu, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Sini Lähteenmäki, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Lotta Männikkö, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Regis Wong, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland. Registry Data Operations: Hannele Mattsson, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Kati Kristiansson, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Susanna Lemmelä, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Tero Hiekkalinna, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland; Teemu Paajanen, THL Biobank/Finnish Institute for Health and Welfare, Helsinki, Finland. Sequencing Informatics: Priit Palta, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland; Kalle Pärn, Institute for Molecular Medicine Finland, HiLIFE, University of Helsinki, Helsinki, Finland. Trajectory Team: Tarja Laitinen, Pirkanmaa Hospital District, Tampere, Finland; Harri Siirtola, University of Tampere, Tampere, Finland; Javier Gracia-Tabuenca, University of Tampere, Tampere, Finland.
Footnotes
This article has an editorial commentary: https://doi.org/10.1183/13993003.04644-2020
This article has supplementary material available from erj.ersjournals.com
Data availability: The FinnGen individual-level data may be accessed through applications to the Finnish biobanks’ FinnBB portal, Finngenious (www.finbb.fi). Summary data can be accessed through the FinnGen site www.finngen.fi/en/access_results. The full genotyping and imputation protocol for FinnGen is described at https://doi-org.libproxy.helsinki.fi/10.17504/protocols.io.nmndc5e
Author contributions: S. Ripatti and T. Palotie supervised the study. S. Ruotsalainen, S. Strausz, H.M. Ollila, M. Kurki and J. Karjalainen performed the statistical and bioinformatics analyses. A.S. Havulinna and T. Kiiskinen phenotyped the study samples. S. Strausz and E. Luonsi collected the data for the chart review. S. Strausz, H.M. Ollila and S. Ruotsalainen wrote the manuscript with feedback from all authors.
Conflict of interest: S. Strausz has nothing to disclose.
Conflict of interest: S. Ruotsalainen has nothing to disclose.
Conflict of interest: H.M. Ollila has nothing to disclose.
Conflict of interest: J. Karjalainen has nothing to disclose.
Conflict of interest: T. Kiiskinen has nothing to disclose.
Conflict of interest: M. Reeve has nothing to disclose.
Conflict of interest: M. Kurki has nothing to disclose.
Conflict of interest: N. Mars has nothing to disclose.
Conflict of interest: A.S. Havulinna has nothing to disclose.
Conflict of interest: E. Luonsi has nothing to disclose.
Conflict of interest: D. Mansour Aly has nothing to disclose.
Conflict of interest: E. Ahlqvist has nothing to disclose.
Conflict of interest: M. Teder-Laving has nothing to disclose.
Conflict of interest: P. Palta has nothing to disclose.
Conflict of interest: L. Groop has nothing to disclose.
Conflict of interest: R. Mägi has nothing to disclose.
Conflict of interest: A. Mäkitie has nothing to disclose.
Conflict of interest: V. Salomaa has received honoraria from Novo Nordisk and Sanofi for consultations and has ongoing research collaboration with Bayer AG (all unrelated to this study).
Conflict of interest: A. Bachour has nothing to disclose.
Conflict of interest: T. Tuomi has nothing to disclose.
Conflict of interest: A. Palotie has nothing to disclose.
Conflict of interest: T. Palotie has nothing to disclose.
Conflict of interest: S. Ripatti has nothing to disclose.
Support statement: This work was supported by the Academy of Finland Center of Excellence in Complex Disease Genetics (grants 312062 to S. Ripatti and 312074 to A. Palotie), Academy of Finland (grants 285380 to S. Ripatti, 128650 to A. Palotie and 309643 to H.M. Ollila), Finnish Foundation for Cardiovascular Research (S. Ripatti, V. Salomaa and A. Palotie), Sigrid Jusélius Foundation (S. Ripatti and A. Palotie), University of Helsinki HiLIFE (Fellow grants 2017–2020 to S. Ripatti) and Foundation and the Horizon 2020 Research and Innovation Programme (grant 667301 (COSYN) to A. Palotie); Oskar Öfflund Foundation and Yrjö Jahnsson Foundation (H.M. Ollila), and Finnish Dental Society Apollonia (S. Strausz). The FinnGen project is funded by two grants from Business Finland (HUS 4685/31/2016 and UH 4386/31/2016) and 11 industry partners (AbbVie Inc., AstraZeneca UK Ltd, Biogen MA Inc., Celgene Corp., Celgene International II Sàrl, Genentech Inc., Merck Sharp & Dohme Corp., Pfizer Inc., GSK, Sanofi, Maze Therapeutics Inc., Janssen Biotech Inc.). The funders had no role in study design, data collection and analysis, decision to publish or preparation of the manuscript. Funding information for this article has been deposited with the Crossref Funder Registry.
- Received August 10, 2020.
- Accepted November 4, 2020.
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