Genome wide association study of a Circadian Imbalance Index in 312,935 European ancestry UK Biobank participants identifies loci related to diabetes, mood and myocardial infarction.
Дизайн исследования
- Тип исследования
- genome-wide association study
- Размер выборки
- 312935
- Популяция
- 312,935 European ancestry UK Biobank participants; GWAS identified 27 loci mapping to 72 genes; CII polygenic score associated with T2D, major depressive disorder, obesity; MR showed causal effects of CII on T2D, mood swings, and myocardial infarction
- Вмешательство
- Genome wide association study of a Circadian Imbalance Index in 312,935 European ancestry UK Biobank participants identifies loci related to diabetes, mood and myocardial infarction. None
- Препарат сравнения
- None
- Первичный исход
- Genetic loci associated with Circadian Imbalance Index (CII) integrating chronotype, sleep duration, neuroticism, caffeine intake, and vitamin D
- Направление эффекта
- Mixed
- Риск систематической ошибки
- Low
Аннотация
The Circadian Imbalance Index (CII) integrates chronotype, sleep duration, neuroticism, caffeine intake, and vitamin D. In a genome wide association study (GWAS) of CII in 312,935 European ancestry UK Biobank participants, we identified 27 loci mapping to 72 genes, including circadian regulators CALCA, DHCR7, KDM5A, HAL, and CRX. Gene-overlap analyses demonstrated shared architecture with CII components, while EPHB1, SERPING1, C12orf74, PLEKHG7, and EEA1 were uniquely associated with CII. A CII polygenic score (CII-PRS) showed phenome-wide associations with type 2 diabetes (T2D), major depressive disorder, and obesity. Genetic correlations linked CII with insomnia, mood symptoms, body mass index (BMI), T2D, coronary artery disease (CAD), and myocardial infarction (MI). Mendelian randomization suggested causal effects of CII on T2D, mood swings, and MI, and reverse effects of CAD, mood, and MI on CII. This work shows that circadian imbalance is a polygenic trait connecting sleep-related biology to metabolic, cardiovascular and mood health outcomes.
Кратко
This work shows that circadian imbalance is a polygenic trait connecting sleep-related biology to metabolic, cardiovascular and mood health outcomes.
Полный текст
Introduction
The human circadian system is an internal timekeeping network, with the suprachiasmatic nucleus (SCN) acting as the master pacemaker
Epidemiological studies have linked circadian misalignment to a wide array of adverse health outcomes, including impairments in sleep, metabolism, mental health, cognition, cardiovascular functions and immune response
Multiple genetic studies reveal significant overlap between the five components of the CII. Evening chronotype has been found to be genetically associated with increased risk for psychiatric disorders such as depression, anxiety, bipolar disorder, and schizophrenia, mainly mediated by difficulty awakening and circadian misalignment
However, to the best of our knowledge, no study has analyzed the combined genetic effects of all five CII components within a single integrative framework. Here we report a large-scale genome-wide association study (GWAS) of CII using a European discovery cohort of N = 312,935 UK Biobank participants with replication in an independent population of N = 11,344 European ancestry women from the Nurses’ Health Study II (NHS2)
Results
Genome-wide association studies in the UKB
The Manhattan plot (
Functional consequences of genes
Functional annotation of all SNPs in linkage disequilibrium (LD; r2 ≥ 0.6) identified 27 genomic risk loci (
When analyzing genetic overlap between the CII and its components we observed 29 genes that determined both CII and low vitamin D levels, 10 genes that determined both CII and high neuroticism, 5 common genes for CII and eveningness, and 4 common genes between CII and short or long sleep duration (
Tissue expression analysis performed in MAGMA indicated expression in brain cerebellum, frontal cortex and nucleus accumbens (Supplementary Fig. 1) and gene set analysis indicated significant curated gene sets M39352 (vitamin D metabolism; adjusted p-value 0.0326) and M1493 (Nikolsky breast cancer 11q12_q14 amplicon; adjusted p-value 0.0492; Supplementary Table 4). Among GWAS catalog recognized gene sets, some were associated with CII components (Vitamin D levels and insufficiency, neuroticism, sleep duration and chronotype; Supplementary Table 4). In addition, CII was associated with GWAS catalog gene sets linked to psychiatric and neurodevelopmental disorders, cardiometabolic traits, immune-related conditions, behavioral tendencies, and lifestyle factors (Supplementary Table 4).
Phenotypic and genetic correlations between the CII and its components
To further evaluate the validity of the CII, we examined its phenotypic and genetic correlations with its individual components - and among the individual components themselves - within our study sample. Phenotypically, CII showed a consistent moderate to strong positive correlation with each of the component traits (
Genetic-variant—shift work GWAS results
To test whether associations of genetic variants with CII differ by shift-work status we conducted a genetic-variant-by-shiftwork GWAS. Using the default parameters of FUMA we identified 91 GW-significant (p < 5×10− 8) interaction lead variants (Table 15). After conducting separate shift-work stratified GWASs (Supplementary Fig. 2), we checked effects of interaction lead variants among shift workers (N = 28,976) and no-shift workers (N = 154,262) (Supplementary Table 5). Since the shift workers (SW) subgroup contained substantially fewer individuals than the no shift workers (noSW), SW-specific effect estimates had larger standard errors, reducing statistical power to detect the interaction. Across the 91 lead variants, interaction p-values were mostly similar to those in the noSW stratum (Supplementary Fig. 3), and the estimated differences in effects were small with wide confidence intervals in SW (Supplementary Table 5, Supplementary Fig. 4), suggesting that the lack of interaction significance largely reflects limited precision in the smaller SW stratum rather than strong evidence against effect modification. Variants with both opposite effect size directions and heterogeneity p-values that remain significant after multiple-testing correction (α = 0.05/91 = 5.5×10−4), were considered as indicating SW-specific effect modification. Of the 91 lead variants, two showed significant heterogeneity— rs79799991 (5:141914736:A:T; Pdelta=1.9×10−4; Pint=9.6×10−6) close to FGF1 gene and rs7161954 (15:78118955:G:T; Pdelta=2.4×10−4; Pint=1.9×10−7) close to LINGO1 gene —both indicating smaller effects in SW than noSW (Supplementary Table 5).
Sex differences in genetic associations
We conducted genetic-variant-by-sex and sex-specific GWAS analyses for the CII in our study sample to investigate potential modification of genetic variants effects by sex (Supplementary Fig. 5). Compared to the overall sample analysis, of the five CII-specific genes (
Using the default FUMA parameters we obtained 65 significant lead variants for SNP-sex interaction (Supplementary Table 6). Based on conducted sex-stratified GWASs we compared effect sizes for the identified genetic-variant-by-sex interaction lead SNPs between men (N = 148,473) and women (N = 164,462; Supplementary Table 7, Supplementary Fig. 6) and their p-values (Supplementary Fig. 7). There were nine variants (Supplementary Table 8) with opposite effects directions in men and women and heterogeneity p-values that remain significant after multiple-testing correction (α = 0.05/65 = 7.7×10−4), which we considered as indicating significant effect modification by sex. These nine variants are located near genes linked to processes such as lipid and glucose metabolism (PID1), blood clotting and vessel repair (SERPINE1), inflammation (ALOX5AP), and cell growth signaling (NXN) (Supplementary Table 9). Tissue expression analysis (MAGMA) for SNP×sex interaction analysis did not identify any differentially expressed genes, whereas the gene-set analysis revealed trait enrichments that were not detected in the overall GWAS, such as blood pressure interaction tests with alcohol and smoking, body-shape indices, neurobehavioral and reproductive traits (loneliness, risk tolerance, cognitive function, age at first sex, number of partners), brain structure (pallidum volume, brain morphology, chronic back pain), ocular and vascular phenotypes (pathological myopia, retinal caliber), autoimmune disease (systemic sclerosis, systemic lupus), bone measures and a locus at chr6p21 (Supplementary Table 10). In contrast, traits overlapping between SNP×sex and the overall GWAS clustered around vitamin D biology and neuroticism-related phenotypes (neuroticism, mood instability, depression, SSRI-remission), with additional overlaps for refractive error, heart-rate response to exercise, risk-taking, chromosomal aberration burden, diastolic blood pressure×smoking status and loci at chr8p23, chr1q21, and chr11p15. These patterns indicate strong sex-dependent genetic enrichment for blood pressure interaction with lifestyle and body-shape traits, whereas vitamin D and neuroticism signals are largely shared across sexes (Supplementary Table 10).
PheWAS of the CII-PRS in a clinical and population-based biobanks
We further searched for CII-associated phenotypes by conducting two PheWAS of a CII polygenic risk score (PRS) generated with PRS-CS
In the AoU cohort, there were 7 diseases phenotypes significantly associated (pAoU<5.36E-05) with the CII-PRS (Supplementary Table 14,
CII-associated phenotypes and genetic correlation analysis
We created an integrated list of (disease) phenotypes of interest, including GWAS-catalog traits and gene sets identified by FUMA (Supplementary Table 4), as well as disease phenotypes significantly associated with CII-PRS in the MGBB or AoU PheWAS analyses (Supplementary Table 11, Supplementary Table 14). We excluded CII components and phenotypes with low heritability or case numbers. The final list contained sixteen traits and disease phenotypes (Supplementary Table 15) for which we used publicly available UKB-GWAS-based summary statistics to estimate their genetic correlation with the CII. Significance level for genetic correlation was corrected for multiple testing (16 diseases plus 5 components: p < 0.05/21 = 0.0023). Significant positive genetic correlations were observed between CII and self-reported insomnia (rg=0.62, p = 1.22E-156), MDD (rg=0.45, p = 5.99E-16), mood swings (rg=0.52, p = 2.00E-92), myocardial infarction (MI; rg=0.25, p = 2.74E-20), coronary artery disease (CAD; rg=0.2, p = 6.34E-10), T2D (rg=0.2, p = 5.87E-23), BMI (rg=0.13, p = 2.85E-06), BMI-adjusted waist-to-hip-ratio (rg=0.16, p = 3.39E-06) and (borderline) for cancer (rg=0.25, p = 0.002). Furthermore, CII was significantly negatively correlated with genetically instrumented number of cigarettes smoked per day (rg=−0.35, p = 4.70E-30;
Two sample Mendelian randomization
We considered the ten traits which showed significant genetic correlation with CII (insomnia, mood swings, MDD, cancer, MI, T2D, CAD, WHRadjBMI, BMI, no. cigarettes) and examined potential causal effects for their associations with the CII. Summary statistics for these phenotypes were obtained from FinnGen
In reverse direction, genetically predicted MI (β = 0.01; SE = 0.005, p = 0.034), CAD (β = 0.02; SE = 0.005; p = 0.002) and mood (β = 0.13; SE = 0.019; p = 8.32E-12) were causally associated with CII. In the mood-to-CII analysis, 21 index variants were identified, 2 were removed as HEIDI outliers, and 19 instruments remained, with multi-SNP HEIDI-outlier P = 0.145. In MI-to-CII, 70 index variants were identified, 4 were removed as HEIDI outliers, and 66 instruments remained, with multi-SNP HEIDI-outlier P = 0.167. For CAD-to-CII, clumping identified 132 index variants, 7 were removed as HEIDI outliers, and 125 instruments remained for GSMR (multi-SNP HEIDI-outlier P = 0.158; Supplementary Table 20).
Overall, these results suggest evidence of effects in both directions for mood and MI, while HEIDI-based filtering removed a small subset of variants flagged as pleiotropic and multi-SNP HEIDI-outlier P-values did not generally indicate pervasive pleiotropy across retained instruments.
Replication in the Nurses’ Health Study II
For replication analysis we used 11,351 women data from the NHS2 cohort. Compared to UKB women, nurses in the NHS2 were on average younger (56.2 (8.0) in the UKB vs 55.39(4.40) in NHS2) and had similar average BMI (27.0 (5.1) in the UKB vs 27.34(6.22) in NHS2). In both cohorts, women with higher CII values were more likely to have higher BMI, lower socio-economic status and were more likely to perform shift work (Supplement 4, Tables N2–N3). In our recent study
The analysis of association between the CII and the CKM in the NHS2 indicated increasing CKM risk with higher CII levels and significant increasing trend (ptrend<.0001; Supplement 4, Table N4). Furthermore, similarly as in the UKB, the risk of the CKM increased with the higher CII level and duration of shift work, with significant trends in each of the three CII levels (Low (0–1), middle (2–3), high (4–5); Supplement 4, Tables N5–N7). Interestingly, in the NHS2 this trend was observed already when considering cumulative duration of shift work categorized into never, less than 5 years, 5 or more years of shift work, whereas in the UKB it was only observed under categorization :never, less than 20 years of shift work, 20 or more years of shift work. This can be attributed to considerably larger sample of nurses performing shift work and good quality assessment of this phenotype in the NHS2. In summary, these phenotypic replication analyses confirm that the CII derived in the NHS2 shows characteristics and associations patterns similar to the ones observed in the UKB.
Since the NHS2 is a women-only cohort, GWAS replication was performed for lead SNPs obtained from UKB-women only GWAS (N = 164,462). Of the 104 genome-wide significant (GWS) lead variants among UKB women, 84 were present in the NHS2 after QC (Supplementary Table 21), and ten of them demonstrated nominal significance in the NHS2 (p < 0.044; Supplementary Table 22). Four of them (rs11917139 (ZBTB20), rs330905 (PPP1R3B), rs35358081 (OR1J1), rs10848644 (SLC6A13)) also showed consistent effect directions in both discovery and replication cohorts.
We further analyzed predictive properties of the CII polygenic risk score (PRS) generated with PRS-CS
Discussion
In this study, we investigated the genetic architecture of a newly developed Circadian Imbalance Index, designed to enhance understanding of circadian phenotypes and their common genetic basis.
In the GWAS analysis of the CII we identified 27 genomic risk loci and 72 associated genes, including five previously known to be involved in circadian regulation (CALCA, DHCR7, KDM5A, HAL, and CRX). The strongest association was observed near genes associated with Vitamin D binding protein and 25-hydroxyvitamin D (GC, CYP2R1), metabolic and endocrine pathways (PDE3B, PSMA1, RRAS2)
Further, we found that five other genes—EPHB1, SERPING1, C12orf74, PLEKHG7, and EEA1—were significantly associated with the CII but not with any of its individual components. Of them, the PLEKHG7 shows indirect evidence of association with circadian disruption through a related gene in the same family - PLEKHG6 - which has been found to undergo epigenetic changes in response to circadian disruption, particularly in the context of maternal night shift work
We further identified 65 variants with sex-specific associations, nine of which showed opposite effects in men and women, implicating pathways related to metabolism, vascular biology, inflammation, and cell signaling. These results suggest that biological sex not only influences the prevalence of circadian disruption but also modifies the impact of underlying genetic variants. In addition, we observed 91 lead variants with evidence of interaction with shift-work status, a key environmental determinant of circadian disruption. Although statistical power was limited in the smaller shift work subgroup, two variants— rs79799991(FGF1) and rs7161954 (LINGO1)—showed heterogeneity, with smaller effects among shift workers compared to non–shift workers. FGF1 is key in metabolic regulation and disease. In the pancreas, disruption of FGF1/FGFR1 signaling leads to impaired insulin processing, contributing to diabetes-like phenotypes
Across two independent resources—a hospital-based biobank (MGBB) and a population cohort (AoU)—the CII-PRS showed phenome-wide associations with neuropsychiatric, metabolic, and cardiometabolic domains. In MGBB, the strongest associations were to endocrine/metabolic diseases (T2D, hypertensive complications) and mental disorders (MDD, mood disorders, depression), In AoU, anxiety-spectrum diagnoses, peripheral nerve disorders, musculoskeletal symptoms, acute sinusitis, and upper respiratory infections were observed. Sex-stratified PheWAS in MGBB further supports domain-specific heterogeneity: women showed associations with obesity, mood and anxiety disorders, and skin cancer, whereas men exhibited ischemic phenotypes (angina pectoris, ischemic heart disease). Such differences might indicate sex-specific circadian genetic risk and hormone-mediated regulation of inflammation.
Importantly, the PheWAS results line up with our genetic correlation and Mendelian randomization results. Significant CII-PRS associations with mood and metabolic traits mirror positive genetic correlation of the CII with MDD, mood swings, BMI, WHR, T2D, CAD, MI, and a strong genetic correlation with insomnia. Mendelian randomization results suggest positive causal associations between the CII and T2D, mood disorders and MI, while reverse MR indicates that genetic liability to CAD, MI and mood disorder can increase CII—consistent with feedback between circadian disruption, inflammation, and cardiometabolic disease. This agreement across methods supports causality over spurious associations due to confounding.
To our knowledge, this study is the first to date to present a genetic analysis of a composite measure of circadian disruption. We proposed the Circadian Imbalance Index (CII), a novel metric that integrates circadian, sleep-related, light-exposure-related, behavioral, and psychological domains. By capturing multiple dimensions of circadian regulation and misalignment, the CII offers a more holistic representation of the underlying biology. This integrative approach has the potential to enhance our understanding of the shared genetic architecture and biological mechanisms governing these interrelated phenotypes and their complex interactions. Our results reflect the pleiotropic nature of circadian imbalance and its potential involvement in diverse biological pathways influencing both mental and physical health and provide genetic evidence reinforcing the relevance of circadian regulation as a potential target for prevention and intervention strategies across multiple domains.
Our study has several limitations that should be acknowledged. First, the analysis was restricted to participants of European ancestry. While this enhances genetic homogeneity and reduces confounding due to population stratification, it also limits the generalizability of our findings to other ancestral groups. Future studies involving more diverse populations are needed to validate and extend our results. Second, except for serum vitamin D levels, the components of the CII were derived from self-reported data, which may be subject to recall bias and misclassification, especially for behavioral measures like caffein consumption or sleep duration. This could potentially attenuate the observed associations. Third, for the purpose of constructing the CII, all component phenotypes were dichotomized, which may have resulted in a loss of information and reduction in statistical power. Fourth, the number of shift workers in our sample was relatively modest and did not allow robust subgroup analyses stratified by both sex and shift-work status, however our findings nevertheless point to loci of interest that warrant further study in larger cohorts. Similarly, our replication cohort was limited to women (N = 11,344), which reduced statistical power to detect interaction effects, and thus we were unable to replicate the shift-work effect modification signals. Nevertheless, of the 104 genome-wide significant lead variants identified in the women-specific UK Biobank GWAS, 84 were represented in the NHS2 replication cohort, and four attained nominal significance, supporting partial consistency and providing a foundation for validation in more highly-powered studies. Furthermore, electronic health records-based codes used in PheWAS aggregate heterogeneous diagnoses and are sensitive to coding bias and biobank-specific recruitment strategies may influence detectability.
In conclusion, our findings demonstrate the value of the CII as a composite genetic metric that captures the multifaceted nature of circadian disruption. We identified novel loci and pathways—including signals modified by sex and shift-work status—underscoring the importance of biological and environmental context in shaping genetic risk. The overlap of CII-associated variants with sleep, psychiatric, metabolic, and cardiovascular traits highlights the broad relevance of circadian imbalance to human health, and our post-GWAS analyses indicate robust associations with T2D, MI and mood disorder. These findings are closely related to the concept of circadian syndrome
Clinically, the CII could support risk stratification and earlier referral for sleep and mental-health evaluation and inform screening for metabolic and cardiovascular complications, particularly in shift-working populations. Further studies are needed to validate predictive performance across diverse cohorts and to assess its clinical utility.
Methods
UK Biobank
The genetic and phenotypic data for this study were obtained from the UK Biobank
Circadian Imbalance Index definition and study population
In our recent study
Chronotype reflects individual differences in circadian alignment, with morningness (early type) being associated with better alignment
Caffeine directly delays the human circadian clock
Circulating levels of vitamin D serve as a proxy for recent sunlight exposure
Participants not meeting the criteria for a given trait received a score of zero for that component. The CII was calculated as the sum of points across these five domains, yielding a total score ranging from 0 to 5, with higher scores reflecting greater likelihood of circadian imbalance. Further methodological details are provided in Zhang et al
From the 409,460 UKB participants classified as Europeans using genetically inferred ancestry grouping, as defined by the Pan-UK Biobank
Genome wide association studies in the UKB
Overall GWAS
We performed six genome wide association studies (GWASs) - of the five CII components defined as binary phenotypes and the CII itself - with regenie v3.4.1
Genetic correlation analysis
To evaluate the extent to which the CII captures information that is shared with or distinct from its underlying components, we estimated both phenotypic and genetic correlations between the CII and each of its five component traits. Genetic correlations were calculated using LDSC
Genome-wide SNP × Shift Work Interaction Analysis
Shift work status was defined among genotyped European ancestry UKB participants with available CII components (N=312,935) who replied to the baseline questionnaire (2006–2010) and answered the question if their primary job involved shift work (N=183,238), defined as work schedules outside typical daytime hours (9am-5pm). Those who answered with ‘sometimes’, ‘usually’ or ‘always’ (N=28,976) were categorized as ‘shift workers’, whereas those who answered ‘never/rarely’ (N=154,262) were categorized as ‘no shift workers’. Participants who answered with ‘prefer not to answer’ and ‘do not know’ were excluded from this analysis.
To evaluate whether the genetic effects on the CII differ according to the shift work status, we further conducted a genome-wide gene–environment (GxE) interaction analysis. Specifically, we extended the GWAS model to include an interaction term between each SNP and shift work status (SNP × shift work), while adjusting for the same set of covariates as in the primary analysis. For loci reaching genome-wide significance (p < 5 × 10−8), we further characterized associations by performing stratified GWAS in shift workers and non-shift workers separately, thereby estimating group-specific effect sizes and directions. In addition, we quantified cross-stratum heterogeneity using a Wald test of the difference in effects and also examined the SNP×SW interaction p-values from the joint model.
Replication in the Nurses’ Health Study II
For the aims of replication, we constructed the CII in the women-only, independent study cohort – the Nurses’ Health Study II (NHS2)
Since our replication cohort contained only women, we first conducted a genome-wide SNP × sex interaction analysis in the UKB to test whether the genetic effects on the CII differed between men and women. The interaction model included the main effects of the SNP and sex, as well as their product term (SNP × sex) to capture sex-specific modifications of genetic associations. Association testing was carried out genome-wide, and statistical significance of sex-interaction effects was determined based on the p-value of the interaction coefficient. Genome-wide significance was defined at the conventional threshold of p < 5 × 10−8. For loci reaching genome-wide significance, we further characterized the associations by conducting follow-up stratified GWASs in men (N=148,473) and women (N= 164,462) separately. We further quantified cross-stratum heterogeneity using a Wald test of the difference in effects and examined the SNP×sex interaction p-values from the joint model
Replication of CII GWAS in the NHS2 was performed with PLINK 1.9 by assessing effect estimates and p-values from an association test with the CII for variants which attained significance in the UKB-women GWAS. Linear regression models were adjusted for age and 10 first principal components of ancestry.
PheWAS in a clinical and population-based biobanks
Further we aimed to determine which external traits and disease phenotypes show association with the CII. We constructed polygenic risk score (PRS) for the CII, overall and stratified by genetic sex, using the PRS-CS
Specification of CII associated phenotypes
In order to identify phenotypes associated with CII, we considered (i) GWAS catalog traits and phenotypes linked to gene sets identified in FUMA results and (ii) disease phenotypes identified as significantly associated with the CII-PRS in our PheWAS analyses. For these predefined traits we used UKB-based GWAS summary statistics and calculated their genetic correlation with the CII using LDSC. Those that showed a significant genetic correlation with CII were used in further causality verification.
Two sample Mendelian Randomization
To check causality and direction of associations between CII and the predefined list of phenotypes as described above, we performed bidirectional two-sample Mendelian randomization using the generalized summary-data–based Mendelian randomization (GSMR) framework implemented in GCTA
Supplementary Files
This is a list of supplementary files associated with this preprint. Click to download.
Рисунки
Manhattan plot (A) and quantile-quantile plot of expected versus observed log10P values (B) from of the genome-wide association study of the CII.
CII and its 5 components:
Results of the PheWAS analysis of the PRS-CS polygenic risk score for the CII (CII-PRS) among European ancestry
Genetic correlations between the CII and (disease) phenotypes of interest.
Таблицы
Table 1
Baseline characteristics of 312,935 genotyped, European ancestry UK Biobank participants with available CII assessments, by CII value and CII components.
| CII value | ||||||||
|---|---|---|---|---|---|---|---|---|
| 0 | 1 | 2 | 3 | 4 | 5 | Total | ||
|
| 29,538 (9.4) | 87,028 (27.8) | 103,761 (33.2) | 65,257 (20.9) | 23,254 (7.4) | 4,097 (1.3) | 312,935 | |
|
| 58.1 ± 7.8 | 57.2 ± 8.0 | 56.5 ± 8.0 | 55.8 ± 8.1 | 55.2 ± 8.1 | 54.2 ± 8.1 | 56.6 ± 8.1 | |
|
| 15,810 (53.5) | 43,253 (49.7) | 48,700 (46.9) | 29,271 (44.9) | 9,781 (42.1) | 1,658 (40.5) | 148,473 (47.4) | |
|
| 26.4 ± 3.9 | 26.9 ± 4.3 | 27.4 ± 4.7 | 27.9 ± 5.1 | 28.5 ± 5.5 | 29.2 ± 5.9 | 27.4 ± 4.7 | |
|
|
| 4,325 (14.7) | 13,504 (15.5) | 18,301 (17.7) | 13,593 (20.9) | 5,979 (25.8) | 1,354 (33.3) | 5,7056 (18.3) |
|
| 6,602 (22.4) | 19,224 (22.1) | 22,747 (22.0) | 14,478 (22.3) | 5,065 (21.9) | 861 (21.2) | 68,977 (22.1) | |
|
| 7,213 (24.4) | 21,001 (24.2) | 24,690 (23.8) | 15,105 (23.2) | 5,020 (21.7) | 774 (19.0) | 73,803 (23.6) | |
|
| 6,066 (20.6) | 17,882 (20.6) | 20,307 (19.6) | 11,522 (17.7) | 3,446 (14.9) | 487 (12.0) | 59,710 (19.1) | |
|
| 1,952 (6.6) | 5,221 (6.0) | 5,458 (5.3) | 2631 (4.0) | 750(3.2) | 87(2.1) | 16,099 (5.2) | |
|
| 3,352 (11.4) | 10,070 (11.6) | 12,040 (11.6) | 7,730 (11.9) | 2,879 (12.4) | 504 (12.4) | 36,575 (11.7) | |
|
|
| 10,544 (35.7) | 30,398 (34.9) | 34,399 (33.2) | 19,617 (30.1) | 6,266 (26.9) | 980 (23.9) | 102,204 (32.7) |
|
| 14,788 (50.1) | 43,294 (49.7) | 52,267 (50.4) | 33,678 (51.6) | 12,073 (51.9) | 2,168 (52.9) | 158,268 (50.6) | |
|
| 4,206 (14.2) | 13,336 (15.3) | 17,095 (16.5) | 11,962 (18.3) | 4,915 (21.1) | 949 (23.2) | 52,463 (16.8) | |
|
| 2,020 (13.0) | 6,938 (13.8) | 9,628 (15.4) | 7,009 (17.8) | 2,821 (21.0) | 560 (26.3) | 28,976 (9.3) | |
| CII components | ||||||||
| Evening Person | Short Or Long Sleep | High Neuroticism | No Or High Caffeine | Low Vit D | Total | |||
|
| 105,673 (33.8) | 96,903 (31.0) | 74,742 (23.9) | 161,085 (51.5) | 165,419 (52.9) | 312,935 | ||
|
| 55.7 ± 8.3 | 57.1 ± 7.9 | 55.3 ± 8.0 | 56.2 ± 8.1 | 56.0 ± 8.1 | 56.6 ± 8.1 | ||
|
| 49,943 (47.3) | 46,105 (47.6) | 28,978 (38.8) | 72,382 (44.9) | 78,472 (47.4) | 148,473 (47.4) | ||
|
| 27.6 ± 4.8 | 28.0 ±5.1 | 27.4 ±5.1 | 27.5 ± 4.9 | 28.0 ± 5.1 | 27.4 (4.7) | ||
|
|
| 19,374 (18.4) | 22,205 (23.0) | 16,942 (22.7) | 31,267 (19.5) | 31,783 (19.3) | 57,056 (18.3) | |
|
| 23,142 (22.0) | 21,574 (22.3) | 16,478 (22.1) | 35,864 (22.3) | 35,659 (21.6) | 68,977 (22.1) | ||
|
| 25,258 (24.0) | 20,912 (21.7) | 16,888 (22.7) | 37,342 (23.2) | 39,246 (23.8) | 73,803 (23.6) | ||
|
| 20,642 (19.6) | 15,169 (15.7) | 12,375 (16.6) | 29,217 (18.2) | 31,878 (19.3) | 59,710 (19.1) | ||
| CII value | ||||||||
| 0 | 1 | 2 | 3 | 4 | 5 | Total | ||
|
| 5,507 (5.2) | 3,945 (4.1) | 2,631 (3.5) | 7,147 (4.4) | 8,235 (5.0) | 16,099 (5.2) | ||
|
| 11,505 (10.9) | 12,746 (13.2) | 9,170 (12.3) | 19,818 (12.3) | 18,137 (11.0) | 36,575 (11.7) | ||
|
|
| 35,511 (33.6) | 26,268 (27.1) | 21,327 (28.5) | 47,558 (29.5) | 57,347 (34.7) | 102,204 (32.7) | |
|
| 54,562 (51.6) | 49,737 (51.3) | 38,740 (51.8) | 83,752 (52.0) | 81,203 (49.1) | 158,268 (50.6) | ||
|
| 15,600 (14.8) | 20,898 (21.6) | 14,675 (19.6) | 29,775 (18.5) | 26,869 (16.2) | 52,463 (16.8) | ||
| 11,082 (17.4) | 10,515 (19.9) | 7,504 (17.3) | 15,835 (16.6) | 16,369 (16.0) | 28,976 (9.3) | |||
Table 2
Genomic risk loci resulting from FUMA analysis based on the GWAS of the CII among 312,935 European ancestry UK Biobank participants.
| Genomic Locus | Variant | Chromosome: position | Nearest gene | Effect allele | Effect size (P) | Standard error | P-value |
|---|---|---|---|---|---|---|---|
| 7 | rs34265662 | 4:72617557 | GC | TA | 0,0793 | 0,0031 | 1,49E-147 |
| 11 | rs117913124 | 11:14900931 | CYP2R1 | A | 0,2192 | 0,0085 | 1,01E-146 |
| 14 | rs3794060 | 11:71187679 | NADSYN1 | T | −0,0434 | 0,0034 | 5,05E-37 |
| 10 | 9:140259068_T_TA | 9:140259068 | EXD3 | TA | 0,0301 | 0,0043 | 1,57E-12 |
| 9 | rs73198970 | 8:11040216 | XKR6 | C | 0,0187 | 0,0028 | 3,47E-11 |
| 12 | 11:57522200_CCCCT_C | 11:57522200 | TMX2-CTNND1:RP11-691N7.6:CTNND1 | C | 0,0196 | 0,0030 | 6,42E-11 |
| 22 | rs567979837 | 13:60753105 | RNY4P28 | CT | −0,0185 | 0,0028 | 7,51E-11 |
| 25 | rs1557341 | 18:35127427 | CELF4 | C | −0,0193 | 0,0030 | 9,28E-11 |
| 5 | rs7652808 | 3:85603643 | CADM2 | G | 0,0185 | 0,0029 | 2,12E-10 |
| 21 | rs10859995 | 12:96375682 | HAL | C | 0,0178 | 0,0028 | 3,08E-10 |
| 27 | rs2547244 | 19:48363039 | TPRX2P | G | 0,0231 | 0,0037 | 4,92E-10 |
| 17 | rs6487365 | 12:24066460 | SOX5 | A | 0,0183 | 0,0030 | 9,12E-10 |
| 26 | rs2126786 | 18:53447005 | RP11-397A16.1:RP11-397A16.2 | C | 0,0225 | 0,0037 | 1,01E-09 |
| 19 | 12:39098718_GT_G | 12:39098718 | CPNE8 | G | 0,0171 | 0,0028 | 1,55E-09 |
| 16 | rs10848644 | 12:365289 | SLC6A13:RP11-283I3.4 | T | −0,0167 | 0,0028 | 2,81E-09 |
| 1 | rs61816761 | 1:152285861 | FLG-AS1:FLG | A | −0,0574 | 0,0097 | 3,80E-09 |
| 8 | rs2979241 | 8:8303353 | CTA-398F10.2 | C | −0,0162 | 0,0028 | 7,34E-09 |
| 3 | rs11563179 | 2:51693002 | AC007682.1 | C | 0,0222 | 0,0039 | 9,43E-09 |
| 2 | rs2279681 | 1:201861016 | SHISA4 | G | −0,0168 | 0,0029 | 1,02E-08 |
| 20 | rs139923919 | 12:93222395 | EEA1 | CAT | −0,0176 | 0,0031 | 1,04E-08 |
| 13 | rs509533 | 11:66070575 | TMEM151A | C | 0,0159 | 0,0028 | 1,68E-08 |
| 23 | rs16661 | 14:75128316 | AREL1 | C | 0,0165 | 0,0030 | 2,74E-08 |
| 18 | rs9668760 | 12:34611172 | RP13-7D7.1 | G | −0,0157 | 0,0028 | 2,98E-08 |
| 24 | rs62007299 | 15:77711719 | PEAK1 | A | 0,0169 | 0,0031 | 3,55E-08 |
| 4 | rs7625384 | 3:18774357:G:T | AC144521.1 | T | 0,0170 | 0,0031 | 3,89E-08 |
| 6 | rs4082244 | 3:134729537:C:G | EPHB1 | G | −0,0160 | 0,0029 | 4,79E-08 |
| 15 | rs10750539 | 11:133548873:A:G | RP11-448P19.1 | A | 0,0160 | 0,0029 | 4,81E-08 |
Table 3
Circadian rhythm related genes resulting from FUMA analysis based on the GWAS of the CII among 312,935 European ancestry UK Biobank participants.
| Ensg | Symbol | Chr | Strand | MsigDB Label | PLI | Min GWAS p | Ind Sig Snps | GL |
|---|---|---|---|---|---|---|---|---|
| ENSG00000110680 | CALCA | 11 | −1 | WP CLOCKCONTROLLED AUTOPHAGY IN BONE METABOLISM | 0.0014 | 4.8730e-25 | 11:14992795_AGGAGCCCACAGACCTT_A; rs61878675 | 11 |
| ENSG00000172893 | DHCR7 | 11 | −1 | UEDA PERIFERAL CLOCK | 5.0427e-08 | 6.1235e-37 | rs12793607, rs1540129, rs3794060, rs1790349, rs369124946, 11:71203933_AT_A, rs181766110, rs139168803, rs35708376, rs760165576 | 14 |
| ENSG00000073614 | KDM5A | 12 | −1 | WP CIRCADIAN RHYTHM GENES | 0.99999 | 6.1331e-07 | rs10848644 | 16 |
| ENSG00000084110 | HAL | 12 | −1 | UEDA PERIFERAL CLOCK | 5.9087e-17 | 3.0841e-10 | rs10859995 | 21 |
| ENSG00000105392 | CRX | 19 | 1 | WP CIRCADIAN RHYTHM GENES | 0.6237 | 4.7685e-08 | rs2547244 | 27 |
Table 4
Genes significantly associated with the CII but not with any of its individual components, obtained from FUMA analysis based on the GWAS of the CII among 312,935 European ancestry UK Biobank participants together with effect sizes (β), standard errors (se) and p-values (Ind Sig SNP p) for the corresponding independent significant SNPS in an overall analysis (GWAS overall) and among N = 164,462 European ancestry UK Biobank women (GWAS in women).
| GWAS overall | GWAS in women | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| Ensg | GL | Symbol | Chr | PLI | Ind Sig Snps | Ind Sig SNP p | β | se | Ind Sig SNP p | β | se |
| ENSG00000154928 | 6 | EPHB1 | 3 | 9.98E-01 | rs4082244 | 4.79E-08 | −0.0160 | 0.0029 | 1.47E-07 | −0.0303 | 0.0058 |
| ENSG00000149131 | 12 | SERPING1 | 11 | 9.73E-01 | rs1647396 | 2.46E-07 | 0.0153 | 0.0028 | - | - | - |
| ENSG00000214215 | 20 | C12orf74 | 12 | 5.22E-04 | rs139923919 | ||||||
| ENSG00000187510 | 20 | PLEKHG7 | 12 | 3.68E-11 | rs139923919 | ||||||
| ENSG00000102189 | 20 | EEA1 | 12 | 6.97E-01 | rs139923919 | ||||||
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