Associations between vitamin D and autoimmune diseases: Mendelian randomization analysis.
Study Design
- Çalışma Türü
- Other
- Örneklem Büyüklüğü
- 332984
- Popülasyon
- UK Biobank participants (332,984)
- Müdahale
- Associations between vitamin D and autoimmune diseases: Mendelian randomization analysis. Vitamin D (25OHD, genetically predicted)
- Karşılaştırıcı
- Genetic instrument comparison
- Birincil Sonuç
- Autoimmune disease risk
- Etki Yönü
- Positive
- Yanlılık Riski
- Moderate
Abstract
OBJECTIVE: The VITAL trial of vitamin D supplementation suggested a possible protective effect for autoimmune diseases but uncertainties remain. We investigated potential causal effects of vitamin D on composite and individual autoimmune diseases using Mendelian randomization. METHODS: We used data from 332,984 participants of the UK Biobank of whom 23,089 had at least one autoimmune disease defined using ICD code and/or self-report. Diseases were further considered in mechanistic subgroups driven by "autoimmunity" (n = 12,774) or "autoinflammation" (n = 11,164), then individually. We selected variants within gene regions implicated in vitamin D biology to generate a weighted genetic score. We performed population-wide analysis using the ratio method, then examined non-linear effects across five quantiles based on 25-hydroxycholecalciferol levels. RESULTS: Genetically-predicted vitamin D was associated with lower risk of diseases in the autoinflammation group (OR 0.95 per 10 ng/ml increase in 25-hydroxycholecalciferol; 95%CI 0.91-0.99; p = 0.03) but not the autoimmunity group (OR 0.99; 95%CI 0.95-1.03; p = 0.64) or combined. When considering individual diseases, genetically-predicted vitamin D was associated with lower risk of psoriasis (OR 0.91; 95%CI 0.85-0.97; p = 0.005), the most common disease in the autoinflammation group, and suggestively with systemic lupus erythematosus (OR 0.84; 95%CI 0.69-1.02; p = 0.08); results were replicated using data from independent studies. We found no evidence for a plausible non-linear relationship between vitamin D and any outcome. CONCLUSIONS: We found genetic evidence to support a causal link between 25-hydroxycholecalciferol concentrations and psoriasis and systemic lupus erythematosus. These results have implications for potential disease prevention strategies, and the interpretation and design of vitamin D supplementation trials.
Kısaca
Genetic evidence is found to support a causal link between 25-hydroxycholecalciferol concentrations and psoriasis and systemic lupus erythematosus and the interpretation and design of vitamin D supplementation trials.
Full Text
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Associations between vitamin D and autoimmune diseases: Mendelian randomization analysis
Abstract
Objective—The VITAL trial of vitamin D supplementation suggested a possible protective effect for autoimmune diseases but uncertainties remain. We investigated potential causal effects of vitamin D on composite and individual autoimmune diseases using Mendelian randomization.
Methods—We used data from 332,984 participants of the UK Biobank of whom 23,089 had at least one autoimmune disease defined using ICD code and/or self-report. Diseases were further considered in mechanistic subgroups driven by “autoimmunity” (n=12,774) or “autoinflammation” (n=11,164), then individually. We selected variants within gene regions implicated in vitamin D biology to generate a weighted genetic score. We performed populationwide analysis using the ratio method, then examined non-linear effects across five quantiles based on 25-hydroxycholecalciferol levels.
Results—Genetically-predicted vitamin D was associated with lower risk of diseases in the autoinflammation group (OR 0.95 per 10ng/ml increase in 25-hydroxycholecalciferol; 95%CI 0.91-0.99; p=0.03) but not the autoimmunity group (OR 0.99; 95%CI 0.95-1.03; p=0.64) or
This work is licensed under a CC BY 4.0 International license.For the purpose of open access, the author has applied a Creative Commons Attribution (CC BY) licence to any Author Accepted Manuscript version arising from this submission https:// creativecommons.org/licenses/by/4.0/.
Correspondence to: Stephen Burgess. Correspondence to: Dr Stephen Burgess, MRC Biostatistics Unit, East Forvie Building, University of Cambridge, Cambridge CB2 0SR, UK. [email protected]. Conflict of interest disclosures: The authors declare no conflicts of interest. Author contributions All authors – SZ, AM, EG, HY, SB – have made substantial contributions to all of the following: (1) the conception and design of the study, or acquisition of data, or analysis and interpretation of data, (2) drafting the article or revising it critically for important intellectual content, (3) final approval of the version to be submitted. SZ takes responsibility for the integrity of the work as a whole, from inception to finished article.
Keywords
vitamin D; autoimmune disease; autoinflammation; psoriasis; systemic lupus erythematosus; genetic instrumental variable; UK Biobank
Introduction
Autoimmune diseases are a heterogenous group of conditions that are among the leading causes of life-changing morbidity and even mortality [1,2]. Pharmacological therapies that target the immune system are not always effective and can have prohibitive adverse effects. Vitamin D is highly popular as a complementary and alternative medicine. Enthusiasm for it as a potentially disease modifying agent has largely been driven by pre-clinical studies and a host of observational associations that are at risk of bias from confounding (e.g., factors such as lifestyle and diet that influence both vitamin D levels and disease risk) and reverse causation (e.g., reduced sun exposure and/or dietary absorption due to the autoimmune disease) [3].
Adequately powered randomised control trials of vitamin D supplementation among people with autoimmune diseases are scarce. In the recent VITAL trial [4], vitamin D supplementation (2000 IU/day over a median of 5.3 years) reduced risk of autoimmune diseases as a composite outcome (hazard ratio 0.78, 95% confidence interval 0.61-0.99, P=0.05). However, uncertainties remain in part due to a relatively small number of events (n=278 among 25,871 participants), possibly because the mean age of the trial population (67 years) is older than the peak incidence age for some autoimmune diseases. The trial was not powered to examine individual autoimmune diseases, which is important since any biologic effects of vitamin D on the immune system is unlikely to be shared across pathologically diverse conditions. VITAL was also not powered to examine whether risk reduction differed according to baseline vitamin D, which is important to assess potential threshold or non-linear effects of intervention.
Genetic instrumental variable designs, also known as Mendelian randomization (MR), can help with these challenges. Since genetic variants are randomly allocated at conception, MR is typically more robust against confounding and reverse causation compared to traditional observational designs. Large population level genetic data can power subgroup analyses of pathologically related conditions, while recent methodologic developments can help examine non-linear effects of vitamin D interventions. We conducted both population-wide
Methods
Study populations and outcomes We performed population-wide and stratified Mendelian randomization analyses in the UK Biobank, a prospective cohort study of around 0.5 million participants aged 40 to 69 years at baseline, recruited between 2006-2010 in the United Kingdom and followed-up for a median of 10.9 years [5]. UK Biobank has approval from the North West Multi-centre Research Ethics Committee and all participants provided written informed consent. The UK Biobank received ethical approval Analyses were restricted to unrelated individuals of European ancestries who passed various quality control steps as previously described [6] and had a valid 25-hydroxycholecalciferol (25(OH)D) measurement.
We considered a predefined list of outcomes based on ICD-9 and -10 codes (from fields 41270, 40001 or 40002) and/or self-reported diagnosis (field 20002); the full list of conditions, sample size and definitions are shown in Supplementary Table 1. The conditions were first studied as a composite of “all autoimmune diseases”, excluding multiple sclerosis (MS) for which prior MR studies have suggested a causal relationship with vitamin D [7]. We then broadly classified diseases in two groups according to a proposed classification method based on shared pathology and clinical phenotype [8]:
- 1) Disease driven by “autoimmunity” (i.e., aberrant dendritic and adaptive immune cell responses leading to breaking of tolerance and immune reactivity towards native antigens [8]): rheumatoid arthritis (RA), systemic lupus erythematosus (SLE), Sjögren’s syndrome, systemic sclerosis, Graves’ disease, Hashimoto’s thyroiditis, Coeliac disease, type 1 diabetes mellitus, primary biliary cholangitis, autoimmune hepatitis, polymyalgia rheumatica (PMR), giant cell arteritis (GCA), polyarteritis nodosa, Henoch-Schönlein purpura, granulomatosis with polyangiitis, eosinophilic granulomatosis with polyangiitis, microscopic polyangiitis, mixed connective tissue disease, antiphospholipid syndrome, dermatomyositis and polymyositis.
- 2) Disease driven by “autoinflammation” (i.e., local factors at sites predisposed to disease lead to innate immune cell activation with resultant target tissue damage [8]): ankylosing spondylitis, psoriatic arthritis, psoriasis, Crohn’s disease, ulcerative colitis, primary sclerosing cholangitis, Behcet’s disease, Takayasu arteritis and Kawasaki disease.
Where mechanisms were less clear, diseases that were male-predominant and/or associated with HLA-B genes were grouped into the “autoinflammation” group [9] and remainder to the “autoimmunity” group. In sensitivity analyses, we limited analyses to diseases with >100 cases and for which the mechanism is better characterised within this classification system (i.e., the first ten in the autoimmunity group and first five in the autoinflammation group). It is possible for individuals to have more than one disease that belong to both groups.
Genetic variants
To minimize potential bias due to horizontal pleiotropy, we considered genetic variants from four gene regions previously shown to be strongly associated with 25(OH)D [10] and implicated in the transport, metabolism, and synthesis of vitamin D – GC, DHCR7,
CYP2R1, and CYP24A1. To maximize the variance explained by the genetic instrument, we created a weighted genetic score from 21 variants associated with 25(OH)D concentrations at each genetic locus selected using a stepwise selection method (Supplementary Table 3). A prior study showed that this genetic risk score was not associated with potential risk factors for autoimmune diseases in UK Biobank, except for BMI, although this association was small [10]. By contrast, a score using variants from across the genome-wide score was strongly associated with other traits that may introduce bias from pleiotropy.
Statistical methods Population-wide analyses were performed by calculating the ratio between the association of the genetic score with the outcome and the association of the score with 25(OH)D concentrations. We performed logistic regression to estimate the associations of the score with the outcomes adjusting for age, sex, assessment centre and 10 genetic principal components of ancestry. MR estimates were scaled to a 10 nmol/L increase in genetically predicted 25(OH)D level.
In non-linear stratified analyses, we divided participants into five quantiles using the doubly ranked method [11]. We firstly divide the population into pre-strata based on the instrument level, and then divide into final strata based on the exposure level within each pre-stratum.
Results
Of 332,984 participants included for analysis, 23,089 had one or more autoimmune diseases. Their mean age was 59 years and 59% were females. The mean 25(OH)D concentration was 49 nmol/L, and similar in both autoimmune disease and control groups (Table 1). 12,774 had at least one disease of the “autoimmunity” group, and 11,164 had at least one disease in the ”autoinflammation” group. There was a higher proportion of females in the autoimmunity than the autoinflammation group (69 vs 47%).
The genetic risk score explained 4.7% of the variance in 25(OH)D concentrations. There was some evidence that genetically predicted 25(OH)D was associated with reduced risk of autoimmune diseases overall, but confidence intervals included the null (OR 0.97 per 10 nmol/L increase in 25(OH)D; 95%CI 0.94, 1.01, p=0.10). This association appears to be predominantly driven by diseases in the autoinflammation group (OR 0.95; 95%CI 0.91, 0.99; p=0.03) (Figure 1). Sensitivity analyses showed similar results when restricted to ten autoimmunity and five autoinflammation diseases with >100 cases and for which disease mechanism is better characterised. Results were also similar after excluding individuals with diseases in both subgroups showed similar estimates.
When diseases (with n>100) were analysed individually, psoriasis (OR 0.91; 95%CI 0.85,
- 0.97; p=0.005), GCA (OR 0.79; 95%CI 0.64, 0.98; p=0.03), PMR (OR 1.12; 95%CI 0.997,
- 1.25; p=0.06) and SLE (OR 0.84; 95%CI 0.69, 1.02; p=0.09) showed some evidence of association with 25(OH)D concentration (Figure 2). Genetically predicted 25(OH)D was not associated with the negative control, osteoarthritis, but was associated with lower risk of the positive control, MS.
Discussion
In this one-sample Mendelian randomisation analysis, we found evidence of a causal link between vitamin D levels and diseases characterised by autoinflammation (i.e., by innate immune dysfunction at local sites), which was driven by the psoriasis as the most prevalent disease in this group. There was no statistical evidence of association between vitamin D and diseases characterised by autoimmunity (i.e., autoreactivity against native antigens predominantly due to adaptive immune dysfunction), although SLE may be one exception. We found no strong evidence for a plausible non-linear relationship between vitamin D and any outcome.
Vitamin D has been associated with numerous health outcomes in observational studies, which could not be replicated in randomised controlled trials [15]. Much of the trial evidence came from the landmark VITAL study, which found no difference between vitamin D supplement and placebo groups for a multitude of outcomes such as cancer and cardiovascular disease events [16], heart failure [17], atrial fibrillation [18], depression [19], body composition [20], falls [21], bone mineral density [22], fractures [23], frailty [24], knee pain [25], and biomarkers of inflammation [26]. However, the vitamin D group did have lower incidence of confirmed autoimmune diseases compared to placebo, but estimates included the null when including additional cases of probable autoimmune disease and/or excluding those with pre-randomisation autoimmune diseases [4]. Analyses of individual diseases (rheumatoid arthritis, polymyalgia rheumatica, psoriasis and a composite of the remainder) were all underpowered. Younger individuals and those with vitamin D deficiency (13%) were underrepresented. Taken together, VITAL provided long awaited randomised evidence, but much uncertainty remained in the context of multiple testing and regarding disease-specific or threshold effects.
Our results help to address these uncertainties. By leveraging much larger sample sizes of autoimmune diseases across the age spectrum, we show that vitamin D’s effect is likely to differ across individual diseases. We found evidence supporting a causal link between 25(OH)D and diseases characterised by autoinflammation but not autoimmunity. Genetic
SSZ is supported by a National Institute for Health Research (NIHR) Academic Clinical Lectureship and works in centres supported by Versus Arthritis (grant number 21173, 21754 and 21755). A.M.M. is funded by the EU/EFPIA Innovative Medicines Initiative Joint Undertaking BigData@Heart grant 116074. SB is supported by the Wellcome Trust (225790/Z/22/Z) the United Kingdom Research and Innovation Medical Research Council (MC_UU_00002/7) and the National Institute for Health Research Cambridge Biomedical Research Centre (NIHR203312). The views expressed are those of the authors and not necessarily those of the National Health Service, the National Institute for Health Research, or the Department of Health and Social Care.
Data Sharing Statement
UK Biobank data are available to all bona fide researchers for use in health-related research that is in the public interest. The application procedure is described at www.ukbiobank.ac.uk.
Figures
Figure 1
Mendelian randomization estimates illustrate the association between genetically predicted 25-hydroxyvitamin D levels and autoimmune disease risk. Genetic instruments derived from genome-wide association studies serve as proxies for long-term vitamin D exposure.
forest_plotFigure 2
Mendelian randomization estimates illustrate the association between genetically predicted 25-hydroxyvitamin D levels and autoimmune disease risk. Genetic instruments derived from genome-wide association studies serve as proxies for long-term vitamin D exposure.
forest_plotFigure 3
Mendelian randomization estimates illustrate the association between genetically predicted 25-hydroxyvitamin D levels and autoimmune disease risk. Genetic instruments derived from genome-wide association studies serve as proxies for long-term vitamin D exposure.
forest_plotFigure 4
Mendelian randomization estimates illustrate the association between genetically predicted 25-hydroxyvitamin D levels and autoimmune disease risk. Genetic instruments derived from genome-wide association studies serve as proxies for long-term vitamin D exposure.
forest_plotFigure 5
Mendelian randomization estimates illustrate the association between genetically predicted 25-hydroxyvitamin D levels and autoimmune disease risk. Genetic instruments derived from genome-wide association studies serve as proxies for long-term vitamin D exposure.
forest_plotFigure 6
Sensitivity analyses for the vitamin D-autoimmune disease relationship are presented using alternative Mendelian randomization methods. These additional analytical approaches help assess the robustness of the primary findings to potential violations of instrumental variable assumptions.
chartFigure 7
Sensitivity analyses for the vitamin D-autoimmune disease relationship are presented using alternative Mendelian randomization methods. These additional analytical approaches help assess the robustness of the primary findings to potential violations of instrumental variable assumptions.
chartFigure 8
Sensitivity analyses for the vitamin D-autoimmune disease relationship are presented using alternative Mendelian randomization methods. These additional analytical approaches help assess the robustness of the primary findings to potential violations of instrumental variable assumptions.
chartFigure 9
Sensitivity analyses for the vitamin D-autoimmune disease relationship are presented using alternative Mendelian randomization methods. These additional analytical approaches help assess the robustness of the primary findings to potential violations of instrumental variable assumptions.
chartFigure 10
Sensitivity analyses for the vitamin D-autoimmune disease relationship are presented using alternative Mendelian randomization methods. These additional analytical approaches help assess the robustness of the primary findings to potential violations of instrumental variable assumptions.
chartFigure 11
Subgroup analyses explore whether the association between genetically predicted vitamin D and autoimmune diseases varies across different disease classifications. The stratified results distinguish between autoimmunity-predominant and autoinflammatory-predominant conditions.
forest_plotFigure 12
Subgroup analyses explore whether the association between genetically predicted vitamin D and autoimmune diseases varies across different disease classifications. The stratified results distinguish between autoimmunity-predominant and autoinflammatory-predominant conditions.
forest_plotFigure 13
Subgroup analyses explore whether the association between genetically predicted vitamin D and autoimmune diseases varies across different disease classifications. The stratified results distinguish between autoimmunity-predominant and autoinflammatory-predominant conditions.
forest_plotFigure 14
Subgroup analyses explore whether the association between genetically predicted vitamin D and autoimmune diseases varies across different disease classifications. The stratified results distinguish between autoimmunity-predominant and autoinflammatory-predominant conditions.
forest_plotFigure 15
Subgroup analyses explore whether the association between genetically predicted vitamin D and autoimmune diseases varies across different disease classifications. The stratified results distinguish between autoimmunity-predominant and autoinflammatory-predominant conditions.
forest_plotFigure 16
Leave-one-out analysis results assess the influence of individual genetic variants on the overall Mendelian randomization estimate for vitamin D and autoimmune disease risk. Sequential removal of each instrument helps identify potentially pleiotropic variants.
chartFigure 17
Leave-one-out analysis results assess the influence of individual genetic variants on the overall Mendelian randomization estimate for vitamin D and autoimmune disease risk. Sequential removal of each instrument helps identify potentially pleiotropic variants.
chartFigure 18
Leave-one-out analysis results assess the influence of individual genetic variants on the overall Mendelian randomization estimate for vitamin D and autoimmune disease risk. Sequential removal of each instrument helps identify potentially pleiotropic variants.
chartFigure 19
Leave-one-out analysis results assess the influence of individual genetic variants on the overall Mendelian randomization estimate for vitamin D and autoimmune disease risk. Sequential removal of each instrument helps identify potentially pleiotropic variants.
chartFigure 20
Leave-one-out analysis results assess the influence of individual genetic variants on the overall Mendelian randomization estimate for vitamin D and autoimmune disease risk. Sequential removal of each instrument helps identify potentially pleiotropic variants.
chartFigure 21
Scatter plots display the relationship between SNP-vitamin D associations and SNP-autoimmune disease associations. The slope of the fitted line represents the causal estimate from inverse-variance weighted Mendelian randomization.
chartFigure 22
Scatter plots display the relationship between SNP-vitamin D associations and SNP-autoimmune disease associations. The slope of the fitted line represents the causal estimate from inverse-variance weighted Mendelian randomization.
chartFigure 23
Genetically predicted vitamin D concentrations are plotted against risk of composite autoimmune diseases, including autoimmunity and autoinflammatory subgroups. The Mendelian randomization analysis uses genetic instruments to assess potential causal relationships between vitamin D levels and autoimmune disease susceptibility.
forest_plotFigure 24
Scatter plots display the relationship between SNP-vitamin D associations and SNP-autoimmune disease associations. The slope of the fitted line represents the causal estimate from inverse-variance weighted Mendelian randomization.
chartFigure 25
Scatter plots display the relationship between SNP-vitamin D associations and SNP-autoimmune disease associations. The slope of the fitted line represents the causal estimate from inverse-variance weighted Mendelian randomization.
chartFigure 26
Individual autoimmune disease outcomes are displayed in relation to genetically predicted vitamin D concentrations. Each disease-specific estimate from the Mendelian randomization analysis allows comparison of vitamin D's potential protective effects across different autoimmune conditions.
forest_plotFigure 27
Supplementary Mendelian randomization results provide additional evidence regarding the potential causal effect of vitamin D status on autoimmune disease susceptibility. Multiple analytical frameworks are employed to triangulate the findings.
chartFigure 28
Supplementary Mendelian randomization results provide additional evidence regarding the potential causal effect of vitamin D status on autoimmune disease susceptibility. Multiple analytical frameworks are employed to triangulate the findings.
chartFigure 29
Supplementary Mendelian randomization results provide additional evidence regarding the potential causal effect of vitamin D status on autoimmune disease susceptibility. Multiple analytical frameworks are employed to triangulate the findings.
chartFigure 30
Supplementary Mendelian randomization results provide additional evidence regarding the potential causal effect of vitamin D status on autoimmune disease susceptibility. Multiple analytical frameworks are employed to triangulate the findings.
chartUsed In Evidence Reviews
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