Genetically Supported Causality Between Micronutrients and Sleep Behaviors: A Two-Sample Mendelian Randomization Study.
Дизайн исследования
- Тип исследования
- Mendelian randomization
- Популяция
- Two-sample MR analysis using GWAS data for 15 micronutrients (copper, calcium, carotene, folate, iron, magnesium, potassium, selenium, vitamins A/B12/B6/C/D/E, zinc) and sleep behaviors in general population
- Вмешательство
- Genetically Supported Causality Between Micronutrients and Sleep Behaviors: A Two-Sample Mendelian Randomization Study. None
- Препарат сравнения
- None
- Первичный исход
- Causal associations between 15 micronutrients and sleep behaviors (duration, insomnia, chronotype)
- Направление эффекта
- Mixed
- Риск систематической ошибки
- Low
Аннотация
BACKGROUND: Sleep behaviors, defined by the total duration of sleep and chronotype, significantly influence overall health. Compromised sleep quality, which is often manifested through reduced sleep duration and the prevalence of insomnia, has been found to be associated with micronutrient deficiencies. Nonetheless, the existence of a causal relationship between micronutrient levels and sleep behaviors remains to be established. METHODS: A two-sample Mendelian randomization (MR) analysis, utilizing data from genome-wide association studies (GWAS), was employed to examine the associations between 15 micronutrients (copper; calcium; carotene; folate; iron; magnesium; potassium; selenium; vitamins A, B12, B6, C, D, and E; and zinc) and various sleep behaviors, including short and long sleep durations, insomnia, and chronotype. Furthermore, multivariable MR (MVMR) analysis was performed to address potential confounding due to the interrelationships among micronutrients and to discern potential causal relationships. RESULTS: The MR analysis identified a causal association between folate levels and chronotype (odds ratio [OR] = 1.09; 95% confidence interval [CI]: 1.01-1.17; p = 0.02), indicating a tendency toward morningness. Conversely, vitamin B6 (OR = 0.91; 95% CI: 0.86-0.96; p = 1.05 × 10-3) and vitamin D (OR = 0.94; 95% CI: 0.88-1.00; p = 0.03) showed inverse associations with chronotype, indicative of a preference for eveningness. MVMR analysis confirmed the positive association between folate (OR = 1.286, 95% CI = 1.124-1.472, p < 0.001) and chronotype and a negative association with vitamin B6 (OR = 0.750, 95% CI = 0.648-0.868, p < 0.001). No causal relationships were established between micronutrient levels and either sleep duration or insomnia. CONCLUSIONS: Elevated folate levels correlate with morning-type preferences ("morning birds"), while higher concentrations of vitamin B6 are associated with evening-type preferences ("evening owls").
Кратко
Compromised sleep quality, which is often manifested through reduced sleep duration and the prevalence of insomnia, has been found to be associated with micronutrient deficiencies.
Полный текст
Introduction
Sleep patterns are defined by their length, often calculated as the total amount of sleep within a 24‐h cycle, and by chronotype. Chronotype refers to an individual's natural predisposition to be active at particular times during a 24‐h cycle (Günal
The impact of micronutrient intake on sleep has received less attention than that of macronutrients. However, emerging studies suggest that shorter sleep durations in adults are associated with deficiencies in several micronutrients, specifically calcium, magnesium, and vitamins D and K (Ikonte et al.
Mendelian randomization (MR) utilizes single nucleotide polymorphism (SNP) statistics from GWAS to infer possible causal connections among various complex traits (Gupta, Walia, and Sachdeva
In our research, we investigated the genetic underpinnings and potential causal links between micronutrients and sleep behaviors. This was achieved by examining genetic correlations and polygenic overlaps using GWAS summary statistics. Additionally, we employed two‐sample and multivariable MR (MVMR) analyses to explore the possible causal effects of micronutrients on sleep behaviors.
Methods
Study Design
A schematic overview of the research design is depicted in Figure
GWAS Data of Sleep‐Related Behaviors
Participants recorded their own sleep duration by noting the total hours slept every 24 h, including naps, measured in hourly increments. We carried out distinct GWAS for individuals of European descent, categorizing them based on their sleep duration. This included a group with short sleep duration (less than 7 h per night,
To assess chronotype, subjects responded to the question, “Do you consider yourself to be?” with choices spanning from “Definitely a ‘morning’ person” to “Definitely an ‘evening’ person.” Responses were scored, with “Definitely a ‘morning’ person” and “More a ‘morning’ than ‘evening’ person” classified as cases, assigned two and one points, respectively. Conversely, those identifying as “Definitely an ‘evening’ person” or “More an ‘evening’ than ‘morning’ person” were designated as controls, with scoring of −2 and −1 points, respectively. The study by Jones et al. (
In the assessment of insomnia, participants answered the question: “Do you have trouble falling asleep at night or do you wake up in the middle of the night?” The response options provided were “never/rarely,” “sometimes,” “usually,” or “prefer not to answer.” Participants who chose “usually” were identified as cases of insomnia, while those who answered “never/rarely” were designated as controls. The GWAS, carried out by Watanabe et al. (
In our research, we conducted a comprehensive search through PubMed and the IEU OpenGWAS project (
Two‐Sample MR Analysis
In our research, we utilized the two‐sample MR approach, employing the Two Sample MR (version 0.5.11) package (Hemani, Tilling, and Smith
We supplemented our primary analysis with several auxiliary methods to further assess causality. The MR‐Egger method (Bowden, Davey Smith, and Burgess
To improve the trustworthiness of our findings, we undertook an extensive series of sensitivity checks. First, we evaluated the heterogeneity of SNP effects, which could bias the IVW estimates, by computing Cochran's Q statistics (Bowden et al.
Multivariable MR Analysis
In this study, we acknowledged the potential for confounding among various vitamins and minerals when using two‐sample or standard MR due to the pleiotropic effects that one micronutrient may exert on others. To address this issue, we employed MVMR analysis. This approach integrates a pleiotropy correction by including all pertinent sleep behaviors in one model, which helps reduce bias (Sanderson
To further assess heterogeneity in the outcomes of SNP, we calculated an adjusted Cochran's Q statistic using summary data (Sanderson et al.
Results
Two‐Sample MR Analysis
To explore the connections between micronutrients and various sleep behaviors, we utilized a two‐sample MR approach. We identified significant associations with chronotype for folate and vitamins B6 and D (
Specifically, for each standard deviation (SD) increase in folate levels, the odds ratio (OR) is 1.09, with a 95% confidence interval (CI) ranging from 1.01 to 1.17 (
MR results are presented in scatter plots with different color‐coded trend lines to showcase estimates calculated from the various methods, as seen in Figure
Multivariable MR
Given the interrelationships among folate, vitamin B6, and vitamin D, the two‐sample MR analysis could not exclude potential confounding because of the other micronutrients. Thus, we conducted an MVMR analysis, estimating the direct effect of each exposure conditional on the others included in the model (Sanderson
Discussion
Through our two‐sample MR analyses, we identified associations between specific circulating micronutrients—folate, vitamin B6, and vitamin D—and chronotype. Folate exhibited a positive correlation with chronotype, suggesting that adults possessing elevated levels of folate tend to be morning‐oriented individuals (“early birds”). Conversely, higher concentrations of vitamins B6 and D were associated with a greater likelihood of being evening‐oriented (“night owls”). However, no causal relationships were established between these micronutrients and sleep disorders such as short sleep duration, long sleep duration, or insomnia.
Our MVMR analysis found a positive correlation between folate levels and chronotype, whereas vitamin B6 was negatively correlated with chronotype. The impact of vitamin D on chronotype remains unclear. Further analysis confirmed that individuals with higher levels of folate are more likely to exhibit an early‐to‐bed, early‐to‐rise pattern, while those with elevated levels of vitamin B6 tend to have a late‐to‐bed, late‐to‐rise sleep pattern.
Sleep habits are interconnected with the composition and timing of food intake. Morning chronotypes tend to have higher intakes of energy, protein, and fats, with lower carbohydrate consumption (Günal
Extensive research highlights the protective effects of vitamin D on sleep quality, though its influence on chronotype is not well‐defined (Ji, Grandner, and Liu
Consistent with other studies, our research did not identify a significant association between sleep duration and the levels of folate, vitamin B6, or zinc (Ikonte et al.
It is crucial to highlight some limitations of our study. In the first place, our findings, derived from a population of European descent, may not be generalizable to other racial groups. Second, the classification of short sleep duration in our study was based on self‐reports rather than objective measurements, which could potentially introduce bias into the GWAS results. With the increasing prevalence of smart wearable devices, future research could potentially achieve more precise measurements of sleep conditions.
Conclusion
Our two‐sample Mendelian randomization analysis suggests that individuals with higher folate levels tend to be morning‐oriented, which may be beneficial for enhancing sleep quality. Conversely, those with elevated levels of vitamin B6 and vitamin D tend to be evening‐oriented. Future research should include diverse populations and also consider conducting controlled, randomized trials to precisely determine micronutrient intake levels, providing a robust framework to validate the conclusions derived from Mendelian randomization.
Author Contributions
Ethics Statement
All the GWAS data utilized in this research were sourced from publicly accessible databases, and no original data were collected for this study. Each of the studies included had received approval from their respective institutional ethics review committees. Additionally, informed consents, both for participation and publication, were obtained from all participants involved.
Consent
All authors consent to publication.
Conflicts of Interest
The authors declare no conflicts of interest.
Peer Review
The peer review history for this article is available at
Supporting information
Supplementary Materials.
Supplementary Materials.
Supplementary Materials.
Supplementary Materials.
Supplementary Materials.
Рисунки
A flow chart of the study design.
Circos image of the associations of the 15 micronutrients with the chronotype from five statistic method. Red indicates a
Two‐sample MR analysis on the association between folate, vitamin B6, and vitamin D levels and chronotype. Abbreviations: CI, confidence interval; IVW, inverse‐variance weighted; nsnp, number of SNP; OR, odds ratio.
Scatter plot illustrating the two‐sample MR results for the effects of folate (A), vitamin B6 (B), and vitamin D (C) on chronotype. The slope of various colorful lines illustrates the estimated MR effect derived from different MR methods.
Forest plot of folate (A), vitamin B6 (B), and vitamin D (C) on chronotype. Each line represents the effect of an IV.
Forest plot of leave‐one‐out result of folate (A), vitamin B6 (B), and vitamin D (C). Each line represents the IVW estimate of the impact of short sleep duration on lifespan after excluding this specific SNP. The absence of any line crossing zero suggests that the result is robust.
MVMR results for sleep behaviors, conditioned on chronotype.
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