8 research outputs found
Genetic correlations of psychiatric traits with body composition and glycemic traits are sex- and age-dependent
Body composition is often altered in psychiatric disorders. Using genome-wide common genetic variation data, we calculate sex-specific genetic correlations amongst body fat %, fat mass, fat-free mass, physical activity, glycemic traits and 17 psychiatric traits (up to N = 217,568). Two patterns emerge: (1) anorexia nervosa, schizophrenia, obsessive-compulsive disorder, and education years are negatively genetically correlated with body fat % and fat-free mass, whereas (2) attention-deficit/hyperactivity disorder (ADHD), alcohol dependence, insomnia, and heavy smoking are positively correlated. Anorexia nervosa shows a stronger genetic correlation with body fat % in females, whereas education years is more strongly correlated with fat mass in males. Education years and ADHD show genetic overlap with childhood obesity. Mendelian randomization identifies schizophrenia, anorexia nervosa, and higher education as causal for decreased fat mass, with higher body fat % possibly being a causal risk factor for ADHD and heavy smoking. These results suggest new possibilities for targeted preventive strategies
Genetic Influences on Eight Psychiatric Disorders Based on Family Data of 4 408 646 Full and Half-siblings, and Genetic Data of 333 748 Cases and Controls
Background. Most studies underline the contribution of heritable factors for psychiatric disorders.
However, heritability estimates depend on the population under study, diagnostic
instruments, and study designs that each has its inherent assumptions, strengths, and biases.
We aim to test the homogeneity in heritability estimates between two powerful, and state of
the art study designs for eight psychiatric disorders.
Methods. We assessed heritability based on data of Swedish siblings (N = 4 408 646 full and
maternal half-siblings), and based on summary data of eight samples with measured genotypes
(N = 125 533 cases and 208 215 controls). All data were based on standard diagnostic
criteria. Eight psychiatric disorders were studied: (1) alcohol dependence (AD), (2) anorexia
nervosa, (3) attention deficit/hyperactivity disorder (ADHD), (4) autism spectrum disorder,
(5) bipolar disorder, (6) major depressive disorder, (7) obsessive-compulsive disorder
(OCD), and (8) schizophrenia.
Results. Heritability estimates from sibling data varied from 0.30 for Major Depression to
0.80 for ADHD. The estimates based on the measured genotypes were lower, ranging from
0.10 for AD to 0.28 for OCD, but were significant, and correlated positively (0.19) with
national sibling-based estimates. When removing OCD from the data the correlation
increased to 0.50.
Conclusions. Given the unique character of each study design, the convergent findings for
these eight psychiatric conditions suggest that heritability estimates are robust across different
methods. The findings also highlight large differences in genetic and environmental influences
between psychiatric disorders, providing future directions for etiological psychiatric research
Author Correction: GWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal effect of schizophrenia liability (Nature Neuroscience, (2018), 21, 9, (1161-1170), 10.1038/s41593-018-0206-1)
Several occurrences of the word âschizophreniaâ have been re-worded as âliability to schizophreniaâ or âschizophrenia riskâ, including in the title, which should have been âGWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal effect of schizophrenia liability,â as well as in Supplementary Figures 1â10 and Supplementary Tables 7â10, to more accurately reflect the findings of the wor
Recommended from our members
GWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal influence of schizophrenia.
Cannabis use is a heritable trait that has been associated with adverse mental health outcomes. In the largest genome-wide association study (GWAS) for lifetime cannabis use to date (Nâ=â184,765), we identified eight genome-wide significant independent single nucleotide polymorphisms in six regions. All measured genetic variants combined explained 11% of the variance. Gene-based tests revealed 35 significant genes in 16 regions, and S-PrediXcan analyses showed that 21 genes had different expression levels for cannabis users versus nonusers. The strongest finding across the different analyses was CADM2, which has been associated with substance use and risk-taking. Significant genetic correlations were found with 14 of 25 tested substance use and mental health-related traits, including smoking, alcohol use, schizophrenia and risk-taking. Mendelian randomization analysis showed evidence for a causal positive influence of schizophrenia risk on cannabis use. Overall, our study provides new insights into the etiology of cannabis use and its relation with mental health
Author Correction: GWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal effect of schizophrenia liability (Nature Neuroscience, (2018), 21, 9, (1161-1170), 10.1038/s41593-018-0206-1)
Several occurrences of the word âschizophreniaâ have been re-worded as âliability to schizophreniaâ or âschizophrenia riskâ, including in the title, which should have been âGWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal effect of schizophrenia liability,â as well as in Supplementary Figures 1â10 and Supplementary Tables 7â10, to more accurately reflect the findings of the work
Recommended from our members
Author Correction: GWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal effect of schizophrenia liability.
Several occurrences of the word 'schizophrenia' have been re-worded as 'liability to schizophrenia' or 'schizophrenia risk', including in the title, which should have been "GWAS of lifetime cannabis use reveals new risk loci, genetic overlap with psychiatric traits, and a causal effect of schizophrenia liability," as well as in Supplementary Figures 1-10 and Supplementary Tables 7-10, to more accurately reflect the findings of the work