Background
The global spread of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has revealed differences in susceptibility to and severity of SARS-CoV-2 infection at both the individual and the community level. Studies from different regions of the world suggest a rise in the incidence of psychiatric disorders because of the threat of the virus and the socioeconomic repercussions of preventative measures that have been implemented.Reference Pan, Kok, Eikelenboom, Horsfall, Jorg and Luteijn1–Reference Wang, Shi, Que, Lu, Liu and Lu3 Interestingly, a recent study observed that a psychiatric diagnosis prior to SARS-CoV-2 infection was significantly associated with a higher risk of coronavirus disease 2019 (COVID-19) diagnosis;Reference Taquet, Luciano, Geddes and Harrison4 this risk was independent of known physical risk factors and living conditions.
Personality traits (i.e. relative stable patterns of feelings, thoughts and behaviour) might influence disease risk by mediating health-related behaviours such as the adherence to health regulations and recommendations (for example social distancing or mask wearing). In line with this, studies support an inverse relationship between extroversion and likelihood of engaging in social distancing behaviour at the beginning of the pandemic.Reference Carvalho, Pianowski and Goncalves5,Reference Gotz, Gvirtz, Galinsky and Jachimowicz6
The genetic underpinnings of psychiatric traits are known to not only show a large overlap among each other7 but also with other diseases such as metabolic disorders.Reference Bahrami, Steen, Shadrin, O'Connell, Frei and Bettella8,Reference Hubel, Gaspar, Coleman, Hanscombe, Purves and Prokopenko9 An increased overall load of infections in individuals with psychiatric disorders has also been reported and may, in part, be because of shared genetic liability,Reference Nudel, Wang, Appadurai, Schork, Buil and Agerbo10 although only few large-scale studies have tried to answer this question to date. In addition to many other factors ranging from gender to pre-existing medical conditions and socioeconomic factors,Reference de Lusignan, Dorward, Correa, Jones, Akinyemi and Amirthalingam11,Reference Docherty, Harrison, Green, Hardwick, Pius and Norman12 both common and rare genetic variants have been identified that may predispose individuals to an infection with SARS-CoV-2 or a severe course of COVID-19.Reference Pairo-Castineira, Clohisey, Klaric, Bretherick, Rawlik and Pasko13–Reference Zhang, Bastard, Liu, Le Pen, Moncada-Velez and Chen15
A recent GWAS by the COVID-19 Host Genetics Initiative,16 identified 13 loci of genome-wide significance for susceptibility to COVID-19, comparing participants with a self- or physician-reported COVID-19 diagnosis with the general population. Four of these loci seem to be specific to COVID-19 susceptibility rather than disease severity. The identified loci include variants in genes implicated in the innate immune response to viruses but also genomic loci harbouring many genes of yet-undetermined function in the context of COVID-19.
Aims
In light of these findings, we asked whether genetic underpinnings are shared between COVID-19 susceptibility, major psychiatric disorders and personality traits. We approached this question using both results from the largest GWAS in the respective fields and individual-level data from two observational studies of psychiatric disorders (PsyCourse) and personality traits (PsyCourse and HeiDE).
Method
We performed linkage disequilibrium score regression (LDSC)Reference Bulik-Sullivan, Loh, Finucane, Ripke and Yang17 to calculate genetic correlationsReference Bulik-Sullivan, Finucane, Anttila, Gusev, Day and Loh18 between susceptibility to COVID-19 and psychiatric disorders as well as personality traits. We used summary statistics for COVID-19 susceptibility derived from a GWAS performed by the COVID-19 Host Genetics Initiative16 (self- or physician-reported COVID-19 diagnosis (n = 87 870) versus general population (n = 2 210 804); analysis ‘C2’ for European ancestry without 23andMe, Inc, release 6, downloaded from https://www.covid19hg.org/results/r6/, accessed 30 July 2021).
For psychiatric disorders, summary data from the following GWAS were used: schizophrenia (SCZ; 33 640 cases; 43 456 controls),19 bipolar disorder (BPD; 41 917 cases; 371 549 controls),Reference Mullins, Forstner, O'Connell, Coombes, Coleman and Qiao20 depression (as a broader phenotype closely related to major depressive disorder (MDD), 246 363 cases; 561 190 controls)Reference Howard, Adams, Clarke, Hafferty, Gibson and Shirali21 and Big 5 personality traits (n = 70 000 to 120 000).Reference Lo, Hinds, Tung, Franz, Fan and Wang22 For the details on phenotype definitions used in the GWAS, please refer to the original publications.
In a second step, individual-level data were used to calculate polygenic risk scores (PRS). In the PsyCourse study (n = 1786), consisting of individuals with major psychiatric disorders (652 SCZ, 567 BPD, 101 MDD) and controls without major psychiatric disorders (n = 466), recruited throughout Germany and Austria and followed longitudinally,Reference Budde, Anderson-Schmidt, Gade, Reich-Erkelenz, Adorjan and Kalman23 we assessed whether PRS for susceptibility to COVID-19 were associated with case status or with extraversion scores. PRS were calculated using the PRS-CS method,Reference Ge, Chen, Ni, Feng and Smoller24 excluding the human leukocyte antigen (HLA) region on chromosome 6.
All genotyped participants of the PsyCourse study with a diagnosis from the psychotic-to-affective spectrum as well as controls (n = 1346, age mean 47.75, s.d. = 13.81, 47.39% female) or for whom an extraversion score was available (n = 1190) were included in the analysis. ‘Case’ status was defined as having a lifetime diagnosis of a severe psychiatric disorder from the spectrum of psychotic and affective disorders defined in the DSM-IVReference American Psychiatric Association25 and as determined by a trained rater administering the relevant section of the SCID-IReference First, Spitzer, Gibbon and Williams26 interview.
The extraversion score (range: 1 to 5, mean: 3.09) was derived from a 10-item questionnaire assessing the Big 5 personality traitsReference Rammstedt and John27 (Fig. 1). DNA samples of PsyCourse participants were genotyped on the Illumina Infinium PsychArray, and imputed using the 1000 Genomes project data-set as reference panel (for details, seeReference Budde, Anderson-Schmidt, Gade, Reich-Erkelenz, Adorjan and Kalman23).
In the HeiDE study (for exampleReference Sturmer, Hasselbach and Amelang28), we assessed whether extraversion scores (see below) were associated with PRS for COVID-19 susceptibility (generated using PRS-CS; n = 3266, age mean 52.78, s.d. = 7.06, 52.38% female). Briefly, HeiDE (‘Heidelberger Langzeitstudie zu Risikofaktoren und Diagnose chronischer Erkrankungen’) is a population-based study carried out in the German city of Heidelberg and surrounding area with an initial aim of characterising associations of personality and somatic disease. Data analysed in this study were collected during the baseline assessment (personality traits; 1992 to 1994) and the first follow-up (DNA for genotyping; on average 8.5 years after baseline). Extraversion was measured using the Eysenck Personality InventoryReference Eysenck and Eysenck29, from which we analysed the sum of two items closely matching the items of the Big 5 personality questionnaire used in the PsyCourse study (range: 0 to 2, mean: 1.48). DNA samples of HeiDE participants were genotyped using the Illumina Infinium PsychArray and the Infinium OmniExpress Exome Array. The combined HeiDE data-sets were imputed using the 1000 Genomes phase 3 reference panel (for details, seeReference Heilbronner, Papiol, Budde, Andlauer, Strohmaier and Streit30). Also see the figure for an overview of the study design.
PRS scoring and association testing using linear or ordinal regressions were implemented in PLINK (version 1.9) and R (version 4.0.3). In both studies, we regressed the respective phenotype onto age, age2, gender and the first eight ancestry multidimensional scaling components (backward stepwise regression). The residuals of the final model were then regressed onto the PRS (PsyCourse), or the final model was compared with a model additionally containing the PRS (HeiDE). As far as we know, there is no overlap between individuals from the PsyCourse and HeiDE studies and the GWAS, whose summary statistics were used for the LDSC above.
The authors assert that all procedures contributing to this work comply with the ethical standards of the relevant national and institutional committees on human experimentation and with the Helsinki Declaration of 1975, as revised in 2008. All procedures involving human participants were approved by the Institutional Review Board at the University of Munich,Reference Pairo-Castineira, Clohisey, Klaric, Bretherick, Rawlik and Pasko13–Reference Bulik-Sullivan, Loh, Finucane, Ripke and Yang17 the Institutional Review Board at the Medical Faculty of the University of Heidelberg (026/2001), or the local review boards of the primary studies that the utilised summary statistics were taken from.16,19–Reference Lo, Hinds, Tung, Franz, Fan and Wang22,Reference Wray, Ripke, Mattheisen, Trzaskowski, Byrne and Abdellaoui31 Written informed consent was obtained from all study participants.
Results
No genetic correlation was found between COVID-19 susceptibility and MDD, BPD, or SCZ risk (Table 1).
When analysing the genetic correlation between personality traitsReference Lo, Hinds, Tung, Franz, Fan and Wang22 and COVID-19 susceptibility, a significant positive correlation (P = 1.47 × 10−5; genetic correlation 0.284) was identified for the personality trait of extraversion. No statistically significant correlation was present with any other Big-5 personality trait (Table 2).
a. The P for genetic correlation between extraversion and COVID-19 susceptibility was statistically significant.
To corroborate these findings with a second, independent line of evidence using individual-level data from two independent cohorts, we turned to an assessment of PRS. In the PsyCourse study, PRS for COVID-19 susceptibility were not significantly associated with psychiatric case status when compared with controls (P = 0.474, beta = −1.132). Further, in the PsyCourse study, no significant association between COVID-19 susceptibility PRS and extraversion as measured by the 10-item questionnaire assessing the Big-5 personality traits (P = 0.210, beta = 2.369) was found.
To validate the finding for extraversion in another study setting and to mitigate any potential influence of an interaction between psychiatric disorders and personality traits in the context of COVID-19 susceptibility possibly present in the PsyCourse study, we recapitulated the extraversion analysis in the larger HeiDE study, which was specifically designed to evaluate the interaction between personality traits and somatic disorders. Here, however, we also did not detect a significant association for PRS for COVID-19 susceptibility and extraversion (model comparison P = 0.758, AIC 5149.51 (model with PRS) and AIC 5147.60 (model without PRS)).
Discussion
Main findings
It is likely that many interdependencies exist between COVID-19 susceptibility and major psychiatric disorders or personality traits. Among these, we shed light on a potential role for shared common genetic risk factors. For major psychiatric disorders, we did not identify a significant genetic overlap that can be ascribed to common genetic variation both when assessing summary statistics of large GWAS by LDSC and when looking at PRS in individual-level data, in line with emerging data in the field.16,Reference Chang, Li, Nguyen, Qu, Liu and Glessner32,Reference Luykx and Lin33
With regard to personality traits, the picture is more heterogeneous with a significant signal for a positive genetic correlation between extraversion and COVID-19 susceptibility by LDSC, which needs to be explored further once larger data-sets become available. However, it has to be assumed that the genetic make-up is only one contributor in a very complex network of factors connecting extraversion to COVID-19 susceptibility.
Interpretation of our findings and comparison with findings from other studies
The positive correlation identified between COVID-19 susceptibility and extraversion highlighted by the LDSC approach appears to be in line with the literature. Numerous studies performed both before and during the SARS-CoV-2 pandemic have demonstrated the effect of personality determinants on health behaviour and outcomes (such as Reference Carvalho, Pianowski and Goncalves5,Reference Eichenberg, Grossfurthner, Andrich, Hubner, Kietaibl and Holocher-Benetka34,Reference Friedman and Kern35 ). For example, it was shown that narcissistic tendencies coincide with decreased perceived susceptibility to infection with SARS-CoV-2Reference Venema and Pfattheicher36 whereas, at least for neuroticism, no genetic overlap was found.Reference Chang, Li, Nguyen, Qu, Liu and Glessner32 Intuitively, less extroverted individuals may find social distancing during the pandemic easier than extroverted individuals and may, therefore, be more compliant with social distancing rules and at an overall decreased risk of COVID-19.Reference Carvalho, Pianowski and Goncalves5,Reference Gotz, Gvirtz, Galinsky and Jachimowicz6
There is even evidence of a bidirectionality of this phenomenon – the general risk for infectious diseases in a given region may, in part, influence personality traits at population level such that lower mean levels of extraversion are reported in regions with higher prevalence of infectious diseases.Reference Schaller and Murray37 One possible reason for this could be that in regions where ever-present infectious diseases present a comparatively large threat to health and well-being, less extraversion is present at population level either because people have adapted their behaviour or because of potential selective pressure. Yet, it is likely that many interdependencies exist between COVID-19 susceptibility and personality traits or major psychiatric disorders and we investigated only shared common genetic risk factors.
Limitations
Although all included GWAS are the currently largest in the respective fields, sample sizes may still not be large enough to confidently detect genetic correlations in settings with many natural confounders such as levels of exposure to the virus or socioeconomic differences, to name only a few. Also, different instruments were used to evaluate personality traits in PsyCourse and HeiDE and the study populations (individuals with severe psychiatric disorders and controls versus the general population) were different, possibly contributing to the observed heterogeneity.
Although LDSC represents a powerful tool to assess genetic correlations, other methods to quantify polygenic overlap irrespective of genetic correlations also exist (for example Reference Frei, Holland, Smeland, Shadrin, Fan and Maeland38) and could be used to explore potential shared genetic underpinnings in even greater depth but are beyond the scope of this study. An additional limitation lies in the fact that no direct risk assessment was possible for the individuals with individual-level data on major psychiatric disorders and personality traits since no COVID-19 phenotypes were available. Finally, we are unable to fully exclude sample overlap especially for the controls used in the included GWAS. However, LDSC results should be robust to this overlap.Reference Bulik-Sullivan, Finucane, Anttila, Gusev, Day and Loh18
Implications
Hypothetically, it is possible that – for example – only a small subset of common genetic risk factors in a given pathway relevant to major psychiatric disorders or personality traits is associated with COVID-19 susceptibility. Although we cannot fully exclude all such effects, our data suggest that non-genetic factors play important roles in the interplay between personality traits and COVID-19.
A direct genetic overlap is unlikely to contribute to the increased, but yet-unexplained COVID-19 risk seen in individuals with a psychiatric diagnosis prior to SARS-CoV-2 infectionReference Taquet, Luciano, Geddes and Harrison4 but a shared genetic risk could still be mediated by intermediate phenotypes such as, for example, lower socioeconomic status or educational attainment in those with severe psychotic disorders. As a consequence, an even greater focus should be placed on psychosocial interventions, ensuring the best treatment for individuals with severe psychiatric disorders as well as targeted measures of prevention and psychoeducation for individuals with personality determinants that place them at an increased pandemic-related risk for health and well-being.
Data availability
The data that support the findings in this study are available from the corresponding author, E.C.S., upon reasonable request. The relevant summary statistics from the GWAS used in the analyses are available from the authors of the primary studies.16,19–Reference Lo, Hinds, Tung, Franz, Fan and Wang22,Reference Wray, Ripke, Mattheisen, Trzaskowski, Byrne and Abdellaoui31 Interested researchers can also apply for the used as well as additional data for the PsyCourse study via http://www.psycourse.de/openscience-en.html.
Acknowledgements
We are extremely grateful to all members of the COVID-19 Host Genetics Initiative for rapidly sharing data in an open-science fashion and to all study participants of all the studies included in the COVID-19 Host Genetics Initiative (https://www.covid19hg.org/acknowledgements/), the PsyCourse study (http://www.psycourse.de) and the HeiDE study without whose contributions this work would not have been possible. Further, our work also depended upon the sharing of summary statistics from the large GWAS on schizophrenia, bipolar disorder and major depressive disorder performed by the Psychiatric Genomics Consortium (PGC) and as well as the authors and participants of the Big 5 GWAS performed by Lo et al. We would like to thank the research participants and employees of 23andMe for making this work possible. M.M.N. and E.C.S. are members of the German COVID-19 Omics Initiative (DeCOI). M.M.N. is member of the DFG-funded Excellence Cluster ImmunoSensation2 (EXC 2151–390873048). We thank Stefan Herms for his support in the technical provision of genotype data.
Author contributions
U.H., F.S., M.R., T.G.S. and E.C.S. were responsible for the formulation of the research question. U.H, F.S, T.S, A.L., M.A., O.A.A., C.H.C., P.F., M.R., T.G.S. and E.C.S. contributed to the study design. U.H, T.V., F.S., S.K.S., D.R.E., F.K.S., J.L.K., M.H., K.G., A.L.C., M.B., H.A.S., K.A., T.S., A.L., M.A., J.Z., J.W., M.V.H., C.S., M.S., E.R., J.R., C.K., G.J., F.U.L., M.J., C.F., A.J.Fa., D.E.D., U.D., B.T.B., V.A., I.G.A., M.M.N., S.H.H., A.J.Fo., F.D., S.H.W., O.A.A., C.H.C., P.F., M.R., T.G.S. and E.C.S. all contributed to the conduction of the study. U.H., F.S., S.P., M.O.K., T.F.M.A., E.P., J.F., O.A.A., C.H.C. and E.C.S. were responsible for the data analysis. U.H., F.S. and E.C.S. were responsible for the writing of the manuscript. All authors contributed to the critical revision of the manuscript.
Funding
This study was supported by ERA-NET NEURON grants ‘EMBED’ (01EW1904 to MR), and ‘SynSchiz—Linking synaptic dysfunction to disease mechanisms in schizophrenia—a multilevel investigation’ (01EW1810 to MR). T.G.S. and P.F. are supported by the German Research Foundation (Deutsche Forschungsgemeinschaft; DFG) within the framework of the projects www.kfo241.de and www.PsyCourse.de (SCHU 1603/4-1, 5-1, 7-1; FA241/16-1), E.C.S. is also supported by the DFG (SCHU 2419/2-1) and through the Munich Clinician Scientist Program (MCSP). The genotyping was in part funded by the German Federal Ministry of Education and Research (BMBF) through the Integrated Network IntegraMent (Integrated Understanding of Causes and Mechanisms in Mental Disorders), under the auspices of the e:Med Program with grants awarded to T.G.S. (01ZX1614K), M.R. (01ZX1614G), and M.M.N. (01ZX1614A). T.G.S. received additional support from the German Federal Ministry of Education and Research (BMBF) within the framework of the BipoLife network and the Dr. Lisa Oehler Foundation, Kassel (Germany). O.A.A. received support from Research Council of Norway (#223273, #283798, #248980) and NordForsk (#105668).
Declaration of interest
M.S. is a member of the advisory board of Janssen. B.T.B. reports the following conflicts of interest: Advisory Board – Lundbeck, Janssen-Cilag; Consultant – National Health and Medical Research Council, Australia; Grant/Research Support – AstraZeneca, Fay Fuller Foundation, James & Diana Ramsay Foundation, National Health and Medical Research Council, Australia, German Research Council (DFG), Sanofi, Lundbeck; Honoraria – AstraZeneca, Bristol-Myers Squibb, Lundbeck, Pfizer, Servier Laboratories, Wyeth Pharmaceuticals, Takeda, Janssen, LivaNova PLC. O.A.A. has received speaker's honorarium from Lundbeck and Synovion, and is a consultant to HealthLytix. All other authors do not report conflicts of interest with regard to this manuscript.
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