Literature DB >> 30887376

The Early Growth Genetics (EGG) and EArly Genetics and Lifecourse Epidemiology (EAGLE) consortia: design, results and future prospects.

Christel M Middeldorp1,2,3, Janine F Felix4,5,6, Anubha Mahajan7,8, Mark I McCarthy7,8,9.   

Abstract

The impact of many unfavorable childhood traits or diseases, such as low birth weight and mental disorders, is not limited to childhood and adolescence, as they are also associated with poor outcomes in adulthood, such as cardiovascular disease. Insight into the genetic etiology of childhood and adolescent traits and disorders may therefore provide new perspectives, not only on how to improve wellbeing during childhood, but also how to prevent later adverse outcomes. To achieve the sample sizes required for genetic research, the Early Growth Genetics (EGG) and EArly Genetics and Lifecourse Epidemiology (EAGLE) consortia were established. The majority of the participating cohorts are longitudinal population-based samples, but other cohorts with data on early childhood phenotypes are also involved. Cohorts often have a broad focus and collect(ed) data on various somatic and psychiatric traits as well as environmental factors. Genetic variants have been successfully identified for multiple traits, for example, birth weight, atopic dermatitis, childhood BMI, allergic sensitization, and pubertal growth. Furthermore, the results have shown that genetic factors also partly underlie the association with adult traits. As sample sizes are still increasing, it is expected that future analyses will identify additional variants. This, in combination with the development of innovative statistical methods, will provide detailed insight on the mechanisms underlying the transition from childhood to adult disorders. Both consortia welcome new collaborations. Policies and contact details are available from the corresponding authors of this manuscript and/or the consortium websites.

Entities:  

Keywords:  Childhood traits and disorders; Consortium; Genetics; Longitudinal

Mesh:

Year:  2019        PMID: 30887376      PMCID: PMC6447695          DOI: 10.1007/s10654-019-00502-9

Source DB:  PubMed          Journal:  Eur J Epidemiol        ISSN: 0393-2990            Impact factor:   8.082


Background

In countries with a high-sociodemographic index, the major contributors to burden of disease during childhood and adolescence are non-communicable diseases such as obesity, asthma or allergies, and psychiatric disorders. These have a large cumulative impact on individuals, families and society [1]. Moreover, many early-life traits track throughout childhood and adolescence into adulthood. Childhood obesity, for example, is associated with adult obesity and cardiovascular disease [2]. Several childhood psychiatric disorders persist into adolescence and adulthood or precede severe mental illness such as schizophrenia, which usually starts at late adolescence or early adulthood [3, 4]. Low birth weight, as a proxy for a suboptimal intrauterine environment, has been shown to be robustly associated with many later-life non-communicable traits, including cardiovascular, respiratory and psychiatric disorders (see e.g., 5–7). This prompted researchers, including those within the Developmental Origins of Health and Disease (DOHaD) field, to investigate the basis for the early origins of later life differences in health and disease. Insight into the etiology of childhood and adolescent traits and disorders may provide new perspectives, not only on how to improve wellbeing during childhood, but also how to prevent later adverse outcomes. Individual differences in developmental phenotypes, such as body weight and composition, behavioral problems, language skills, and their stability across ages are partly influenced by genetic factors [8-13]. Identifying the specific genetic variants that influence these traits, and the biological pathways through which they operate, can therefore help to unravel etiological mechanisms. Genetic studies can also define whether the relationships between childhood and adult traits, for example, birth weight and cardiovascular disease, are causally mediated by early life exposures. In addition, genetics can support how specific environmental factors contribute to variation in these traits, i.e., whether there is gene-environment interaction with the increase in risk depending on an individual’s genetic risk. It is increasingly recognized that large sample sizes are essential in genetic research [14] and studies performed in large international consortia have become the norm. Two such consortia with a particular focus on the genetics of early life phenotypes are the Early Growth Genetics (EGG) consortium (http://egg-consortium.org/) and the EArly Genetics and Lifecourse Epidemiology (EAGLE) consortium (http://www.wikigenes.org/e/art/e/348.html) (Fig. 1). This paper describes these two consortia as they have shared objectives and the participating cohorts partly overlap. We also highlight the results so far and outline the directions of future research.
Fig. 1

Logo’s

Logo’s

Description and aims of the EGG and EAGLE consortia

Both consortia arose in 2009 out of the EU-funded European Network for Genetic And Genomic Epidemiology (ENGAGE). The EGG consortium focuses on the genetic basis of growth-related phenotypes spanning from fetal life into adolescence, including birth weight, childhood obesity and pubertal development. EAGLE was established to investigate the genetic basis of the wide range of further phenotypes collected by these cohorts from fetal life into adolescence, such as those relevant to asthma and eczema, childhood psychopathology, cognition, and neurodevelopment. The collective objectives of EGG and EAGLE are: to characterize the genetic background of traits and diseases in fetal life, childhood and adolescence by facilitating collaboration between pregnancy, birth, childhood and adolescent cohort studies, as well as adult biobanks (such as UK Biobank) with relevant information; to define the causal relationships between early life exposures and related early life phenotypes and major sources of morbidity and mortality in later life; to develop and improve statistical methods for analyzing complex, high-dimensional and longitudinal phenotypic data; to provide training opportunities for junior researchers to develop in the field of genetic epidemiology. The EGG and EAGLE consortia started as collaborations of population-based pregnancy and birth cohort studies, each of which has collected longitudinal data across a wide range of developmental phenotypes. As the collaboration developed, cohorts that started data collection during childhood and adolescence were also included. Almost all participating studies have genome-wide genotype data available. In addition, early life data collected through self-report and/or record linkage in adult biobanks, such as UK Biobank or the population based cohorts listed in Table 1 that have an adult counterpart, have been brought into the genome-wide association (GWA) meta-analyses for phenotypes such as birth weight. Both consortia welcome new collaborations, and they are keen to add data from longitudinal cohorts that are currently in the process of obtaining genotype data.
Table 1

Participating cohorts

Short nameFull name cohortWebsiteReferences
ABCDAmsterdam Born Children and their Development https://abcd-studie.nl/ 20813863
ALSPACAvon Longitudinal Study on Parents and Children www.bristol.ac.uk/alspac/ 22507743, 22507742
B58C1958 British Birth Cohort www.cls.ioe.ac.uk/page.aspx?&sitesectionid=724&sitesectiontitle=Welcome+to+the+1958+National+Child+Development+Study 16155052, 17255346
BAMSEChildren, Allergy, Milieu, Stockholm, Epidemiology https://ki.se/en/imm/bamse-project 26505741
BMDCSBone Mineral Density in Childhood Study https://bmdcs.nichd.nih.gov/ 17311856
BreatheBRain dEvelopment and Air polluTion ultrafine particles in scHool childrEn https://www.isglobal.org/en/-/breathe-brain-development-and-air-pollution-ultrafine-particles-in-school-children 25734425, 27656889
CATSSChild and Adolescent Twin Study in Sweden https://ki.se/en/meb/the-child-and-adolescent-twin-study-in-sweden-catss 22506305
CHOPChildren’s Hospital of Philadelphia https://www.caglab.org/ 22138692
CHSChildren’s Health Study https://healthstudy.usc.edu/ 10051249, 10051248, 17307103,25738666, 28103443, 27115265
CLHNSCebu Longitudinal Health and Nutrition Survey http://www.cpc.unc.edu/projects/cebu 20507864
COPSACCopenhagen Prospective Studies on Asthma in Childhood www.copsac.com 15521375, 24118234, 24241537
DNBCDanish National Birth Cohort https://www.ssi.dk/English/RandD/Research%20areas/Epidemiology/DNBC.aspx
EFSOCHExeter Family Study of Childhood Health16466435
Finntwin12Finnish Twin Cohort Study https://wiki.helsinki.fi/display/twineng/Twinstudy 23298696,17254406, 12537860
Gen3GGenetics of Glucose regulation in Gestation and Growthn/a26842272
Generation R Study https://www.generationr.nl/ 28070760; 25527369
GINIplusGerman Infant Study on the influence of Nutrition Intervention PLUS environmental and genetic influences on allergy development https://www.helmholtz-muenchen.de/epi/research/research-groups/allergy-epidemiology/projects/giniplus/index.html 20082618
GLAKUGlycyrrhizin in Licorice https://blogs.helsinki.fi/depsy-group/research/ 19808634; 17076756; 11390327
HBCSHelsinki Birth Cohort Study https://thl.fi/en/web/thlfi-en/research-and-expertwork/projects-and-programmes/helsinki-birth-cohort-study-hbcs-idefix 11312225
Health2006Helbred2006 https://clinicaltrials.gov/ct2/show/NCT00316667 23615486
INMAINfancia y Medio Ambiente http://proyectoinma.org/en_index.html 21471022
Inter99The Inter99 Study https://www.regionh.dk/rcph/population-based-epidemiology/Pages/The-Inter99-Study.aspx 14663300
LISAInfluence of life-style factors on the development of the immune system and allergies in East and West Germany https://www.helmholtz-muenchen.de/epi/research/research-groups/allergy-epidemiology/projects/lisa/index.html 12358337
MAASManchester Asthma and Allergy Study http://maas.org.uk/ 25805205, 15029579, 12688622
MOBANorwegian Mother and Child Cohort Study https://fhi.no/studier/moba/ 27063603,
MUSPMater University Study of Pregnancy https://social-science.uq.edu.au/mater-university-queensland-study-pregnancy 25519422
NTRNetherlands Twin Register http://www.tweelingenregister.org/ 23186620; 23265630
NFBC1966 and NFBC1986Northern Finland Birth Cohort http://www.oulu.fi/nfbc/ 750195; 19060910; 9246691
PIAMAPreventie en Incidentie van Astma en Mijt Allergie http://piama.iras.uu.nl/ 12688626, 23315435
Project Viva http://dacp.org/viva/ 24639442
QtwinQueensland Twin Registry http://www.qimrberghofer.edu.au/qtwin/ DOI: 10.1080/00049530410001734865
RaineThe Western Australian Pregnancy Cohort (Raine) Study https://www.rainestudy.org.au/ 8105165; 23230915; 23301674 l; 26169918; 28064197; 28662683
SKOTSmåbørns Kost Og Trivsel https://skot.ku.dk/om-projektet/english/ 28947836
STRIPSpecial Turku Coronary Risk Factor Intervention Project http://stripstudy.utu.fi/english.html 18430753
TCHADTwin Study of Child and Adolescent Development https://ki.se/en/meb/twin-study-of-child-and-adolescent-development-tchad 17539366
TDCOBThe Danish Childhood Obesity Biobank https://clinicaltrials.gov/ct2/show/NCT00928473
TEDSTwins Early Development Study http://teds.ac.uk/ 23110994
TRAILSTRacking Adolescents’ Individual Lives Survey https://www.trails.nl/ 25431468
Young FinnsThe Cardiovascular Risk in Young Finns Study http://youngfinnsstudy.utu.fi/ 18263651
Participating cohorts Tables 1 and 2 provides a summary of the participating studies and their design, as of April 2018. Table 3 gives further details on the extensive data available, indicating, per cohort, whether data collection has taken place at least once at preschool, school, adolescent and adult age. However, many cohorts have had multiple follow-up rounds within any given period or follow-up data collection is ongoing, through research clinic assessments, questionnaires or record linkage. The majority of the cohorts have around equal numbers of males and females included.
Table 2

Study designs

CohortStudy designYears of recruitmentCountry
ABCDPopulation based pregnancy cohort2003–2004The Netherlands
ALSPACPopulation based birth cohort1990–1992UK
B58CPopulation based birth cohort1958UK
BAMSEPopulation based cohort1994–1996Sweden
BMDCSMulti-center observational cohort2002–2009United States
BreathePopulation based cohort2002–2006Spain
CATSSPopulaton based twin birth cohort1992-ongoingSweden
CHOPPopulation based cohort1988-PresentUSA
CHSCommunity based children cohort1993–2002United States
CLHNSPopulation based birth cohort1983–1984Philippines
COPSAC-2000Asthma risk birth cohortFrom 2000-Denmark
COPSAC-2010Population based birth cohortOngoing From 2010
COPSAC-REGISTRYSevere asthma cases (children)Ongoing
DNBC-GOYAPopulation based pregnancy cohortsFrom 1997OngoingDenmark
DNBC-PTB
EFSOCHCommunity-based pregnancy cohort of parent–offspring trios2000–2004United Kingdom
Finntwin12Population-based twin-family cohort1983–1987Finland
Gen3GPopulation based birth cohort2010–2013Canada
Generation RaPopulation-based birth cohort2002–2006The Netherlands
GINIplusPopulation based birth cohort1995–1998Germany
GLAKUPopulation-based birth cohort1998Finland
HBCSPopulation-based birth cohort1934–1944Finland
Health2006General population study2006–2008Denmark
INMAPopulation-based birth cohort1997–2008Spain
Inter99Population-based randomized intervention study1999–2006Denmark
LISApopulation based birth cohort1997–1999Germany
MAASaPopulation-based birth cohort1996/1997UK
MOBAPopulation based birth cohort1999–2008Norway
MUSPPregnancy general population1981–1984Australia
NTRaBirth general twin populationFrom 86—ongoingNetherlands
NFBC1966 and NFBC1986longitudinal birth cohort1966 and 1986Finland
PIAMAPopulation based birth cohort, enriched for high risk allergy children (allergic mother)1996–1997Netherlands
Project VivaaPopulation based birth cohort1999–2002USA
QtwinLongitudinal twin study1980–2004Australia
RaineLongitudinal pregnancy cohort study1989–1991Australia
SKOTObservational cohort study, monitoring healthy young children from 9 to 36 months of age.2006–2007 (SKOT I); 2011–2013 (SKOT II)Denmark
STRIPProspective randomized life-style intervention trial1990–1992Finland
TCHADBirth general twin population1985–1987Sweden
TDCOBCase–control studyChildren and adolescence with obesity: 2007–2013; Population-based sample: 2010–2013Denmark
TEDSPopulation based twin birth cohortFrom 1994—OngoingUK
TRAILS-popPopulation based2001/2002Netherlands
TRAILS-CCHigh risk2004Netherlands
Young FinnsPopulation based follow-up from childhood to adulthood1980Finland

aIncludes individuals from non-European descent

Table 3

Data collected

CohortN genotyped childrenaPhenotypesAge periods data available
PregnancyPre-schoolSchoolAdolescenceAdult
ABCD1192Broadxxxx
ALSPAC10,000Broadxxxxx
B58C6491Broadxxxxx
BAMSE2500Broadxxxxx
BMDCS1885Broadxxxx
Breathe1667Broadx
CATSS13,576Broad, focus on psychiatryx, information from registersxxx
CHOP43,320Broadxxx
CHS3986Broad, focus on respiratory and metabolic healthxx
CLHNS1779Broadxxxx
COPSAC-2000411Broadxxxxx
COPSAC-2010700Broadxxx
COPSAC-REGISTRY1240Broadxx
DNBC-GOYADNBC-PTB1500Broadxxxx
1500
EFSOCH812Anthropometric and glycemic traitsxxParents only
Finntwin121264BroadRetrospectiveRetrospectivexxx
Gen3G582Broad, focus on metabolic/adiposityxon-going
Generation R5731Broadxxxx
GINIplus835broadxxxxOngoing
GLAKU357Broadxxxxx
HBCS1566Broadxxxx
Health20062802Cardiovascular disease, type 2 diabetes, and other lifestyle related diseasesx
INMA1517BroadxxxOngoing
Inter996184Cardiovascular disease, type 2 diabetes, other lifestyle related diseases, glucose tolerancex
LISA674BroadxxxxOngoing
MAAS919asthma and allergy focusedxxxxOngoing
MOBA17,000Broadxxxxx
MUSP1200Broadxxxxx
NTR7750BroadxxxxOngoing
NFBC1966 NFBC19865402Broadxxxxx
3743
PIAMA2113Broad, focus on respiratory healthxxxx
Project Viva1580Broadxxxx
Qtwin4500Broadxxx
Raine1500BroadxxxxOngoing
SKOT I260Dietary intake, growth, cognitive development, overweight and lifestyle related diseasesx
SKOT II112
STRIP666Broadxxxxx
TCHAD990Broadxxx
TDCOB1771Overweight and Obesityxxxx
TEDS10,346Broadxxxx
TRAILS-pop1354BroadRetrospectiveRetrospectiveRetrospectivexx
TRAILS-CC341
Young Finns2442Broadxxxxx

aSome cohorts also have genotype data on parents

Study designs aIncludes individuals from non-European descent Data collected aSome cohorts also have genotype data on parents Most cohorts were established with the aim of investigating risk and protective factors for a broad range of developmental phenotypes. They have collected data on physical traits, cognition, emotional and behavioral problems, as well as on lifestyle and environmental factors, such as smoking during pregnancy and physical exercise. Other cohorts were set up with a specific focus, such as asthma research, but many of these have collected ancillary information on a wider range of phenotypes. Table 2 gives an indication as to whether data collection was focused on a specific phenotype. Additional details on many of these studies will be available from cohort websites and publications (see Table 1). Participating cohorts have obtained DNA from blood samples, saliva or buccal swabs. A variety of different genotyping arrays have been used over the years, but meta-analysis has been facilitated by imputation of directly genotyped data using reference panels such as those generated by 1000 Genomes or the Haplotype Reference Consortium [15, 16]. Moreover, an increasing number of cohorts have, or plan to get, additional ‘omics data including parental genotypes, DNA methylation profiles, RNA expression levels, metabolomics and/or microbiome data.

Results of the genetic studies performed in the EGG and EAGLE consortia

The implementation of GWA meta-analyses for each of the phenotypes of interest to EGG or EAGLE has usually been championed and organized at the level of a working group, formed by a subset of motivated investigators and analysts, who have assumed responsibility for assembling, combining and interpreting the genetic data. The wide range of phenotypes available to study across these consortia has provided fertile ground for many such working groups and has resulted in a large number of peer-reviewed papers across this wide range of phenotypes [17-45]. These are typically GWA meta-analyses, focusing on the effects of individual genetic variants, but increasingly now extend to multivariate, polygenic analyses, that evaluate the joint effects of multiple associated genetic variants and apply this information to address questions of causality. Amongst the many GWA analyses led by EGG and EAGLE, the traits for which the largest numbers of genetic loci reached genome-wide statistical significance (p < 10−8) have been birth weight (65 loci), atopic dermatitis (31), childhood BMI (15), allergic sensitization (10), and pubertal growth (10) [17, 19, 23, 26, 28, 36]. For other phenotypes with a large number of genome wide hits, such as age at menarche (108 loci) or ADHD (16 loci), the association analysis has involved collaborations with other consortia [25, 37]. The summary statistics for many of the genome-wide association studies undertaken by EGG and EAGLE investigators can be found on consortium websites (http://egg-consortium.org/; http://www.wikigenes.org/e/art/e/348.html) or are available from corresponding authors. As with adult phenotype GWA studies, the number of association signals recovered by these studies is influenced heavily by sample size (N = 182,416 for age at menarche, N = 153,781 for birth weight) and, to a lesser extent, by phenotype characteristics (somatic or behavioral traits, continuous or binary outcomes). In addition to cross-sectional GWA analyses, there have been many examples of projects that have investigated genetic relationships within childhood traits or between childhood traits and related adult phenotypes, often revealing shared genetic factors. For example, genetic overlap was found among related atopic conditions during childhood, and between atopic conditions and auto-immune disorders [19, 36]; among puberty-related phenotypes, and between puberty-related phenotypes and BMI [23, 24, 37]; between childhood and adult blood pressure [41]; between preschool internalizing symptoms and adult psychiatric disorders [18]; and between childhood and adult anthropometric traits [21, 26, 40, 44]. The development of statistical methods that support the calculation of genetic correlations from summary GWAS results [46] and the easy availability of such data from a growing number of GWA meta-analyses for adult traits have enabled these analyses to be undertaken with adequate statistical power. Figure 2 shows genetic correlations, calculated exclusively from GWAS data, between birth weight and a range of continuous and disease phenotypes [28], generated using the linkage disequilibrium score regression approach [46] as implemented in the LDHub web utility [47]. For many cardiometabolic and anthropometric traits measured in late adult life, there is evidence of substantial sharing of genetic variation with birth weight. In line with the wider epidemiological data, the genetic correlations between birth weight and adult cardiometabolic traits (including type 2 diabetes, blood pressure, and coronary artery disease) tend to be negative. These data indicate that a substantial proportion of the observed covariance between birth weight and cardiometabolic disease predisposition is likely to be driven by genetic rather than environmental factors. However, the potential for more complex causal relationships (such as those that connect fetal genotype to adult disease via the correlation with maternal genotype and altered maternal environment) also needs to be considered. Full characterization of these complex relationships requires the application of statistical methods that enable partitioning of genetic effects into maternal and fetal components both at the level of individual SNPs [48] and genome-wide [49]. Using the M-GCTA method [49], for example, it has been reported that maternal genotypes contribute more to gestational weight gain in the mother, while offspring genotypes contribute more to birth weight [45].
Fig. 2

Genome-wide genetic correlation between birth weight and a range of traits and diseases in later life. Genome-wide genetic correlations between birth weight and traits and diseases evaluated in later life. The figure (adapted from Horikoshi et al. 2016 [28] with permission of the authors) displays the genetic correlations between birth weight and a range of traits and diseases in later life as estimated using LD Score regression. Traits selected were those for which genome-wide association summary statistics were available in suitably large sample sizes, and the analyses were typically performed on the largest meta-analyses available as of early 2016. The genetic correlation estimates (rg) are colour coded according to phenotypic area. Allelic direction of effect is aligned to increased birth weight. Size of the circle denotes the significance level for the correlation (per the key). Correlations with a lower significance level are not depicted. Further detail on the methods and studies involved is available in Horikoshi et al. 2016 [28]. Diameter of circles is proportional to genetic correlation p value

Genome-wide genetic correlation between birth weight and a range of traits and diseases in later life. Genome-wide genetic correlations between birth weight and traits and diseases evaluated in later life. The figure (adapted from Horikoshi et al. 2016 [28] with permission of the authors) displays the genetic correlations between birth weight and a range of traits and diseases in later life as estimated using LD Score regression. Traits selected were those for which genome-wide association summary statistics were available in suitably large sample sizes, and the analyses were typically performed on the largest meta-analyses available as of early 2016. The genetic correlation estimates (rg) are colour coded according to phenotypic area. Allelic direction of effect is aligned to increased birth weight. Size of the circle denotes the significance level for the correlation (per the key). Correlations with a lower significance level are not depicted. Further detail on the methods and studies involved is available in Horikoshi et al. 2016 [28]. Diameter of circles is proportional to genetic correlation p value Another critical advantage of genetic studies is the potential to characterize causal relationships using Mendelian randomization approaches [50]. Tyrrell et al. [42] found evidence of a positive causal effect of maternal BMI and fasting glucose levels on offspring birth weight but inverse effect of maternal systolic blood pressure on offspring birth weight. Despite bringing together the largest number of studies at the time with relevant data, there was insufficient power to dissect how the opposing effects of maternal glucose and systolic blood pressure are reflected in the maternal BMI effect (one reason why we are keen to extend the collaboration to any new cohorts). Crucially, however, appropriate application and interpretation of studies that seek to elucidate the mechanisms underlying associations between maternal and offspring phenotypes require investigators to consider diverse complicating factors including the correlation between maternal and fetal genetic instruments, and to account for these sources of potential bias in the Mendelian randomization analyses wherever possible [51]. The longitudinal data collected in EGG and EAGLE cohorts provide the means to investigate whether the influence of genetic variants changes over time. This has only recently been explored given the need for large numbers of studies with repeated measures. We have found that genetic variation in FTO, one of the first BMI increasing genetic variants to be identified in GWAS and one of the variants most strongly associated with mean BMI (in adults) is inversely associated with BMI in infancy only becoming positive in later childhood and adult [38], indicating the value of research that explores gene-by-age interactions. On a genome-wide scale, using meta-regression methods, polygenic risk scores generated from adult schizophrenia data yielded associations with variation in childhood and adolescent psychiatric symptom scores, which strengthened in magnitude with increasing age [52].

Strengths and weaknesses

The aggregation of data in consortia such as EGG and EAGLE provides vastly improved sample sizes and a powerful way to overcome the major weakness of many of the early GWAS, which were, in hindsight, underpowered to detect the generally small genome-wide significant associations. This has brought multiple robust association signals across many traits, and provided a valuable basis for dissecting the, often complex, causal relationships between epidemiologically-correlated traits. A clear strength of the EGG and EAGLE consortia is the wealth of data available. This encompasses not only repeated measures for physical and behavioral traits, but also copious information on lifestyle and environmental circumstances. Moreover, some of the cohorts have collected data for several decades, and now provide repeated measures well into adulthood. This enables developmental research as well as analyses of the interplay between genes and environment. To date, one of the limitations has been that the majority of participating cohorts have data based on European-ancestry populations (see Table 2 for exceptions). There is a clear need for equivalent data to be generated in samples from other ethnic groups, so that the genetic contribution to reproducible ethnic differences in the distribution of early life phenotypes can be explored and the implications for adult disease risk quantified. Since the cohorts are population-based and lack a particular disease-focus, the consortia are not so well-suited to investigate conditions with a low prevalence. They are better-placed to analyze common traits, particularly those that can be measured on continuous scales and analyzed as quantitative measures, such as blood pressure instead of hypertension and ADHD symptom score instead of ADHD diagnosis [32, 34]. Power analyses demonstrate that identification of a genetic variant is, in most circumstances, more powerful for continuous traits than for dichotomous variables based on clinical cut-offs [53].

Future

Considerable progress is to be expected from ongoing increases in sample sizes, especially for traits such as childhood aggression, ADHD-related traits and internalizing symptoms, where the number of identified genetic variants has been limited so far. Access to new data sets can motivate efforts to tackle phenotypes that have not hitherto been subject to detailed genetic analysis. The results emerging from many of these studies provide a timely reminder that analysis of early life phenotypes often requires researchers to consider the joint impacts of multiple genomes (e.g., those of the fetus and the mother) together with the web of environmental influences as potential contributors to individual variation. They also highlight the need to take into account the changes happening throughout development. This is now possible because of large, rich and complex datasets that support use of novel statistical methods for the analysis of causality or gene-by-age interaction [48, 49, 51, 54]. There have already been several examples of papers performing such analyses and this will only increase with the number of identified genetic variants. In addition, existing gender differences in the associations between early life and adult factors (such as cardiometabolic risk) suggest a need for more thorough analysis of the effects of gender on these early acting mechanisms. The focus to date on the role of maternal and offspring GWAS information indicates a failure to properly consider the contribution of genetic variation in the father that will be remedied as more data from complete trios and pedigrees becomes available. We are also planning to expand these consortia to accommodate access to the increasing amount of ‘omics data now becoming more available. Combining the results from EGG and EAGLE GWA analyses with those from DNA methylation analyses performed by the Pregnancy And Childhood Epigenetics (PACE) consortium [55] and with the pregnancy/child cohorts in the COnsortium of METabolomic Studies (COMETS; https://epi.grants.cancer.gov/comtets/) will shed further light on the biological mechanisms underlying associations of early-life risk factors and childhood, adolescent and adult health outcomes. The focus on translating this knowledge to clinical and public health settings represents a major motivation. Insight into genetic factors underlying stability in traits such as obesity and psychiatric disorders may aid in providing targeted interventions to the groups at highest need. A more complete understanding of the contributions of genetic and non-genetic factors in the relationships between early life and later life traits may focus attention on the most effective strategies for behavioural or environmental modification.
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Journal:  Hum Mol Genet       Date:  2020-09-30       Impact factor: 6.150

2.  The EU Child Cohort Network's core data: establishing a set of findable, accessible, interoperable and re-usable (FAIR) variables.

Authors:  Angela Pinot de Moira; Sido Haakma; Katrine Strandberg-Larsen; Esther van Enckevort; Marjolein Kooijman; Tim Cadman; Marloes Cardol; Eva Corpeleijn; Sarah Crozier; Liesbeth Duijts; Ahmed Elhakeem; Johan G Eriksson; Janine F Felix; Sílvia Fernández-Barrés; Rachel E Foong; Anne Forhan; Veit Grote; Kathrin Guerlich; Barbara Heude; Rae-Chi Huang; Marjo-Riitta Järvelin; Anne Cathrine Jørgensen; Tuija M Mikkola; Johanna L T Nader; Marie Pedersen; Maja Popovic; Nina Rautio; Lorenzo Richiardi; Justiina Ronkainen; Theano Roumeliotaki; Theodosia Salika; Sylvain Sebert; Johan L Vinther; Ellis Voerman; Martine Vrijheid; John Wright; Tiffany C Yang; Faryal Zariouh; Marie-Aline Charles; Hazel Inskip; Vincent W V Jaddoe; Morris A Swertz; Anne-Marie Nybo Andersen
Journal:  Eur J Epidemiol       Date:  2021-04-21       Impact factor: 12.434

3.  The LifeCycle Project-EU Child Cohort Network: a federated analysis infrastructure and harmonized data of more than 250,000 children and parents.

Authors:  Vincent W V Jaddoe; Janine F Felix; Anne-Marie Nybo Andersen; Marie-Aline Charles; Leda Chatzi; Eva Corpeleijn; Nina Donner; Ahmed Elhakeem; Johan G Eriksson; Rachel Foong; Veit Grote; Sido Haakma; Mark Hanson; Jennifer R Harris; Barbara Heude; Rae-Chi Huang; Hazel Inskip; Marjo-Riitta Järvelin; Berthold Koletzko; Deborah A Lawlor; Maarten Lindeboom; Rosemary R C McEachan; Tuija M Mikkola; Johanna L T Nader; Angela Pinot de Moira; Costanza Pizzi; Lorenzo Richiardi; Sylvain Sebert; Ameli Schwalber; Jordi Sunyer; Morris A Swertz; Marina Vafeiadi; Martine Vrijheid; John Wright; Liesbeth Duijts
Journal:  Eur J Epidemiol       Date:  2020-07-23       Impact factor: 8.082

4.  Unraveling the genetic architecture of major depressive disorder: merits and pitfalls of the approaches used in genome-wide association studies.

Authors:  I Schwabe; Y Milaneschi; Z Gerring; P F Sullivan; E Schulte; N P Suppli; J G Thorp; E M Derks; C M Middeldorp
Journal:  Psychol Med       Date:  2019-09-27       Impact factor: 7.723

5.  Objectives, design and main findings until 2020 from the Rotterdam Study.

Authors:  M Arfan Ikram; Guy Brusselle; Mohsen Ghanbari; André Goedegebure; M Kamran Ikram; Maryam Kavousi; Brenda C T Kieboom; Caroline C W Klaver; Robert J de Knegt; Annemarie I Luik; Tamar E C Nijsten; Robin P Peeters; Frank J A van Rooij; Bruno H Stricker; André G Uitterlinden; Meike W Vernooij; Trudy Voortman
Journal:  Eur J Epidemiol       Date:  2020-05-04       Impact factor: 8.082

6.  Cohort profile: InTraUterine sampling in early pregnancy (ITU), a prospective pregnancy cohort study in Finland: study design and baseline characteristics.

Authors:  Tuomas Kvist; Sara Sammallahti; Marius Lahti-Pulkkinen; Cristiana Cruceanu; Darina Czamara; Linda Dieckmann; Alina Tontsch; Simone Röh; Monika Rex-Haffner; Eiina Wolford; Rebecca Reynolds; Johan Eriksson; Sanna Suomalainen-König; Hannele Laivuori; Eero Kajantie; Eija Lahdensuo; Elisabeth Binder; Katri Räikkönen
Journal:  BMJ Open       Date:  2022-01-31       Impact factor: 2.692

Review 7.  Overview of CAPICE-Childhood and Adolescence Psychopathology: unravelling the complex etiology by a large Interdisciplinary Collaboration in Europe-an EU Marie Skłodowska-Curie International Training Network.

Authors:  Hema Sekhar Reddy Rajula; Mirko Manchia; Kratika Agarwal; Wonuola A Akingbuwa; Andrea G Allegrini; Elizabeth Diemer; Sabrina Doering; Elis Haan; Eshim S Jami; Ville Karhunen; Marica Leone; Laura Schellhas; Ashley Thompson; Stéphanie M van den Berg; Sarah E Bergen; Ralf Kuja-Halkola; Anke R Hammerschlag; Marjo Riitta Järvelin; Amy Leval; Paul Lichtenstein; Sebastian Lundstrom; Matteo Mauri; Marcus R Munafò; David Myers; Robert Plomin; Kaili Rimfeld; Henning Tiemeier; Eivind Ystrom; Vassilios Fanos; Meike Bartels; Christel M Middeldorp
Journal:  Eur Child Adolesc Psychiatry       Date:  2021-01-20       Impact factor: 5.349

8.  Novel loci and Mapuche genetic ancestry are associated with pubertal growth traits in Chilean boys.

Authors:  Lucas Vicuña; Tomás Norambuena; José Patricio Miranda; Ana Pereira; Veronica Mericq; Linda Ongaro; Francesco Montinaro; José L Santos; Susana Eyheramendy
Journal:  Hum Genet       Date:  2021-05-28       Impact factor: 4.132

  8 in total

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