| Literature DB >> 30887376 |
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
Fig. 1Logo’s
Participating cohorts
| Short name | Full name cohort | Website | References |
|---|---|---|---|
| ABCD | Amsterdam Born Children and their Development |
| 20813863 |
| ALSPAC | Avon Longitudinal Study on Parents and Children |
| 22507743, 22507742 |
| B58C | 1958 British Birth Cohort |
| 16155052, 17255346 |
| BAMSE | Children, Allergy, Milieu, Stockholm, Epidemiology |
| 26505741 |
| BMDCS | Bone Mineral Density in Childhood Study |
| 17311856 |
| Breathe | BRain dEvelopment and Air polluTion ultrafine particles in scHool childrEn |
| 25734425, 27656889 |
| CATSS | Child and Adolescent Twin Study in Sweden |
| 22506305 |
| CHOP | Children’s Hospital of Philadelphia |
| 22138692 |
| CHS | Children’s Health Study |
| 10051249, 10051248, 17307103,25738666, 28103443, 27115265 |
| CLHNS | Cebu Longitudinal Health and Nutrition Survey |
| 20507864 |
| COPSAC | Copenhagen Prospective Studies on Asthma in Childhood |
| 15521375, 24118234, 24241537 |
| DNBC | Danish National Birth Cohort |
| |
| EFSOCH | Exeter Family Study of Childhood Health | 16466435 | |
| Finntwin12 | Finnish Twin Cohort Study |
| 23298696,17254406, 12537860 |
| Gen3G | Genetics of Glucose regulation in Gestation and Growth | n/a | 26842272 |
| Generation R Study |
| 28070760; 25527369 | |
| GINIplus | German Infant Study on the influence of Nutrition Intervention PLUS environmental and genetic influences on allergy development |
| 20082618 |
| GLAKU | Glycyrrhizin in Licorice |
| 19808634; 17076756; 11390327 |
| HBCS | Helsinki Birth Cohort Study |
| 11312225 |
| Health2006 | Helbred2006 |
| 23615486 |
| INMA | INfancia y Medio Ambiente |
| 21471022 |
| Inter99 | The Inter99 Study |
| 14663300 |
| LISA | Influence of life-style factors on the development of the immune system and allergies in East and West Germany |
| 12358337 |
| MAAS | Manchester Asthma and Allergy Study |
| 25805205, 15029579, 12688622 |
| MOBA | Norwegian Mother and Child Cohort Study |
| 27063603, |
| MUSP | Mater University Study of Pregnancy |
| 25519422 |
| NTR | Netherlands Twin Register |
| 23186620; 23265630 |
| NFBC1966 and NFBC1986 | Northern Finland Birth Cohort |
| 750195; 19060910; 9246691 |
| PIAMA | Preventie en Incidentie van Astma en Mijt Allergie |
| 12688626, 23315435 |
| Project Viva |
| 24639442 | |
| Qtwin | Queensland Twin Registry |
| DOI: 10.1080/00049530410001734865 |
| Raine | The Western Australian Pregnancy Cohort (Raine) Study |
| 8105165; 23230915; 23301674 l; 26169918; 28064197; 28662683 |
| SKOT | Småbørns Kost Og Trivsel |
| 28947836 |
| STRIP | Special Turku Coronary Risk Factor Intervention Project |
| 18430753 |
| TCHAD | Twin Study of Child and Adolescent Development |
| 17539366 |
| TDCOB | The Danish Childhood Obesity Biobank |
| |
| TEDS | Twins Early Development Study |
| 23110994 |
| TRAILS | TRacking Adolescents’ Individual Lives Survey |
| 25431468 |
| Young Finns | The Cardiovascular Risk in Young Finns Study |
| 18263651 |
Study designs
| Cohort | Study design | Years of recruitment | Country |
|---|---|---|---|
| ABCD | Population based pregnancy cohort | 2003–2004 | The Netherlands |
| ALSPAC | Population based birth cohort | 1990–1992 | UK |
| B58C | Population based birth cohort | 1958 | UK |
| BAMSE | Population based cohort | 1994–1996 | Sweden |
| BMDCS | Multi-center observational cohort | 2002–2009 | United States |
| Breathe | Population based cohort | 2002–2006 | Spain |
| CATSS | Populaton based twin birth cohort | 1992-ongoing | Sweden |
| CHOP | Population based cohort | 1988-Present | USA |
| CHS | Community based children cohort | 1993–2002 | United States |
| CLHNS | Population based birth cohort | 1983–1984 | Philippines |
| COPSAC-2000 | Asthma risk birth cohort | From 2000- | Denmark |
| COPSAC-2010 | Population based birth cohort | Ongoing From 2010 | |
| COPSAC-REGISTRY | Severe asthma cases (children) | Ongoing | |
| DNBC-GOYA | Population based pregnancy cohorts | From 1997 | Denmark |
| DNBC-PTB | |||
| EFSOCH | Community-based pregnancy cohort of parent–offspring trios | 2000–2004 | United Kingdom |
| Finntwin12 | Population-based twin-family cohort | 1983–1987 | Finland |
| Gen3G | Population based birth cohort | 2010–2013 | Canada |
| Generation Ra | Population-based birth cohort | 2002–2006 | The Netherlands |
| GINIplus | Population based birth cohort | 1995–1998 | Germany |
| GLAKU | Population-based birth cohort | 1998 | Finland |
| HBCS | Population-based birth cohort | 1934–1944 | Finland |
| Health2006 | General population study | 2006–2008 | Denmark |
| INMA | Population-based birth cohort | 1997–2008 | Spain |
| Inter99 | Population-based randomized intervention study | 1999–2006 | Denmark |
| LISA | population based birth cohort | 1997–1999 | Germany |
| MAASa | Population-based birth cohort | 1996/1997 | UK |
| MOBA | Population based birth cohort | 1999–2008 | Norway |
| MUSP | Pregnancy general population | 1981–1984 | Australia |
| NTRa | Birth general twin population | From 86—ongoing | Netherlands |
| NFBC1966 and NFBC1986 | longitudinal birth cohort | 1966 and 1986 | Finland |
| PIAMA | Population based birth cohort, enriched for high risk allergy children (allergic mother) | 1996–1997 | Netherlands |
| Project Vivaa | Population based birth cohort | 1999–2002 | USA |
| Qtwin | Longitudinal twin study | 1980–2004 | Australia |
| Raine | Longitudinal pregnancy cohort study | 1989–1991 | Australia |
| SKOT | Observational cohort study, monitoring healthy young children from 9 to 36 months of age. | 2006–2007 (SKOT I); 2011–2013 (SKOT II) | Denmark |
| STRIP | Prospective randomized life-style intervention trial | 1990–1992 | Finland |
| TCHAD | Birth general twin population | 1985–1987 | Sweden |
| TDCOB | Case–control study | Children and adolescence with obesity: 2007–2013; Population-based sample: 2010–2013 | Denmark |
| TEDS | Population based twin birth cohort | From 1994—Ongoing | UK |
| TRAILS-pop | Population based | 2001/2002 | Netherlands |
| TRAILS-CC | High risk | 2004 | Netherlands |
| Young Finns | Population based follow-up from childhood to adulthood | 1980 | Finland |
aIncludes individuals from non-European descent
Data collected
| Cohort | N genotyped childrena | Phenotypes | Age periods data available | ||||
|---|---|---|---|---|---|---|---|
| Pregnancy | Pre-school | School | Adolescence | Adult | |||
| ABCD | 1192 | Broad | x | x | x | x | |
| ALSPAC | 10,000 | Broad | x | x | x | x | x |
| B58C | 6491 | Broad | x | x | x | x | x |
| BAMSE | 2500 | Broad | x | x | x | x | x |
| BMDCS | 1885 | Broad | x | x | x | x | |
| Breathe | 1667 | Broad | x | ||||
| CATSS | 13,576 | Broad, focus on psychiatry | x, information from registers | x | x | x | |
| CHOP | 43,320 | Broad | x | x | x | ||
| CHS | 3986 | Broad, focus on respiratory and metabolic health | x | x | |||
| CLHNS | 1779 | Broad | x | x | x | x | |
| COPSAC-2000 | 411 | Broad | x | x | x | x | x |
| COPSAC-2010 | 700 | Broad | x | x | x | ||
| COPSAC-REGISTRY | 1240 | Broad | x | x | |||
| DNBC | 1500 | Broad | x | x | x | x | |
| 1500 | |||||||
| EFSOCH | 812 | Anthropometric and glycemic traits | x | x | Parents only | ||
| Finntwin12 | 1264 | Broad | Retrospective | Retrospective | x | x | x |
| Gen3G | 582 | Broad, focus on metabolic/adiposity | x | on-going | |||
| Generation R | 5731 | Broad | x | x | x | x | |
| GINIplus | 835 | broad | x | x | x | x | Ongoing |
| GLAKU | 357 | Broad | x | x | x | x | x |
| HBCS | 1566 | Broad | x | x | x | x | |
| Health2006 | 2802 | Cardiovascular disease, type 2 diabetes, and other lifestyle related diseases | x | ||||
| INMA | 1517 | Broad | x | x | x | Ongoing | |
| Inter99 | 6184 | Cardiovascular disease, type 2 diabetes, other lifestyle related diseases, glucose tolerance | x | ||||
| LISA | 674 | Broad | x | x | x | x | Ongoing |
| MAAS | 919 | asthma and allergy focused | x | x | x | x | Ongoing |
| MOBA | 17,000 | Broad | x | x | x | x | x |
| MUSP | 1200 | Broad | x | x | x | x | x |
| NTR | 7750 | Broad | x | x | x | x | Ongoing |
| NFBC1966 NFBC1986 | 5402 | Broad | x | x | x | x | x |
| 3743 | |||||||
| PIAMA | 2113 | Broad, focus on respiratory health | x | x | x | x | |
| Project Viva | 1580 | Broad | x | x | x | x | |
| Qtwin | 4500 | Broad | x | x | x | ||
| Raine | 1500 | Broad | x | x | x | x | Ongoing |
| SKOT I | 260 | Dietary intake, growth, cognitive development, overweight and lifestyle related diseases | x | ||||
| SKOT II | 112 | ||||||
| STRIP | 666 | Broad | x | x | x | x | x |
| TCHAD | 990 | Broad | x | x | x | ||
| TDCOB | 1771 | Overweight and Obesity | x | x | x | x | |
| TEDS | 10,346 | Broad | x | x | x | x | |
| TRAILS-pop | 1354 | Broad | Retrospective | Retrospective | Retrospective | x | x |
| TRAILS-CC | 341 | ||||||
| Young Finns | 2442 | Broad | x | x | x | x | x |
aSome cohorts also have genotype data on parents
Fig. 2Genome-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