Literature DB >> 32705500

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

Vincent W V Jaddoe1,2, Janine F Felix3,4, Anne-Marie Nybo Andersen5, Marie-Aline Charles6,7, Leda Chatzi8, Eva Corpeleijn9, Nina Donner10, Ahmed Elhakeem11,12, Johan G Eriksson13,14,15,16, Rachel Foong17,18, Veit Grote19, Sido Haakma20, Mark Hanson21,22, Jennifer R Harris23,24, Barbara Heude6, Rae-Chi Huang17, Hazel Inskip22,25, Marjo-Riitta Järvelin26,27,28,29, Berthold Koletzko19, Deborah A Lawlor11,12,30, Maarten Lindeboom31, Rosemary R C McEachan32, Tuija M Mikkola14, Johanna L T Nader33, Angela Pinot de Moira5, Costanza Pizzi34, Lorenzo Richiardi34, Sylvain Sebert26, Ameli Schwalber10, Jordi Sunyer35,36,37,38, Morris A Swertz20,39, Marina Vafeiadi40, Martine Vrijheid35,36,37, John Wright32, Liesbeth Duijts3,4.   

Abstract

Early life is an important window of opportunity to improve health across the full lifecycle. An accumulating body of evidence suggests that exposure to adverse stressors during early life leads to developmental adaptations, which subsequently affect disease risk in later life. Also, geographical, socio-economic, and ethnic differences are related to health inequalities from early life onwards. To address these important public health challenges, many European pregnancy and childhood cohorts have been established over the last 30 years. The enormous wealth of data of these cohorts has led to important new biological insights and important impact for health from early life onwards. The impact of these cohorts and their data could be further increased by combining data from different cohorts. Combining data will lead to the possibility of identifying smaller effect estimates, and the opportunity to better identify risk groups and risk factors leading to disease across the lifecycle across countries. Also, it enables research on better causal understanding and modelling of life course health trajectories. The EU Child Cohort Network, established by the Horizon2020-funded LifeCycle Project, brings together nineteen pregnancy and childhood cohorts, together including more than 250,000 children and their parents. A large set of variables has been harmonised and standardized across these cohorts. The harmonized data are kept within each institution and can be accessed by external researchers through a shared federated data analysis platform using the R-based platform DataSHIELD, which takes relevant national and international data regulations into account. The EU Child Cohort Network has an open character. All protocols for data harmonization and setting up the data analysis platform are available online. The EU Child Cohort Network creates great opportunities for researchers to use data from different cohorts, during and beyond the LifeCycle Project duration. It also provides a novel model for collaborative research in large research infrastructures with individual-level data. The LifeCycle Project will translate results from research using the EU Child Cohort Network into recommendations for targeted prevention strategies to improve health trajectories for current and future generations by optimizing their earliest phases of life.

Entities:  

Keywords:  Birth cohorts; Consortium; Exposome; Life course; Non-communicable diseases

Mesh:

Year:  2020        PMID: 32705500      PMCID: PMC7387322          DOI: 10.1007/s10654-020-00662-z

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


Rationale

Early life seems to be an important window of opportunity to improve health across the full lifecycle. An accumulating body of evidence suggests that exposure to adverse stressors during early life leads to developmental adaptations, which subsequently affect disease risk in later life [1]. Moreover, geographical, socio-economic, and ethnic differences are related to health inequalities from early life onwards [1]. These research findings suggest that optimizing early-life conditions has the yet unfulfilled potential to improve life course health trajectories for individuals themselves and also for their offspring through transgenerational effects [2]. A better understanding of the causality, pathways and life course health trajectories explaining associations of early-life stressors with later life disease is urgently needed to translate results from observational studies into population-health prevention strategies. Many European pregnancy and childhood cohorts have been established over the last years to assess the associations of early life with health across the lifecycle [3]. These cohorts are invaluable resources to obtain insight into societal, environmental, lifestyle and nutrition related determinants that may influence the onset and evolution of risk factors and diseases in later life. Cohort studies that started during pregnancy or early childhood provide the unique opportunity to study the potential for early-life interventions on factors that cannot be easily studied in experimental settings, such as socio-economic, migration, urban environment and lifestyle related determinants. Data from cohort studies can also be used for advanced analytical approaches such  as sibling analyses and Mendelian randomization to assess causality of observed associations [4]. The impact of these cohorts and their data could be strongly increased by combining data from different cohorts. Combining data will lead to larger numbers and the opportunity to better identify risk groups and risk factors leading to disease across the lifecycle [3]. Also, it enables research for a better causal understanding and modelling of life course health trajectories. The enormous wealth of high-quality prospective cohort studies enables collaboration at individual participant data level. Meta-analyzing individual participant data has the advantage that it can identify smaller effect estimates, specific subgroups, and mediator effects and, maybe most importantly, capitalizes on existing published and unpublished data. Results from well-performed individual participant data meta-analyses suffer less from publication bias than meta-analyses based on published data. Multiple individual participant data meta-analyses on environmental exposures, lifestyle related and (epi)genetic associations have already been published as part of birth cohort collaborations [5-22]. The LifeCycle Project is a Horizon 2020-funded (2017–2022) international project. The general objective of the LifeCycle Project is to bring together pregnancy and childhood cohort studies into a new, open and sustainable EU Child Cohort Network, to use this network for identification of novel markers of early-life stressors affecting health trajectories throughout the life course, and to translate findings into policy recommendations for targeted prevention strategies. The overall concepts, design and future perspectives are described in this paper. The logos of the LifeCycle Project are given in Fig. 1.
Fig. 1

Logo’s of the LifeCycle Project and EU Child Cohort Network

Logo’s of the LifeCycle Project and EU Child Cohort Network

The EU Child Cohort Network

The EU Child Cohort Network, the main deliverable of the LifeCycle Project, brings together nineteen pregnancy and childhood cohorts. Together, they include more than 250,000 children and their parents (Fig. 2; Table 1). Recruitment to the cohorts of the EU Child Cohort Network began prior to and during pregnancy, as well as in childhood; together, the follow-up of these cohorts span the full life course and contain detailed phenotypic information and biological samples. The research potential of the EU Child Cohort Network is summarized in Table 2. The EU Child Cohort Network should be operational mid-2020. This network is open for other partners with population-based cohorts that started in early life and will be sustainable after the duration of the Horizon 2020 funded LifeCycle Project. The EU Child Cohort Network could contribute to future collaborations between different cohorts.
Fig. 2

LifeCycle Project core cohorts that established the EU Child Cohort Network

Table 1

LifeCycle Project cohorts that together form the basis of the EU Child Cohort Network

Cohort, Country (N)Design, birth years, Follow-up Main early-life stressorsAvailable mediatorsAvailable outcomes

ALSPAC

United Kingdom

N = 14,500

[74, 75]

Prospective, 1991–1992

Pregnancy-25 yrs

Socio-economic, migration, and life-style determinants, genome wide association screen

Epigenetics

Metabolomics

Allergy

Brain development by MRI

Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose

Respiratory: wheezing, infections, asthma, lung function

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

ALSPAC-G2

United Kingdom

N = 2000

[76]

Prospective, from 2011

Preconception-2 yrs

Socio-economic, migration and life-style determinants

Epigenetics

Metabolomics

Brain development by ultrasound

Cardio-metabolic: BMI, blood pressure

Respiratory: wheezing, asthma

Mental: behaviour, cognition

BIB

United Kingdom

N = 11,000

[77]

Prospective, 2007–2011

Pregnancy-9 yrs

Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen

Epigenetics

Metabolomics

Allergy

Brain development by ultrasound

Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose

Respiratory: wheezing, infections, asthma, lung function

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

CHOP

Germany

N = 500

[78]

Prospective, 2002–2004

Pregnancy-11 yrs

Socio-economic, life-style determinants, genome wide association screen

Epigenetics

Metabolomics, Allergy

Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose

Respiratory: wheezing, asthma

Mental: behaviour, cognition

DNBC

Denmark

N = 70,000

[79]

Prospective, 1996–2002

Pre-pregnancy-20 yrs

Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen

Allergy

Cardio-metabolic: BMI

Respiratory: wheezing, infections, asthma, lung function

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

EDEN

France

N = 2000

[80]

Prospective, 2003–2005

Pre-school-15 yrs

Socio-economic, migration and life-style determinants

Allergy

Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose

Respiratory: wheezing, lung function, asthma. Mental: behaviour, cognition, education

ELFE

France

N = 18,000

[81]

Prospective, 2011

Pre-school-5 yrs

Socio-economic, migration, urban environment, life-style determinants

Allergy

Cardio-metabolic: BMI

Respiratory: wheezing, infections, asthma

Mental: behaviour, cognition

GECKO

the Netherlands

N = 2500

[82]

Prospective, 2006–2007

Pregnancy-10 yrs

Socio-economic, migration, life-style

Allergy

Cardio-metabolic: BMI, blood pressure

Respiratory: wheezing, asthma

Mental: behaviour, education

Generation R

the Netherlands

N = 7000

[83, 84]

Prospective, 2002–2006

Pregnancy-17 yrs

Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen

Epigenetics

Metabolomics Allergy

Brain development by ultrasound/MRI

Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose

Respiratory: wheezing, infections, lung function, asthma

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

Generation R Next

the Netherlands

N = 2000

Prospective, 2016–2019

Pre-pregnancy-2 yrs

Socio-economic, migration, urban environment, and life-style determinants

Epigenetics

Metabolomics Allergy

Brain development by ultrasound/MRI

Cardio-metabolic: body mass index, blood pressure, cardiac structure and function, lipids, insulin, glucose

Respiratory: wheezing, infections, lung function, asthma

Mental: behaviour, cognition

HBCS

Finland

N = 13,000

[85]

Longitudinal, 1934–1944

Pregnancy-80 yrs

Socio-economic, migration, and life-style determinants, genome wide association screen

Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose, hypertension, type 2 diabetes, dyslipidaemia

Respiratory: asthma, COPD

Mental: cognition, psychiatric illness

INMA

Spain

N = 3500

[86]

Prospective, 1997–2008

Pregnancy-20 yrs

Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen

Epigenetics

Metabolomics Allergy

Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose

Respiratory: wheezing, respiratory infections, lung function, asthma

Mental: behaviour, cognition, ASD, ADHD, anxiety, depression

MoBa

Norway

N = 90,000

[87]

Prospective, 1999–2008

Pregnancy-14 yrs

Socio-economic, urban environment and life-style determinants, genome wide association screen

Epigenetics

Allergy

Brain development by MRI

Cardio-metabolic: BMI, blood pressure

Respiratory: wheezing, respiratory infections, asthma

Mental: behaviour, cognition, ASD, ADHD, anxiety, depression

NFBC1966

Finland

N = 12,000

[88]

Prospective, 1966

Pregnancy-50 yrs

Socio-economic, migration, life-style determinants, genome wide association screen

Epigenetics

Metabolomics Allergy

Brain development by MRI

Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose

Respiratory: wheezing, respiratory infections, lung function, asthma, COPD

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

NFBC1986

Finland

N = 9500

[89]

Prospective, 1986

Pregnancy-30 yrs

Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen

Epigenetics

Metabolomics Allergy

Brain development by MRI

Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose

Respiratory: wheezing, respiratory infections, lung function, asthma, COPD

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

NINFEA

Italy

N = 7500

[90]

Prospective, 2005–2016

Pregnancy-13 yrs

Socio-economic, urban environment, and life-style determinants

Allergy

Cardio-metabolic: BMI

Respiratory: wheezing, respiratory infections, asthma

Mental: behaviour, education

RAINE

Australia

N = 2900

[91]

Prospective, 1989–1992

Pregnancy-25 yrs

Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen

Epigenetics

Metabolomics Allergy

Brain development

Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose

Respiratory: wheezing, respiratory infections, lung function, asthma

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

RHEA

Greece

N = 1300

[92]

Prospective, 2007–2008

Pregnancy-7 yrs

Socio-economic, migration, urban environment, and life-style determinants

Epigenetics

Metabolomics Allergy

Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose

Respiratory: wheezing, respiratory infections, lung function, asthma

Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression

SWS

United Kingdom

N = 3000

[93]

Prospective, 1998–2007

Prepregnancy-18 yrs

Socio-economic and life-style determinants

Allergy

Cardio-metabolic: BMI, blood pressure, cardiac function and structure

Respiratory: wheezing, respiratory infections, lung function, asthma

Mental: behaviour, cognition, education, anxiety, depression

Table 2

Potential of the LifeCycle Project-EU Child Cohort Network

Collaboration between prospective pregnancy/child cohort studies offers the opportunities to1
Perform analyses in over 250,000 children and their parents
Harmonize methods for data collection, biobanks, management, and analyses
Perform analyses on published and unpublished data which limits publication bias
Perform individual participant data meta-analyses with better statistical precision
Stratify groups by geographical area or sex
Compare determinants and outcomes between European populations
Examine consequences of small variations in determinants from early life onwards
Identify variations in geography and time periods for specific associations
Infer causality from observed associations by advanced analytical approaches
Enable analyses on life course trajectories on risk factors of non-communicable diseases
Explore different life course models
LifeCycle Project core cohorts that established the EU Child Cohort Network LifeCycle Project cohorts that together form the basis of the EU Child Cohort Network ALSPAC United Kingdom N = 14,500 [74, 75] Prospective, 1991–1992 Pregnancy-25 yrs Socio-economic, migration, and life-style determinants, genome wide association screen Epigenetics Metabolomics Allergy Brain development by MRI Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose Respiratory: wheezing, infections, asthma, lung function Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression ALSPAC-G2 United Kingdom N = 2000 [76] Prospective, from 2011 Preconception-2 yrs Socio-economic, migration and life-style determinants Epigenetics Metabolomics Brain development by ultrasound Cardio-metabolic: BMI, blood pressure Respiratory: wheezing, asthma Mental: behaviour, cognition BIB United Kingdom N = 11,000 [77] Prospective, 2007–2011 Pregnancy-9 yrs Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen Epigenetics Metabolomics Allergy Brain development by ultrasound Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose Respiratory: wheezing, infections, asthma, lung function Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression CHOP Germany N = 500 [78] Prospective, 2002–2004 Pregnancy-11 yrs Socio-economic, life-style determinants, genome wide association screen Epigenetics Metabolomics, Allergy Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose Respiratory: wheezing, asthma Mental: behaviour, cognition DNBC Denmark N = 70,000 [79] Prospective, 1996–2002 Pre-pregnancy-20 yrs Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen Cardio-metabolic: BMI Respiratory: wheezing, infections, asthma, lung function Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression EDEN France N = 2000 [80] Prospective, 2003–2005 Pre-school-15 yrs Socio-economic, migration and life-style determinants Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose Respiratory: wheezing, lung function, asthma. Mental: behaviour, cognition, education ELFE France N = 18,000 [81] Prospective, 2011 Pre-school-5 yrs Socio-economic, migration, urban environment, life-style determinants Cardio-metabolic: BMI Respiratory: wheezing, infections, asthma Mental: behaviour, cognition GECKO the Netherlands N = 2500 [82] Prospective, 2006–2007 Pregnancy-10 yrs Socio-economic, migration, life-style Cardio-metabolic: BMI, blood pressure Respiratory: wheezing, asthma Mental: behaviour, education Generation R the Netherlands N = 7000 [83, 84] Prospective, 2002–2006 Pregnancy-17 yrs Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen Epigenetics Metabolomics Allergy Brain development by ultrasound/MRI Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose Respiratory: wheezing, infections, lung function, asthma Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression Generation R Next the Netherlands N = 2000 Prospective, 2016–2019 Pre-pregnancy-2 yrs Socio-economic, migration, urban environment, and life-style determinants Epigenetics Metabolomics Allergy Brain development by ultrasound/MRI Cardio-metabolic: body mass index, blood pressure, cardiac structure and function, lipids, insulin, glucose Respiratory: wheezing, infections, lung function, asthma Mental: behaviour, cognition HBCS Finland N = 13,000 [85] Longitudinal, 1934–1944 Pregnancy-80 yrs Socio-economic, migration, and life-style determinants, genome wide association screen Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose, hypertension, type 2 diabetes, dyslipidaemia Respiratory: asthma, COPD Mental: cognition, psychiatric illness INMA Spain N = 3500 [86] Prospective, 1997–2008 Pregnancy-20 yrs Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen Epigenetics Metabolomics Allergy Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose Respiratory: wheezing, respiratory infections, lung function, asthma Mental: behaviour, cognition, ASD, ADHD, anxiety, depression MoBa Norway N = 90,000 [87] Prospective, 1999–2008 Pregnancy-14 yrs Socio-economic, urban environment and life-style determinants, genome wide association screen Epigenetics Allergy Brain development by MRI Cardio-metabolic: BMI, blood pressure Respiratory: wheezing, respiratory infections, asthma Mental: behaviour, cognition, ASD, ADHD, anxiety, depression NFBC1966 Finland N = 12,000 [88] Prospective, 1966 Pregnancy-50 yrs Socio-economic, migration, life-style determinants, genome wide association screen Epigenetics Metabolomics Allergy Brain development by MRI Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose Respiratory: wheezing, respiratory infections, lung function, asthma, COPD Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression NFBC1986 Finland N = 9500 [89] Prospective, 1986 Pregnancy-30 yrs Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen Epigenetics Metabolomics Allergy Brain development by MRI Cardio-metabolic: BMI, blood pressure, cardiac structure and function, lipids, insulin, glucose Respiratory: wheezing, respiratory infections, lung function, asthma, COPD Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression NINFEA Italy N = 7500 [90] Prospective, 2005–2016 Pregnancy-13 yrs Socio-economic, urban environment, and life-style determinants Cardio-metabolic: BMI Respiratory: wheezing, respiratory infections, asthma Mental: behaviour, education RAINE Australia N = 2900 [91] Prospective, 1989–1992 Pregnancy-25 yrs Socio-economic, migration, urban environment, and life-style determinants, genome wide association screen Epigenetics Metabolomics Allergy Brain development Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose Respiratory: wheezing, respiratory infections, lung function, asthma Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression RHEA Greece N = 1300 [92] Prospective, 2007–2008 Pregnancy-7 yrs Socio-economic, migration, urban environment, and life-style determinants Epigenetics Metabolomics Allergy Cardio-metabolic: BMI, blood pressure, lipids, insulin, glucose Respiratory: wheezing, respiratory infections, lung function, asthma Mental: behaviour, cognition, education, ASD, ADHD, anxiety, depression SWS United Kingdom N = 3000 [93] Prospective, 1998–2007 Prepregnancy-18 yrs Socio-economic and life-style determinants Cardio-metabolic: BMI, blood pressure, cardiac function and structure Respiratory: wheezing, respiratory infections, lung function, asthma Mental: behaviour, cognition, education, anxiety, depression Potential of the LifeCycle Project-EU Child Cohort Network The LifeCycle Project and its EU Child Cohort Network do not stand on their own. By building on and collaborating with existing initiatives, we will create new synergies and form the basis of future initiatives. These synergies bring together principal investigators and their expertise of several international collaborations. These initiatives include: Cohort collaboration and data sharing platforms: BioSHaRe [23], CHICOS [24], DataSHIELD [25], DynaHEALTH [26], EarlyNutrition [27], ENRIECO [28], HELIX [29, 30], InterConnect [31] and NutriMenthe [32] (all EU-FP6, FP7 projects or Horizon2020). Genetic and epigenetic collaborations: Early Growth & Longitudinal Epidemiology (EAGLE), Early Growth Genetics (EGG) [33], Pregnancy And Childhood Epigenetics (PACE) [34] (no specific funds for the collaboration). E-Learning: Early Nutrition Academy [35] (EU-FP7 project).

Data harmonisation

The LifeCycle Project has developed a harmonized set of variables in each cohort necessary to perform multi-cohort analyses on different research questions. The harmonization work is performed by a data-harmonization group with representatives from each partner or cohort. Based on the primary research focus in the LifeCycle Project, a priority list of variables has been developed for harmonisation. The cohort studies participating in the EU Child Cohort Network will be further enriched with novel harmonized integrated data on early-life stressors related to socio-economic, migration, urban environment and lifestyle determinants, based on data availability within the cohorts and external data from registries [36]. Integrated data will also be used to construct a novel holistic ‘dynamic early-life exposome’ model, which will encompass many human environmental exposures during various stages of early life [37-40]. The harmonized variables relate to the main research hypotheses (Fig. 3), and include:
Fig. 3

Main concepts of the LifeCycle Project and related data in the EU Child Cohort Network

Main concepts of the LifeCycle Project and related data in the EU Child Cohort Network Main exposures: Socioeconomic, migration, urban environment, lifestyle and nutrition related factors, genome-wide association screen; Main mediators: Epigenetics, metabolomics, allergy, brain development; Main outcomes: Cardio-metabolic (body mass index (BMI), body composition, blood pressure, cardiac structure and function, lipids, insulin, glucose); respiratory (allergy, wheezing, infections, lung function, asthma), mental (behaviour, cognition, education, ASD, ADHD, anxiety, depression); The availability of these data in different cohorts is given in Table 1.

Federated data analysis approach

Analyses in the EU Child Cohort will be predominantly using DataSHIELD, developed as part of the EU-FP7 BioSHaRe Project [23, 25]. This is a safe and robust data analysis platform to perform joint multisite individual participant data meta-analyses, without physically transferring data (Fig. 4). DataSHIELD enables connections between local servers to analyze harmonized data located at different institutes. The major advantage of this approach is that the data from the different institutes, which together form the EU Child Cohort Network, are accessible for different researchers from various sites whilst they remain at the local sites.
Fig. 4

Federated analysis approach using DataSHIELD approach

Federated analysis approach using DataSHIELD approach

Fair principles

The EU Child Cohort Network data management and access are based on the following key principles: Full compliance with best practice in data privacy and security; Use of coded data with appropriate institutional and participant consent; Use of privacy enhancing technologies such as filters; Use of policies that enable greater use of data in research; Approval of all procedures, policies and methods by the relevant local authorities. Management of and access to all data is primarily the responsibility of each institution. The FAIR (findable, accessible, interoperable, reusable) principles are taken into account for the general data management approach.

Findable

The LifeCycle Project has revitalized the existing www.birthcohorts.net website. This website gives an overview of pregnancy and birth cohorts and the data available in these cohorts. Specific details of variables included in the EU child cohort network and their availability in the cohorts are presented in the open access EU Child Cohort Network Variable Catalogue. The catalogue was built using the MOLGENIS software platform for scientific data extending on BBMRI-ERIC directory of biobanks [41, 42]. It also documents how each cohort has harmonized these variables, including information about the source variables used by the cohorts. No actual data are given in the online catalogue. All relevant websites and their contents are presented in Table 3.
Table 3

Websites of the LifeCycle Project–EU child cohort network

Data related to the LifeCycle Project is findable through different websites
LifeCyce Project
https://lifecycle-project.eu website
Overview of the LifeCycle Project
All protocols for harmonisation and setting up the data-servers
Open access
Links to other relevant websites
Birthcohorts.net
www.birthcohorts.net
Overview of all cohorts and their data
Open access, no restriction for access on cohort information
EU Child Cohort Network Variable Catalogue
http://catalogue.lifecycle-project.eu
Overview of harmonized data and variables in each cohort
Open access
Find function is included in website
EU Child Cohort harmonized data
Cohort websites via www.lifecycle-project.eu
Harmonized data from different cohorts
Data server is within institutional firewall
Access to data can only be given by data owner (LifeCycle Project partner)
Websites of the LifeCycle Project–EU child cohort network

Accessible

A harmonized set of data for EU Child Cohort Network is available by a server controlled by or located at each specific institute. Harmonized data from each cohort are held on secure Opal servers (http://opaldoc.obiba.org/en/latest/) at their institution. Protocols for setting up this data infrastructure are available, together with YouTube instruction videos. Data are accessed via a central analysis server using the R-based platform DataSHIELD. Access to data is conditional on approval by the cohort. Partners and their cohorts can always decide to share research data without using DataSHIELD, conditional on relevant local ethical and legal approvals. This approach is used for analyses that are not yet possible in DataSHIELD [25]. The field of data sharing and cross study analyses is rapidly advancing. Although we start with using DataSHIELD, we recognise that over time this may change.

Interoperable

Existing data have been harmonized and integrated into exposure variables to make them interoperable. Protocols for harmonization are available online. All harmonized data from different cohorts have been renamed into standardized variable names. A full list of the available variables per cohort is available in the EU Child Cohort Network Variable Catalogue.

Reusable

The EU Child Cohort Network reuses data that are already available within cohorts. The EU Child Cohort Network, with the harmonized set of variables and infrastructure, should be sustainable beyond the duration of the LifeCycle Project. During the last two years, four other European consortia have been funded, which are planning to build upon the harmonized data and federated analysis infrastructure in the EU Child Cohort Network. These consortia include the EUCAN-Connect, NutriPROGRAM, ATHLETE and LongITools Projects. Future collaborations may include not only European, but also global initiatives such as the NIH-Environmental influences on Child Health Outcomes (ECHO) Programme in the United States, which aims to build a virtual paediatric cohort based on new and existing birth cohorts, recognizing the enormous opportunities in optimizing and networking existing resources [43, 44].

Data governance

The LifeCycle Project or EU Child Cohort Network do not own data, but bring data from other cohorts together via a federated data analysis platform. Ethical and legal responsibility for data management and security is maintained by the source studies or home institutions. The principal investigators or home institutions should always administer permission for external access to specific data on their server for addressing research questions. The EU Child Cohort Network cannot provide open access to researchers. The data sharing protocols and agreements will be updated regularly, according to new legal practices, such as the European General Data Protection Regulation 2016/679 (GDPR). All governance protocols will take not only the short-term, but also the long-term EU Child Cohort Network, beyond the LifeCycle Project duration, into account.

EU Child Cohort Network research proposals

Proposals for research using the EU Child Cohort Network can be put forward by both LifeCycle Project partners and other researchers. External researchers can send a request for EU Child Cohort Network data use to the participating cohorts or lifecycle@erasmusmc.nl. Each LifeCycle Project proposal is discussed in the relevant coordinating work package (https://lifecycle-project.eu/for-scientists/workpackages/) and subsequently distributed among all cohorts participating in the LifeCycle Project and EU Child Cohort Network. Cohorts can opt-in or opt-out of each analysis, depending on the data availability, research interests or involvement in other projects. In the first phase, the focus of research projects is on those projects related to the LifeCycle Project research aims (see below). An efficient governance structure was organized and agreed upon by researchers and ethical and legal representatives. EU Child Cohort Network governance structure will be updated regularly where needed and will be made sustainable after the LifeCycle Project duration. Because there is no physical transfer of data needed, we are currently exploring the possibility of working with a short Data Access Agreement that replaces commonly used Data Transfer Agreements. When the EU Child Cohort Network is fully operational we aim to have regular EU Child Cohort Network meetings or telephone conferences to discuss: Research projects (novel proposals, progress of ongoing projects); Harmonization (novel proposals, progress of ongoing efforts); DataSHIELD analysis approaches (priorities for further development); Any relevant ethical or legal issues concerning federated analysis approaches; Participants in these meetings or telephone conferences are not only LifeCycle Project Partners, but representatives of all institutes that have harmonized their data and set up the IT infrastructure needed for the federated analysis of data via DataShield.

LifeCycle Project primary research areas

The LifeCycle Project uses the integrated and harmonized set of variables from the EU Child Cohort Network for identification of early-life stressors influencing cardio-metabolic, respiratory and mental developmental adaptations and health trajectories during the full life course (Fig. 3).

Integrated early-life stressors approach and the exposome

Early-life stressors, including socio-economic, migration, urban environmental, and lifestyle related factors, have been associated with cardio-metabolic, respiratory, and mental health and disease, which together contribute greatly to the global burden of non-communicable diseases [5-22]. An accumulating body of evidence suggests that exposure to these factors during fetal life and childhood affects later life health trajectories [38]. Thus far, studies focused on the effects of early-life environmental exposures on later life health outcomes have largely been using a ‘one-exposure at one-time point’ approach. Research from LifeCycle Project partners suggests that instead of exposure to single stressors that individually may have weak effects, exposure to a cluster or pattern of adverse early-life stressors in specific age windows is more likely to influence health during the lifecycle [39]. We will apply a holistic ‘early-life exposome’ model to encompass many human environmental exposures, which is dynamic from conception onwards and complements the genome. To develop this early-life exposome, we will specifically take into account measurements in the external environment (socio-economic, migration, urban environment, and lifestyle factors), and biological markers reflecting the internal environment (DNA methylation, RNA expression, and metabolomics), and the dynamic life course nature of the exposome. We will use available methods developed as part of the EU-FP7 HELIX Project for further development of the early-life exposome model [29].

Cardio-metabolic, respiratory and mental health outcomes

Embryonic life, fetal life and early childhood are characterized by high developmental rates and seem to be critical periods for developmental adaptations with long-term consequences. Research from LifeCycle Project partners have shown that specific maternal lifestyle factors and fetal growth variation in early pregnancy are related to non-communicable diseases and their risk factors [45-49]. We will use repeatedly measured exposure, mediator and outcome data from the EU Child Cohort Network to compare different potential life course models including those assuming specific critical periods and those assuming interactive and cumulative effects throughout the life course. We will relate early-life stressors measured in different early-life periods (preconception, fetal life, early childhood) with life course health trajectories. We specifically hypothesize that early-life stressors lead to developmental adaptations of: The cardiovascular system assessed in detail by advanced cardiac and great vessel ultrasound or Magnetic Resonance Imaging (MRI), and systemic metabolism, detected by measuring hundreds of metabolites using high-throughput approaches, which precede the development of cardio-metabolic diseases [50-60]. Lung volumes, airway patency assessed by lung function measurements and clinical assessments, and immunological or allergy-related assessments, which precede the development of respiratory disease [61-63]. Structural and functional brain development assessed by ultrasound in fetal life or early infancy, or brain MRI in later life, which precede the development of mental health outcomes [64-67].

Epigenetic pathways

An accumulating body of evidence suggests that epigenetic changes play a key role in the associations of early-life stressors with lifecycle health and disease trajectories [68]. DNA methylation, the most frequently studied epigenetic phenomenon in large populations, is a dynamic process, which may be influenced by environmental stressors such urban environment, dietary factors and smoking [68]. DNA methylation changes are more common in early life. LifeCycle Project partners have identified DNA methylation markers related to specific early-life stressors including maternal BMI, smoking, dietary factors and birth weight [12, 17]. The EU Child Cohort Network brings together many pregnancy and childhood cohorts with information about epigenome-wide DNA methylation. Availability of repeatedly measured DNA methylation and of RNA expression data enables studies on persistence and functionality of DNA methylation markers potentially involved in early-life programming of non-communicable diseases.

Population impact

The concept that early life is critical for health and disease throughout the life course is well-acknowledged. However, there is still not much evidence for effective prevention or intervention strategies using early life as a window of opportunity to maximize the human developmental potential during the full life course. We will use different approaches to translate findings into population health recommendations. These include causal inference, aggregation of evidence for interventions based on reviews, dynamic microsimulation, and development of prediction models. Causality cannot be directly concluded from observational studies. Advanced analytical approaches that can help to infer causality include sibling comparison studies, propensity score matching and Mendelian randomization studies, in which genetic variants are used as unconfounded proxies for adverse exposures [69]. The EU Child Cohort Network facilitates integration of different causal inference methods and comparison of their findings, which will strengthen causal inference needed for translation of findings from observational studies to public health recommendations. We will review and summarize evidence based on findings both from observational studies in the EU Child Cohort Network and from published intervention studies to develop recommendations for population and subgroup-specific interventions focused on the earliest phases of life. Dynamic microsimulation modelling using data from cohort studies enables policy evaluations and scenario analyses focused on early-life interventions when experimental studies are not possible [70, 71]. The EU Child Cohort Network provides a unique infrastructure for these analyses, because of the available data and variation in exposures and outcomes, life course trajectories of non-communicable diseases and various subpopulations with different baseline risks. Data from observational studies can help to develop  models to predict risk factors for non-communicable diseases. Previous studies suggested that pregnancy, birth and infancy characteristics have the potential to identify groups at risk for obesity [72, 73]. The EU Child Cohort Network is the ideal platform to develop models to predict from early-life stressor data the onset of risk factors for cardio-metabolic, respiratory and mental disease across the lifecycle. Models can include various background characteristics, which enable baseline risk estimation from socio-economic, migration, environment and lifestyle stressors, which may be difficult to modify in the short-term but help to predict the outcomes of interest. Finally, we will develop E-learning modules and eHealth applications that will be made widely available to make the knowledge and research findings available for educational and health care purposes.

Conclusion

The LifeCycle Project and its EU Child Cohort Network lead to great opportunities for researchers to combine harmonized data from different cohorts by a federated analysis platform. It also provides a novel model for collaborative research in large research infrastructures with individual level data. The LifeCycle Project will translate results from research using the EU Child Cohort Network into recommendations for targeted prevention strategies to improve health trajectories for current and future generations by optimizing their earliest phases of life. Below is the link to the electronic supplementary material. Supplementary material 1 (DOCX 25 kb)
  91 in total

1.  Right ventricular systolic dysfunction in young adults born preterm.

Authors:  Adam J Lewandowski; William M Bradlow; Daniel Augustine; Esther F Davis; Jane Francis; Atul Singhal; Alan Lucas; Stefan Neubauer; Kenny McCormick; Paul Leeson
Journal:  Circulation       Date:  2013-08-13       Impact factor: 29.690

2.  How early should obesity prevention start?

Authors:  Matthew W Gillman; David S Ludwig
Journal:  N Engl J Med       Date:  2013-11-13       Impact factor: 91.245

3.  Risk factors and outcomes associated with first-trimester fetal growth restriction.

Authors:  Dennis O Mook-Kanamori; Eric A P Steegers; Paul H Eilers; Hein Raat; Albert Hofman; Vincent W V Jaddoe
Journal:  JAMA       Date:  2010-02-10       Impact factor: 56.272

4.  Early life factors and blood pressure at age 31 years in the 1966 northern Finland birth cohort.

Authors:  Marjo-Riitta Järvelin; Ulla Sovio; Vanessa King; Liisa Lauren; Baizhuang Xu; Mark I McCarthy; Anna-Liisa Hartikainen; Jaana Laitinen; Paavo Zitting; Paula Rantakallio; Paul Elliott
Journal:  Hypertension       Date:  2004-11-01       Impact factor: 10.190

5.  Metabolic syndrome in early pregnancy and risk of preterm birth.

Authors:  Leda Chatzi; Estel Plana; Vasiliki Daraki; Polyxeni Karakosta; Dimitris Alegkakis; Christos Tsatsanis; Antonis Kafatos; Antonis Koutis; Manolis Kogevinas
Journal:  Am J Epidemiol       Date:  2009-08-27       Impact factor: 4.897

6.  The second generation of The Avon Longitudinal Study of Parents and Children (ALSPAC-G2): a cohort profile.

Authors:  Deborah A Lawlor; Melanie Lewcock; Louise Rena-Jones; Claire Rollings; Vikki Yip; Daniel Smith; Rebecca M Pearson; Laura Johnson; Louise A C Millard; Nashita Patel; Andy Skinner; Kate Tilling
Journal:  Wellcome Open Res       Date:  2019-02-20

7.  Metabolite profiling and cardiovascular event risk: a prospective study of 3 population-based cohorts.

Authors:  Peter Würtz; Aki S Havulinna; Pasi Soininen; Tuulia Tynkkynen; David Prieto-Merino; Therese Tillin; Anahita Ghorbani; Anna Artati; Qin Wang; Mika Tiainen; Antti J Kangas; Johannes Kettunen; Jari Kaikkonen; Vera Mikkilä; Antti Jula; Mika Kähönen; Terho Lehtimäki; Debbie A Lawlor; Tom R Gaunt; Alun D Hughes; Naveed Sattar; Thomas Illig; Jerzy Adamski; Thomas J Wang; Markus Perola; Samuli Ripatti; Ramachandran S Vasan; Olli T Raitakari; Robert E Gerszten; Juan-Pablo Casas; Nish Chaturvedi; Mika Ala-Korpela; Veikko Salomaa
Journal:  Circulation       Date:  2015-01-08       Impact factor: 29.690

8.  The human early-life exposome (HELIX): project rationale and design.

Authors:  Martine Vrijheid; Rémy Slama; Oliver Robinson; Leda Chatzi; Muireann Coen; Peter van den Hazel; Cathrine Thomsen; John Wright; Toby J Athersuch; Narcis Avellana; Xavier Basagaña; Celine Brochot; Luca Bucchini; Mariona Bustamante; Angel Carracedo; Maribel Casas; Xavier Estivill; Lesley Fairley; Diana van Gent; Juan R Gonzalez; Berit Granum; Regina Gražulevičienė; Kristine B Gutzkow; Jordi Julvez; Hector C Keun; Manolis Kogevinas; Rosemary R C McEachan; Helle Margrete Meltzer; Eduard Sabidó; Per E Schwarze; Valérie Siroux; Jordi Sunyer; Elizabeth J Want; Florence Zeman; Mark J Nieuwenhuijsen
Journal:  Environ Health Perspect       Date:  2014-03-07       Impact factor: 9.031

Review 9.  Risk factors and early origins of chronic obstructive pulmonary disease.

Authors:  Dirkje S Postma; Andrew Bush; Maarten van den Berge
Journal:  Lancet       Date:  2014-08-11       Impact factor: 79.321

10.  Gestational weight gain charts for different body mass index groups for women in Europe, North America, and Oceania.

Authors:  Susana Santos; Iris Eekhout; Ellis Voerman; Romy Gaillard; Henrique Barros; Marie-Aline Charles; Leda Chatzi; Cécile Chevrier; George P Chrousos; Eva Corpeleijn; Nathalie Costet; Sarah Crozier; Myriam Doyon; Merete Eggesbø; Maria Pia Fantini; Sara Farchi; Francesco Forastiere; Luigi Gagliardi; Vagelis Georgiu; Keith M Godfrey; Davide Gori; Veit Grote; Wojciech Hanke; Irva Hertz-Picciotto; Barbara Heude; Marie-France Hivert; Daniel Hryhorczuk; Rae-Chi Huang; Hazel Inskip; Todd A Jusko; Anne M Karvonen; Berthold Koletzko; Leanne K Küpers; Hanna Lagström; Debbie A Lawlor; Irina Lehmann; Maria-Jose Lopez-Espinosa; Per Magnus; Renata Majewska; Johanna Mäkelä; Yannis Manios; Sheila W McDonald; Monique Mommers; Camilla S Morgen; George Moschonis; Ľubica Murínová; John Newnham; Ellen A Nohr; Anne-Marie Nybo Andersen; Emily Oken; Adriëtte J J M Oostvogels; Agnieszka Pac; Eleni Papadopoulou; Juha Pekkanen; Costanza Pizzi; Kinga Polanska; Daniela Porta; Lorenzo Richiardi; Sheryl L Rifas-Shiman; Nel Roeleveld; Loreto Santa-Marina; Ana C Santos; Henriette A Smit; Thorkild I A Sørensen; Marie Standl; Maggie Stanislawski; Camilla Stoltenberg; Elisabeth Thiering; Carel Thijs; Maties Torrent; Suzanne C Tough; Tomas Trnovec; Marleen M H J van Gelder; Lenie van Rossem; Andrea von Berg; Martine Vrijheid; Tanja G M Vrijkotte; Oleksandr Zvinchuk; Stef van Buuren; Vincent W V Jaddoe
Journal:  BMC Med       Date:  2018-11-05       Impact factor: 11.150

View more
  18 in total

Review 1.  Shaping Pathways to Child Health: A Systematic Review of Street-Scale Interventions in City Streets.

Authors:  Adriana Ortegon-Sanchez; Laura Vaughan; Nicola Christie; Rosemary R C McEachan
Journal:  Int J Environ Res Public Health       Date:  2022-04-25       Impact factor: 4.614

Review 2.  Gene-environment interactions related to maternal exposure to environmental and lifestyle-related chemicals during pregnancy and the resulting adverse fetal growth: a review.

Authors:  Sumitaka Kobayashi; Fumihiro Sata; Reiko Kishi
Journal:  Environ Health Prev Med       Date:  2022       Impact factor: 4.395

3.  Ascertaining and classifying cases of congenital anomalies in the ALSPAC birth cohort.

Authors:  Kurt Taylor; Richard Thomas; Mark Mumme; Jean Golding; Andy Boyd; Kate Northstone; Massimo Caputo; Deborah A Lawlor
Journal:  Wellcome Open Res       Date:  2021-04-14

4.  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

5.  Cohort Profile: Research Advancement through Cohort Cataloguing and Harmonization (ReACH).

Authors:  Julie Bergeron; Rachel Massicotte; Stephanie Atkinson; Alan Bocking; William Fraser; Isabel Fortier
Journal:  Int J Epidemiol       Date:  2021-05-17       Impact factor: 7.196

6.  DNA methylation and body mass index from birth to adolescence: meta-analyses of epigenome-wide association studies.

Authors:  Florianne O L Vehmeijer; Leanne K Küpers; Gemma C Sharp; Lucas A Salas; Samantha Lent; Dereje D Jima; Gwen Tindula; Sarah Reese; Cancan Qi; Olena Gruzieva; Christian Page; Faisal I Rezwan; Philip E Melton; Ellen Nohr; Geòrgia Escaramís; Peter Rzehak; Anni Heiskala; Tong Gong; Samuli T Tuominen; Lu Gao; Jason P Ross; Anne P Starling; John W Holloway; Paul Yousefi; Gunn Marit Aasvang; Lawrence J Beilin; Anna Bergström; Elisabeth Binder; Leda Chatzi; Eva Corpeleijn; Darina Czamara; Brenda Eskenazi; Susan Ewart; Natalia Ferre; Veit Grote; Dariusz Gruszfeld; Siri E Håberg; Cathrine Hoyo; Karen Huen; Robert Karlsson; Inger Kull; Jean-Paul Langhendries; Johanna Lepeule; Maria C Magnus; Rachel L Maguire; Peter L Molloy; Claire Monnereau; Trevor A Mori; Emily Oken; Katri Räikkönen; Sheryl Rifas-Shiman; Carlos Ruiz-Arenas; Sylvain Sebert; Vilhelmina Ullemar; Elvira Verduci; Judith M Vonk; Cheng-Jian Xu; Ivana V Yang; Hongmei Zhang; Weiming Zhang; Wilfried Karmaus; Dana Dabelea; Beverly S Muhlhausler; Carrie V Breton; Jari Lahti; Catarina Almqvist; Marjo-Riitta Jarvelin; Berthold Koletzko; Martine Vrijheid; Thorkild I A Sørensen; Rae-Chi Huang; Syed Hasan Arshad; Wenche Nystad; Erik Melén; Gerard H Koppelman; Stephanie J London; Nina Holland; Mariona Bustamante; Susan K Murphy; Marie-France Hivert; Andrea Baccarelli; Caroline L Relton; Harold Snieder; Vincent W V Jaddoe; Janine F Felix
Journal:  Genome Med       Date:  2020-11-25       Impact factor: 11.117

Review 7.  Immuno-Hormonal, Genetic and Metabolic Profiling of Newborns as a Basis for the Life-Long OneHealth Medical Record: A Scoping Review.

Authors:  Alekandra Fucic; Alberto Mantovani; Gavin W Ten Tusscher
Journal:  Medicina (Kaunas)       Date:  2021-04-15       Impact factor: 2.430

8.  LongITools: Dynamic longitudinal exposome trajectories in cardiovascular and metabolic noncommunicable diseases.

Authors:  Justiina Ronkainen; Rozenn Nedelec; Angelica Atehortua; Zhanna Balkhiyarova; Anna Cascarano; Vien Ngoc Dang; Ahmed Elhakeem; Esther van Enckevort; Ana Goncalves Soares; Sido Haakma; Miia Halonen; Katharina F Heil; Anni Heiskala; Eleanor Hyde; Bénédicte Jacquemin; Elina Keikkala; Jules Kerckhoffs; Anton Klåvus; Joanna A Kopinska; Johanna Lepeule; Francesca Marazzi; Irina Motoc; Mari Näätänen; Anton Ribbenstedt; Amanda Rundblad; Otto Savolainen; Valentina Simonetti; Nina de Toro Eadie; Evangelia Tzala; Anna Ulrich; Thomas Wright; Iman Zarei; Enrico d'Amico; Federico Belotti; Carl Brunius; Christopher Castleton; Marie-Aline Charles; Romy Gaillard; Kati Hanhineva; Gerard Hoek; Kirsten B Holven; Vincent W V Jaddoe; Marika A Kaakinen; Eero Kajantie; Maryam Kavousi; Timo Lakka; Jason Matthews; Andrea Piano Mortari; Marja Vääräsmäki; Trudy Voortman; Claire Webster; Marie Zins; Vincenzo Atella; Maria Bulgheroni; Marc Chadeau-Hyam; Gabriella Conti; Jayne Evans; Janine F Felix; Barbara Heude; Marjo-Riitta Järvelin; Marjukka Kolehmainen; Rikard Landberg; Karim Lekadir; Stefano Parusso; Inga Prokopenko; Susanne R de Rooij; Tessa Roseboom; Morris Swertz; Nicholas Timpson; Stine M Ulven; Roel Vermeulen; Teija Juola; Sylvain Sebert
Journal:  Environ Epidemiol       Date:  2021-12-28

9.  The effect of maternal pre-/early-pregnancy BMI and pregnancy smoking and alcohol on congenital heart diseases: a parental negative control study.

Authors:  Kurt Taylor; Ahmed Elhakeem; Johanna Lucia Thorbjørnsrud Nader; Tiffany Yang; Elena Isaevska; Lorenzo Richiardi; Tanja Vrijkotte; Angela Pinot de Moira; Deirdre M Murray; Daragh Finn; Dan Mason; John Wright; Sam Oddie; Nel Roeleveld; Jennifer R Harris; Anne-Marie Nybo Andersen; Massimo Caputo; Deborah A Lawlor
Journal:  medRxiv       Date:  2020-11-04

10.  Changes in parental smoking during pregnancy and risks of adverse birth outcomes and childhood overweight in Europe and North America: An individual participant data meta-analysis of 229,000 singleton births.

Authors:  Elise M Philips; Susana Santos; Leonardo Trasande; Juan J Aurrekoetxea; Henrique Barros; Andrea von Berg; Anna Bergström; Philippa K Bird; Sonia Brescianini; Carol Ní Chaoimh; Marie-Aline Charles; Leda Chatzi; Cécile Chevrier; George P Chrousos; Nathalie Costet; Rachel Criswell; Sarah Crozier; Merete Eggesbø; Maria Pia Fantini; Sara Farchi; Francesco Forastiere; Marleen M H J van Gelder; Vagelis Georgiu; Keith M Godfrey; Davide Gori; Wojciech Hanke; Barbara Heude; Daniel Hryhorczuk; Carmen Iñiguez; Hazel Inskip; Anne M Karvonen; Louise C Kenny; Inger Kull; Debbie A Lawlor; Irina Lehmann; Per Magnus; Yannis Manios; Erik Melén; Monique Mommers; Camilla S Morgen; George Moschonis; Deirdre Murray; Ellen A Nohr; Anne-Marie Nybo Andersen; Emily Oken; Adriëtte J J M Oostvogels; Eleni Papadopoulou; Juha Pekkanen; Costanza Pizzi; Kinga Polanska; Daniela Porta; Lorenzo Richiardi; Sheryl L Rifas-Shiman; Nel Roeleveld; Franca Rusconi; Ana C Santos; Thorkild I A Sørensen; Marie Standl; Camilla Stoltenberg; Jordi Sunyer; Elisabeth Thiering; Carel Thijs; Maties Torrent; Tanja G M Vrijkotte; John Wright; Oleksandr Zvinchuk; Romy Gaillard; Vincent W V Jaddoe
Journal:  PLoS Med       Date:  2020-08-18       Impact factor: 11.069

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.