AI Article Synopsis

  • The 3D Cohort Study aims to explore how various adverse exposures during pregnancy affect both birth outcomes and long-term health in children.
  • Pregnant women and their partners from nine Quebec sites were recruited and followed, collecting extensive health and lifestyle data, biological specimens, and medical records.
  • With over 2,200 participants and a wealth of biological and clinical data, the study serves as a valuable resource for researching the developmental origins of birth and early childhood neurodevelopmental outcomes.

Article Abstract

Background: The 3D Cohort Study (Design, Develop, Discover) was established to help bridge knowledge gaps about the links between various adverse exposures during pregnancy with birth outcomes and later health outcomes in children.

Methods: Pregnant women and their partners were recruited during the first trimester from nine sites in Quebec and followed along with their children through to 2 years of age. Questionnaires were administered during pregnancy and post-delivery to collect information on demographics, mental health and life style, medical history, psychosocial measures, diet, infant growth, and neurodevelopment. Information on the delivery and newborn outcomes were abstracted from medical charts. Biological specimens were collected from mothers during each trimester, fathers (once during the pregnancy), and infants (at delivery and 2 years of age) for storage in a biological specimen bank.

Results: Of the 9864 women screened, 6348 met the eligibility criteria and 2366 women participated in the study (37% of eligible women). Among women in the 3D cohort, 1721 of their partners (1704 biological fathers) agreed to participate (73%). Two thousand two hundred and nineteen participants had a live singleton birth (94%). Prenatal blood and urine samples as well as vaginal secretions were collected for ≥98% of participants, cord blood for 81% of livebirths, and placental tissue for 89% of livebirths.

Conclusions: The 3D Cohort Study combines a rich bank of multiple biological specimens with extensive clinical, life style, and psychosocial data. This data set is a valuable resource for studying the developmental etiology of birth and early childhood neurodevelopmental outcomes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC5113695PMC
http://dx.doi.org/10.1111/ppe.12320DOI Listing

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