Barry M Lester, Marie Camerota, Todd M Everson, Coral L Shuster, Carmen J Marsit
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引用次数: 0
摘要
目的:目前的研究旨在展示暴露体框架在研究暴露与儿童长期神经发育和行为结果之间的关联时的应用。研究方法收集了 402 名早产儿从出生到 6 岁的纵向数据。利用三种统计方法展示暴露组框架:全暴露关联研究、累积暴露和机器学习模型,以及表观遗传学数据和非表观遗传学数据。研究结果每种统计方法都回答了一个不同的研究问题,即暴露对儿童纵向结果的影响。研究结果强调了暴露、表观遗传学和执行功能之间的关联。结论研究结果表明了如何利用基于暴露的方法来了解早产儿的内部(如 DNA 甲基化)和外部(如产前风险)暴露与长期发育结果之间的关系。
Toward a more holistic approach to the study of exposures and child outcomes.
Aim: The current work was designed to demonstrate the application of the exposome framework in examining associations between exposures and children's long-term neurodevelopmental and behavioral outcomes. Methods: Longitudinal data were collected from birth through age 6 from 402 preterm infants. Three statistical methods were utilized to demonstrate the exposome framework: exposome-wide association study, cumulative exposure and machine learning models, with and without epigenetic data. Results: Each statistical approach answered a distinct research question regarding the impact of exposures on longitudinal child outcomes. Findings highlight associations between exposures, epigenetics and executive function. Conclusion: Findings demonstrate how an exposome-based approach can be utilized to understand relationships between internal (e.g., DNA methylation) and external (e.g., prenatal risk) exposures and long-term developmental outcomes in preterm children.
期刊介绍:
Epigenomics provides the forum to address the rapidly progressing research developments in this ever-expanding field; to report on the major challenges ahead and critical advances that are propelling the science forward. The journal delivers this information in concise, at-a-glance article formats – invaluable to a time constrained community.
Substantial developments in our current knowledge and understanding of genomics and epigenetics are constantly being made, yet this field is still in its infancy. Epigenomics provides a critical overview of the latest and most significant advances as they unfold and explores their potential application in the clinical setting.