Kayleigh E Easey, Apostolos Gkatzionis, Louise A C Millard, Kate Tilling, Deborah A Lawlor, Gemma C Sharp
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We assess the extent of sample selection by comparing characteristics of families where fathers/partners do and do not participate. Using the association of parental smoking during pregnancy and child birthweight as an example, we perform simulations to investigate the extent to which missing father/partner data may induce bias in analyses conducted only in families with participating fathers/partners.In all cohorts, father/partner data were less detailed and collected at fewer timepoints than mothers. Partners with a lower socio-economic position were less likely to participate. In simulations based on ALSPAC data, there was little evidence of selection bias in associations of maternal smoking with birthweight, and bias for father/partner smoking was relatively small. Missing partner data can induce selection bias. In our example analyses of the effect of parental smoking on offspring birthweight, the bias had a relatively small impact. 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引用次数: 0
摘要
母亲在怀孕期间的暴露(以及其他非母亲因素)可能会对后代的健康产生重要影响。面临的一个挑战是,有关伴侣的数据通常来自有数据的母亲群体,这可能会带来选择偏差,从而限制研究结果的普遍性。我们从英国的三项队列研究(雅芳父母与子女纵向研究 (ALSPAC)、生于布拉德福德 (Born in Bradford) 和千禧队列研究)中了解了父亲/伴侣和母亲在怀孕期间的健康行为(吸烟、饮酒、咖啡因和体育锻炼)数据的可用性。我们通过比较父亲/伴侣参与和未参与的家庭特征,评估了样本选择的程度。以父母在怀孕期间吸烟与婴儿出生体重的关系为例,我们进行了模拟,以调查父亲/伴侣数据的缺失可能会在多大程度上导致仅在有父亲/伴侣参与的家庭中进行的分析出现偏差。社会经济地位较低的伴侣参与的可能性较小。在基于 ALSPAC 数据的模拟中,几乎没有证据表明母亲吸烟与出生体重之间存在选择偏倚,父亲/伴侣吸烟的偏倚也相对较小。伴侣数据缺失会导致选择偏倚。在父母吸烟对后代出生体重影响的实例分析中,选择偏倚的影响相对较小。实际上,选择偏差的影响取决于分析模型和选择机制。
Challenges in using data on fathers/partners to study prenatal exposures and offspring health.
Paternal exposures (and other non-maternal factors) around pregnancy could have important effects on offspring health. One challenge is that data on partners are usually from a subgroup of mothers with data, potentially introducing selection bias, limiting generalisability of findings. We aimed to investigate the potential for selection bias in studies using partner data.We characterise availability of data on father/partner and mother health behaviours (smoking, alcohol, caffeine and physical activity) around pregnancy from three UK cohort studies: the Avon Longitudinal Study of Parents and Children (ALSPAC), Born in Bradford and the Millennium Cohort Study. We assess the extent of sample selection by comparing characteristics of families where fathers/partners do and do not participate. Using the association of parental smoking during pregnancy and child birthweight as an example, we perform simulations to investigate the extent to which missing father/partner data may induce bias in analyses conducted only in families with participating fathers/partners.In all cohorts, father/partner data were less detailed and collected at fewer timepoints than mothers. Partners with a lower socio-economic position were less likely to participate. In simulations based on ALSPAC data, there was little evidence of selection bias in associations of maternal smoking with birthweight, and bias for father/partner smoking was relatively small. Missing partner data can induce selection bias. In our example analyses of the effect of parental smoking on offspring birthweight, the bias had a relatively small impact. In practice, the impact of selection bias will depend on both the analysis model and the selection mechanism.
期刊介绍:
JDOHaD publishes leading research in the field of Developmental Origins of Health and Disease (DOHaD). The Journal focuses on the environment during early pre-natal and post-natal animal and human development, interactions between environmental and genetic factors, including environmental toxicants, and their influence on health and disease risk throughout the lifespan. JDOHaD publishes work on developmental programming, fetal and neonatal biology and physiology, early life nutrition, especially during the first 1,000 days of life, human ecology and evolution and Gene-Environment Interactions.
JDOHaD also accepts manuscripts that address the social determinants or education of health and disease risk as they relate to the early life period, as well as the economic and health care costs of a poor start to life. Accordingly, JDOHaD is multi-disciplinary, with contributions from basic scientists working in the fields of physiology, biochemistry and nutrition, endocrinology and metabolism, developmental biology, molecular biology/ epigenetics, human biology/ anthropology, and evolutionary developmental biology. Moreover clinicians, nutritionists, epidemiologists, social scientists, economists, public health specialists and policy makers are very welcome to submit manuscripts.
The journal includes original research articles, short communications and reviews, and has regular themed issues, with guest editors; it is also a platform for conference/workshop reports, and for opinion, comment and interaction.