Norwegian Institute of Public Health, Oslo, Norway.
University of Agder, Kristiansand, Norway.
Paediatr Perinat Epidemiol. 2022 Mar;36(2):300-309. doi: 10.1111/ppe.12821. Epub 2021 Nov 19.
The aim of pregnancy cohorts was to understand causes and development of health and disease throughout the life course. A major challenge in cohort studies is to avoid selection bias from loss to follow-up.
The aim of this study was to describe what characterises drop out from the Norwegian Mother, Father and Child Cohort Study (MoBa), and provide a resource to inform the interpretation of results from analysis of cohort data.
We estimated loss to follow-up in subsets of participants that responded to questionnaire waves in MoBa through an eight-year period and described characteristics of participants who responded to follow-ups. Within each wave of questionnaires, we estimated two exposure-outcome associations: the relationship between maternal smoking during pregnancy and offspring birthweight, and between educational level and pre-pregnancy body mass index (BMI). We explored the use of inverse probability weighting to correct the bias due to loss to follow-up.
Participants who continued to respond were older, higher educated, less likely to smoke and had lower BMI. We observed a decline in participation of current smokers from 22.3% to 17.5%, and participants who reported an unplanned pregnancy dropped from 19.2% to 16.4%. There was a gradual decline in the inverse relationship between maternal smoking during pregnancy and offspring birthweight with increasing follow-up information, indicating that selection bias due to drop out resulted in lower effect estimates. For the relationship between parental educational level and BMI, the inverse association increased with amount of follow-up information, indicating that the selection bias resulted in higher effect estimates. Inverse probability weighting did not completely correct the estimates for bias due to loss to follow-up.
Participants who remain cohort members are different from subjects who drop out. Users of large cohorts should be aware of selective loss to follow-up and consider imputation or weighting to account for loss to follow-up when analysing questionnaire responses.
妊娠队列的目的是了解整个生命过程中健康和疾病的原因和发展。队列研究中的一个主要挑战是避免因失访而产生选择偏差。
本研究旨在描述挪威母亲、父亲和儿童队列研究(MoBa)中失访的特征,并提供资源,为分析队列数据的结果提供解释。
我们通过 MoBa 中的八年问卷波次,估计了部分参与者的失访率,并描述了对随访有反应的参与者的特征。在每个问卷波次中,我们估计了两个暴露-结局关联:母亲怀孕期间吸烟与子女出生体重的关系,以及教育程度与孕前体重指数(BMI)的关系。我们探讨了使用逆概率加权来纠正因失访而产生的偏差。
继续回应的参与者年龄较大、教育程度较高、吸烟较少且 BMI 较低。我们观察到,当前吸烟者的参与率从 22.3%下降到 17.5%,而报告意外怀孕的参与者从 19.2%下降到 16.4%。随着随访信息的增加,母亲怀孕期间吸烟与子女出生体重之间的负相关关系逐渐减弱,表明因失访而产生的选择偏差导致了较低的效应估计值。对于父母教育程度与 BMI 的关系,随着随访信息的增加,逆关联增加,表明选择偏差导致了更高的效应估计值。逆概率加权并不能完全纠正因失访而产生的偏差估计值。
仍然是队列成员的参与者与退出的参与者不同。使用大型队列的用户应该意识到选择性失访,并在分析问卷回答时考虑缺失值插补或加权来处理失访。