荟萃分析
混淆
医学
怀孕
置信区间
相对风险
出版偏见
产科
人口
抗抑郁药
环境卫生
精神科
内科学
焦虑
遗传学
生物
作者
Florence Z. Martin,Sophie Smith,Dheeraj Rai,Harriet Forbes
出处
期刊:Reproductive, Female and Child Health
[Wiley]
日期:2023-05-17
卷期号:2 (3): 177-187
被引量:2
摘要
Abstract Introduction To evaluate the current evidence estimating the association between antidepressant use during pregnancy and stillbirth. Search Strategy MEDLINE, EMBASE, and PsychINFO for studies investigating antidepressant use during pregnancy and risk of stillbirth, from inception until 21 January 2022. Selection Criteria Studies including pregnant women exposed to antidepressants during pregnancy investigating stillbirth were eligible, compared with either unexposed, indicated pregnant women or unexposed women in the general obstetric population. Data Collection and Analysis Data extraction and quality assessment were performed by two authors independently. Meta‐analysis was used to generate pooled‐effect estimates, and the ROBINS‐I tool was used to assess risk of bias for individual studies. Main Results Seventeen studies were eligible. Although estimates from meta‐analysis models suggest a small increased risk of stillbirth, summary effect estimate 1.19 (95% confidence interval [CI] 1.06, 1.34) between those individuals taking antidepressants during pregnancy and all other pregnant women, confounding control is likely inadequate. The risk of bias assessment showed most studies were low quality, with no studies scoring low risk; in a meta‐analysis of studies with moderate risk of bias ( n = 2), no association was noted, summary effect estimate 1.17 (95% CI 0.97, 1.41). Only six studies adjusted for confounding by indication, the findings of which were summarised narratively. Conclusions Although the overall meta‐analysis found a small association between antidepressant use during pregnancy and stillbirth, this result was likely due to the overall low quality of studies included and by confounding in the underlying studies. Future studies must adequately address potential confounding by indication.
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