医学
怀孕
心情
产科
双相情感障碍
队列
人口
队列研究
不利影响
早产
精神科
儿科
胎儿
环境卫生
内科学
生物
遗传学
作者
Joe Kwun Nam Chan,Samson Chun Hung,Krystal Chi Kei Lee,Ka Wang Cheung,Mimi Tin Yan Seto,Corine Sau Man Wong,Jingxia Lin,Wing Chung Chang
标识
DOI:10.1016/j.psychres.2024.116050
摘要
Previous research examining bipolar-disorder (BD) and pregnancy/neonatal outcomes yielded mixed results, were mostly derived from Western countries and rarely delineated effect between disorder and mood-stabilizers. This population-based study identified women age 15-50 years who delivered first/singleton child in 2003-2018 in Hong Kong, utilizing territory-wide medical-record database of public healthcare services. Propensity-score weighted logistic-regression analyses adjusted for confounders were employed to examine risk of adverse pregnancy, delivery and neonatal outcomes associated with BD and mood-stabilizers (lithium, anticonvulsants and antipsychotics). Exploratory unadjusted-analyses were conducted to assess risk for congenital-malformations. Of 465,069 women, 302 had BD-diagnosis, including 168 redeemed ≥ 1 prescription of mood-stabilizers during pregnancy (treated-BD) and 134 gestationally-unexposed to mood-stabilizers (untreated-BD). BD was significantly-associated with increased risk of gestational-diabetes (adjusted-odds-ratio: 1.75 [95 % CI: 1.15-2.70]) and maternal somatic hospitalization ≤ 90 days post-discharge from index-delivery (2.12 [1.19-3.90]). In treatment status-stratified analyses, treated-BD women exhibited significantly-increased rate of gestational-diabetes (2.09 [1.21-3.70]) relative to controls (non-BD and gestationally-unexposed to mood-stabilizers). No significant association of BD or mood-stabilizers with other adverse outcomes was observed. Overall, our findings indicate that BD and mood-stabilizers are not associated with most adverse pregnancy, delivery and neonatal outcomes. Further research clarifying comparative safety of individual mood-stabilizing agents on pregnancy/neonatal outcomes is required.
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