Díaz-Santana Mary V, Rogers Molly, Weinberg Clarice R
From the Biostatistics and Computational Biology Branch, National Institute of Environmental Health Sciences, National Institutes of Health, Research Triangle Park, NC.
Epidemiology. 2025 Sep 1;36(5):591-598. doi: 10.1097/EDE.0000000000001880. Epub 2025 May 28.
Reproductive complications tend to recur. The risk of gestational diabetes is much higher in the second pregnancy if it occurred in the first. Such recurrence risks are regarded as reflecting heterogeneity among couples in their inherent risk. Pregnancy complications not only predict their own recurrence but have been shown to be associated with different later health problems like hypertension and heart disease. Epidemiologically considering reproductive history as a risk factor has been challenging, however, because women vary in their number of pregnancies and there's no obvious way to account for both prior occurrences and prior nonoccurrences. We propose a simple empirical Bayes approach, the Beta Approach for Risk Summarization (BARS). We apply BARS to retrospective data reported at enrollment in a large cohort, the Sister Study, to estimate propensity to gestational diabetes, and use that to predict subsequent occurrences of gestational diabetes based on successively updated pregnancy histories. We assess the calibration of our predictive model for gestational diabetes and demonstrate that it works well. We then apply the method to prospective data from the Sister Study, revisiting an earlier paper that linked gestational diabetes to the risk of breast cancer, but now using BARS and additional person time.
生殖并发症往往会复发。如果首次怀孕时发生妊娠期糖尿病,那么第二次怀孕时患妊娠期糖尿病的风险会高得多。这种复发风险被认为反映了夫妻之间内在风险的异质性。妊娠并发症不仅会预测其自身的复发,还已被证明与不同的后期健康问题有关,如高血压和心脏病。然而,从流行病学角度将生殖史视为一个风险因素一直具有挑战性,因为女性的怀孕次数各不相同,而且没有明显的方法来兼顾既往发生的情况和既往未发生的情况。我们提出了一种简单的经验贝叶斯方法,即风险汇总贝塔方法(BARS)。我们将BARS应用于一项大型队列研究——姐妹研究中入组时报告的回顾性数据,以估计患妊娠期糖尿病的倾向,并基于不断更新的妊娠史来预测妊娠期糖尿病的后续发生情况。我们评估了我们的妊娠期糖尿病预测模型的校准情况,并证明它效果良好。然后,我们将该方法应用于姐妹研究的前瞻性数据,重新审视一篇早期论文,该论文将妊娠期糖尿病与乳腺癌风险联系起来,但现在使用BARS和额外的人时数据。