Use of Real-World Data and Machine Learning to Screen for Maternal and Paternal Characteristics Associated with Cardiac Malformations.

Jeremy Brown, Krista Huybrechts, Loreen Straub, Dominik Heider, Brian Bateman, Sonia Hernandez-Diaz
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Abstract

Effective prevention of cardiac malformations, a leading cause of infant morbidity, is constrained by limited understanding of etiology. The study objective was to screen for associations between maternal and paternal characteristics and cardiac malformations. We selected 720,381 pregnancies linked to live-born infants (n=9,076 cardiac malformations) in 2011-2021 MarketScan US insurance claims data. Odds ratios were estimated with clinical diagnostic and medication codes using logistic regression. Screening of 2,000 associations selected 81 associated codes at the 5% false discovery rate. Grouping of selected codes, using latent semantic analysis and the Apriori-SD algorithm, identified elevated risk with known risk factors, including maternal diabetes and chronic hypertension. Less recognized potential signals included maternal fingolimod or azathioprine use. Signals identified might be explained by confounding, measurement error, and selection bias and warrant further investigation. The screening methods employed identified known risk factors, suggesting potential utility for identifying novel risk factors for other pregnancy outcomes.

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利用真实世界数据和机器学习筛选与心脏畸形相关的母体和父体特征。
心脏畸形是婴儿发病的主要原因之一,但由于对病因的了解有限,有效预防心脏畸形的工作受到限制。本研究的目的是筛选母亲和父亲特征与心脏畸形之间的关联。我们从 2011-2021 年美国 MarketScan 保险理赔数据中选取了 720,381 例与活产婴儿(n=9,076 例心脏畸形)相关的妊娠。使用逻辑回归法根据临床诊断和药物代码估算出患病率。以 5%的错误发现率筛选出 2,000 个相关代码,共筛选出 81 个相关代码。利用潜在语义分析和 Apriorii-SD 算法对所选代码进行分组,确定了与已知风险因素(包括孕产妇糖尿病和慢性高血压)相关的高风险。较少被识别的潜在信号包括母体使用芬戈莫德或硫唑嘌呤。所发现的信号可能是由混杂因素、测量误差和选择偏差造成的,因此需要进一步调查。所采用的筛查方法确定了已知的风险因素,这表明该方法在确定其他妊娠结局的新风险因素方面具有潜在的实用性。
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