超重和肥胖妇女约20孕周时胎龄儿大的预测

Yuhan Du, J. Mehegan, F. Mcauliffe, C. Mooney
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引用次数: 2

摘要

大胎龄(LGA)分娩与许多产妇和围产期并发症有关。由于超重和肥胖是LGA的危险因素,我们的目的是预测大约20孕周时超重和肥胖妇女的LGA,以便我们能够早期识别有LGA风险的妇女,以便采取适当的干预措施。将随机森林算法应用于母体特征和血液生物标志物的基线和妊娠20周超声扫描结果,建立预测模型。在这里,我们提出了我们的初步结果,证明了在临床决策支持中使用的潜力,以识别早期妊娠患者的LGA分娩风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Large for Gestational Age Infants in Overweight and Obese Women at Approximately 20 Gestational Weeks
Large for gestational age (LGA) births are associated with many maternal and perinatal complications. As overweight and obesity are risk factors for LGA, we aimed to predict LGA in overweight and obese women at approximately 20 gestational weeks, so that we can identify women at risk of LGA early to allow for appropriate interventions. A random forest algorithm was applied to maternal characteristics and blood biomarkers at baseline and 20 gestational weeks' ultrasound scan findings to develop a prediction model. Here we present our preliminary results demonstrating potential for use in clinical decision support for identifying patients early in pregnancy at risk of an LGA birth.
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