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Establishment of a nomogram model to predict macrosomia in pregnant women with gestational diabetes mellitus

机译:建立一个纯粹图模型,以预测妊娠期糖尿病孕妇孕妇的宏观瘤

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To establish a nomogram model to predict the risk of macrosomia in pregnant women with gestational diabetes mellitus in China. We retrospectively collected the medical records of 783 pregnant women with gestational diabetes who underwent prenatal examinations and delivered at the Affiliated Hospital of Qingdao University from October 2019 to October 2020. The pregnant women were randomly divided into two groups in a 4:1 ratio to generate and validate the model. The independent risk factors for macrosomia in pregnant women with gestational diabetes mellitus were analyzed by multivariate logistic regression, and the nomogram model to predict the risk of macrosomia in pregnant women with gestational diabetes mellitus was established and verified by R software. Logistic regression analysis showed that prepregnancy body mass index, weight gain during pregnancy, fasting plasma glucose, triglycerides, biparietal diameter and amniotic fluid index were independent risk factors for macrosomia (P??0.05). The areas under the ROC curve for internal and external validation of the model were 0.813 (95?% confidence interval 0.754–0.862) and 0.903 (95?% confidence interval 0.588–0.967), respectively. The calibration curve was a straight line with a slope close to 1. In this study, we constructed a nomogram model to predict the risk of macrosomia in pregnant women with gestational diabetes mellitus. The model has good discrimination and calibration abilities, which can help clinical healthcare staff accurately predict macrosomia in pregnant women with gestational diabetes mellitus.
机译:建立一个载体模型,以预测中国孕妇孕妇麦克罗粒症的风险。我们回顾性地收集了783名孕妇的医疗记录,妊娠期糖尿病患者在2019年10月至10月20日至10月份青岛大学附属医院接受产前考试。孕妇随机分为4:1的比例为2组并验证模型。通过多变量逻辑回归分析孕妇孕妇麦科瘤的独立风险因素,并通过多变量逻辑回归分析了多元逻辑回归,并通过R软件建立并验证了预测孕妇孕妇麦科瘤中麦克奈马瘤的风险。逻辑回归分析表明,预妊娠体重指数,重量增长在妊娠期间,禁食血浆葡萄糖,甘油三酯,雌胞菌和羊水液指数是宏观环瘤的独立危险因素(p?& 0.05)。用于模型的内部和外部验证的ROC曲线下的区域分别为0.813(95〜%置信区间0.754-0.862)和0.903(95〜%置信区间0.588-0.967)。校准曲线是一条直线,斜坡接近1.在这项研究中,我们构建了一种探测器模型,以预测孕妇患有妊娠期糖尿病的孕妇的风险。该模型具有良好的歧视和校准能力,可以帮助临床医疗保健人员准确预测孕妇患有妊娠期糖尿病的孕妇。

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