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首页> 外文期刊>BMC Pregnancy and Childbirth >Estimation of umbilical cord blood leptin and insulin based on anthropometric data by means of artificial neural network approach: identifying key maternal and neonatal factors
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Estimation of umbilical cord blood leptin and insulin based on anthropometric data by means of artificial neural network approach: identifying key maternal and neonatal factors

机译:通过人工神经网络方法基于人体测量数据估算脐带血瘦素和胰岛素:确定关键的母体和新生儿因素

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Background Leptin and insulin levels are key factors regulating fetal and neonatal energy homeostasis, development and growth. Both biomarkers are used as predictors of weight gain and obesity during infancy. There are currently no prediction algorithms for cord blood (UCB) hormone levels using Artificial Neural Networks (ANN) that have been directly trained with anthropometric maternal and neonatal data, from neonates exposed to distinct metabolic environments during pregnancy (obese with or without gestational diabetes mellitus or lean women). The aims were: 1) to develop ANN models that simulate leptin and insulin concentrations in UCB based on maternal and neonatal data (ANN perinatal model) or from only maternal data during early gestation (ANN prenatal model); 2) To evaluate the biological relevance of each parameter (maternal and neonatal anthropometric variables). Methods We collected maternal and neonatal anthropometric data ( n =?49) in normoglycemic healthy lean, obese or obese with gestational diabetes mellitus women, as well as determined UCB leptin and insulin concentrations by ELISA. The ANN perinatal model consisted of an input layer of 12 variables (maternal and neonatal anthropometric and biochemical data from early gestation and at term) while the ANN prenatal model used only 6 variables (maternal anthropometric from early gestation) in the input layer. For both networks, the output layer contained 1 variable to UCB leptin or to UCB insulin concentration. Results The best architectures for the ANN perinatal models estimating leptin and insulin were 12-5-1 while for the ANN prenatal models, 6-5-1 and 6-4-1 were found for leptin and insulin, respectively. ANN models presented an excellent agreement between experimental and simulated values. Interestingly, the use of only prenatal maternal anthropometric data was sufficient to estimate UCB leptin and insulin values. Maternal BMI, weight and age as well as neonatal birth were the most influential parameters for leptin while maternal morbidity was the most significant factor for insulin prediction. Conclusions Low error percentage and short computing time makes these ANN models interesting in a translational research setting, to be applied for the prediction of neonatal leptin and insulin values from maternal anthropometric data, and possibly the on-line estimation during pregnancy.
机译:背景瘦素和胰岛素水平是调节胎儿和新生儿能量稳态,发育和生长的关键因素。两种生物标志物均被用作婴儿期体重增加和肥胖的预测指标。目前尚无使用人工神经网络(ANN)对脐血(UCB)激素水平进行预测的算法,这些算法已通过人体测量学的母亲和新生儿数据直接进行了训练,这些数据来自妊娠期间暴露于不同代谢环境的肥胖症(肥胖症患者,无论是否患有妊娠糖尿病)或瘦女人)。目的是:1)根据孕妇和新生儿数据(ANN围产期模型)或仅在妊娠早期的孕妇数据(ANN产前模型)建立模拟UCB中瘦素和胰岛素浓度的ANN模型; 2)评估每个参数(母亲和新生儿人体测量变量)的生物学相关性。方法我们收集了正常血糖的健康瘦,肥胖或肥胖合并妊娠糖尿病妇女的孕妇和新生儿人体测量数据(n = 49),并通过ELISA测定了UCB瘦素和胰岛素浓度。 ANN围产期模型由12个变量(来自早孕和足月的母亲和新生儿人体测量学和生化数据)的输入层组成,而ANN产前模型在输入层中仅使用6个变量(来自早孕的母亲人体测量学)。对于这两个网络,输出层都包含UCB瘦蛋白或UCB胰岛素浓度的1个变量。结果估计瘦素和胰岛素的ANN围产期模型的最佳架构是12-5-1,而对于ANN产前模型,瘦素和胰岛素的最佳架构分别是6-5-1和6-4-1。人工神经网络模型在实验值和模拟值之间显示出极好的一致性。有趣的是,仅使用产前孕妇的人体测量数据就足以估计UCB瘦素和胰岛素值。孕妇的BMI,体重和年龄以及新生儿出生是瘦素最有影响力的参数,而孕妇的发病率是预测胰岛素的最重要因素。结论低错误率和较短的计算时间使这些ANN模型在转化研究环境中变得很有趣,可用于根据产妇人体测量数据预测新生儿瘦素和胰岛素值,并可能在怀孕期间进行在线估计。

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