Lee Kwang-Sig, Kim Ho Yeon, Lee Se Jin, Kwon Sung Ok, Na Sunghun, Hwang Han Sung, Park Mi Hye, Ahn Ki Hoon
AI Center, Korea University College of Medicine, Seoul, South Korea.
Department of Obstetrics and Gynecology, Korea University College of Medicine, 73 Goryeodae-ro, Seongbuk-gu, Seoul, 02841, South Korea.
BMC Pregnancy Childbirth. 2021 Mar 2;21(1):172. doi: 10.1186/s12884-021-03660-5.
This study introduced machine learning approaches to predict newborn's body mass index (BMI) based on ultrasound measures and maternal/delivery information.
Data came from 3159 obstetric patients and their newborns enrolled in a multi-center retrospective study. Variable importance, the effect of a variable on model performance, was used for identifying major predictors of newborn's BMI among ultrasound measures and maternal/delivery information. The ultrasound measures included biparietal diameter (BPD), abdominal circumference (AC) and estimated fetal weight (EFW) taken three times during the week 21 - week 35 of gestational age and once in the week 36 or later.
Based on variable importance from the random forest, major predictors of newborn's BMI were the first AC and EFW in the week 36 or later, gestational age at delivery, the first AC during the week 21 - the week 35, maternal BMI at delivery, maternal weight at delivery and the first BPD in the week 36 or later. For predicting newborn's BMI, linear regression (2.0744) and the random forest (2.1610) were better than artificial neural networks with one, two and three hidden layers (150.7100, 154.7198 and 152.5843, respectively) in the mean squared error.
This is the first machine-learning study with 64 clinical and sonographic markers for the prediction of newborns' BMI. The week 36 or later is the most effective period for taking the ultrasound measures and AC and EFW are the best predictors of newborn's BMI alongside gestational age at delivery and maternal BMI at delivery.
本研究引入机器学习方法,基于超声测量以及母亲/分娩信息来预测新生儿的体重指数(BMI)。
数据来自参与一项多中心回顾性研究的3159名产科患者及其新生儿。变量重要性,即变量对模型性能的影响,被用于在超声测量以及母亲/分娩信息中识别新生儿BMI的主要预测因素。超声测量包括在孕21周 - 35周期间三次测量的双顶径(BPD)、腹围(AC)和估计胎儿体重(EFW),以及在孕36周或更晚时测量一次。
基于随机森林的变量重要性,新生儿BMI的主要预测因素是孕36周或更晚时的首次AC和EFW、分娩时的孕周、孕21周 - 35周期间的首次AC、分娩时的母亲BMI、分娩时的母亲体重以及孕36周或更晚时的首次BPD。对于预测新生儿的BMI,在均方误差方面,线性回归(2.0744)和随机森林(2.1610)优于具有一层、两层和三层隐藏层的人工神经网络(分别为150.7100、154.7198和152.5843)。
这是第一项使用64个临床和超声标记物来预测新生儿BMI的机器学习研究。孕36周或更晚是进行超声测量的最有效时期,并且AC和EFW与分娩时的孕周以及分娩时的母亲BMI一起,是新生儿BMI的最佳预测因素。