Division for Experimental Feto-Maternal Medicine, Department of Obstetrics and Fetal Medicine, University Medical Center Hamburg-Eppendorf (UKE), Martinistraße 52, 20251, Hamburg, Germany.
University Children's Hospital, UKE, Hamburg, Germany.
World J Pediatr. 2024 May;20(5):481-495. doi: 10.1007/s12519-023-00782-y. Epub 2024 Jan 23.
Early-life respiratory infections and asthma are major health burdens during childhood. Markers predicting an increased risk for early-life respiratory diseases are sparse. Here, we identified the predictive value of ultrasound-monitored fetal lung growth for the risk of early-life respiratory infections and asthma.
Fetal lung size was serially assessed at standardized time points by transabdominal ultrasound in pregnant women participating in a pregnancy cohort. Correlations between fetal lung growth and respiratory infections in infancy or early-onset asthma at five years were examined. Machine-learning models relying on extreme gradient boosting regressor or classifier algorithms were developed to predict respiratory infection or asthma risk based on fetal lung growth. For model development and validation, study participants were randomly divided into a training and a testing group, respectively, by the employed algorithm.
Enhanced fetal lung growth throughout pregnancy predicted a lower early-life respiratory infection risk. Male sex was associated with a higher risk for respiratory infections in infancy. Fetal lung growth could also predict the risk of asthma at five years of age. We designed three machine-learning models to predict the risk and number of infections in infancy as well as the risk of early-onset asthma. The models' R values were 0.92, 0.90 and 0.93, respectively, underscoring a high accuracy and agreement between the actual and predicted values. Influential variables included known risk factors and novel predictors, such as ultrasound-monitored fetal lung growth.
Sonographic monitoring of fetal lung growth allows to predict the risk for early-life respiratory infections and asthma.
婴幼儿时期的呼吸道感染和哮喘是主要的健康负担。预测婴幼儿时期呼吸道疾病风险的标志物很少。在这里,我们确定了超声监测胎儿肺生长对生命早期呼吸道感染和哮喘风险的预测价值。
在一项妊娠队列中,孕妇在标准化时间点通过经腹超声对胎儿肺大小进行连续评估。检查胎儿肺生长与婴儿期呼吸道感染或 5 岁时早发性哮喘之间的相关性。基于极端梯度提升回归器或分类器算法的机器学习模型被开发出来,以基于胎儿肺生长预测呼吸道感染或哮喘风险。为了进行模型开发和验证,研究参与者分别通过所采用的算法被随机分为训练组和测试组。
整个孕期胎儿肺生长增强预测生命早期呼吸道感染风险较低。男性与婴儿期呼吸道感染风险较高相关。胎儿肺生长也可以预测 5 岁时哮喘的风险。我们设计了三个机器学习模型来预测婴儿期感染的风险和数量以及早发性哮喘的风险。模型的 R 值分别为 0.92、0.90 和 0.93,这表明实际值和预测值之间具有很高的准确性和一致性。有影响力的变量包括已知的危险因素和新的预测因素,如超声监测的胎儿肺生长。
胎儿肺生长的超声监测可以预测生命早期呼吸道感染和哮喘的风险。