Talisman Shahar, Guedalia Joshua, Farkash Rivka, Avitan Tehila, Srebnik Naama, Kasirer Yair, Schimmel Michael S, Ghanem Dunia, Unger Ron, Grisaru Granovsky Sorina
Shaare Zedek Medical Center, Department of Obstetrics & Gynecology, School of Medicine, Hebrew University, Jerusalem 9103102, Israel.
The Mina and Everard Goodman Faculty of Life Sciences, Bar Ilan University, Ramat-Gan 5290002, Israel.
J Clin Med. 2022 Jul 22;11(15):4258. doi: 10.3390/jcm11154258.
Objective: Neonatal intensive care unit (NICU) admission among term neonates is associated with significant morbidity and mortality, as well as high healthcare costs. A comprehensive NICU admission risk assessment using an integrated statistical approach for this rare admission event may be used to build a risk calculation algorithm for this group of neonates prior to delivery. Methods: A single-center case−control retrospective study was conducted between August 2005 and December 2019, including in-hospital singleton live born neonates, born at ≥37 weeks’ gestation. Analyses included univariate and multivariable models combined with the machine learning gradient-boosting model (GBM). The primary aim of the study was to identify and quantify risk factors and causes of NICU admission of term neonates. Results: During the study period, 206,509 births were registered at the Shaare Zedek Medical Center. After applying the study exclusion criteria, 192,527 term neonates were included in the study; 5292 (2.75%) were admitted to the NICU. The NICU admission risk was significantly higher (ORs [95%CIs]) for offspring of nulliparous women (1.19 [1.07, 1.33]), those with diabetes mellitus or hypertensive complications of pregnancy (2.52 [2.09, 3.03] and 1.28 [1.02, 1.60] respectively), and for those born during the 37th week of gestation (2.99 [2.63, 3.41]; p < 0.001 for all), adjusted for congenital malformations and genetic syndromes. A GBM to predict NICU admission applied to data prior to delivery showed an area under the receiver operating characteristic curve of 0.750 (95%CI 0.743−0.757) and classified 27% as high risk and 73% as low risk. This risk stratification was significantly associated with adverse maternal and neonatal outcomes. Conclusion: The present study identified NICU admission risk factors for term neonates; along with the machine learning ranking of the risk factors, the highly predictive model may serve as a basis for individual risk calculation algorithm prior to delivery. We suggest that in the future, this type of planning of the delivery will serve different health systems, in both high- and low-resource environments, along with the NICU admission or transfer policy.
足月儿入住新生儿重症监护病房(NICU)与显著的发病率、死亡率以及高昂的医疗成本相关。对于这种罕见的入院事件,采用综合统计方法进行全面的NICU入院风险评估,可用于在分娩前为这组新生儿建立风险计算算法。方法:2005年8月至2019年12月进行了一项单中心病例对照回顾性研究,纳入孕周≥37周的住院单胎活产新生儿。分析包括单变量和多变量模型,并结合机器学习梯度提升模型(GBM)。该研究的主要目的是识别和量化足月儿入住NICU的风险因素及原因。结果:研究期间,沙雷兹德克医疗中心登记了206,509例分娩。应用研究排除标准后,192,527例足月儿纳入研究;5292例(2.75%)入住NICU。经先天性畸形和遗传综合征校正后,初产妇的后代(比值比[95%置信区间]为1.19[1.07,1.33])、患有糖尿病或妊娠高血压并发症的产妇的后代(分别为2.52[2.09,3.03]和1.28[1.02,1.60])以及孕37周出生的新生儿(2.99[2.63,3.41];所有情况p<0.001)入住NICU的风险显著更高。应用于分娩前数据的预测NICU入院的GBM显示,受试者工作特征曲线下面积为0.750(95%置信区间0.743 - 0.757),将27%分类为高风险,73%分类为低风险。这种风险分层与不良的母婴结局显著相关。结论:本研究确定了足月儿入住NICU的风险因素;连同风险因素的机器学习排名,该高预测性模型可作为分娩前个体风险计算算法的基础。我们建议,未来这种分娩规划将服务于不同的卫生系统,包括高资源和低资源环境,以及NICU入院或转运政策。