Malakooti Narges, Mehrnoush Vahid, Abdi Fatemeh, Farashah Mohammad Sadegh Vahidi, Darsareh Fatemeh
Mother and Child Welfare Research Center, Hormozgan University of Medical Sciences, Bandar Abbas, Iran.
Nursing and Midwifery Care Research Center, Health Management Research Institute, Iran University of Medical Sciences, Tehran, Iran.
Sci Rep. 2025 Jul 1;15(1):20914. doi: 10.1038/s41598-025-06651-0.
Scientists aim to create a system that can predict the likelihood of newborns being admitted to the neonatal intensive care unit (NICU) by combining various statistical methods. This prediction could potentially reduce the negative health outcomes, deaths, and medical costs associated with NICU stays by detecting potential cases early on. This study utilized a retrospective cohort design. The primary outcome of the research focused on admissions to the NICU. The real-time data of pregnant women with a cephalic presentation who gave birth between January 2020 and December 2022 were extracted from the electronic health records of Khaleej-e-Fars Hospital in Bandar Abbas, Iran. The first step of the analysis involved comparing healthy babies to those admitted to the NICU. Variables that had a significant p-value (less than 0.05) were selected as features for the machine learning approach. The input data were utilized to train nine different machine learning models. In our assessment, we used the area under the receiver operating characteristic curve (AUC), accuracy, precision, recall, and F1- score to evaluate the effectiveness. During the study period, the rate of NICU admission at our center was 477 out of 3,062 deliveries (15.5%). In comparison to other models, the random forest classification had the highest accuracy (0.87) and AUC (0.87) for predicting NICU admission. According to our findings, the most significant predictors of NICU admission among several maternal and clinical factors were gestational age, maternal age, parity, a history of neonatal death, onset of labor, multiple pregnancy, fetal distress, meconium-stained amniotic fluid, method of childbirth, neonatal weight, and sex. We have identified several important factors that increase the likelihood of newborns being admitted to the NICU, which could assist in predicting the need for additional neonatal care during delivery and in advising women on the chances of NICU admission.
科学家们旨在创建一个系统,通过结合各种统计方法来预测新生儿被收治入新生儿重症监护病房(NICU)的可能性。这种预测有可能通过早期发现潜在病例,减少与NICU住院相关的负面健康结果、死亡和医疗成本。本研究采用回顾性队列设计。该研究的主要结果集中在NICU收治情况。从伊朗阿巴斯港哈利吉 - 法尔斯医院的电子健康记录中提取了2020年1月至2022年12月期间分娩的头位孕妇的实时数据。分析的第一步是将健康婴儿与入住NICU的婴儿进行比较。具有显著p值(小于0.05)的变量被选为机器学习方法的特征。输入数据被用于训练九种不同的机器学习模型。在我们的评估中,我们使用受试者工作特征曲线下面积(AUC)、准确率、精确率、召回率和F1分数来评估有效性。在研究期间,我们中心NICU收治率为3062例分娩中有477例(15.5%)。与其他模型相比,随机森林分类在预测NICU收治方面具有最高的准确率(0.87)和AUC(0.87)。根据我们的研究结果,在多个母亲和临床因素中,NICU收治的最显著预测因素是胎龄、母亲年龄、产次、新生儿死亡史、临产开始、多胎妊娠、胎儿窘迫、羊水胎粪污染、分娩方式、新生儿体重和性别。我们已经确定了几个增加新生儿入住NICU可能性的重要因素,这有助于预测分娩期间额外新生儿护理的需求,并为女性提供NICU收治可能性的建议。