Jura Ana Maria Cristina, Popescu Daniela Eugenia, Cîtu Cosmin, Biriș Marius, Pienar Corina, Paul Corina, Petrescu Oana Maria, Constantin Andreea Teodora, Dinulescu Alexandru, Roșca Ioana
Department of Obstetrics and Gynecology, "Victor Babeş" University of Medicine and Pharmacy, Eftimie Murgu Sq. No. 2, 300041 Timişoara, Romania.
Medici's MedLife Hospital Timișoara, Ciprian Porumbescu Street No. 9, 300236 Timișoara, Romania.
Medicina (Kaunas). 2025 Mar 26;61(4):603. doi: 10.3390/medicina61040603.
: Patent ductus arteriosus (PDA) is common in newborns, being associated with high morbidity and mortality. While maternal and neonatal conditions are known contributors, few studies use advanced machine learning (ML) as predictive factors. This study assessed how maternal pathologies, medications, and neonatal factors affect the risk of PDA using traditional statistics and ML algorithms: Random Forest (RF) and XGBoost (XGB). : A retrospective 3-year cohort study of 201 NICU neonates assessed maternal and neonatal factors. Logistic regression (LR) and chi-square analyses identified significant predictors, while ML models enhanced predictive accuracy and pinpointed key PDA factors. : LR identified prolonged rupture of membranes (>18 h) as the most significant predictor (OR: 13.03, < 0.001). The ML models identified gestational age, maternal anemia, prenatal care level, birth weight, prolonged rupture of membranes, medication usage, diabetes, pregnancy-induced hypertension, SARS-CoV-2 infection, and cervical cerclage as key predictors. The RF model had 76.3% accuracy, moderate sensitivity (47.4%), and high specificity (90%). XGB performed better with 81.4% accuracy, an AUC of 0.872, sensitivity of 92.5%, and specificity of 57.9%. : This study shows that maternal and neonatal factors significantly influence the risk of PDA. ML, particularly XGBoost, enhances predictive abilities, guiding targeted interventions and improving neonatal outcomes.
动脉导管未闭(PDA)在新生儿中很常见,与高发病率和死亡率相关。虽然已知母体和新生儿状况是其影响因素,但很少有研究使用先进的机器学习(ML)作为预测因素。本研究使用传统统计学方法和ML算法(随机森林(RF)和XGBoost(XGB))评估母体病理、药物和新生儿因素如何影响PDA风险。
对201名新生儿重症监护病房(NICU)的新生儿进行了一项为期3年的回顾性队列研究,评估母体和新生儿因素。逻辑回归(LR)和卡方分析确定了显著的预测因素,而ML模型提高了预测准确性并确定了关键的PDA因素。
LR确定胎膜破裂时间延长(>18小时)是最显著的预测因素(比值比:13.03,<0.001)。ML模型确定胎龄、母体贫血、产前护理水平、出生体重、胎膜破裂时间延长、药物使用、糖尿病、妊娠高血压、SARS-CoV-2感染和宫颈环扎术是关键预测因素。RF模型的准确率为76.3%,中等敏感性(47.4%)和高特异性(90%)。XGB表现更好,准确率为81.4%,曲线下面积(AUC)为0.872,敏感性为92.5%,特异性为57.9%。
本研究表明,母体和新生儿因素显著影响PDA风险。ML,尤其是XGBoost,提高了预测能力,为有针对性的干预提供指导并改善新生儿结局。