Department of Respirology, Children's Hospital, Fudan University, 399 Wanyuan Road, Shanghai, 201102, China.
Department of Neonatology, Children's Hospital, Fudan University, Shanghai, China.
World J Pediatr. 2023 Jun;19(6):568-576. doi: 10.1007/s12519-022-00635-0. Epub 2022 Nov 10.
Bronchopulmonary dysplasia (BPD) is a common chronic lung disease in extremely preterm neonates. The outcome and clinical burden vary dramatically according to severity. Although some prediction tools for BPD exist, they seldom pay attention to disease severity and are based on populations in developed countries. This study aimed to develop machine learning prediction models for BPD severity based on selected clinical factors in a Chinese population.
In this retrospective, single-center study, we included patients with a gestational age < 32 weeks who were diagnosed with BPD in our neonatal intensive care unit from 2016 to 2020. We collected their clinical information during the maternal, birth and early postnatal periods. Risk factors were selected through univariable and ordinal logistic regression analyses. Prediction models based on logistic regression (LR), gradient boosting decision tree, XGBoost (XGB) and random forest (RF) models were implemented and assessed by the area under the receiver operating characteristic curve (AUC).
We ultimately included 471 patients (279 mild, 147 moderate, and 45 severe cases). On ordinal logistic regression, gestational diabetes mellitus, initial fraction of inspiration O value, invasive ventilation, acidosis, hypochloremia, C-reactive protein level, patent ductus arteriosus and Gram-negative respiratory culture were independent risk factors for BPD severity. All the XGB, LR and RF models (AUC = 0.85, 0.86 and 0.84, respectively) all had good performance.
We found risk factors for BPD severity in our population and developed machine learning models based on them. The models have good performance and can be used to aid in predicting BPD severity in the Chinese population.
支气管肺发育不良(BPD)是极早产儿常见的慢性肺部疾病。其结局和临床负担因严重程度而有显著差异。尽管存在一些预测 BPD 的工具,但它们很少关注疾病的严重程度,并且基于发达国家的人群。本研究旨在基于中国人群中的选定临床因素,开发用于预测 BPD 严重程度的机器学习预测模型。
这是一项回顾性、单中心研究,纳入了 2016 年至 2020 年期间在我院新生儿重症监护病房被诊断为 BPD 的胎龄<32 周的患者。我们收集了他们在母胎、出生和早期产后期间的临床信息。通过单变量和有序逻辑回归分析选择危险因素。基于逻辑回归(LR)、梯度提升决策树、XGBoost(XGB)和随机森林(RF)模型的预测模型通过接受者操作特征曲线下面积(AUC)进行评估和评估。
最终纳入了 471 例患者(轻度 279 例,中度 147 例,重度 45 例)。在有序逻辑回归中,妊娠糖尿病、初始吸气分数 O 值、有创通气、酸中毒、低氯血症、C 反应蛋白水平、未闭动脉导管和革兰氏阴性呼吸培养是 BPD 严重程度的独立危险因素。所有 XGB、LR 和 RF 模型(AUC 分别为 0.85、0.86 和 0.84)均具有良好的性能。
我们发现了我们人群中 BPD 严重程度的危险因素,并基于这些因素开发了机器学习模型。这些模型具有良好的性能,可以用于帮助预测中国人群中的 BPD 严重程度。