利用机器学习技术早期预测 VLBW 早产新生儿的死亡率和发病率。

IF 3.1 3区 医学 Q1 PEDIATRICS
Chi-Hung Shu, Rema Zebda, Camilo Espinosa, Jonathan Reiss, Anne Debuyserie, Kristina Reber, Nima Aghaeepour, Mohan Pammi
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引用次数: 0

摘要

背景:在死亡率和特定疾病发生之前对其进行预测,可以采取干预措施改善健康轨迹:假设:将出生后 2 周内的关键母体和婴儿变量整合到机器学习(ML)算法中,将可靠地预测 VLBW 早产儿的存活率和特定发病率:开发的 ML 算法整合了 47 个特征,用于预测死亡率、支气管肺发育不良 (BPD)、新生儿败血症、坏死性小肠结肠炎 (NEC)、脑室内出血 (IVH)、囊性室周白斑 (PVL) 和早产儿视网膜病变 (ROP)。利用回顾性队列(n = 3341),采用重复 10 次交叉验证策略来训练和验证模型。然后在另一个队列(n = 447)中对这些模型进行测试,以评估最终模型的性能:在采用的七种 ML 算法中,基于树的集合模型,特别是随机森林(RF)和 XGBoost,具有最佳的性能指标。伴有或不伴有脑膜炎的败血症(0.73)、NEC(0.73)、BPD(0.71)和死亡率(0.74)的接收者操作特征曲线下面积(AUROC)均超过了 0.7,而所有结果的精确度-召回曲线下面积(AUPRC)均大于患病率,表明对 VLBW 早产儿进行了有效的风险分层:我们的研究证明了利用 ML 技术进行预测分析在推进精准医疗方面的潜力:影响:在不良后果发生之前对其进行可靠预测,有可能采取干预措施,并有可能改善 VLBW 早产儿的健康轨迹。我们利用机器学习开发并测试了 VLBW 早产儿死亡率和五种主要疾病的预测模型。对结果的个性化预测和个性化干预将推动新生儿精准医学的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early prediction of mortality and morbidities in VLBW preterm neonates using machine learning.

Background: Predicting mortality and specific morbidities before they occur may allow for interventions that may improve health trajectories.

Hypothesis: Integrating key maternal and postnatal infant variables in the first 2 weeks of age into machine learning (ML) algorithms will reliably predict survival and specific morbidities in VLBW preterm infants.

Methods: ML algorithms were developed to integrate 47 features for predicting mortality, bronchopulmonary dysplasia (BPD), neonatal sepsis, necrotizing enterocolitis (NEC), intraventricular hemorrhage (IVH), cystic periventricular leukomalacia (PVL), and retinopathy of prematurity (ROP). A retrospective cohort (n = 3341) was used to train and validate the models with a repeated 10-fold cross-validation strategy. These models were then tested on a separate cohort (n = 447) to evaluate the final model performance.

Results: Among the seven ML algorithms employed, tree-based ensemble models, specifically Random Forest (RF) and XGBoost, had the best performance metrics. The area under the receiver operating characteristic curve (AUROC) of sepsis with or without meningitis (0.73), NEC (0.73), BPD (0.71), and mortality (0.74) exceeded 0.7, while the area under Precision-Recall curve (AUPRC) for all outcomes was greater than the prevalence, demonstrating effective risk stratification in VLBW preterm infants.

Conclusions: Our study demonstrates the potential of predictive analytics leveraging ML techniques in advancing precision medicine.

Impact: Reliable prediction of adverse outcomes before they occur has the potential to institute interventions and possibly improve health trajectories in VLBW preterm infants. We used machine learning to develop and test predictive models for mortality and five major morbidities in VLBW preterm infants. Individualized prediction of outcomes and individualized interventions will advance Precision Medicine in Neonatology.

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来源期刊
Pediatric Research
Pediatric Research 医学-小儿科
CiteScore
6.80
自引率
5.60%
发文量
473
审稿时长
3-8 weeks
期刊介绍: Pediatric Research publishes original papers, invited reviews, and commentaries on the etiologies of children''s diseases and disorders of development, extending from molecular biology to epidemiology. Use of model organisms and in vitro techniques relevant to developmental biology and medicine are acceptable, as are translational human studies
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