早产儿拔管结果预测模型的开发:开发与分析。

IF 3.1 3区 医学 Q1 PEDIATRICS Pediatric Research Pub Date : 2024-10-22 DOI:10.1038/s41390-024-03643-0
Camila S Espíndola, Yuri K Lopes, Grasiela S Ferreira, Emanuella C Cordeiro, Silvana A Pereira, Dayane Montemezzo
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引用次数: 0

摘要

背景:鉴于对早产新生儿长期有创机械通气所造成损害的了解,尽快拔管对于最大限度地降低发病率非常重要。本研究旨在分析与拔管结果相关的变量,并建立早产新生儿成功拔管的预测模型:方法:数据来自一项涉及六家公立妇产医院的多中心研究。通过数据分析和机器学习方法,将与拔管结果相关性最高的变量用于构建预测模型,然后对算法进行训练和测试:结果:共收集了 405 名早产新生儿的数据。基于 393 个样本(其中 12 个样本因重要属性数据缺失无法挽回而被剔除),根据拔管结果,使用胎龄、出生体重、拔管时体重、先天性感染和有创机械通气时间等变量,训练并测试了指标最佳的预测模型。该模型的准确率为 77.78%,灵敏度为 79.41%,特异性为 60%:结论:这些变量生成的预测模型能够估计早产新生儿成功拔管的概率:影响:早产新生儿长期使用有创机械通气会增加发病率/死亡率,这强调了早期撤除有创通气支持的重要性。然而,在决定是否拔管时,缺乏拔管结果更精确的工具。通过构建预测模型来使用人工智能,可以根据真实世界的数据协助早产新生儿拔管的决策过程。使用该工具可以优化早产新生儿的拔管决策,促进成功拔管,减少早产新生儿因拔管失败而发生的不良事件。
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Predictive model development for premature infant extubation outcomes: development and analysis.

Background: Given the knowledge of the damage caused by prolonged invasive mechanical ventilation in premature newborns, withdrawing this support as quickly as possible is important to minimize morbidity. The aim of this study was to analyze the variables associated with extubation outcomes and to develop a predictive model for successful extubation in premature newborns.

Methods: Data were obtained from a multicenter study involving six public maternity hospitals. The variables with the highest correlation to the extubation outcome were used to construct the predictive model through data analysis and machine learning methods, followed by training and testing of algorithms.

Results: Data were collected from 405 premature newborns. The predictive model with the best metrics was trained and tested using the variables of gestational age, birth weight, weight at extubation, congenital infections, and time on invasive mechanical ventilation, based on 393 samples according to the extubation outcome (12 were discarded due to irretrievable missing data in important attributes). The model exhibited an accuracy of 77.78%, sensitivity of 79.41%, and specificity of 60%.

Conclusion: These variables generated a predictive model capable of estimating the probability of successful extubation in premature newborns.

Impact: Prolonged use of invasive mechanical ventilation in preterm newborns increases morbidity/mortality rates, emphasizing the importance of early withdrawal from invasive ventilatory support. However, the decision to extubate lacks tools with higher extubation outcome precision. The use of artificial intelligence through the construction of a predictive model can assist in the decision-making process for extubating preterm newborns based on real-world data. The implementation of this tool can optimize the decision to extubate preterm newborns, promoting successful extubation and reducing preterm newborns exposure to adverse events associated with extubation failure.

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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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