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改善新生儿重症监护病房中孕23至29周出生的极早产儿生存预测:机器学习模型的开发与评估

Improving Prediction of Survival for Extremely Premature Infants Born at 23 to 29 Weeks Gestational Age in the Neonatal Intensive Care Unit: Development and Evaluation of Machine Learning Models.

作者信息

Li Angie, Mullin Sarah, Elkin Peter L

机构信息

Department of Biomedical Informatics, Jacobs School of Medicine and Biomedical Sciences, University at Buffalo, Buffalo, NY, United States.

出版信息

JMIR Med Inform. 2024 Feb 14;12:e42271. doi: 10.2196/42271.

Abstract

BACKGROUND

Infants born at extremely preterm gestational ages are typically admitted to the neonatal intensive care unit (NICU) after initial resuscitation. The subsequent hospital course can be highly variable, and despite counseling aided by available risk calculators, there are significant challenges with shared decision-making regarding life support and transition to end-of-life care. Improving predictive models can help providers and families navigate these unique challenges.

OBJECTIVE

Machine learning methods have previously demonstrated added predictive value for determining intensive care unit outcomes, and their use allows consideration of a greater number of factors that potentially influence newborn outcomes, such as maternal characteristics. Machine learning-based models were analyzed for their ability to predict the survival of extremely preterm neonates at initial admission.

METHODS

Maternal and newborn information was extracted from the health records of infants born between 23 and 29 weeks of gestation in the Medical Information Mart for Intensive Care III (MIMIC-III) critical care database. Applicable machine learning models predicting survival during the initial NICU admission were developed and compared. The same type of model was also examined using only features that would be available prepartum for the purpose of survival prediction prior to an anticipated preterm birth. Features most correlated with the predicted outcome were determined when possible for each model.

RESULTS

Of included patients, 37 of 459 (8.1%) expired. The resulting random forest model showed higher predictive performance than the frequently used Score for Neonatal Acute Physiology With Perinatal Extension II (SNAPPE-II) NICU model when considering extremely preterm infants of very low birth weight. Several other machine learning models were found to have good performance but did not show a statistically significant difference from previously available models in this study. Feature importance varied by model, and those of greater importance included gestational age; birth weight; initial oxygenation level; elements of the APGAR (appearance, pulse, grimace, activity, and respiration) score; and amount of blood pressure support. Important prepartum features also included maternal age, steroid administration, and the presence of pregnancy complications.

CONCLUSIONS

Machine learning methods have the potential to provide robust prediction of survival in the context of extremely preterm births and allow for consideration of additional factors such as maternal clinical and socioeconomic information. Evaluation of larger, more diverse data sets may provide additional clarity on comparative performance.

摘要

背景

极早产儿出生后通常在初步复苏后被送入新生儿重症监护病房(NICU)。随后的住院过程可能差异很大,尽管有可用的风险计算器辅助咨询,但在关于生命支持和过渡到临终关怀的共同决策方面仍存在重大挑战。改进预测模型有助于医护人员和家庭应对这些独特挑战。

目的

机器学习方法此前已证明在确定重症监护病房结局方面具有额外的预测价值,其应用可以考虑更多可能影响新生儿结局的因素,如母亲特征。分析基于机器学习的模型在极早产儿初次入院时预测其存活的能力。

方法

从重症监护医学信息集市三期(MIMIC-III)重症监护数据库中提取妊娠23至29周出生婴儿的健康记录中的母婴信息。开发并比较了预测初次入住NICU期间存活情况的适用机器学习模型。还仅使用产前可用的特征对同一类型的模型进行了检查,以便在预期早产之前进行存活预测。尽可能为每个模型确定与预测结果最相关的特征。

结果

纳入的459例患者中有37例(8.1%)死亡。在考虑极低出生体重的极早产儿时,所得随机森林模型显示出比常用的新生儿急性生理学围产期扩展II评分(SNAPPE-II)NICU模型更高的预测性能。还发现其他几种机器学习模型表现良好,但在本研究中与先前可用模型相比未显示出统计学上的显著差异。特征重要性因模型而异,更重要的特征包括胎龄、出生体重、初始氧合水平、阿氏评分(外观、脉搏、 grimace、活动和呼吸)的要素以及血压支持量。重要的产前特征还包括母亲年龄、类固醇给药以及妊娠并发症的存在。

结论

机器学习方法有可能在极早产情况下提供可靠的存活预测,并允许考虑诸如母亲临床和社会经济信息等额外因素。对更大、更多样化数据集的评估可能会使比较性能更加清晰。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e173/10902770/46aaea079700/medinform_v12i1e42271_fig1.jpg

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