极早产儿支气管肺发育不良的早期预测:一项队列研究

A. V. Permyakova, O. Bakhmetyeva, M. A. Mamunts, A. Kuchumov, K. Koshechkin
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引用次数: 0

摘要

目的建立极早产儿临床显著支气管肺发育不良的早期预测模型。材料和方法。在彼尔姆地区围产中心进行的一项回顾性研究纳入了 226 名胎龄小于 31 周、出生体重为 490 至 999 克、年龄为 0 至 7 天、呼吸衰竭需要呼吸机支持(呼吸机支持)的早产儿。建立预后模型时使用了逻辑回归、支持向量机、随机森林法和梯度提升法等机器学习算法。模型中使用了五个变量:出生体重、出生后第 5 分钟的阿普加评分、西尔弗曼评分、有创通气支持天数、出生后头七天每天测量的吸入空气中的氧分数中位数。结果研究队列中的 182 名婴儿中有 148 名(81.3%)在受孕后第 36 周出现支气管肺发育不良(BPD),其中 15.4% 为轻度,29.7% 为中度,36.3% 为重度。在研究的四种预测算法中,逻辑回归模型被选为最终模型,其指标为AUC=0.840,准确率 0.818,灵敏度 0.972,特异性 0.666。建模结果的实际应用以概率计算器的形式实现。结论在极早产儿的新生儿早期,出生体重、出生后第 5 分钟的 Apgar 评分、Silverman 评分、有创通气支持天数、出生后 7 天内测量的吸入空气中氧分数中位数等临床预测指标的组合可用来预测支气管肺发育不良的发生。逻辑回归模型显示出较高的灵敏度,可将第二类错误的概率降至最低。因此,该模型的应用可用于早产儿支气管肺发育不良的早期预测。
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 bronchopulmonary dysplasia in extremely premature infants: a cohort study
Objective. To develop the model for early prediction of clinically significant bronchopulmonary dysplasia in extremely premature infants. Materials and methods. 226 premature infants with gestational age less than 31 weeks, birth weight from 490 to 999 g, age from 0 to 7 days, and respiratory failure requiring ventilatory support (ventilator support) were included into a retrospective study conducted in the Perm Regional Perinatal Center. Machine learning algorithms such as logistic regression, support vector machine, random forest method, and gradient boosting method were used for the prognostic model building. Five variables were used: birth weight, Apgar score in the 5th minute of life, Silverman score, number of days of invasive ventilatory support, median oxygen fraction in the inhaled air measured daily during the first seven days of life. Results. In the 36th week of postconceptional age 148 out of 182 infants (81.3%) in the study cohort developed bronchopulmonary dysplasia (BPD), among them 15.4% had a mild form, 29.7% a moderate one, and in 36.3% of patient it was severe. Among the four studied prediction algorithms, logistic regression model was chosen as the final model with metrics: AUC=0.840, accuracy 0.818, sensitivity 0.972, specificity 0.666. The practical application of the modeling results was implemented in the form of a probability calculator. Conclusions. In the early neonatal period of extremely premature infants, a combination of clinical predictors such as birth weight, Apgar score in the 5th minute of life, Silverman score, number of days of invasive ventilatory support, median oxygen fraction in the inhaled air measured during the first seven days of life can be used to predict the development of bronchopulmonary dysplasia. The logistic regression model shows high sensitivity that minimizes the probability of an error of second kind. Thus, its application is useful in the early prediction of bronchopulmonary dysplasia in premature infants.
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