基于机器学习的登革热休克综合征患者住院死亡率预测模型

Luan Thanh Vo, Thien Vu, Thach Ngoc Pham, Tung Huu Trinh, Thanh Tat Nguyen
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引用次数: 0

摘要

背景:伴有严重并发症的重症登革热儿童的死亡率很高,从大约1%到20%以上不等。迄今为止,缺乏基于机器学习的算法预测登革休克综合征(DSS)儿童住院死亡风险的数据。目的:建立机器学习模型来估计住院DSS患儿的死亡风险。方法:这项单中心回顾性研究于2013年至2022年在越南第二三级儿童医院进行。主要结局是入住儿科重症监护病房(PICU)的DSS患儿的住院死亡率。使用机器学习模型预先确定了9个重要特征,以便进行进一步分析。采用过采样的方法来提高模型的性能。使用监督模型,包括逻辑回归、Naïve贝叶斯、随机森林(RF)、k近邻、决策树和极端梯度增强(XGBoost)来建立预测模型。Shapley加性解释用于确定特征的贡献程度。结果:共纳入资料完整的picu住院患儿1278例。患者年龄中位数为8.1岁(四分位数范围:5.4-10.7)。39例(3%)患者死亡。RF和XGboost模型表现出最高的性能。Shapley上瘾解释模型显示,最重要的预测特征包括年龄较小、女性患者、存在基础疾病、严重的转氨炎、严重出血、血小板计数低(需要输血小板)、国际标准化比率、血乳酸和血清肌酐水平升高、大量复苏液和高血管活性肌力评分(bbb30)。结论:我们开发了健壮的基于机器学习的模型来估计住院DSS患儿的死亡风险。研究结果可用于设计管理方案,以提高DSS患者的生存结局。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based models for prediction of in-hospital mortality in patients with dengue shock syndrome.

Background: Severe dengue children with critical complications have been attributed to high mortality rates, varying from approximately 1% to over 20%. To date, there is a lack of data on machine-learning-based algorithms for predicting the risk of in-hospital mortality in children with dengue shock syndrome (DSS).

Aim: To develop machine-learning models to estimate the risk of death in hospitalized children with DSS.

Methods: This single-center retrospective study was conducted at tertiary Children's Hospital No. 2 in Viet Nam, between 2013 and 2022. The primary outcome was the in-hospital mortality rate in children with DSS admitted to the pediatric intensive care unit (PICU). Nine significant features were predetermined for further analysis using machine learning models. An oversampling method was used to enhance the model performance. Supervised models, including logistic regression, Naïve Bayes, Random Forest (RF), K-nearest neighbors, Decision Tree and Extreme Gradient Boosting (XGBoost), were employed to develop predictive models. The Shapley Additive Explanation was used to determine the degree of contribution of the features.

Results: In total, 1278 PICU-admitted children with complete data were included in the analysis. The median patient age was 8.1 years (interquartile range: 5.4-10.7). Thirty-nine patients (3%) died. The RF and XGboost models demonstrated the highest performance. The Shapley Addictive Explanations model revealed that the most important predictive features included younger age, female patients, presence of underlying diseases, severe transaminitis, severe bleeding, low platelet counts requiring platelet transfusion, elevated levels of international normalized ratio, blood lactate and serum creatinine, large volume of resuscitation fluid and a high vasoactive inotropic score (> 30).

Conclusion: We developed robust machine learning-based models to estimate the risk of death in hospitalized children with DSS. The study findings are applicable to the design of management schemes to enhance survival outcomes of patients with DSS.

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