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基于机器学习的急诊护理中心儿童住院预测

Machine Learning-Based Prediction of Hospital Admission Among Children in an Emergency Care Center.

作者信息

Hatachi Takeshi, Hashizume Takao, Taniguchi Masashi, Inata Yu, Aoki Yoshihiro, Kawamura Atsushi, Takeuchi Muneyuki

机构信息

From the Department of Intensive Care Medicine, Osaka Women's and Children's Hospital.

Department of Pediatrics, SAKAI Children's Emergency Medical Center, Osaka.

出版信息

Pediatr Emerg Care. 2023 Feb 1;39(2):80-86. doi: 10.1097/PEC.0000000000002648. Epub 2022 Feb 8.

Abstract

OBJECTIVES

Machine learning-based prediction of hospital admissions may have the potential to optimize patient disposition and improve clinical outcomes by minimizing both undertriage and overtriage in crowded emergency care. We developed and validated the predictive abilities of machine learning-based predictions of hospital admissions in a pediatric emergency care center.

METHODS

A prognostic study was performed using retrospectively collected data of children younger than 16 years who visited a single pediatric emergency care center in Osaka, Japan, between August 1, 2016, and October 15, 2019. Generally, the center treated walk-in children and did not treat trauma injuries. The main outcome was hospital admission as determined by the physician. The 83 potential predictors available at presentation were selected from the following categories: demographic characteristics, triage level, physiological parameters, and symptoms. To identify predictive abilities for hospital admission, maximize the area under the precision-recall curve, and address imbalanced outcome classes, we developed the following models for the preperiod training cohort (67% of the samples) and also used them in the 1-year postperiod validation cohort (33% of the samples): (1) logistic regression, (2) support vector machine, (3) random forest, and (4) extreme gradient boosting.

RESULTS

Among 88,283 children who were enrolled, the median age was 3.9 years, with 47,931 (54.3%) boys and 1985 (2.2%) requiring hospital admission. Among the models, extreme gradient boosting achieved the highest predictive abilities (eg, area under the precision-recall curve, 0.26; 95% confidence interval, 0.25-0.27; area under the receiver operating characteristic curve, 0.86; 95% confidence interval, 0.84-0.88; sensitivity, 0.77; and specificity, 0.82). With an optimal threshold, the positive and negative likelihood ratios were 4.22, and 0.28, respectively.

CONCLUSIONS

Machine learning-based prediction of hospital admissions may support physicians' decision-making for hospital admissions. However, further improvements are required before implementing these models in real clinical settings.

摘要

目的

基于机器学习的住院预测可能有潜力通过在拥挤的急诊护理中尽量减少漏诊和过度分诊来优化患者处置并改善临床结局。我们在一家儿科急诊护理中心开发并验证了基于机器学习的住院预测的预测能力。

方法

进行了一项预后研究,使用回顾性收集的2016年8月1日至2019年10月15日期间在日本大阪一家儿科急诊护理中心就诊的16岁以下儿童的数据。一般来说,该中心治疗非创伤性疾病的儿童患者。主要结局是由医生确定的住院情况。从以下类别中选择了就诊时可用的83个潜在预测因素:人口统计学特征、分诊级别、生理参数和症状。为了确定住院预测能力、最大化精确召回曲线下面积并处理不均衡的结局类别,我们为前期训练队列(样本的67%)开发了以下模型,并在1年后期验证队列(样本的33%)中使用了这些模型:(1)逻辑回归,(2)支持向量机,(3)随机森林,以及(4)极端梯度提升。

结果

在纳入的88283名儿童中,中位年龄为3.9岁,其中47931名(54.3%)为男孩,1985名(2.2%)需要住院。在这些模型中,极端梯度提升实现了最高的预测能力(例如,精确召回曲线下面积为0.26;95%置信区间为0.25 - 0.27;受试者操作特征曲线下面积为0.86;95%置信区间为0.84 - 0.88;敏感性为0.77;特异性为0.82)。在最佳阈值下,阳性似然比和阴性似然比分别为4.22和0.28。

结论

基于机器学习的住院预测可能有助于医生做出住院决策。然而,在实际临床环境中实施这些模型之前还需要进一步改进。

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