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用于院前评估以预测住院情况的特定机构机器学习模型:预测模型开发研究

Institution-Specific Machine Learning Models for Prehospital Assessment to Predict Hospital Admission: Prediction Model Development Study.

作者信息

Shirakawa Toru, Sonoo Tomohiro, Ogura Kentaro, Fujimori Ryo, Hara Konan, Goto Tadahiro, Hashimoto Hideki, Takahashi Yuji, Naraba Hiromu, Nakamura Kensuke

机构信息

Department of Public Health, Graduate School of Medicine, Osaka University, Suita, Japan.

TXP Medical Co, Ltd, Chuo-ku, Japan.

出版信息

JMIR Med Inform. 2020 Oct 27;8(10):e20324. doi: 10.2196/20324.

Abstract

BACKGROUND

Although multiple prediction models have been developed to predict hospital admission to emergency departments (EDs) to address overcrowding and patient safety, only a few studies have examined prediction models for prehospital use. Development of institution-specific prediction models is feasible in this age of data science, provided that predictor-related information is readily collectable.

OBJECTIVE

We aimed to develop a hospital admission prediction model based on patient information that is commonly available during ambulance transport before hospitalization.

METHODS

Patients transported by ambulance to our ED from April 2018 through March 2019 were enrolled. Candidate predictors were age, sex, chief complaint, vital signs, and patient medical history, all of which were recorded by emergency medical teams during ambulance transport. Patients were divided into two cohorts for derivation (3601/5145, 70.0%) and validation (1544/5145, 30.0%). For statistical models, logistic regression, logistic lasso, random forest, and gradient boosting machine were used. Prediction models were developed in the derivation cohort. Model performance was assessed by area under the receiver operating characteristic curve (AUROC) and association measures in the validation cohort.

RESULTS

Of 5145 patients transported by ambulance, including deaths in the ED and hospital transfers, 2699 (52.5%) required hospital admission. Prediction performance was higher with the addition of predictive factors, attaining the best performance with an AUROC of 0.818 (95% CI 0.792-0.839) with a machine learning model and predictive factors of age, sex, chief complaint, and vital signs. Sensitivity and specificity of this model were 0.744 (95% CI 0.716-0.773) and 0.745 (95% CI 0.709-0.776), respectively.

CONCLUSIONS

For patients transferred to EDs, we developed a well-performing hospital admission prediction model based on routinely collected prehospital information including chief complaints.

摘要

背景

尽管已经开发了多种预测模型来预测急诊科(ED)的住院情况,以解决过度拥挤和患者安全问题,但只有少数研究探讨了院前使用的预测模型。在数据科学时代,只要与预测因素相关的信息易于收集,开发特定机构的预测模型是可行的。

目的

我们旨在基于患者在住院前救护车转运期间通常可获得的信息,开发一种住院预测模型。

方法

纳入2018年4月至2019年3月期间由救护车转运至我院急诊科的患者。候选预测因素包括年龄、性别、主诉、生命体征和患者病史,所有这些都是急诊医疗团队在救护车转运期间记录的。患者被分为两个队列进行推导(3601/5145,70.0%)和验证(1544/5145,30.0%)。对于统计模型,使用了逻辑回归、逻辑套索、随机森林和梯度提升机。在推导队列中开发预测模型。通过验证队列中的受试者工作特征曲线下面积(AUROC)和关联度量来评估模型性能。

结果

在5145例由救护车转运的患者中,包括在急诊科死亡和转院的患者,2699例(52.5%)需要住院治疗。添加预测因素后预测性能更高,使用机器学习模型以及年龄、性别、主诉和生命体征的预测因素时,AUROC为0.818(95%CI 0.792-0.839),达到最佳性能。该模型的敏感性和特异性分别为0.744(95%CI 0.716-0.773)和0.745(95%CI 0.709-0.776)。

结论

对于转至急诊科的患者,我们基于包括主诉在内的常规收集的院前信息,开发了一种性能良好的住院预测模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47b3/7655472/92f5c1dd897d/medinform_v8i10e20324_fig1.jpg

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