Early prediction of intensive care unit admission in emergency department patients using machine learning

IF 2.6 3区 医学 Q2 CRITICAL CARE MEDICINE Australian Critical Care Pub Date : 2024-12-05 DOI:10.1016/j.aucc.2024.101143
Dinesh Pandey BEng, MSc, PhD , Hossein Jahanabadi BSc, MEng, PhD , Jack D'Arcy MB BCh, BAO(Hons), FCICM, FACEM , Suzanne Doherty MB BCh, BAO(Hons), FACEM , Hung Vo GradDipPsych , Daryl Jones BSc(Hons), MB BS, FRACP, FCICM, MD, PhD , Rinaldo Bellomo MB BS(Hons), MD, PhD, FRACP, FCICM
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Abstract

Background

The timely identification and transfer of critically ill patients from the emergency department (ED) to the intensive care unit (ICU) is important for patient care and ED workflow practices.

Objective

We aimed to develop a predictive model for ICU admission early in the course of an ED presentation.

Methods

We extracted retrospective data from the electronic medical record and applied natural language processing and machine learning to information available early in the course of an ED presentation to develop a predictive model for ICU admission.

Results

We studied 484 094 adult (≥18 years old) ED presentations, amongst which direct admission to the ICU occurred in 3955 (0.82%) instances. We trained machine learning in 323 678 ED presentations and performed testing/validation in 160 416 (70 546 for testing and 89 870 for validation). Although the area under the receiver operating characteristics curve was 0.92, the F1 score (0.177) and Matthews correlation coefficient (0.257) suggested substantial imbalance in the dataset. The strongest weighted variables in the predictive model at the 30-min timepoint were ED triage category, arrival via ambulance, quick Sequential Organ Failure Assessment score, baseline heart rate, and the number of inpatient presentations in the prior 12 months. Using a likelihood of ICU admission of more than 75%, for activation of automated ICU referral, we estimated the model would generate 2.7 triggers per day.

Conclusions

The infrequency of ICU admissions as a proportion of ED presentations makes accurate early prediction of admissions challenging. Such triggers are likely to generate a moderate number of false positives.
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利用机器学习对急诊科重症监护病房患者入院进行早期预测。
背景:及时识别并将危重患者从急诊科(ED)转移到重症监护病房(ICU)对于患者护理和ED工作流程实践非常重要。目的:我们的目的是建立一个在急诊科表现过程中早期进入ICU的预测模型。方法:我们从电子病历中提取回顾性数据,并将自然语言处理和机器学习应用于急诊科介绍过程中早期可获得的信息,以建立ICU入院的预测模型。结果:我们研究了484 094例成人(≥18岁)ED的表现,其中直接入院的病例为3955例(0.82%)。我们在323678次ED演示中训练了机器学习,并在160 416次中进行了测试/验证(70 546次用于测试,89 870次用于验证)。虽然接收者工作特征曲线下面积为0.92,但F1得分(0.177)和Matthews相关系数(0.257)表明数据集存在较大的不平衡。在30分钟时间点预测模型中最强的加权变量是急诊科分类、救护车到达、快速序贯器官衰竭评估评分、基线心率和前12个月的住院次数。使用超过75%的ICU入院可能性,激活自动ICU转诊,我们估计该模型每天将产生2.7个触发器。结论:ICU入院率占急诊科就诊率的比例较低,这使得对入院率的准确早期预测具有挑战性。这样的触发可能会产生中等数量的误报。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Australian Critical Care
Australian Critical Care NURSING-NURSING
CiteScore
4.90
自引率
9.10%
发文量
148
审稿时长
>12 weeks
期刊介绍: Australian Critical Care is the official journal of the Australian College of Critical Care Nurses (ACCCN). It is a bi-monthly peer-reviewed journal, providing clinically relevant research, reviews and articles of interest to the critical care community. Australian Critical Care publishes peer-reviewed scholarly papers that report research findings, research-based reviews, discussion papers and commentaries which are of interest to an international readership of critical care practitioners, educators, administrators and researchers. Interprofessional articles are welcomed.
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