Using Machine Learning Technique in Managing Emergency Triage Flow.

Q2 Medicine
Mohammed Almulhim, Dunya Alfaraj, Dina Alabbad, Faisal A Alghamdi, Mubarak A AlKhudair, Khalid A AlKatout, Saud A AlShehri, Amal Alsulaibaikh
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Abstract

Background: Triage is a critical component of Emergency department care. Erroneous patient classification and mis-triaging are common in present triage systems worldwide. Therefore, several institutes worldwide have developed artificial intelligence-based algorithms that use machine learning approaches to sort and triage patients effectively.

Objective: This study aims were to propose a machine learning model to predict the triage level for emergency medicine department patients and compare its performance to the standard nursing triage system.

Methods: This retrospective pilot study collected the dataset of emergency department records from King Fahad Hospital of the University in khobar, between January 1, 2020, and December 31, 2022. A sample of 998 randomly selected patients was included in this cohort. The machine learning model was trained using 10-fold cross-validation. Two experiments were conducted, including five triage levels, and the second combing triage levels 2, 3, 4, and 5.

Results: The machine learning model achieved an accuracy of 84% in experiment 1 and 64% in experiment 2. The mis-triage rates of the machine learning model were significantly lower than those of the standard nursing triage system.

Conclusion: The machine learning model achieved higher accuracy and lower mis-triage rates than the standard nursing triage system. Thus, the proposed machine learning model can be a helpful tool for emergency department triage, enabling more efficient and accurate patient management.

Abstract Image

Abstract Image

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利用机器学习技术管理急诊分流流程。
背景:分诊是急诊科护理的重要组成部分。在目前世界范围内的分诊系统中,错误的患者分类和错误的分诊是很常见的。因此,世界各地的一些研究机构开发了基于人工智能的算法,利用机器学习方法有效地对患者进行分类和分类。目的:提出一种预测急诊科患者分诊水平的机器学习模型,并将其与标准护理分诊系统的性能进行比较。方法:本回顾性试点研究收集了2020年1月1日至2022年12月31日期间霍巴尔大学法赫德国王医院急诊科记录的数据集。随机选择998例患者纳入本队列。机器学习模型使用10倍交叉验证进行训练。进行了两次实验,包括五个分诊级别,第二次是2、3、4、5级的梳理分诊级别。结果:机器学习模型在实验1和实验2中分别达到了84%和64%的准确率。机器学习模型的分诊错误率明显低于标准护理分诊系统。结论:与标准护理分诊系统相比,机器学习模型具有更高的准确率和更低的错误率。因此,提出的机器学习模型可以成为急诊科分类的有用工具,实现更有效和准确的患者管理。
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来源期刊
Acta Informatica Medica
Acta Informatica Medica Medicine-Medicine (all)
CiteScore
2.90
自引率
0.00%
发文量
37
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