Support Systems of Clinical Decisions in the Triage of the Emergency Department Using Artificial Intelligence: The Efficiency to Support Triage.

Q3 Medicine
Eleni Karlafti, Athanasios Anagnostis, Theodora Simou, Angeliki Sevasti Kollatou, Daniel Paramythiotis, Georgia Kaiafa, Triantafyllos Didaggelos, Christos Savvopoulos, Varvara Fyntanidou
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引用次数: 0

Abstract

Purpose: In the Emergency Departments (ED) the current triage systems that are been implemented are based completely on medical education and the perception of each health professional who is in charge. On the other hand, cutting-edge technology, Artificial Intelligence (AI) can be incorporated into healthcare systems, supporting the healthcare professionals' decisions, and augmenting the performance of triage systems. The aim of the study is to investigate the efficiency of AI to support triage in ED.

Patients–methods: The study included 332 patients from whom 23 different variables related to their condition were collected. From the processing of patient data for input variables, it emerged that the average age was 56.4 ± 21.1 years and 50.6% were male. The waiting time had an average of 59.7 ± 56.3 minutes while 3.9% ± 0.1% entered the Intensive Care Unit (ICU). In addition, qualitative variables related to the patient's history and admission clinics were used. As target variables were taken the days of stay in the hospital, which were on average 1.8 ± 5.9, and the Emergency Severity Index (ESI) for which the following distribution applies: ESI: 1, patients: 2; ESI: 2, patients: 18; ESI: 3, patients: 197; ESI: 4, patients: 73; ESI: 5, patients: 42.

Results: To create an automatic patient screening classifier, a neural network was developed, which was trained based on the data, so that it could predict each patient's ESI based on input variables.The classifier achieved an overall accuracy (F1 score) of 72.2% even though there was an imbalance in the classes.

Conclusions: The creation and implementation of an AI model for the automatic prediction of ESI, highlighted the possibility of systems capable of supporting healthcare professionals in the decision-making process. The accuracy of the classifier has not reached satisfactory levels of certainty, however, the performance of similar models can increase sharply with the collection of more data.

应用人工智能的急诊科分诊临床决策支持系统:支持分诊的效率。
目的:在急诊科(ED)目前实施的分诊系统完全基于医学教育和每个负责的卫生专业人员的看法。另一方面,尖端技术,人工智能(AI)可以纳入医疗保健系统,支持医疗保健专业人员的决策,并增强分诊系统的性能。该研究的目的是调查人工智能在支持ed患者分诊中的效率-方法:该研究包括332名患者,从他们的病情中收集了23个不同的变量。从输入变量的患者数据处理来看,平均年龄为56.4±21.1岁,男性占50.6%。平均等待时间为59.7±56.3分钟,进入重症监护病房(ICU)的时间为3.9%±0.1%。此外,还使用了与患者病史和入院诊所相关的定性变量。以住院天数为目标变量,平均为1.8±5.9天,急诊严重程度指数(ESI)为目标变量,ESI为1,患者为2;ESI: 2,患者:18;ESI: 3,患者197例;ESI: 4,患者:73;ESI: 5,患者:42。结果:为了创建患者自动筛选分类器,我们开发了一个神经网络,并基于数据对其进行训练,使其能够根据输入变量预测每个患者的ESI。尽管分类器中存在不平衡,但分类器的总体准确率(F1分数)为72.2%。结论:用于ESI自动预测的人工智能模型的创建和实施,突出了系统能够在决策过程中支持医疗保健专业人员的可能性。分类器的准确性还没有达到令人满意的确定性水平,然而,随着收集更多的数据,类似模型的性能可以急剧提高。
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
Acta Medica Lituanica
Acta Medica Lituanica Medicine-General Medicine
CiteScore
0.70
自引率
0.00%
发文量
33
审稿时长
16 weeks
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