Machine Learning for E-triage

Şebnem Bora, Aylin Kantarcı, A. Erdogan, Burak Beynek, Bita Kheibari, Vedat Evren, M. Erdoğan, Fulya Kavak, Fatmanur Afyoncu, Cansu Eryaz, H. Gönüllü
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Abstract

– Due to the rising number of visits to emergency departments all around the world and the importance of emergency departments in hospitals, the accurate and timely evaluation of a patient in the emergency section is of great importance. In this regard, the correct triage of the emergency department also requires a high level of priority and sensitivity. Correct and timely triage of patients is vital to effective performance in the emergency department, and if the inappropriate level of triage is chosen, errors in patients' triage will have serious consequences. It can be difficult for medical staff to assess patients' priorities at times, therefore offering an intelligent method will be pivotal for both increasing the accuracy of patients' priorities and decreasing the waiting time for emergency patients. In this study, we evaluate the machine learning algorithms in triage procedure. Our experiments show that Random Forest approach outperforms the others in e-triage .
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电子分诊的机器学习
-由于世界各地急诊科的访问量不断增加以及急诊科在医院中的重要性,在急诊科对患者进行准确及时的评估非常重要。在这方面,急诊科的正确分类也需要高度的优先级和敏感性。正确、及时地对患者进行分诊对急诊科的有效工作至关重要,如果选择了不适当的分诊级别,患者的分诊错误将造成严重后果。医务人员有时很难评估患者的优先事项,因此提供一种智能方法对于提高患者优先事项的准确性和减少急诊患者的等待时间至关重要。在这项研究中,我们评估了机器学习算法在分诊过程中。我们的实验表明,随机森林方法在电子分类中优于其他方法。
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