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A Machine Learning Model for Triage in Lean Pediatric Emergency Departments

机译:精益儿科急诊分诊的机器学习模型

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High demand periods and under-staffing due to financial constraints cause Emergency Departments (EDs) to frequently exhibit over-crowding and slow response times to provide adequate patient care. In response, Lean Thinking has been applied to help alleviate some of these issues and improve patient handling, with success. Lean approaches in EDs include separate patient streams, with low-complexity patients treated in a so-called Fast Track, in order to reduce total waiting time and to free-up capacity to treat more complicated patients in a timely manner. In this work we propose the use of Machine Learning techniques in a Lean Pediatric ED to correctly predict which patients should be admitted to the Fast Track, given their signs and symptoms. Charts from 1205 patients of the emergency department of Hospital Napoleon Franco Pareja in Cartagena - Colombia, were used to construct a dataset and build several predictive models. Validation and test results are promising and support the validity of this approach and further research on the subject.
机译:由于财务限制,需求高峰期和人员不足导致急诊科(ED)经常出现人满为患且响应时间较慢,无法提供足够的患者护理。作为回应,精益思维已被应用来帮助缓解其中的一些问题,并成功地改善了患者的处理能力。急诊室的精益治疗方法包括单独的患者流,对低复杂性患者进行所谓的快速通道治疗,以减少总等待时间并释放及时治疗更复杂患者的能力。在这项工作中,我们建议在瘦小儿ED中使用机器学习技术来正确预测应考虑其体征和症状的哪些患者应接受快速通道治疗。来自哥伦比亚卡塔赫纳的拿破仑·佛朗哥·帕雷哈医院急诊科的1205名患者的图表被用来构建数据集并建立几个预测模型。验证和测试结果是有希望的,并支持该方法的有效性以及对该主题的进一步研究。

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