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Improving Emergency Department patient flow through near real-time analytics

机译:通过近实时分析改善急诊科的患者流量

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摘要

This dissertation research investigates opportunities for developing effective decision support models that exploit near real-time (NRT) information to enhance the "operational intelligence" within hospital Emergency Departments (ED). Approaching from a systems engineering perspective, the study proposes a novel decision support framework for streamlining ED patient flow that employs machine learning, statistical and operations research methods to facilitate its operationalization.;ED crowding has become the subject of significant public and academic attention, and it is known to cause a number of adverse outcomes to the patients, ED staff as well as hospital revenues. Despite many efforts to investigate the causes, consequences and interventions for ED overcrowding in the past two decades, scientific knowledge remains limited in regards to strategies and pragmatic approaches that actually improve patient flow in EDs.;Motivated by the gaps in research, we develop a near real-time triage decision support system to reduce ED boarding and improve ED patient flow. The proposed system is a novel variant of a newsvendor modeling framework that integrates patient admission probability prediction within a proactive ward-bed reservation system to improve the effectiveness of bed coordination efforts and reduce boarding times for ED patients along with the resulting costs. Specifically, we propose a cost-sensitive bed reservation policy that recommends optimal bed reservation times for patients right during triage. The policy relies on classifiers that estimate the probability that the ED patient will be admitted using the patient information collected and readily available at triage or right after. The policy is cost-sensitive in that it accounts for costs associated with patient admission prediction misclassification as well as costs associated with incorrectly selecting the reservation time.;To achieve the objective of this work, we also addressed two secondary objectives: first, development of models to predict the admission likelihood and target admission wards of ED patients; second, development of models to estimate length-of-stay (LOS) of ED patients. For the first secondary objective, we develop an algorithm that incorporates feature selection into a state-of-the-art and powerful probabilistic Bayesian classification method: multi-class relevance vector machine. For the second objective, we investigated the performance of hazard rate models (in particular, the non-parametric Cox proportional hazard model, parametric hazard rate models, as well as artificial neural networks for modeling the hazard rate) to estimate ED LOS by using the information that is available at triage or right after as the covariates in the models.;The proposed models are tested using extensive historical data from several U.S. Department of Veterans Affairs Medical Centers (VAMCs) in the Mid-West. The Case Study using historical data from a VAMC demonstrates that applying the proposed framework leads to significant savings associated with reduced boarding times, in particular, for smaller wards with high levels of utilization.;For theory, our primary contribution is the development of a cost sensitive ward-bed reservation model that effectively accounts for various costs and uncertainties. This work also contributes to the development of an integrated feature selection method for classification by developing and validating the mathematical derivation for feature selection during mRVM learning. Another contribution stems from investigating how much the ED LOS estimation can be improved by incorporating the information regarding ED orderable item lists.;Overall, this work is a successful application of mixed methods of operation research, machine learning and statistics to the important domain of health care system efficiency improvement.
机译:本论文的研究调查了开发有效的决策支持模型的机会,这些模型利用近实时(NRT)信息来增强医院急诊科(ED)的“运营情报”。从系统工程的角度出发,该研究提出了一种用于简化ED患者流程的新颖决策支持框架,该框架采用了机器学习,统计和运筹学方法来促进其操作化。; ED拥挤已成为公众和学术界广泛关注的主题,并且众所周知,这会给患者,急诊人员和医院带来许多不利后果。尽管过去二十年来人们为调查急诊部人满为患的原因,后果和干预措施做出了许多努力,但在实际上可改善急诊部患者流动的策略和务实方法方面,科学知识仍然有限。近实时分类诊断决策支持系统,以减少急诊室登机和改善急诊室病人流量。拟议中的系统是新闻供应商建模框架的新颖变体,它将患者入院概率预测集成在积极的病床预约系统中,以提高病床协调工作的效率,并减少急诊病人的登机时间以及由此产生的成本。具体来说,我们提出了一项对费用敏感的床位预订政策,为分诊期间的患者推荐最佳床位预订时间。该策略依赖于分类器,这些分类器使用收集的患者信息来估计ED患者入院的可能性,这些信息可以在分诊时或之后立即获得。该政策是成本敏感的,因为它考虑了与患者入院预测错误分类相关的成本以及与错误选择保留时间相关的成本。为了实现这项工作的目标,我们还解决了两个主要目标:第一,开发预测ED患者入院可能性和目标入院病房的模型;其次,开发模型以估计ED患者的住院时间(LOS)。对于第一个次要目标,我们开发了一种算法,该算法将特征选择合并到最新的,功能强大的概率贝叶斯分类方法中:多类相关性向量机。对于第二个目标,我们调查了危险率模型(尤其是非参数Cox比例危险模型,参数危险率模型以及用于模拟危险率的人工神经网络)的性能,以通过使用可以在分类中或之后作为模型的协变量获得的信息。;所提议的模型是使用来自中西部多个美国退伍军人事务医疗中心(VAMC)的大量历史数据进行测试的。使用VAMC的历史数据进行的案例研究表明,采用建议的框架可显着节省与减少登机时间相关的费用,尤其是对于利用率高的较小病房。;理论上,我们的主要贡献是成本的提高灵敏的病床预订模型,可有效考虑各种费用和不确定性。通过开发和验证在mRVM学习过程中进行特征选择的数学推导,这项工作还有助于开发用于分类的集成特征选择方法。另一个贡献来自于调查通过合并有关ED可订购项目列表的信息可以将ED LOS估计提高多少;总的来说,这项工作是将运筹学,机器学习和统计混合方法成功应用于重要健康领域的成功应用护理系统效率的提高。

著录项

  • 作者

    Qiu, Shanshan.;

  • 作者单位

    Wayne State University.;

  • 授予单位 Wayne State University.;
  • 学科 Industrial engineering.;Operations research.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 144 p.
  • 总页数 144
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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