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Combining bootstrap-based stroke incidence models with discrete event modeling of travel-time and stroke treatment: Non-normal input and non-linear output

机译:将基于Bootstrap的中风发生率模型与行进时间和中风治疗的离散事件建模相结合:非正常输入和非线性输出

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摘要

Incidence rates in simulation models are often assumed to stem from Poisson processes, with rates based on analyses of real-life data. In cases where the record of data is limited, or observed rates are low, the stochastic process involved in sampling from modeled distributions may not adequately reflect the uncertainty around the estimated input parameters. We present a conceptually simple, but computationally demanding, method for generating variance in incidence through the use of bootstrapping; for each subsample, a regression model is fitted, and the simulation model is run repeatedly sampling from the fitted model. Stochasticity is introduced at two levels; data for fitting the regression, and sampling from the fitted model. We illustrate this hybrid approach using Norwegian stroke records to generate stroke incidences with age, sex, and location, in a simulation model made to analyze travel time, queuing, and time to treatment in regional stroke units.
机译:通常假定仿真模型中的发生率是由泊松过程引起的,其发生率是基于对现实生活数据的分析。在数据记录有限或观察到的比率较低的情况下,从建模分布中采样所涉及的随机过程可能无法充分反映估计输入参数周围的不确定性。我们提出了一种概念上简单但计算量大的方法,该方法通过使用自举来产生入射方差。对于每个子样本,拟合一个回归模型,然后从拟合模型中反复运行仿真模型。随机性分为两个级别:拟合回归数据,并从拟合模型中采样。我们在模拟模型中说明了这种混合方法,该方法使用挪威的卒中记录来生成年龄,性别和位置随年龄变化的卒中发生率,该模型用于分析旅行时间,排队以及以区域卒中为单位的治疗时间。

著录项

  • 来源
    《Simulation Conference》|2017年|1670-1679|共10页
  • 会议地点 Las Vegas(US)
  • 作者单位

    Health Service Research Centre Akershus University Hospital Sykehusveien 25 1478 L⊘renskog Norway;

    Health Service Research Centre Akershus University;

  • 会议组织
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    Hafnium compounds;

    机译:compounds化合物;

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