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Observations on surgical demand time series: detection and resolution of holiday variance.

机译:对外科手术需求时间序列的观察:假日差异的检测和解决。

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BACKGROUND: Surgical scheduling is complicated by both naturally occurring and human-induced variability in the demand for surgical services. Surgical demand time series are decomposed into periodic, lagged, and linear trends with frequent occurrences of nonconstant variations in mean and variance. The authors used time series methods to model surgical demand time series in order to improve the scheduling of scarce surgical resources. METHODS: With institutional approval, the authors studied 47,752 surgeries undertaken at a large academic medical center. They initially extracted periodic information from the time series using two frequency domain techniques: the harmonic F test and the multitaper test. They subsequently extracted lagged (correlated) behavior using a seasonal autoregressive integrated moving average model. Finally, they used moving variance filters on the residuals to identify variance in the time series that coincided with major US holidays. RESULTS: Linear terms such as periodic cycles, trends, and daily and weekly lags explained 80% of the variance in the raw time series. In the residuals, the authors used moving variance filters to detect nonlinear variance artifacts that correlated with surgical activities on specific US holidays. CONCLUSIONS: After extracting linear terms, the remaining variance was attributable to a combination of nonlinear and unexplained random events. The authors used the term holiday variance to describe a specific nonlinear disturbance in surgical demand attributable to statutory US holidays. Resolving these holiday variances may assist in management and scheduling of scarce surgical personnel and resources.
机译:背景:手术安排由于自然而然和人为引起的对手术服务需求的变化而变得复杂。手术需求时间序列分解为周期性,滞后和线性趋势,均值和方差频繁出现非恒定变化。作者使用时间序列方法对手术需求时间序列进行建模,以改善稀缺外科资源的调度。方法:经机构批准,作者研究了在大型学术医学中心进行的47,752例外科手术。他们最初使用两种频域技术从时间序列中提取了周期性信息:谐波F检验和多锥度检验。随后,他们使用季节性自回归综合移动平均模型提取了滞后(相关)的行为。最后,他们对残差使用了移动方差过滤器,以识别与美国主要假期重合的时间序列中的方差。结果:线性术语(例如周期性周期,趋势以及每日和每周的延迟)解释了原始时间序列中80%的方差。在残差中,作者使用移动方差过滤器来检测与特定美国假期的手术活动相关的非线性方差伪影。结论:提取线性项后,剩余的方差可归因于非线性和无法解释的随机事件的组合。作者使用术语假日差异来描述归因于美国法定假日的外科手术需求中的特定非线性干扰。解决这些假期差异可能有助于管理和安排稀缺的手术人员和资源。

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