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外科不确定性分析:手术时长、手术请求与取消情况

Analysis of uncertainty in the surgical department: durations, requests and cancellations.

作者信息

Spratt Belinda, Kozan Erhan, Sinnott Michael

机构信息

Queensland University of Technology (QUT), 2 George St, Brisbane, Qld 4000, Australia. Email.

Princess Alexandra Hospital, 199 Ipswich Rd, Woolloongabba, Qld 4102, Australia. Email.

出版信息

Aust Health Rev. 2019 Jan;43(6):706-711. doi: 10.1071/AH18082.

Abstract

Objective Analytical techniques are being implemented with increasing frequency to improve the management of surgical departments and to ensure that decisions are well informed. Often these analytical techniques rely on the validity of underlying statistical assumptions, including those around choice of distribution when modelling uncertainty. The aim of the present study was to determine a set of suitable statistical distributions and provide recommendations to assist hospital planning staff, based on three full years of historical data. Methods Statistical analysis was performed to determine the most appropriate distributions and models in a variety of surgical contexts. Data from 2013 to 2015 were collected from the surgical department at a large Australian public hospital. Results A log-normal distribution approximation of the total duration of surgeries in an operating room is appropriate when considering probability of overtime. Surgical requests can be modelled as a Poisson process with rate dependent on urgency and day of the week. Individual cancellations could be modelled as Bernoulli trials, with the probability of patient-, staff- and resource-based cancellations provided herein. Conclusions The analysis presented herein can be used to ensure that assumptions surrounding planning and scheduling in the surgical department are valid. Understanding the stochasticity in the surgical department may result in the implementation of more realistic decision models. What is known about the topic? Many surgical departments rely on crude estimates and general intuition to predict surgical duration, surgical requests (both elective and non-elective) and cancellations. What does this paper add? This paper describes how statistical analysis can be performed to validate common assumptions surrounding surgical uncertainty. The paper also provides a set of recommended distributions and associated parameters that can be used to model uncertainty in a large public hospital's surgical department. What are the implications for practitioners? The insights on surgical uncertainty provided here will prove valuable for administrative staff who want to incorporate uncertainty in their surgical planning and scheduling decisions.

摘要

目的 越来越频繁地采用分析技术以改善外科科室的管理,并确保决策依据充分。这些分析技术通常依赖于基础统计假设的有效性,包括在对不确定性进行建模时有关分布选择的假设。本研究的目的是根据三年的历史数据确定一组合适的统计分布,并提供建议以协助医院规划人员。方法 进行统计分析以确定各种外科情况下最合适的分布和模型。从澳大利亚一家大型公立医院的外科收集了2013年至2015年的数据。结果 考虑加班概率时,手术室手术总时长的对数正态分布近似是合适的。手术请求可以建模为泊松过程,其发生率取决于紧急程度和星期几。个体取消手术可以建模为伯努利试验,本文提供了基于患者、工作人员和资源的取消手术概率。结论 本文所呈现的分析可用于确保外科科室规划和排班相关假设的有效性。了解外科科室的随机性可能会促使实施更现实的决策模型。关于该主题已知的情况是什么?许多外科科室依靠粗略估计和一般直觉来预测手术时长、手术请求(包括择期和非择期)以及取消手术的情况。本文增加了什么内容?本文描述了如何进行统计分析以验证围绕手术不确定性的常见假设。本文还提供了一组推荐的分布及相关参数,可用于对大型公立医院外科科室的不确定性进行建模。对从业者有何影响?此处提供的关于手术不确定性的见解对于希望在手术规划和排班决策中纳入不确定性的行政人员将具有宝贵价值。

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