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心脏导管插入术的容量规划:一个案例研究

Capacity planning for cardiac catheterization: a case study.

作者信息

Gupta Diwakar, Natarajan Madhu Kailash, Gafni Amiram, Wang Lei, Shilton Don, Holder Douglas, Yusuf Salim

机构信息

Graduate Program in Industrial & Systems Engineering, Department of Mechanical Engineering, University of Minnesota, Minneapolis, MN 55455, USA.

出版信息

Health Policy. 2007 Jun;82(1):1-11. doi: 10.1016/j.healthpol.2006.07.010. Epub 2006 Sep 11.

Abstract

BACKGROUND

Excessive waiting for procedures such as cardiac catheterization is an important issue for health care systems. Delays are generally attributed to a mismatch between demand and available capacity. Furthermore, due to the dynamic nature of short-term referral rates, procedure times, and patients' medical urgency, all of which are important contributors to the problem of excessive waiting time, it has been difficult to predict capacity needs accurately. The objective of our paper is to demonstrate how such calculations could be performed.

METHODS

After constructing a patient flow model and populating it with appropriate data from 16 consecutive months of operations (n=6215 referrals) of a regional cardiac centre in Ontario, we used computer simulation to simulate the operations of catheterization laboratories in several "what-if" scenarios. We divided the patients into three urgency categories: U1--hospitalized patients, U2--urgent outpatients, U3--elective outpatients. We tested the accuracy of the model by comparing a 1-year sample of computer simulation with actual data which resulted in a highly significant correlation of 0.94.

RESULTS

We observed from the referral cohort that waiting times were long, both overall and within each urgency category. We observed from the simulation models that: (1) a one-time infusion of capacity to clear the backlog failed to reduce the waiting times; (2) targeting extra capacity to highest urgency categories reduced waiting times overall and also benefited low urgency patients for whom specific increased capacity was not earmarked; (3) there were no significant effects on waiting times if in some cases patients or referring physicians were able to choose their cath physician; and (4) in situations where the arrival rates increased overall or within specific urgency categories, waiting times increased dramatically and failed to return to baseline for several months to years for the low urgency patients. Efficiency of the labs within the existing capacity could be improved by: (1) reducing changeover time between cases (2) externalizing and standardizing many of the pre- and post-procedural management of the patients, and (3) more carefully balancing the booking to reduce both slack and overtime.

INTERPRETATION

Capacity determination is a complex and dynamic process. A combination of available clinical and administrative data, along with a computer simulation model, helps predict capacity needs and is the most appropriate strategy to minimize waiting of patients for procedures. This approach is generalizable and can lead to more effective management of waiting lists for a variety of procedures.

摘要

背景

诸如心脏导管插入术等手术的过长等待时间是医疗保健系统面临的一个重要问题。延误通常归因于需求与可用能力之间的不匹配。此外,由于短期转诊率、手术时间和患者医疗紧急程度的动态变化性质,所有这些都是导致过长等待时间问题的重要因素,因此准确预测能力需求一直很困难。我们本文的目的是展示如何进行此类计算。

方法

构建患者流程模型并使用安大略省一个地区心脏中心连续16个月手术(n = 6215次转诊)的适当数据进行填充后,我们使用计算机模拟在几种“假设”情况下模拟导管插入实验室的运作。我们将患者分为三个紧急类别:U1——住院患者,U2——紧急门诊患者,U3——择期门诊患者。通过将一年的计算机模拟样本与实际数据进行比较来测试模型的准确性,结果显示两者的相关性高达0.94,具有高度显著性。

结果

我们从转诊队列中观察到,总体等待时间以及每个紧急类别内的等待时间都很长。我们从模拟模型中观察到:(1)一次性增加能力以清除积压未能减少等待时间;(2)将额外能力针对最高紧急类别可总体上减少等待时间,并且对未专门增加能力的低紧急程度患者也有益;(3)在某些情况下,如果患者或转诊医生能够选择导管插入术医生,对等待时间没有显著影响;(4)在总体到达率或特定紧急类别内的到达率增加的情况下,等待时间会急剧增加,并且低紧急程度患者的等待时间在数月至数年都无法恢复到基线水平。在现有能力范围内提高实验室效率的方法包括:(1)减少病例之间的转换时间;(2)将患者术前和术后管理的许多工作外部化并标准化;(3)更仔细地平衡预约以减少空闲时间和加班时间。

解读

能力确定是一个复杂且动态的过程。可用的临床和管理数据与计算机模拟模型相结合,有助于预测能力需求,是将患者手术等待时间降至最低的最合适策略。这种方法具有通用性,可导致对各种手术的等待名单进行更有效的管理。

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