Applying queueing theory to evaluate wait-time-savings of triage algorithms.

IF 0.7 3区 工程技术 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Queueing Systems Pub Date : 2024-01-01 Epub Date: 2024-09-21 DOI:10.1007/s11134-024-09927-w
Yee Lam Elim Thompson, Gary M Levine, Weijie Chen, Berkman Sahiner, Qin Li, Nicholas Petrick, Jana G Delfino, Miguel A Lago, Qian Cao, Frank W Samuelson
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引用次数: 0

Abstract

In the past decade, artificial intelligence (AI) algorithms have made promising impacts in many areas of healthcare. One application is AI-enabled prioritization software known as computer-aided triage and notification (CADt). This type of software as a medical device is intended to prioritize reviews of radiological images with time-sensitive findings, thus shortening the waiting time for patients with these findings. While many CADt devices have been deployed into clinical workflows and have been shown to improve patient treatment and clinical outcomes, quantitative methods to evaluate the wait-time-savings from their deployment are not yet available. In this paper, we apply queueing theory methods to evaluate the wait-time-savings of a CADt by calculating the average waiting time per patient image without and with a CADt device being deployed. We study two workflow models with one or multiple radiologists (servers) for a range of AI diagnostic performances, radiologist's reading rates, and patient image (customer) arrival rates. To evaluate the time-saving performance of a CADt, we use the difference in the mean waiting time between the diseased patient images in the with-CADt scenario and that in the without-CADt scenario as our performance metric. As part of this effort, we have developed and also share a software tool to simulate the radiology workflow around medical image interpretation, to verify theoretical results, and to provide confidence intervals for the performance metric we defined. We show quantitatively that a CADt triage device is more effective in a busy, short-staffed reading setting, which is consistent with our clinical intuition and simulation results. Although this work is motivated by the need for evaluating CADt devices, the evaluation methodology presented in this paper can be applied to assess the time-saving performance of other types of algorithms that prioritize a subset of customers based on binary outputs.

应用排队理论评估分流算法的等待时间节省。
在过去的十年中,人工智能(AI)算法在医疗保健的许多领域都产生了可喜的影响。其中一种应用是人工智能优先排序软件,即计算机辅助分诊和通知(CADt)。这种作为医疗设备的软件旨在优先审查具有时间敏感性结果的放射图像,从而缩短有这些结果的病人的等待时间。虽然许多 CADt 设备已被部署到临床工作流程中,并被证明能改善患者治疗和临床结果,但目前还没有定量方法来评估其部署所节省的等待时间。在本文中,我们运用排队论方法,通过计算未部署和部署 CADt 设备时每张患者图像的平均等待时间,来评估 CADt 所节省的等待时间。我们针对一系列人工智能诊断性能、放射科医生阅读率和患者图像(客户)到达率,研究了有一名或多名放射科医生(服务器)的两种工作流程模型。为了评估 CADt 节省时间的性能,我们使用了有 CADt 情景和无 CADt 情景下病患图像平均等待时间的差异作为性能指标。作为这项工作的一部分,我们开发并共享了一个软件工具,用于模拟医学影像解读的放射学工作流程,验证理论结果,并为我们定义的性能指标提供置信区间。我们从数量上表明,在繁忙、人手不足的阅片环境中,CADt 分流设备更有效,这与我们的临床直觉和模拟结果是一致的。虽然这项工作是出于对 CADt 设备进行评估的需要,但本文介绍的评估方法也可用于评估其他类型算法的省时性,这些算法根据二进制输出对客户子集进行优先排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Queueing Systems
Queueing Systems 数学-计算机:跨学科应用
CiteScore
2.30
自引率
33.30%
发文量
146
审稿时长
>12 weeks
期刊介绍: Queueing Systems: Theory and Applications (QUESTA) is a well-established journal focusing on the theory of resource sharing in a wide sense, particularly within a network context. The journal is primarily interested in probabilistic and statistical problems in this setting. QUESTA welcomes both papers addressing these issues in the context of some application and papers developing mathematical methods for their analysis. Among the latter, one would particularly quote Markov chains and processes, stationary processes, random graphs, point processes, stochastic geometry, and related fields. The prospective areas of application include, but are not restricted to production, storage and logistics, traffic and transportation, computer and communication systems.
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