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按现行操作术语 (CPT®) 代码对麻醉和手术控制时间进行基准测试。

Benchmarking of Anesthesia and Surgical Control Times by Current Procedural Terminology (CPT®) Codes.

机构信息

Department of Anesthesiology, University of Colorado School of Medicine, Aurora, CO, USA.

US Anesthesia Partners of Colorado, Denver, CO, USA.

出版信息

J Med Syst. 2022 Mar 4;46(4):19. doi: 10.1007/s10916-022-01798-z.

Abstract

Over half of hospital revenue results from perioperative patient care, thus emphasizing the importance of efficient resource utilization within a hospital's suite of operating rooms (ORs). Predicting surgical case duration, including Anesthesia-controlled time (ACT) and Surgical-controlled time (SCT) has been significantly detailed throughout the literature as a means to help manage and predict OR scheduling. However, this information has previously been divided by surgical specialty, and only limited benchmarking data regarding ACT and SCT exists. We hypothesized that advancing the granularity of the ACT and SCT from surgical specialty to specific Current Procedural Terminology (CPT) codes will produce data that is more accurate, less variable, and therefore more useful for OR schedule modeling and management. This single center study was conducted using times from surgeries performed at the University of Colorado Hospital (UCH) between September 2018 - September 2019. Individual cases were categorized by surgical specialty based on the specialty of the primary attending surgeon and CPT codes were compiled from billing data. Times were calculated as defined by the American Association of Clinical Directors. I values were calculated to assess heterogeneity of mean ACT and SCT times while Levene's test was utilized to assess heterogeneity of ACT and SCT variances. Statistical analyses for both ACT and SCT were calculated using JMP Statistical Discovery Software from SAS (Cary, NC) and R v3.6.3 (Vienna, Austria). All surgical cases (n = 87,537) performed at UCH from September 2018 to September 2019 were evaluated and 30,091 cases were included in the final analysis. All surgical subspecialties, with the exception of Podiatry, showed significant variability in ACT and SCT values between CPT codes within each surgical specialty. Furthermore, the variances of ACT and SCT values were also highly variable between CPT codes within each surgical specialty. Finally, benchmarking values of mean ACT and SCT with corresponding standard deviations are provided. Because each mean ACT and SCT value varies significantly between different CPT codes within a surgical specialty, using this granularity of data will likely enable improved accuracy in surgical schedule modeling compared to using mean ACT and SCT values for each surgical specialty as a whole. Furthermore, because there was significant variability of ACT and SCT variances between CPT codes, incorporating variance into surgical schedule modeling may also improve accuracy. Future investigations should include real-time simulations, logistical modeling, and labor utilization analyses as well as validation of benchmarking times in private practice settings.

摘要

超过一半的医院收入来自围手术期患者护理,因此强调了在医院手术室套件中有效利用资源的重要性。预测手术持续时间,包括麻醉控制时间 (ACT) 和手术控制时间 (SCT),已在文献中得到详细研究,作为帮助管理和预测手术室日程安排的一种手段。然而,这些信息以前是按手术专业划分的,并且关于 ACT 和 SCT 的基准数据非常有限。我们假设,将 ACT 和 SCT 的粒度从手术专业细化到特定的当前程序术语 (CPT) 代码,将产生更准确、变化更小的数据,因此更有利于手术室日程安排建模和管理。这项单中心研究使用了 2018 年 9 月至 2019 年 9 月在科罗拉多大学医院 (UCH) 进行的手术时间。根据主要主治外科医生的专业和计费数据,将单个病例按手术专业进行分类。时间按照临床主任协会的定义计算。I 值用于评估 ACT 和 SCT 平均时间的异质性,而 Levene 检验用于评估 ACT 和 SCT 方差的异质性。使用来自 SAS(卡里,NC)的 JMP 统计发现软件和 R v3.6.3(维也纳,奥地利)对 ACT 和 SCT 进行统计分析。评估了 2018 年 9 月至 2019 年 9 月 UCH 进行的所有手术病例(n=87537),并对 30091 例病例进行了最终分析。除足病学外,所有外科亚专业在每个外科专业的 CPT 代码内的 ACT 和 SCT 值均显示出显著的变异性。此外,ACT 和 SCT 值的方差在每个外科专业的 CPT 代码内也高度可变。最后,提供了平均 ACT 和 SCT 及其相应标准差的基准值。由于每个 ACT 和 SCT 的平均值在外科专业内的不同 CPT 代码之间有很大差异,因此与使用整个外科专业的平均 ACT 和 SCT 值相比,使用这种粒度的数据可能会提高手术日程安排模型的准确性。此外,由于 ACT 和 SCT 方差在 CPT 代码之间存在显著差异,因此将方差纳入手术日程安排模型也可能提高准确性。未来的研究应包括实时模拟、物流建模和劳动力利用分析,以及在私人执业环境中验证基准时间。

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