Philips Research North America, 222 Jacobs St, Cambridge, MA, 02141, USA.
Philips Healthcare, Cambridge, MA, USA.
J Digit Imaging. 2021 Feb;34(1):75-84. doi: 10.1007/s10278-020-00397-z. Epub 2020 Nov 24.
Identifying areas for workflow improvement and growth is essential for an interventional radiology (IR) department to stay competitive. Deployment of traditional methods such as Lean and Six Sigma helped in reducing the waste in workflows at a strategic level. However, achieving efficient workflow needs both strategic and tactical approaches. Uncertainties about patient arrivals, staff availability, and variability in procedure durations pose hindrances to efficient workflow and lead to delayed patient care and staff overtime. We present an alternative approach to address both tactical and strategic needs using discrete event simulation (DES) and simulation based optimization methods. A comprehensive digital model of the patient workflow in a hospital-based IR department was modeled based on expert interviews with the incumbent personnel and analysis of 192 days' worth of electronic medical record (EMR) data. Patient arrival patterns and process times were derived from 4393 individual patient appointments. Exactly 196 unique procedures were modeled, each with its own process time distribution and rule-based procedure-room mapping. Dynamic staff schedules for interventional radiologists, technologists, and nurses were incorporated in the model. Stochastic model simulation runs revealed the resource "computed tomography (CT) suite" as the major workflow bottleneck during the morning hours. This insight compelled the radiology department leadership to re-assign time blocks on a diagnostic CT scanner to the IR group. Moreover, this approach helped identify opportunities for additional appointments at times of lower diagnostic scanner utilization. Demand for interventional service from Outpatients during late hours of the day required the facility to extend hours of operations. Simulation-based optimization methods were used to model a new staff schedule, stretching the existing pool of resources to support the additional 2.5 h of daily operation. In conclusion, this study illustrates that the combination of workflow modeling, stochastic simulations, and optimization techniques is a viable and effective approach for identifying workflow inefficiencies and discovering and validating improvement options through what-if scenario testing.
确定工作流程改进和增长的领域对于介入放射学 (IR) 部门保持竞争力至关重要。传统方法(如精益和六西格玛)的部署有助于在战略层面减少工作流程中的浪费。然而,实现高效的工作流程需要战略和战术方法。患者到达、员工可用性以及手术持续时间的变化带来的不确定性会对高效工作流程造成阻碍,并导致患者护理延迟和员工加班。我们提出了一种使用离散事件模拟 (DES) 和基于模拟的优化方法来解决战术和战略需求的替代方法。基于对在职人员的专家访谈和对 192 天电子病历 (EMR) 数据的分析,对医院介入放射科的患者工作流程进行了全面的数字化建模。患者到达模式和处理时间是从 4393 个单独的患者预约中得出的。对 196 个独特的手术进行了建模,每个手术都有自己的处理时间分布和基于规则的手术间映射。模型中纳入了介入放射科医生、技师和护士的动态人员时间表。随机模型模拟运行结果表明,在上午时段,资源“计算机断层扫描 (CT) 套房”是主要的工作流程瓶颈。这一洞察促使放射科部门领导重新分配诊断 CT 扫描仪上的时间块给 IR 组。此外,这种方法还帮助确定了在诊断扫描仪使用率较低的时间段增加预约的机会。门诊患者对介入服务的需求要求设施延长运营时间。基于模拟的优化方法用于构建新的人员时间表,扩展现有资源池以支持每天额外的 2.5 小时运营。总之,本研究表明,工作流程建模、随机模拟和优化技术的结合是一种可行且有效的方法,可以识别工作流程效率低下的问题,并通过假设情景测试发现和验证改进选项。