Department of Anesthesiology, Perioperative and Pain Medicine, Brigham and Women's Hospital, Boston, MA, 02115, USA.
Leap Rail Inc, Houston, TX, USA.
J Med Syst. 2019 Jan 17;43(3):44. doi: 10.1007/s10916-019-1160-5.
Operating room (OR) utilization is a significant determinant of hospital profitability. One aspect of this is surgical scheduling, which depends on accurate predictions of case duration. This has been done historically by either the surgeon based on personal experience, or by an electronic health record (EHR) based on averaged historical means for case duration. Here, we compare the predicted case duration (pCD) accuracy of a novel machine-learning algorithm over a 3-month period. A proprietary machine learning algorithm was applied utilizing operating room factors such as patient demographic data, pre-surgical milestones, and hospital logistics and compared to that of a conventional EHR. Actual case duration and pCD (Leap Rail vs EHR) was obtained at one institution over the span of 3 months. Actual case duration was defined as time between patient entry into an OR and time of exit. pCD was defined as case time allotted by either Leap Rail or EHR. Cases where Leap Rail was unable to generate a pCD were excluded. A total of 1059 surgical cases were performed during the study period, with 990 cases being eligible for the study. Over all sub-specialties, Leap Rail showed a 7 min improvement in absolute difference between pCD and actual case duration when compared to conventional EHR (p < 0.0001). In aggregate, the Leap Rail method resulted in a 70% reduction in overall scheduling inaccuracy. Machine-learning algorithms are a promising method of increasing pCD accuracy and represent one means of improving OR planning and efficiency.
手术室(OR)利用率是医院盈利能力的重要决定因素。其中一个方面是手术安排,这取决于对手术持续时间的准确预测。这在历史上是由外科医生根据个人经验完成的,或者由电子病历(EHR)根据手术持续时间的平均历史平均值完成的。在这里,我们比较了一种新的机器学习算法在 3 个月期间的预测手术持续时间(pCD)准确性。利用手术室因素,如患者人口统计学数据、术前里程碑和医院物流,应用了专有的机器学习算法,并与传统的 EHR 进行了比较。在一家机构的 3 个月内获得了实际手术持续时间和 pCD(Leap Rail 与 EHR)。实际手术持续时间定义为患者进入手术室和离开手术室之间的时间。pCD 定义为 Leap Rail 或 EHR 分配的手术时间。Leap Rail 无法生成 pCD 的病例被排除在外。在研究期间共进行了 1059 例手术,其中 990 例符合研究条件。在所有亚专科中,与传统的 EHR 相比,Leap Rail 显示 pCD 和实际手术持续时间之间的绝对差异改善了 7 分钟(p<0.0001)。总体而言,Leap Rail 方法使整体调度不准确的情况减少了 70%。机器学习算法是提高 pCD 准确性的一种很有前途的方法,也是改善 OR 规划和效率的一种手段。