Department of Surgery, VA Pittsburgh Healthcare System, Pittsburgh, PA 15240, USA.
Surg Endosc. 2011 Mar;25(3):855-60. doi: 10.1007/s00464-010-1281-x. Epub 2010 Aug 24.
Robotic-assisted laparoscopic surgery (RALS) is evolving as an important surgical approach in the field of colorectal surgery. We aimed to evaluate the learning curve for RALS procedures involving resections of the rectum and rectosigmoid.
A series of 50 consecutive RALS procedures were performed between August 2008 and September 2009. Data were entered into a retrospective database and later abstracted for analysis. The surgical procedures included abdominoperineal resection (APR), anterior rectosigmoidectomy (AR), low anterior resection (LAR), and rectopexy (RP). Demographic data and intraoperative parameters including docking time (DT), surgeon console time (SCT), and total operative time (OT) were analyzed. The learning curve was evaluated using the cumulative sum (CUSUM) method.
The procedures performed for 50 patients (54% male) included 25 AR (50%), 15 LAR (30%), 6 APR (12%), and 4 RP (8%). The mean age of the patients was 54.4 years, the mean BMI was 27.8 kg/m(2), and the median American Society of Anesthesiologists (ASA) classification was 2. The series had a mean DT of 14 min, a mean SCT of 115.1 min, and a mean OT of 246.1 min. The DT and SCT accounted for 6.3% and 46.8% of the OT, respectively. The SCT learning curve was analyzed. The CUSUM(SCT) learning curve was best modeled as a parabola, with equation CUSUM(SCT) in minutes equal to 0.73 × case number(2) - 31.54 × case number - 107.72 (R = 0.93). The learning curve consisted of three unique phases: phase 1 (the initial 15 cases), phase 2 (the middle 10 cases), and phase 3 (the subsequent cases). Phase 1 represented the initial learning curve, which spanned 15 cases. The phase 2 plateau represented increased competence with the robotic technology. Phase 3 was achieved after 25 cases and represented the mastery phase in which more challenging cases were managed.
The three phases identified with CUSUM analysis of surgeon console time represented characteristic stages of the learning curve for robotic colorectal procedures. The data suggest that the learning phase was achieved after 15 to 25 cases.
机器人辅助腹腔镜手术(RALS)作为结直肠外科领域的一种重要手术方法正在不断发展。我们旨在评估涉及直肠和直肠乙状结肠切除术的 RALS 手术的学习曲线。
2008 年 8 月至 2009 年 9 月期间,我们连续进行了 50 例 RALS 手术。数据被输入到回顾性数据库中,然后进行了分析。手术程序包括经腹会阴切除术(APR)、前直肠乙状切除术(AR)、低位前切除术(LAR)和直肠固定术(RP)。分析了人口统计学数据和术中参数,包括对接时间(DT)、手术控制台时间(SCT)和总手术时间(OT)。使用累积和(CUSUM)方法评估学习曲线。
50 例患者(54%为男性)进行了 25 例 AR(50%)、15 例 LAR(30%)、6 例 APR(12%)和 4 例 RP(8%)。患者的平均年龄为 54.4 岁,平均 BMI 为 27.8kg/m2,美国麻醉医师协会(ASA)分类中位数为 2。该系列的平均 DT 为 14 分钟,平均 SCT 为 115.1 分钟,平均 OT 为 246.1 分钟。DT 和 SCT 分别占 OT 的 6.3%和 46.8%。分析了 SCT 的学习曲线。SCT 的 CUSUM 学习曲线最好用抛物线建模,其公式为 CUSUM(SCT)以分钟为单位等于 0.73×病例数(2)-31.54×病例数-107.72(R=0.93)。学习曲线由三个独特的阶段组成:阶段 1(最初的 15 例)、阶段 2(中间的 10 例)和阶段 3(随后的病例)。阶段 1代表初始学习曲线,跨度为 15 例。阶段 2 代表平台,代表对机器人技术的熟练掌握。阶段 3在 25 例病例后达到,代表掌握阶段,在此阶段处理更具挑战性的病例。
使用手术控制台时间的 CUSUM 分析确定的三个阶段代表了机器人结直肠手术学习曲线的特征阶段。数据表明,在 15 到 25 例病例后,学习阶段就完成了。