Cedars Sinai Medical Center, 8635 W 3rd St #880, Los Angeles, CA, 90048, USA.
The Surgery Group of Los Angeles, 8635 W 3rd St #880, Los Angeles, CA, 90048, USA.
J Robot Surg. 2021 Jun;15(3):489-495. doi: 10.1007/s11701-020-01131-1. Epub 2020 Aug 4.
With the rapid adoption of robotics in colorectal surgery, there has been growing interest in the pace at which surgeons gain competency, as it may aid in self-assessment or credentialing. Therefore, we sought to evaluate the learning curve of an expert laparoscopic colorectal surgeon who performed a variety of colorectal procedures robotically. This is a retrospective review of a prospective database of 111 subsequent colorectal procedures performed by a single colorectal surgeon. The cumulative summation technique (CUSUM) was used to construct a learning curve for robotic proficiency by analyzing total operative and console times. Postoperative outcomes including length of stay, 30-day complications, and 30-day readmission rates were evaluated. Chi-square and one-way ANOVA (including Kruskal-Wallis) tests were used to evaluate categorical and continuous variables. Our patient cohort had a mean age of 62.4, mean BMI of 26.9, and mean ASA score of 2.41. There were two conversions to open surgery. The CUSUM graph for console time indicated an initial decrease at case 13 and another decrease at case 83, generating 3 distinct performance phases: learning (n = 13), competence (n = 70), and mastery (n = 28). An interphase comparison revealed no significant differences in age, gender, BMI, ASA score, types of procedures, or indications for surgery between the three phases. Over the course of the study, both mean surgeon console time and median length of stay decreased significantly (p = 0.00017 and p = 0.016, respectively). Although statistically insignificant, there was a downward trend in total operative time and postoperative complication rates. Learning curves for robotic colorectal surgery are commonly divided into three performance phases. Our findings contribute to the construction of a reliable learning curve for the transition of colorectal surgeons to robotics. Furthermore, they may help guide the stepwise training and credentialing of new robotic surgeons.
随着机器人技术在结直肠手术中的快速应用,人们对外科医生获得能力的速度越来越感兴趣,因为这可能有助于自我评估或认证。因此,我们试图评估一位经验丰富的腹腔镜结直肠外科医生在各种机器人结直肠手术中的学习曲线。这是对一位单一结直肠外科医生进行的 111 例后续结直肠手术的前瞻性数据库的回顾性研究。累积和技术(CUSUM)用于通过分析总手术和控制台时间来构建机器人熟练程度的学习曲线。评估了术后结果,包括住院时间、30 天并发症和 30 天再入院率。使用卡方检验和单向方差分析(包括 Kruskal-Wallis 检验)评估分类和连续变量。我们的患者队列平均年龄为 62.4 岁,平均 BMI 为 26.9,平均 ASA 评分为 2.41。有 2 例转为开腹手术。控制台时间的 CUSUM 图显示,第 13 例和第 83 例出现了初始下降,产生了 3 个不同的性能阶段:学习(n=13)、熟练(n=70)和精通(n=28)。阶段间比较显示,三个阶段之间在年龄、性别、BMI、ASA 评分、手术类型或手术指征方面均无显著差异。在研究过程中,外科医生控制台的平均时间和中位住院时间均显著下降(p=0.00017 和 p=0.016)。尽管统计学上无显著差异,但总手术时间和术后并发症发生率呈下降趋势。机器人结直肠手术的学习曲线通常分为三个性能阶段。我们的研究结果有助于为结直肠外科医生向机器人手术的过渡构建可靠的学习曲线。此外,它们可能有助于指导新的机器人外科医生的逐步培训和认证。