Applied Technology Laboratory for Advanced Surgery (ATLAS), Roswell Park Comprehensive Cancer Center, Buffalo, NY, United States; Department of Urology, Roswell Park Comprehensive Cancer Center, Buffalo, NY, United States.
Applied Technology Laboratory for Advanced Surgery (ATLAS), Roswell Park Comprehensive Cancer Center, Buffalo, NY, United States; Department of Urology, Roswell Park Comprehensive Cancer Center, Buffalo, NY, United States; Cairo University, Egypt.
Brain Res. 2021 Oct 15;1769:147607. doi: 10.1016/j.brainres.2021.147607. Epub 2021 Aug 2.
To develop an algorithm for objective evaluation of distraction of surgeons during robot-assisted surgery (RAS).
Electroencephalogram (EEG) of 22 medical students was recorded while performing five key tasks on the robotic surgical simulator: Instrument Control, Ball Placement, Spatial Control II, Fourth Arm Tissue Retraction, and Hands-on Surgical Training Tasks. All students completed the Surgery Task Load Index (SURG-TLX), which includes one domain for subjective assessment of distraction (scale: 1-20). Scores were divided into low (score 1-6, subjective label: 1), intermediate (score 7-12, subjective label: 2), and high distraction (score 13-20, subjective label: 3). These cut-off values were arbitrarily considered based on a verbal assessment of participants and experienced surgeons. A Deep Convolutional Neural Network (CNN) algorithm was trained utilizing EEG recordings from the medical students and used to classify their distraction levels. The accuracy of our method was determined by comparing the subjective distraction scores on SURG-TLX and the results from the proposed classification algorithm. Also, Pearson correlation was utilized to assess the relationship between performance scores (generated by the simulator) and distraction (Subjective assessment scores).
The proposed end-to-end model classified distraction into low, intermediate, and high with 94%, 89%, and 95% accuracy, respectively. We found a significant negative correlation (r = -0.21; p = 0.003) between performance and SURG-TLX distraction scores.
Herein we report, to our knowledge, the first objective method to assess and quantify distraction while performing robotic surgical tasks on the robotic simulator, which may improve patient safety. Validation in the clinical setting is required.
开发一种用于客观评估机器人辅助手术(RAS)中外科医生注意力分散的算法。
对 22 名医学生在机器人手术模拟器上进行五项关键任务时的脑电图(EEG)进行了记录:器械控制、球放置、空间控制 II、第四臂组织牵拉和手术培训任务。所有学生都完成了手术任务负荷指数(SURG-TLX),其中包括一个用于主观评估注意力分散的领域(量表:1-20)。分数分为低(分数 1-6,主观标签:1)、中(分数 7-12,主观标签:2)和高分散(分数 13-20,主观标签:3)。这些截止值是根据参与者和有经验的外科医生的口头评估任意确定的。利用医学生的 EEG 记录训练深度卷积神经网络(CNN)算法,并将其用于对其注意力分散程度进行分类。我们的方法的准确性是通过将 SURG-TLX 的主观注意力分散评分与所提出的分类算法的结果进行比较来确定的。此外,还利用 Pearson 相关系数评估了性能评分(由模拟器生成)与注意力分散(主观评估评分)之间的关系。
所提出的端到端模型对低、中、高注意力分散的分类准确率分别为 94%、89%和 95%。我们发现,性能与 SURG-TLX 注意力分散评分之间存在显著的负相关(r=-0.21;p=0.003)。
本文报道了我们所知的第一个在机器人模拟器上执行机器人手术任务时评估和量化注意力分散的客观方法,这可能会提高患者的安全性。需要在临床环境中进行验证。