Applied Technology Laboratory for Advanced Surgery (ATLAS), Roswell Park Comprehensive Cancer Center, Buffalo, NY 14203, USA.
Roswell Park Comprehensive Cancer Center, Department of Urology, Buffalo, NY 14203, USA.
Sensors (Basel). 2021 Mar 3;21(5):1733. doi: 10.3390/s21051733.
Surgical gestures detection can provide targeted, automated surgical skill assessment and feedback during surgical training for robot-assisted surgery (RAS). Several sources including surgical videos, robot tool kinematics, and an electromyogram (EMG) have been proposed to reach this goal. We aimed to extract features from electroencephalogram (EEG) data and use them in machine learning algorithms to classify robot-assisted surgical gestures. EEG was collected from five RAS surgeons with varying experience while performing 34 robot-assisted radical prostatectomies over the course of three years. Eight dominant hand and six non-dominant hand gesture types were extracted and synchronized with associated EEG data. Network neuroscience algorithms were utilized to extract functional brain network and power spectral density features. Sixty extracted features were used as input to machine learning algorithms to classify gesture types. The analysis of variance (ANOVA) F-value statistical method was used for feature selection and 10-fold cross-validation was used to validate the proposed method. The proposed feature set used in the extra trees (ET) algorithm classified eight gesture types performed by the dominant hand of five RAS surgeons with an accuracy of 90%, precision: 90%, sensitivity: 88%, and also classified six gesture types performed by the non-dominant hand with an accuracy of 93%, precision: 94%, sensitivity: 94%.
手术手势检测可以在机器人辅助手术 (RAS) 的手术培训中提供有针对性的、自动化的手术技能评估和反馈。已经提出了几种来源,包括手术视频、机器人工具运动学和肌电图 (EMG),以达到这一目标。我们旨在从脑电图 (EEG) 数据中提取特征,并将其用于机器学习算法中,以分类机器人辅助手术手势。从五名经验不同的 RAS 外科医生在三年内进行的 34 例机器人辅助根治性前列腺切除术过程中收集了 EEG。提取了八种主导手和六种非主导手手势类型,并与相关的 EEG 数据同步。利用网络神经科学算法提取功能脑网络和功率谱密度特征。将 60 个提取的特征作为输入,使用机器学习算法对手势类型进行分类。方差分析 (ANOVA) F 值统计方法用于特征选择,10 倍交叉验证用于验证所提出的方法。在 ExtraTrees (ET) 算法中使用的所提出的特征集对五名 RAS 外科医生的主导手执行的八种手势类型进行分类,准确率为 90%,精度为 90%,灵敏度为 88%,还对非主导手执行的六种手势类型进行分类,准确率为 93%,精度为 94%,灵敏度为 94%。