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Surgical Skill Level Assessment Using Automatic Feature Extraction Methods

机译:使用自动特征提取方法进行手术技能水平评估

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Objective and automatic evaluation of surgical skill is important for the design of surgical simulators used in surgical robotics training. Extensive research has been done to identify and evaluate a variety of evaluation metrics (e.g., path length, completion time); however, these metrics are only provided to the user after completion of the task, and may not fully use the underlying information in the movement data. This study proposes a method for automatic and objective evaluation of surgical expertise levels, in short time intervals, during task performance. We first compare three different automatic feature extraction methods including: (1) principle component analysis (PCA), (2) independent component analysis (ICA), and (3) linear discriminant analysis (LDA) on low-level position data, in their ability to distinguish among different expertise levels. We then study the performance of the best feature extraction method in different time intervals, for the purpose of finding the minimal time frame that accurately predicts user skill level. 14 subjects of different expertise levels were recruited to perform two simulated tasks on the da Vinci training simulator. The position of the subjects' arm joints (shoulder, elbow and wrist) in the dominant hand, as well as the position of both hands, were recorded. Four classifiers (Naive Bayes, support vector machine, nearest neighbor, and Decision Tree) were used to identify the best feature extraction method. The results indicate that PCA in combination with support vector machine can classify expertise levels with an accuracy of 98% in time frames of 0.25 seconds.
机译:客观而自动地评估手术技能对于设计用于手术机器人培训的手术模拟器非常重要。已经进行了广泛的研究以识别和评估各种评估指标(例如,路径长度,完成时间);但是,这些度量仅在任务完成后才提供给用户,并且可能无法完全使用移动数据中的基础信息。这项研究提出了一种在任务执行过程中以较短的时间间隔自动客观地评估外科专业知识水平的方法。我们首先比较三种不同的自动特征提取方法,包括:(1)主成分分析(PCA),(2)独立成分分析(ICA)和(3)低层位置数据的线性判别分析(LDA)。区分不同专业知识水平的能力。然后,我们研究最佳特征提取方法在不同时间间隔中的性能,以期找到能够准确预测用户技能水平的最小时间范围。招募了14名具有不同专业知识水平的科目,以便在da Vinci培训模拟器上执行两项模拟任务。记录受试者的优势手的手臂关节(肩膀,肘部和腕部)的位置以及两只手的位置。使用四个分类器(朴素贝叶斯,支持向量机,最近邻居和决策树)来识别最佳特征提取方法。结果表明,PCA与支持向量机的组合可以在0.25秒的时间范围内以98%的准确度对专业知识水平进行分类。

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