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Pairwise Comparison-Based Objective Score for Automated Skill Assessment of Segments in a Surgical Task

机译:基于成对的基于比较的目标评分,用于手术任务中的细分市场的自动化技能评估

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Current methods for manual evaluation of surgical skill yield a global score for the entire task. The global score does not inform surgical trainees about where in the task they need to improve. We developed and evaluated a framework to automatically generate an objective score for assessing skill in maneuvers (circumscribed segments) within a surgical task. We used an existing video and kinematic data set (with manual annotation for maneuvers) of a suturing and knot-tying task performed by 18 surgeons on a bench-top model using a da Vinci~? Surgical System (Intuitive Surgical, Inc., CA). We collected crowd annotations of preferences, for which of the maneuver in a presented pair appeared to have been performed with greater skill and their confidence in the annotation. We trained a classifier to automatically predict preferences using quantitative metrics of time and motion. We generated an objective percentile score for skill assessment by comparing each maneuver sample to all remaining samples in the data set. Accuracy of the classifier for assigning a preference to pairs of maneuvers was at least 80.06% against a single individual (with a larger training data set) and at least 68.0% against each of the seven individuals (with a smaller training data set). Our reliability analyses indicate that automated preference annotations by the classifier are consistent with those by the seven individuals. Trial-level scores computed from maneuver-level scores generated using our framework were moderately correlated with global rating scores assigned by an experienced surgeon (Spearman correlation = 0.47; P-value < 0.0001).
机译:目前用于手动评估手术技能的方法,为整个任务产生全球分数。全球得分不会通知外科学员关于他们需要改进的任务的位置。我们开发并评估了一个框架,以自动生成客观分数,以便在手术任务中评估一次机会(肯定段)的技能。我们使用了使用DA Vinci的18个外科医生在替补模型上由18个外科医生进行的缝合和结绑定任务的现有视频和运动学数据集(有手动注释)。手术系统(直观的外科,Inc.,CA)。我们收集了人群注释的偏好,在呈现对中的哪个机动似乎已经以更大的技能和对注释的信心进行了。我们培训了一个分类器以使用时间和运动的定量度量自动预测偏好。通过将每个机动样本与数据集中的所有剩余样本进行比较,我们为技能评估产生了目标百分位数。分类器的准确性,用于分配成对的机动对的偏好至少为80.06%,对单个单独的(具有较大的训练数据集),至少68.0%,每个七个人中的每一个(具有较小的训练数据集)。我们的可靠性分析表明分类器的自动偏好注释与七个人的那些符合。从使用我们的框架生成的机动级别分数计算的试用级别分数与经验丰富的外科医生(Spearman相关= 0.47; P值<0.0001)分配的全球评级分数中等相关。

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