IEEE Trans Haptics. 2012;5(4):312-22. doi: 10.1109/TOH.2011.60.
When equipped with motion and force sensors, box-trainers can be good alternatives for relatively expensive Virtual Reality (VR) trainers. As in VR trainers, the sensors in a box trainer could provide the trainee with objective information about his performance. Recently, multiple tracking systems were developed for classification of participants based on motion and time parameters. The aim of this study is the development of force parameters that reflect the trainee's performance in a suture task. Our second goal is to investigate if the level of the participant's skills can be classified as experts or novice level. In the experiment, experts (n = 11) and novices (n = 21) performed a two-handed needle driving and knot tying task on artificial tissue inside a box trainer. The tissue was mounted on the Force platform that was used to measure the force, which the subject applied on the tissue in three directions. We evaluated the potential of 16 different performance parameters, related to the magnitude, direction, and variability of applied forces, to distinguish between different levels of surgical expertise. Nine of the parameters showed significant differences between experts and novices. Principal Component Analysis was used to convert these nine partly correlating parameters, such as peak force, mean force, and main direction of force, into two uncorrelated variables. By performing a Leave-One-Out-Cross Validation with Linear Discriminant Analysis on each participants' score on these two variables, it was possible to correctly classify 84 percent of all participants as an expert or novice. We conclude that force measurements in a box trainer can be used to classify the level of performance of trainees and can contribute to objective assessment of suture skills.
当配备运动和力传感器时,箱式训练器可以作为相对昂贵的虚拟现实 (VR) 训练器的良好替代品。与 VR 训练器一样,箱式训练器中的传感器可以为学员提供有关其表现的客观信息。最近,已经开发出多种跟踪系统,用于根据运动和时间参数对参与者进行分类。本研究的目的是开发反映学员在缝合任务中的表现的力参数。我们的第二个目标是研究是否可以根据参与者的技能水平将其分类为专家或新手水平。在实验中,专家(n=11)和新手(n=21)在箱式训练器内部的人造组织上执行双手针驱动和打结任务。组织安装在力平台上,用于测量受试者在三个方向上施加在组织上的力。我们评估了 16 种不同性能参数的潜力,这些参数与施加力的大小、方向和可变性有关,以区分不同水平的手术专业技能。其中 9 个参数在专家和新手之间存在显著差异。主成分分析用于将这 9 个部分相关的参数(例如峰值力、平均力和力的主要方向)转换为两个不相关的变量。通过对每个参与者在这两个变量上的得分进行Leave-One-Out-Cross Validation 与线性判别分析,能够正确地将 84%的参与者分类为专家或新手。我们得出结论,箱式训练器中的力测量可以用于对学员的表现水平进行分类,并有助于对缝合技能进行客观评估。