Megali Giuseppe, Sinigaglia Stefano, Tonet Oliver, Dario Paolo
CRIM Lab, Scuola Superiore Sant' Anna, 56025 Pisa, Italy.
IEEE Trans Biomed Eng. 2006 Oct;53(10):1911-9. doi: 10.1109/TBME.2006.881784.
Minimally invasive surgery has become very widespread in the last ten years. Since surgeons experience difficulties in learning and mastering minimally invasive techniques, the development of training methods is of great importance. While the introduction of virtual reality-based simulators has introduced a new paradigm in surgical training, skill evaluation methods are far from being objective. This paper proposes a method for defining a model of surgical expertise and an objective metric to evaluate performance in laparoscopic surgery. Our approach is based on the processing of kinematic data describing movements of surgical instruments. We use hidden Markov model theory to define an expert model that describes expert surgical gesture. The model is trained on kinematic data related to exercises performed on a surgical simulator by experienced surgeons. Subsequently, we use this expert model as a reference model in the definition of an objective metric to evaluate performance of surgeons with different abilities. Preliminary results show that, using different topologies for the expert model, the method can be efficiently used both for the discrimination between experienced and novice surgeons, and for the quantitative assessment of surgical ability.
在过去十年中,微创手术已变得非常普遍。由于外科医生在学习和掌握微创技术方面遇到困难,因此开发培训方法至关重要。虽然基于虚拟现实的模拟器的引入为外科培训引入了新的范例,但技能评估方法远非客观。本文提出了一种定义手术专业知识模型和评估腹腔镜手术表现的客观指标的方法。我们的方法基于对描述手术器械运动的运动学数据的处理。我们使用隐马尔可夫模型理论来定义一个描述专家手术手势的专家模型。该模型在与经验丰富的外科医生在手术模拟器上进行的练习相关的运动学数据上进行训练。随后,我们将这个专家模型用作定义客观指标的参考模型,以评估不同能力外科医生的表现。初步结果表明,使用不同拓扑结构的专家模型,该方法可以有效地用于区分经验丰富的外科医生和新手外科医生,以及对外科手术能力进行定量评估。