IEEE Trans Neural Netw Learn Syst. 2023 Dec;34(12):9727-9741. doi: 10.1109/TNNLS.2022.3160159. Epub 2023 Nov 30.
Percutaneous coronary intervention (PCI) has increasingly become the main treatment for coronary artery disease. The procedure requires high experienced skills and dexterous manipulations. However, there are few techniques to model PCI skill so far. In this study, a learning framework with local and ensemble learning is proposed to learn skill characteristics of different skill-level subjects from their PCI manipulations. Ten interventional cardiologists (four experts and six novices) were recruited to deliver a medical guidewire to two target arteries on a porcine model for in vivo studies. Simultaneously, translation and twist manipulations of thumb, forefinger, and wrist are acquired with electromagnetic (EM) and fiber-optic bend (FOB) sensors, respectively. These behavior data are then processed with wavelet packet decomposition (WPD) under 1-10 levels for feature extraction. The feature vectors are further fed into three candidate individual classifiers in the local learning layer. Furthermore, the local learning results from different manipulation behaviors are fused in the ensemble learning layer with three rule-based ensemble learning algorithms. In subject-dependent skill characteristics learning, the ensemble learning can achieve 100% accuracy, significantly outperforming the best local result (90%). Furthermore, ensemble learning can also maintain 73% accuracy in subject-independent schemes. These promising results demonstrate the great potential of the proposed method to facilitate skill learning in surgical robotics and skill assessment in clinical practice.
经皮冠状动脉介入治疗(PCI)已越来越成为治疗冠状动脉疾病的主要方法。该手术需要高超的经验和灵巧的操作技巧。然而,到目前为止,用于建模 PCI 技能的技术还很少。在这项研究中,提出了一个具有局部和集成学习的学习框架,以从不同技能水平的受试者的 PCI 操作中学习技能特征。招募了 10 名介入心脏病专家(4 名专家和 6 名新手)在猪模型上对两条靶动脉进行医疗导丝推送,以进行体内研究。同时,分别使用电磁(EM)和光纤弯曲(FOB)传感器获取拇指、食指和手腕的平移和扭转操作。然后,使用小波包分解(WPD)在 1-10 级下对这些行为数据进行处理,以提取特征。特征向量进一步输入到局部学习层中的三个候选个体分类器中。此外,在集成学习层中,使用三种基于规则的集成学习算法对来自不同操作行为的局部学习结果进行融合。在基于受试者的技能特征学习中,集成学习可以达到 100%的准确率,明显优于最佳局部结果(90%)。此外,集成学习在受试者独立方案中也可以保持 73%的准确率。这些有希望的结果表明,该方法具有很大的潜力,可用于促进手术机器人中的技能学习和临床实践中的技能评估。