IEEE Trans Cybern. 2022 Apr;52(4):2565-2577. doi: 10.1109/TCYB.2020.3004653. Epub 2022 Apr 5.
The clinical success of the percutaneous coronary intervention (PCI) is highly dependent on endovascular manipulation skills and dexterous manipulation strategies of interventionalists. However, the analysis of endovascular manipulations and related discussion for technical skill assessment are limited. In this study, a multilayer and multimodal-fusion architecture is proposed to recognize six typical endovascular manipulations. The synchronously acquired multimodal motion signals from ten subjects are used as the inputs of the architecture independently. Six classification-based and two rule-based fusion algorithms are evaluated for performance comparisons. The recognition metrics under the determined architecture are further used to assess technical skills. The experimental results indicate that the proposed architecture can achieve the overall accuracy of 96.41%, much higher than that of a single-layer recognition architecture (92.85%). In addition, the multimodal fusion brings significant performance improvement in comparison with single-modal schemes. Furthermore, the K -means-based skill assessment can obtain an accuracy of 95% to cluster the attempts made by different skill-level groups. These hopeful results indicate the great possibility of the architecture to facilitate clinical skill assessment and skill learning.
经皮冠状动脉介入治疗 (PCI) 的临床成功高度依赖于血管内操作技能和介入专家的灵巧操作策略。然而,血管内操作的分析和相关技术技能评估的讨论是有限的。在这项研究中,提出了一种多层和多模态融合架构来识别六种典型的血管内操作。从十名受试者同步采集的多模态运动信号被独立作为架构的输入。评估了六种基于分类和两种基于规则的融合算法进行性能比较。在确定的架构下的识别指标进一步用于评估技术技能。实验结果表明,所提出的架构可以达到 96.41%的整体准确率,远高于单层识别架构(92.85%)。此外,与单模态方案相比,多模态融合在性能上有显著提高。此外,基于 K-均值的技能评估可以获得 95%的准确率,以对不同技能水平组的尝试进行聚类。这些有希望的结果表明,该架构在促进临床技能评估和技能学习方面具有很大的可能性。