Multi-Lateral Branched Network for Tool Segmentation During Robot-Assisted Endovascular Interventions

IF 3.4 Q2 ENGINEERING, BIOMEDICAL
Olatunji Mumini Omisore;Toluwanimi Oluwadara Akinyemi;Wenke Duan;Wenjing Du;Lei Wang
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引用次数: 0

Abstract

Robot-assisted endovascular intervention has emerged for improving the outcomes of cardiovascular interventions. However, the current segmentation methods are affected with low and varied contrast values of endovascular tools in the angiogram, and background noise, both of which affect segmentation performance. Thus, surgical scene analytics are characterized with slow tool visualization and response during endovascular navigation. In this study, a multi-lateral branched network (MLB-Net) is proposed for pixel-level segmentation of guidewire in angiograms recorded during robot-assisted cardiovascular catheterization. The network has an encoder with lateral separable convolutions and depth-wise attention, and decoder with improved loss function. Feature maps extracted during end-to-end fully supervised training were optimized for guidewire segmentation. The MLB-Net was trained and validated with multiple angiogram sequences obtained during series of robot-assisted catheterization in rabbit model. Validation studies show a robust performance, characterized with mean IoU of 84.89% and area under curve of 90.64%. In addition, the model offered fast (15.28 frame/second) and reliable segmentation performance in new angiograms obtained during additional trials carried out in pig and human phantom models. Furthermore, we evaluated the MLB-Net by comparing it with existing state-of-the-art networks. Based on our rabbit dataset, the MLB-Net offers better segmentation experience over DeepLabV3+, SegNet, and U-Net which are commonly used for medical image segmentation. Also, MLB-Net generalized well under incremental training. This study contributes a new model for fast tool segmentation, tracking and visualization and during endovascular catheterization.
用于机器人辅助血管内介入手术中工具分段的多侧分支网络
机器人辅助血管内介入疗法的出现改善了心血管介入治疗的效果。然而,目前的分割方法受到血管造影中血管内工具对比度低且变化大以及背景噪声的影响,这两种因素都会影响分割性能。因此,手术场景分析的特点是血管内导航过程中工具可视化和响应速度缓慢。本研究提出了一种多侧分支网络(MLB-Net),用于在机器人辅助心血管导管术中记录的血管造影中对导引线进行像素级分割。该网络的编码器具有横向可分离卷积和深度注意功能,解码器具有改进的损失函数。在端到端全监督训练中提取的特征图经过优化,可用于导丝分割。在对兔子模型进行一系列机器人辅助导管插入术时获得的多个血管造影序列对 MLB-Net 进行了训练和验证。验证研究表明,该模型性能稳定,平均 IoU 为 84.89%,曲线下面积为 90.64%。此外,在猪和人体模型中进行的其他试验中,该模型在新血管造影中提供了快速(15.28 帧/秒)和可靠的分割性能。此外,我们还将 MLB 网络与现有的最先进网络进行了比较,对其进行了评估。基于我们的兔子数据集,MLB-Net 比 DeepLabV3+、SegNet 和 U-Net 提供了更好的分割体验,后者通常用于医学图像分割。此外,MLB-Net 在增量训练中的泛化效果也很好。这项研究为血管内导管术期间的快速工具分割、跟踪和可视化提供了一个新模型。
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CiteScore
6.80
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