Model-to-Image Registration via Deep Learning towards Image-Guided Endovascular Interventions

Zhen Li, M. Mancini, G. Monizzi, D. Andreini, G. Ferrigno, J. Dankelman, E. Momi
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引用次数: 1

Abstract

Cardiologists highlight the need for an intra-operative 3D visualization to assist interventions. The intra-operative 2D X-ray/Digital Subtraction Angiography (DSA) images in the standard clinical workflow limit cardiologists’ views significantly. Compared with image-to-image registration, model-to-image registration is an essential approach taking advantage of the reuse of pre-operative 3D models reconstructed from Computed Tomography Angiography (CTA) images. Traditional optimized-based registration methods suffer severely from high computational complexity. Moreover, the consequence of lacking ground truth for learning-based registration approaches should not be neglected. To overcome these challenges, we introduce a model-to-image registration framework via deep learning for image-guided endovascular catheterization. This work performs autonomous vessel segmentation from intra-operative fluoroscopy images via a deep residual U-net and a model-to-image matching via a convolutional neural network. For this study, image data were collected from 10 patients who performed Transcatheter Aortic Valve Implantation (TAVI) procedures. It was found that vessel segmentation of test data results in median values of Dice Similarity Coefficient, Precision, and Recall of (0.75, 0.58, 0.67) for femoral artery, and (0.71, 0.56, 0.74) for aortic root. The segmentation network behaves better than manual annotation, and it recognizes part of vessels that were not labeled manually. Image matching between the transformed moving image and the fixed image results in a median value of Recall of 0.90. The proposed approach achieves a good accuracy of vessel segmentation and a good recall value of model-to-image matching.
基于深度学习的模型-图像配准,用于图像引导的血管内介入
心脏病专家强调需要术中3D可视化来辅助干预。标准临床工作流程中的术中2D x线/数字减影血管造影(DSA)图像明显限制了心脏病专家的视野。与图像到图像的配准相比,模型到图像的配准是一种重要的方法,它利用了从计算机断层扫描血管造影(CTA)图像重建的术前3D模型的重用性。传统的基于优化的配准方法计算量大。此外,基于学习的注册方法缺乏基础真理的后果也不容忽视。为了克服这些挑战,我们通过深度学习引入了用于图像引导血管内导管置入的模型到图像配准框架。这项工作通过深度残留U-net和卷积神经网络进行模型-图像匹配,从术中透视图像中进行自主血管分割。本研究收集了10例经导管主动脉瓣植入术(TAVI)患者的图像数据。我们发现,对测试数据进行血管分割后,股骨动脉的Dice Similarity Coefficient、Precision和Recall的中位数分别为(0.75,0.58,0.67)和主动脉根部的Dice Similarity Coefficient、Precision和Recall的中位数分别为(0.71,0.56,0.74)。该分割网络比人工标注效果更好,能够识别出未被人工标注的部分血管。变换后的运动图像与固定图像的图像匹配,召回率中值为0.90。该方法具有良好的血管分割精度和良好的模型-图像匹配召回值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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