论文标题
动脉畸形的3DRA中脑血管分割的深度学习模型
A deep learning model for brain vessel segmentation in 3DRA with arteriovenous malformations
论文作者
论文摘要
3D旋转血管造影(3DRA)中脑动脉畸形(BAVM)的分割仍然是文献中的一个空旷问题,与临床实践相关。尽管已应用深度学习模型用于分割这些图像中的大脑脉管系统,但在BAVMS的情况下从未使用过它们。这很可能是由于难以获得足够注释的数据来训练这些方法引起的。在本文中,我们介绍了BAVMS患者的3DRA图像中的第一个深度学习模型。为此,我们密集注释了5个3DRA卷的BAVM案例,并使用它们来训练具有不同分割目标的两个替代基于3Dunet的架构。我们的结果表明,网络对BAVM分析的相关结构进行了全面的覆盖范围,比使用标准方法获得的要好得多。这是实现BAVM感兴趣结构的更好拓扑和形态特征的希望。此外,即使在地面真相标签中缺少静脉结构,模型也具有分割静脉结构的能力,这与计划介入治疗有关。最终,这些结果可以用作更可靠的初始猜测,从而减轻了创建手动标签的繁琐任务。
Segmentation of brain arterio-venous malformations (bAVMs) in 3D rotational angiographies (3DRA) is still an open problem in the literature, with high relevance for clinical practice. While deep learning models have been applied for segmenting the brain vasculature in these images, they have never been used in cases with bAVMs. This is likely caused by the difficulty to obtain sufficiently annotated data to train these approaches. In this paper we introduce a first deep learning model for blood vessel segmentation in 3DRA images of patients with bAVMs. To this end, we densely annotated 5 3DRA volumes of bAVM cases and used these to train two alternative 3DUNet-based architectures with different segmentation objectives. Our results show that the networks reach a comprehensive coverage of relevant structures for bAVM analysis, much better than what is obtained using standard methods. This is promising for achieving a better topological and morphological characterisation of the bAVM structures of interest. Furthermore, the models have the ability to segment venous structures even when missing in the ground truth labelling, which is relevant for planning interventional treatments. Ultimately, these results could be used as more reliable first initial guesses, alleviating the cumbersome task of creating manual labels.