Livne Michelle, Rieger Jana, Aydin Orhun Utku, Taha Abdel Aziz, Akay Ela Marie, Kossen Tabea, Sobesky Jan, Kelleher John D, Hildebrand Kristian, Frey Dietmar, Madai Vince I
Predictive Modelling in Medicine Research Group, Department of Neurosurgery, Charité - Universitätsmedizin Berlin, Berlin, Germany.
Centre for Stroke Research Berlin, Charité - Universitätsmedizin Berlin, Berlin, Germany.
Front Neurosci. 2019 Feb 28;13:97. doi: 10.3389/fnins.2019.00097. eCollection 2019.
Brain vessel status is a promising biomarker for better prevention and treatment in cerebrovascular disease. However, classic rule-based vessel segmentation algorithms need to be hand-crafted and are insufficiently validated. A specialized deep learning method-the U-net-is a promising alternative. Using labeled data from 66 patients with cerebrovascular disease, the U-net framework was optimized and evaluated with three metrics: Dice coefficient, 95% Hausdorff distance (95HD) and average Hausdorff distance (AVD). The model performance was compared with the traditional segmentation method of graph-cuts. Training and reconstruction was performed using 2D patches. A full and a reduced architecture with less parameters were trained. We performed both quantitative and qualitative analyses. The U-net models yielded high performance for both the full and the reduced architecture: A Dice value of ~0.88, a 95HD of ~47 voxels and an AVD of ~0.4 voxels. The visual analysis revealed excellent performance in large vessels and sufficient performance in small vessels. Pathologies like cortical laminar necrosis and a rete mirabile led to limited segmentation performance in few patients. The U-net outperfomed the traditional graph-cuts method (Dice ~0.76, 95HD ~59, AVD ~1.97). Our work highly encourages the development of clinically applicable segmentation tools based on deep learning. Future works should focus on improved segmentation of small vessels and methodologies to deal with specific pathologies.
脑血管状态是一种很有前景的生物标志物,有助于更好地预防和治疗脑血管疾病。然而,传统的基于规则的血管分割算法需要人工设计,且验证不足。一种专门的深度学习方法——U-net——是一种很有前景的替代方法。利用66例脑血管疾病患者的标记数据,对U-net框架进行了优化,并使用三个指标进行评估:骰子系数、95%豪斯多夫距离(95HD)和平均豪斯多夫距离(AVD)。将模型性能与传统的图割分割方法进行了比较。使用二维图像块进行训练和重建。训练了一个完整架构和一个参数较少的简化架构。我们进行了定量和定性分析。U-net模型在完整架构和简化架构上均表现出高性能:骰子值约为0.88,95HD约为47体素,AVD约为0.4体素。视觉分析显示,在大血管中表现出色,在小血管中表现良好。皮质层状坏死和奇网等病变在少数患者中导致分割性能有限。U-net的性能优于传统的图割方法(骰子系数约为0.76,95HD约为59,AVD约为1.97)。我们的工作强烈鼓励开发基于深度学习的临床适用分割工具。未来的工作应侧重于改进小血管的分割以及处理特定病变的方法。