论文标题
胎儿脑MRI中皮质板的分割,拓扑损失
Segmentation of the cortical plate in fetal brain MRI with a topological loss
论文作者
论文摘要
胎儿皮质板在整个子宫内发育的早期都经历了急剧的形态变化,可以使用磁共振(MR)成像观察到。精确的MR图像分割,更重要的是,对皮质灰质的拓扑正确描述,是对大脑发育进行进一步定量分析的关键基线。在本文中,我们首次提出了拓扑约束作为附加损失函数的整合,以增强胎儿皮质板的深度学习分割的形态一致性。我们对18个胎儿大脑图谱的方法进行了定量评估,妊娠21至38周,与基线方法相比,我们通过所有胎龄的显着益处。此外,从26个临床MRIS证据中随机选择的130个切片的三个不同专家进行定性评估,我们方法的绩效与MR重建质量无关。
The fetal cortical plate undergoes drastic morphological changes throughout early in utero development that can be observed using magnetic resonance (MR) imaging. An accurate MR image segmentation, and more importantly a topologically correct delineation of the cortical gray matter, is a key baseline to perform further quantitative analysis of brain development. In this paper, we propose for the first time the integration of a topological constraint, as an additional loss function, to enhance the morphological consistency of a deep learning-based segmentation of the fetal cortical plate. We quantitatively evaluate our method on 18 fetal brain atlases ranging from 21 to 38 weeks of gestation, showing the significant benefits of our method through all gestational ages as compared to a baseline method. Furthermore, qualitative evaluation by three different experts on 130 randomly selected slices from 26 clinical MRIs evidences the out-performance of our method independently of the MR reconstruction quality.