Chen Liangjun, Wu Zhengwang, Hu Dan, Pei Yuchen, Zhao Fenqiang, Sun Yue, Wang Ya, Lin Weili, Wang Li, Li Gang
Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, USA.
Med Image Comput Comput Assist Interv. 2021 Sep-Oct;12904:139-149. doi: 10.1007/978-3-030-87202-1_14. Epub 2021 Sep 21.
Longitudinal infant dedicated cerebellum atlases play a fundamental role in characterizing and understanding the dynamic cerebellum development during infancy. However, due to the limited spatial resolution, low tissue contrast, tiny folding structures, and rapid growth of the cerebellum during this stage, it is challenging to build such atlases while preserving clear folding details. Furthermore, the existing atlas construction methods typically independently build discrete atlases based on samples for each age group without considering the within-subject temporal consistency, which is critical for large-scale longitudinal studies. To fill this gap, we propose an age-conditional multi-stage learning framework to construct longitudinally consistent 4D infant cerebellum atlases. Specifically, 1) A joint affine and deformable atlas construction framework is proposed to accurately build atlases based on the entire cohort, and rapidly warp the new images to the atlas space; 2) A longitudinal constraint is employed to enforce the within-subject temporal consistency during atlas building; 3) A Correntropy based regularization loss is further exploited to enhance the robustness of our framework. Our atlases are constructed based on 405 longitudinal scans from 187 healthy infants with age ranging from 6 to 27 months, and are compared to the atlases built by state-of-the-art algorithms. Results demonstrate that our atlases preserve more structural details and fine-grained cerebellum folding patterns, which ensure higher accuracy in subsequent atlas-based registration and segmentation tasks.
纵向婴儿专用小脑图谱在表征和理解婴儿期小脑的动态发育过程中起着至关重要的作用。然而,由于该阶段小脑的空间分辨率有限、组织对比度低、折叠结构微小以及生长迅速,在构建此类图谱并保留清晰的折叠细节方面具有挑战性。此外,现有的图谱构建方法通常基于每个年龄组的样本独立构建离散图谱,而不考虑个体内的时间一致性,这对于大规模纵向研究至关重要。为了填补这一空白,我们提出了一种年龄条件多阶段学习框架来构建纵向一致的4D婴儿小脑图谱。具体而言,1)提出了一种联合仿射和可变形图谱构建框架,以基于整个队列准确构建图谱,并将新图像快速扭曲到图谱空间;2)采用纵向约束来在图谱构建过程中强制个体内的时间一致性;3)进一步利用基于相关熵的正则化损失来增强我们框架的鲁棒性。我们的图谱基于187名年龄在6至27个月之间的健康婴儿的405次纵向扫描构建,并与由先进算法构建的图谱进行比较。结果表明,我们的图谱保留了更多的结构细节和细粒度的小脑折叠模式,这确保了后续基于图谱的配准和分割任务具有更高的准确性。