Liu Mengting, Lepage Claude, Kim Sharon Y, Jeon Seun, Kim Sun Hyung, Simon Julia Pia, Tanaka Nina, Yuan Shiyu, Islam Tasfiya, Peng Bailin, Arutyunyan Knarik, Surento Wesley, Kim Justin, Jahanshad Neda, Styner Martin A, Toga Arthur W, Barkovich Anthony James, Xu Duan, Evans Alan C, Kim Hosung
Department of Neurology, USC Stevens Neuroimaging and Informatics Institute, Keck School of Medicine, University of Southern California, Los Angeles, CA, United States.
Montreal Neurological Institute, McGill University, Montreal, QC, Canada.
Front Neurosci. 2021 Mar 17;15:650082. doi: 10.3389/fnins.2021.650082. eCollection 2021.
The human brain grows the most dramatically during the perinatal and early post-natal periods, during which pre-term birth or perinatal injury that may alter brain structure and lead to developmental anomalies. Thus, characterizing cortical thickness of developing brains remains an important goal. However, this task is often complicated by inaccurate cortical surface extraction due to small-size brains. Here, we propose a novel complex framework for the reconstruction of neonatal WM and pial surfaces, accounting for large partial volumes due to small-size brains. The proposed approach relies only on T1-weighted images unlike previous T2-weighted image-based approaches while only T1-weighted images are sometimes available under the different clinical/research setting. Deep neural networks are first introduced to the neonatal magnetic resonance imaging (MRI) pipeline to address the mis-segmentation of brain tissues. Furthermore, this pipeline enhances cortical boundary delineation using combined models of the cerebrospinal fluid (CSF)/GM boundary detection with edge gradient information and a new skeletonization of sulcal folding where no CSF voxels are seen due to the limited resolution. We also proposed a systematic evaluation using three independent datasets comprising 736 pre-term and 97 term neonates. Qualitative assessment for reconstructed cortical surfaces shows that 86.9% are rated as accurate across the three site datasets. In addition, our landmark-based evaluation shows that the mean displacement of the cortical surfaces from the true boundaries was less than a voxel size (0.532 ± 0.035 mm). Evaluating the proposed pipeline (namely NEOCIVET 2.0) shows the robustness and reproducibility across different sites and different age-groups. The mean cortical thickness measured positively correlated with post-menstrual age (PMA) at scan ( < 0.0001); Cingulate cortical areas grew the most rapidly whereas the inferior temporal cortex grew the least rapidly. The range of the cortical thickness measured was biologically congruent (1.3 mm at 28 weeks of PMA to 1.8 mm at term equivalent). Cortical thickness measured on T1 MRI using NEOCIVET 2.0 was compared with that on T2 using the established dHCP pipeline. It was difficult to conclude that either T1 or T2 imaging is more ideal to construct cortical surfaces. NEOCIVET 2.0 has been open to the public through CBRAIN (https://mcin-cnim.ca/technology/cbrain/), a web-based platform for processing brain imaging data.
人类大脑在围产期和出生后早期发育最为显著,在此期间,早产或围产期损伤可能会改变大脑结构并导致发育异常。因此,描绘发育中大脑的皮质厚度仍然是一个重要目标。然而,由于大脑体积小,皮质表面提取不准确,这项任务往往变得复杂。在此,我们提出了一种新颖的复杂框架,用于重建新生儿的白质和软脑膜表面,该框架考虑到了因大脑体积小而产生的大量部分容积。与之前基于T2加权图像的方法不同,我们提出的方法仅依赖于T1加权图像,而在不同的临床/研究环境下,有时只有T1加权图像可用。我们首次将深度神经网络引入新生儿磁共振成像(MRI)流程,以解决脑组织的错误分割问题。此外,该流程使用脑脊液(CSF)/灰质边界检测与边缘梯度信息的组合模型以及沟回折叠的新骨架化方法来增强皮质边界的描绘,由于分辨率有限,在这些区域看不到脑脊液体素。我们还使用包含736名早产儿和97名足月儿的三个独立数据集进行了系统评估。对重建皮质表面的定性评估表明,在三个站点数据集中,86.9%的重建被评为准确。此外,我们基于地标点的评估表明,皮质表面与真实边界的平均位移小于一个体素大小(0.532±0.035毫米)。对所提出的流程(即NEOCIVET 2.0)的评估表明,它在不同站点和不同年龄组中具有稳健性和可重复性。扫描时测得的平均皮质厚度与孕龄(PMA)呈正相关(<0.0001);扣带回皮质区域生长最快,而下颞叶皮质生长最慢。测得的皮质厚度范围在生物学上是一致的(孕28周时为1.3毫米,足月时为1.8毫米)。使用NEOCIVET 2.0在T1 MRI上测得的皮质厚度与使用已建立的dHCP流程在T2上测得的皮质厚度进行了比较。很难得出T1或T2成像在构建皮质表面方面更理想的结论。NEOCIVET 2.0已通过CBRAIN(https://mcin-cnim.ca/technology/cbrain/)向公众开放,CBRAIN是一个基于网络的大脑成像数据处理平台。