Ren Jianxun, Hu Qingyu, Wang Weiwei, Zhang Wei, Hubbard Catherine S, Zhang Pingjia, An Ning, Zhou Ying, Dahmani Louisa, Wang Danhong, Fu Xiaoxuan, Sun Zhenyu, Wang Yezhe, Wang Ruiqi, Li Luming, Liu Hesheng
National Engineering Laboratory for Neuromodulation, School of Aerospace Engineering, Tsinghua University, Beijing, 100084, China.
Athinoula A. Martinos Center for Biomedical Imaging, Department of Radiology, Massachusetts General Hospital, Harvard Medical School, Charlestown, MA, 02129, USA.
Brain Inform. 2022 Mar 9;9(1):6. doi: 10.1186/s40708-022-00155-7.
Reconstructing cortical surfaces from structural magnetic resonance imaging (MRI) is a prerequisite for surface-based functional and anatomical image analyses. Conventional algorithms for cortical surface reconstruction are computationally inefficient and typically take several hours for each subject, causing a bottleneck in applications when a fast turnaround time is needed. To address this challenge, we propose a fast cortical surface reconstruction (FastCSR) pipeline by leveraging deep machine learning. We trained our model to learn an implicit representation of the cortical surface in volumetric space, termed the "level set representation". A fast volumetric topology correction method and a topology-preserving surface mesh extraction procedure were employed to reconstruct the cortical surface based on the level set representation. Using 1-mm isotropic T1-weighted images, the FastCSR pipeline was able to reconstruct a subject's cortical surfaces within 5 min with comparable surface quality, which is approximately 47 times faster than the traditional FreeSurfer pipeline. The advantage of FastCSR becomes even more apparent when processing high-resolution images. Importantly, the model demonstrated good generalizability in previously unseen data and showed high test-retest reliability in cortical morphometrics and anatomical parcellations. Finally, FastCSR was robust to images with compromised quality or with distortions caused by lesions. This fast and robust pipeline for cortical surface reconstruction may facilitate large-scale neuroimaging studies and has potential in clinical applications wherein brain images may be compromised.
从结构磁共振成像(MRI)重建皮质表面是基于表面的功能和解剖图像分析的前提条件。传统的皮质表面重建算法计算效率低下,每个受试者通常需要几个小时,在需要快速周转时间的应用中造成了瓶颈。为应对这一挑战,我们提出了一种利用深度机器学习的快速皮质表面重建(FastCSR)流程。我们训练模型以学习体积空间中皮质表面的隐式表示,称为“水平集表示”。采用快速体积拓扑校正方法和保持拓扑的表面网格提取过程,基于水平集表示重建皮质表面。使用1毫米各向同性T1加权图像,FastCSR流程能够在5分钟内重建受试者的皮质表面,表面质量相当,比传统的FreeSurfer流程快约47倍。在处理高分辨率图像时,FastCSR的优势更加明显。重要的是,该模型在以前未见过的数据中表现出良好的通用性,并且在皮质形态计量学和解剖分割中显示出高重测可靠性。最后,FastCSR对质量受损或由病变引起畸变的图像具有鲁棒性。这种快速且鲁棒的皮质表面重建流程可能会促进大规模神经成像研究,并在脑图像可能受损的临床应用中具有潜力。