Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai, China.
MOE Key Laboratory of Computational Neuroscience and Brain-Inspired Intelligence, Fudan University, Shanghai, China.
Elife. 2022 Dec 22;11:e81217. doi: 10.7554/eLife.81217.
Accurate brain tissue extraction on magnetic resonance imaging (MRI) data is crucial for analyzing brain structure and function. While several conventional tools have been optimized to handle human brain data, there have been no generalizable methods to extract brain tissues for multimodal MRI data from rodents, nonhuman primates, and humans. Therefore, developing a flexible and generalizable method for extracting whole brain tissue across species would allow researchers to analyze and compare experiment results more efficiently. Here, we propose a domain-adaptive and semi-supervised deep neural network, named the Brain Extraction Net (BEN), to extract brain tissues across species, MRI modalities, and MR scanners. We have evaluated BEN on 18 independent datasets, including 783 rodent MRI scans, 246 nonhuman primate MRI scans, and 4601 human MRI scans, covering five species, four modalities, and six MR scanners with various magnetic field strengths. Compared to conventional toolboxes, the superiority of BEN is illustrated by its robustness, accuracy, and generalizability. Our proposed method not only provides a generalized solution for extracting brain tissue across species but also significantly improves the accuracy of atlas registration, thereby benefiting the downstream processing tasks. As a novel fully automated deep-learning method, BEN is designed as an open-source software to enable high-throughput processing of neuroimaging data across species in preclinical and clinical applications.
准确地从磁共振成像 (MRI) 数据中提取脑组织对于分析大脑结构和功能至关重要。虽然已经有几种传统工具经过优化可用于处理人脑数据,但目前还没有可推广的方法来从啮齿动物、非人类灵长类动物和人类的多模态 MRI 数据中提取脑组织。因此,开发一种灵活且可推广的方法来提取跨物种的全脑组织,将使研究人员能够更有效地分析和比较实验结果。在这里,我们提出了一种域自适应和半监督的深度神经网络,称为 Brain Extraction Net (BEN),用于提取跨物种、MRI 模态和 MRI 扫描仪的脑组织。我们在 18 个独立的数据集上评估了 BEN,其中包括 783 个啮齿动物 MRI 扫描、246 个非人类灵长类动物 MRI 扫描和 4601 个人类 MRI 扫描,涵盖了五个物种、四种模态和六种具有不同磁场强度的 MRI 扫描仪。与传统工具包相比,BEN 的优越性体现在其稳健性、准确性和可推广性。我们提出的方法不仅为跨物种提取脑组织提供了一种通用的解决方案,而且还显著提高了图谱配准的准确性,从而有益于下游处理任务。作为一种新颖的全自动深度学习方法,BEN 被设计为开源软件,以支持在临床前和临床应用中对跨物种的神经影像学数据进行高通量处理。