Wang Limei, Sun Yue, Seidlitz Jakob, Bethlehem Richard A I, Alexander-Bloch Aaron, Dorfschmidt Lena, Li Gang, Elison Jed T, Lin Weili, Wang Li
Developing Brain Computing Lab, Department of Radiology and Biomedical Research Imaging Center, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Joint Department of Biomedical Engineering, University of North Carolina at Chapel Hill and North Carolina State University, Chapel Hill, NC, USA.
Nat Biomed Eng. 2025 May;9(5):700-715. doi: 10.1038/s41551-024-01337-w. Epub 2025 Jan 8.
In magnetic resonance imaging of the brain, an imaging-preprocessing step removes the skull and other non-brain tissue from the images. But methods for such a skull-stripping process often struggle with large data heterogeneity across medical sites and with dynamic changes in tissue contrast across lifespans. Here we report a skull-stripping model for magnetic resonance images that generalizes across lifespans by leveraging personalized priors from brain atlases. The model consists of a brain extraction module that provides an initial estimation of the brain tissue on an image, and a registration module that derives a personalized prior from an age-specific atlas. The model is substantially more accurate than state-of-the-art skull-stripping methods, as we show with a large and diverse dataset of 21,334 lifespans acquired from 18 sites with various imaging protocols and scanners, and it generates naturally consistent and seamless lifespan changes in brain volume, faithfully charting the underlying biological processes of brain development and ageing.
在脑部磁共振成像中,成像预处理步骤会从图像中去除颅骨和其他非脑组织。但是,这种去颅骨过程的方法常常难以应对不同医疗站点间的数据异质性以及整个生命周期中组织对比度的动态变化。在此,我们报告一种用于磁共振图像的去颅骨模型,该模型通过利用来自脑图谱的个性化先验信息在整个生命周期中进行泛化。该模型由一个脑提取模块和一个配准模块组成,脑提取模块对图像上的脑组织提供初始估计,配准模块从特定年龄的图谱中得出个性化先验信息。正如我们在一个由来自18个站点、采用各种成像协议和扫描仪获取的包含21334个生命周期的庞大且多样的数据集中所展示的那样,该模型比现有最先进的去颅骨方法要准确得多,并且它能在脑容量方面自然地产生一致且无缝的生命周期变化,忠实地描绘出大脑发育和衰老的潜在生物学过程。