Sino-Dutch Biomedical and Information Engineering School, Northeastern University, Shenyang, China; Department of Radiology and Nuclear Medicine, Erasmus MC, Rotterdam, the Netherlands.
Department of Radiology and Nuclear Medicine, Erasmus MC, Rotterdam, the Netherlands; Department of Epidemiology, Erasmus MC, Rotterdam, the Netherlands.
Neuroimage. 2020 Sep;218:116993. doi: 10.1016/j.neuroimage.2020.116993. Epub 2020 May 31.
Subtle changes in white matter (WM) microstructure have been associated with normal aging and neurodegeneration. To study these associations in more detail, it is highly important that the WM tracts can be accurately and reproducibly characterized from brain diffusion MRI. In addition, to enable analysis of WM tracts in large datasets and in clinical practice it is essential to have methodology that is fast and easy to apply. This work therefore presents a new approach for WM tract segmentation: Neuro4Neuro, that is capable of direct extraction of WM tracts from diffusion tensor images using convolutional neural network (CNN). This 3D end-to-end method is trained to segment 25 WM tracts in aging individuals from a large population-based study (N = 9752, 1.5T MRI). The proposed method showed good segmentation performance and high reproducibility, i.e., a high spatial agreement (Cohen's kappa, κ=0.72-0.83) and a low scan-rescan error in tract-specific diffusion measures (e.g., fractional anisotropy: ε=1%-5%). The reproducibility of the proposed method was higher than that of a tractography-based segmentation algorithm, while being orders of magnitude faster (0.5s to segment one tract). In addition, we showed that the method successfully generalizes to diffusion scans from an external dementia dataset (N = 58, 3T MRI). In two proof-of-principle experiments, we associated WM microstructure obtained using the proposed method with age in a normal elderly population, and with disease subtypes in a dementia cohort. In concordance with the literature, results showed a widespread reduction of microstructural organization with aging and substantial group-wise microstructure differences between dementia subtypes. In conclusion, we presented a highly reproducible and fast method for WM tract segmentation that has the potential of being used in large-scale studies and clinical practice.
脑白质(WM)微观结构的细微变化与正常衰老和神经退行性变有关。为了更详细地研究这些关联,从脑弥散磁共振成像中准确且可重复地描绘 WM 束非常重要。此外,为了能够在大型数据集和临床实践中分析 WM 束,必须使用快速且易于应用的方法。因此,这项工作提出了一种新的 WM 束分割方法:Neuro4Neuro,它能够使用卷积神经网络(CNN)直接从弥散张量图像中提取 WM 束。该 3D 端到端方法经过训练,可从一项大型基于人群的研究(N=9752,1.5T MRI)中分割衰老个体的 25 条 WM 束。所提出的方法表现出良好的分割性能和高度的可重复性,即高空间一致性(Cohen's kappa,κ=0.72-0.83)和束特异性弥散测量中的低扫描-再扫描误差(例如,各向异性分数:ε=1%-5%)。与基于束追踪的分割算法相比,该方法的可重复性更高,而速度则快几个数量级(分割一条束只需 0.5 秒)。此外,我们表明该方法可成功推广到来自外部痴呆数据集的弥散扫描(N=58,3T MRI)。在两个原理验证实验中,我们使用所提出的方法将 WM 微观结构与正常老年人群的年龄相关联,并与痴呆队列中的疾病亚型相关联。与文献一致,结果表明随着年龄的增长,微观结构的组织普遍减少,痴呆亚型之间存在明显的组间微观结构差异。总之,我们提出了一种高度可重复且快速的 WM 束分割方法,具有在大规模研究和临床实践中应用的潜力。