Rafael-Patino Jonathan, Girard Gabriel, Truffet Raphaël, Pizzolato Marco, Caruyer Emmanuel, Thiran Jean-Philippe
Signal Processing Lab (LTS5), École Polytechnique Fédérale de Lausanne, Switzerland.
CIBM Center for Biomedical Imaging, Switzerland.
Data Brief. 2021 Sep 25;38:107429. doi: 10.1016/j.dib.2021.107429. eCollection 2021 Oct.
The methodological development in the mapping of the brain structural connectome from diffusion-weighted magnetic resonance imaging (DW-MRI) has raised many hopes in the neuroscientific community. Indeed, the knowledge of the connections between different brain regions is fundamental to study brain anatomy and function. The reliability of the structural connectome is therefore of paramount importance. In the search for accuracy, researchers have given particular attention to linking white matter tractography methods - used for estimating the connectome - with information about the microstructure of the nervous tissue. The creation and validation of methods in this context were hampered by a lack of practical numerical phantoms. To achieve this, we created a numerical phantom that mimics complex anatomical fibre pathway trajectories while also accounting for microstructural features such as axonal diameter distribution, myelin presence, and variable packing densities. The substrate has a micrometric resolution and an unprecedented size of 1 cubic millimetre to mimic an image acquisition matrix of voxels. DW-MRI images were obtained from Monte Carlo simulations of spin dynamics to enable the validation of quantitative tractography. The phantom is composed of 12,196 synthetic tubular fibres with diameters ranging from 1.4 µm to 4.2 µm, interconnecting sixteen regions of interest. The simulated images capture the microscopic properties of the tissue (e.g. fibre diameter, water diffusing within and around fibres, free water compartment), while also having desirable macroscopic properties resembling the anatomy, such as the smoothness of the fibre trajectories. While previous phantoms were used to validate either tractography or microstructure, this phantom can enable a better assessment of the connectome estimation's reliability on the one side, and its adherence to the actual microstructure of the nervous tissue on the other.
从扩散加权磁共振成像(DW-MRI)绘制脑结构连接组的方法学发展在神经科学界引发了诸多期望。的确,了解不同脑区之间的连接对于研究脑解剖结构和功能至关重要。因此,结构连接组的可靠性至关重要。在追求准确性的过程中,研究人员特别关注将用于估计连接组的白质纤维束成像方法与神经组织微观结构信息相联系。在此背景下,方法的创建和验证因缺乏实用的数值模型而受阻。为实现这一目标,我们创建了一个数值模型,该模型模拟复杂的解剖纤维通路轨迹,同时还考虑了诸如轴突直径分布、髓鞘存在和可变堆积密度等微观结构特征。该模型具有微米级分辨率,尺寸达到前所未有的1立方毫米,以模拟体素的图像采集矩阵。通过对自旋动力学的蒙特卡罗模拟获得DW-MRI图像,以实现对定量纤维束成像的验证。该模型由12,196根直径从1.4微米到4.2微米不等的合成管状纤维组成,连接16个感兴趣区域。模拟图像捕捉了组织的微观特性(如纤维直径、纤维内部和周围的水分子扩散、自由水腔室),同时还具有类似解剖结构的理想宏观特性,如纤维轨迹的平滑度。虽然之前的模型用于验证纤维束成像或微观结构,但这个模型一方面能够更好地评估连接组估计的可靠性,另一方面能够评估其与神经组织实际微观结构的契合度。