Vignali Emanuele, Gasparotti Emanuele, Frijia Francesca, Losi Paola, Ferrazzi Giulio, Monteleone Angelo, Celi Simona
BioCardioLab, Bioengineering unit, Fondazione Monasterio, Via Aurelia Sud, Massa, 54100, Italy.
Bioengineering Unit, Fondazione Monasterio, Via Aurelia Sud, Massa, 54100, Italy.
J Biomech. 2025 Aug;189:112795. doi: 10.1016/j.jbiomech.2025.112795. Epub 2025 Jun 11.
Diffusion Tensor Imaging is a non-invasive imaging technique based on Magnetic Resonance Imaging that provides information on the tissue microstructure from the preferential direction of water molecules' diffusion. While the technique is widely used in neuroimaging, recent new applications were found for arterial tissue microstructure such as aorta and carotids. In the state of art, the Diffusion Tensor Imaging datasets for arterial tissues are usually acquired with ultra-high field scanners and no singular software for the processing of ex-vivo ring-like tissues is available. The present manuscript aims to demonstrate the application of a clinical magnetic resonance scanner to infer on fiber microstructure of ex-vivo arterial specimens. This was achieved by developing a custom workflow for the specific analysis of Diffusion Tensor Imaging data for arterial microstructures. First, a custom software platform was developed by including dedicated modules to perform the following processing pipeline: NIfTI conversion, eddy current correction, segmentation, estimation of diffusion tensor, diffusion parameters and fiber reconstruction and analysis. Then, a set of acquisitions was carried out on six fresh human aortic samples of ascending aorta by using a 3T clinical scanner (Philips Ingenia). The data were processed with both our Python-based custom workflow and other commercial software. The results obtained from the custom workflow were in agreement with the ones from the commercial software. Moreover, specific tools for tissue fibers visualizations and orientation analyses were added. In this study, the usefulness of the custom workflow for processing specific arterial Diffusion Tensor Imaging datasets was demonstrated. The efficacy of the processing pipeline was comparable with the other commercial software, with also the addition fiber analysis tools, specific for the vessel structure.
扩散张量成像(Diffusion Tensor Imaging)是一种基于磁共振成像的非侵入性成像技术,它从水分子扩散的优先方向提供有关组织微观结构的信息。虽然该技术在神经成像中广泛应用,但最近发现了其在动脉组织微观结构(如主动脉和颈动脉)方面的新应用。在当前技术水平下,动脉组织的扩散张量成像数据集通常使用超高场扫描仪获取,并且没有专门用于处理离体环状组织的软件。本手稿旨在展示临床磁共振扫描仪在推断离体动脉标本纤维微观结构方面的应用。这是通过开发用于动脉微观结构扩散张量成像数据特定分析的定制工作流程来实现的。首先,通过包含专用模块来执行以下处理流程,开发了一个定制软件平台:NIfTI转换、涡流校正、分割、扩散张量估计、扩散参数以及纤维重建与分析。然后,使用3T临床扫描仪(飞利浦Ingenia)对六个新鲜的升主动脉人体样本进行了一组采集。数据使用我们基于Python的定制工作流程和其他商业软件进行处理。从定制工作流程获得的结果与商业软件的结果一致。此外,还添加了用于组织纤维可视化和方向分析的特定工具。在本研究中,证明了定制工作流程在处理特定动脉扩散张量成像数据集方面的有用性。处理流程的功效与其他商业软件相当,还增加了针对血管结构的特定纤维分析工具。