Department of Aerospace and Mechanical Engineering, University of Southern California, Los Angeles, CA 90089.
Division of Vascular Surgery and Endovascular Therapy, Department of Surgery, University of Southern California, Los Angeles, CA 90089.
J Biomech Eng. 2023 Sep 1;145(9). doi: 10.1115/1.4062539.
Type B aortic dissection is a life-threatening medical emergency that can result in rupture of the aorta. Due to the complexity of patient-specific characteristics, only limited information on flow patterns in dissected aortas has been reported in the literature. Leveraging the medical imaging data for patient-specific in vitro modeling can complement the hemodynamic understanding of aortic dissections. We propose a new approach toward fully automated patient-specific type B aortic dissection model fabrication. Our framework uses a novel deep-learning-based segmentation for negative mold manufacturing. Deep-learning architectures were trained on a dataset of 15 unique computed tomography scans of dissection subjects and were blind-tested on 4 sets of scans, which were targeted for fabrication. Following segmentation, the three-dimensional models were created and printed using polyvinyl alcohol. These models were then coated with latex to create compliant patient-specific phantom models. The magnetic resonance imaging (MRI) structural images demonstrate the ability of the introduced manufacturing technique for creating intimal septum walls and tears based on patient-specific anatomy. The in vitro experiments show the fabricated phantoms generate physiologically-accurate pressure results. The deep-learning models also show high similarity metrics between manual segmentation and autosegmentation where Dice metric is as high as 0.86. The proposed deep-learning-based negative mold manufacturing method facilitates an inexpensive, reproducible, and physiologically-accurate patient-specific phantom model fabrication suitable for aortic dissection flow modeling.
B 型主动脉夹层是一种危及生命的医疗急症,可导致主动脉破裂。由于患者个体特征的复杂性,文献中仅报道了有限的关于夹层主动脉内血流模式的信息。利用患者特定的医学影像学数据进行体外建模可以补充对主动脉夹层的血流动力学理解。我们提出了一种新的方法来实现完全自动化的患者特定 B 型主动脉夹层模型制作。我们的框架使用了一种新的基于深度学习的负模制造分割方法。深度学习架构在一组 15 个独特的夹层受检者的计算机断层扫描数据集上进行了训练,并在 4 组针对制造的扫描数据集上进行了盲测。分割后,使用聚乙烯醇创建三维模型并进行打印。然后,这些模型用乳胶进行涂层,以创建符合患者特定解剖结构的顺应性虚拟模型。磁共振成像(MRI)结构图像证明了所提出的制造技术基于患者特定解剖结构创建内隔膜壁和撕裂的能力。体外实验表明,所制造的虚拟模型产生了生理上准确的压力结果。深度学习模型还显示了手动分割和自动分割之间的高相似性度量,其中 Dice 度量高达 0.86。基于深度学习的负模制造方法有助于制造经济、可重复且生理准确的患者特定虚拟模型,适用于主动脉夹层流动建模。