| Literature DB >> 30048917 |
Mahsa Ghaffari1, Lea Sanchez1, Guoren Xu1, Ali Alaraj2, Xiaohong Joe Zhou3, Fady T Charbel4, Andreas A Linninger5.
Abstract
Accurate subject-specific vascular network reconstruction is a critical task for the hemodynamic analysis of cerebroarterial circulation. Vascular skeletonization and computational mesh generation for large sections of cerebrovascular trees from magnetic resonance angiography (MRA) is an error-prone, operator-dependent, and very time-consuming task. Validation of reconstructed computational models is essential to ascertain their accuracy and precision, which directly relates to the confidence of CFD computations performed on these meshes. The aim of this study is to generate an imaging segmentation pipeline to validate and quantify the spatial accuracy of computational models of subject-specific cerebral arterial trees. We used a recently introduced parametric structured mesh (PSM) generation method to automatically reconstruct six subject-specific cerebral arterial trees containing 1364 vessels and 571 bifurcations. By automatically extracting sampling frames for all vascular segments and bifurcations, we quantify the spatial accuracy of PSM against the original MRA images. Our comprehensive study correlates lumen area, pixel-based statistical analysis, area overlap and centerline accuracy measurements. In addition, we propose a new metric, the pointwise offset surface distance metric (PSD), to quantify the spatial alignment between dimensions of reconstructed arteries and bifurcations with in-vivo data with the ability to quantify the over- and under-approximation of the reconstructed models. Accurate reconstruction of vascular trees can a practical process tool for morphological analysis of large patient data banks, such as medical record files in hospitals, or subject-specific hemodynamic simulations of the cerebral arterial circulation.Entities:
Keywords: Cerebral arterial tree; Hausdorff distance; Mesh validation; Morphological analysis; Parametric structured mesh; Pointwise surface distance; Shape similarity index
Mesh:
Year: 2018 PMID: 30048917 PMCID: PMC6181589 DOI: 10.1016/j.compbiomed.2018.07.004
Source DB: PubMed Journal: Comput Biol Med ISSN: 0010-4825 Impact factor: 4.589