4 research outputs found
Longitudinal wall shear stress evaluation using centerline projection approach in the numerical simulations of the patient-based carotid artery
In this numerical study areas of the carotid bifurcation and of a distal
stenosis in the internal carotid artery are closely observed to evaluate the
patient's current risks of ischemic stroke. An indicator for the vessel wall
defects is the stress the blood is exerting on the surrounding vessel tissue,
expressed standardly by the amplitude of the wall shear stress vector (WSS) and
its oscillatory shear index. In contrast, our orientation-based shear
evaluation detects negative shear stresses corresponding with reversal flow
appearing in low shear areas. In our investigations of longitudinal component
of the wall shear vector, tangential vectors aligned longitudinally with the
vessel are necessary. However, as a result of stenosed regions and imaging
segmentation techniques from patients' CTA scans, the geometry model's mesh is
non-smooth on its surface areas and the automatically generated tangential
vector field is discontinuous and multi-directional, making an interpretation
of the orientation-based risk indicators unreliable. We improve the evaluation
of longitudinal shear stress by applying the projection of the vessel's
center-line to the surface to construct smooth tangetial field aligned
longitudinaly with the vessel. We validate our approach for the longitudinal
WSS component and the corresponding oscillatory index by comparing them to
results obtained using automatically generated tangents in both rigid and
elastic vessel modeling as well as to amplitude based indicators. The major
benefit of our WSS evaluation based on its longitudinal component for the
cardiovascular risk assessment is the detection of negative WSS indicating
persitent reversal flow. This is impossible in the case of the amplitude-based
WSS
Mitral valve flattening and parameter mapping for patient-specific valve diagnosis
Purpose!#!Intensive planning and analysis from echocardiography are a crucial step before reconstructive surgeries are applied to malfunctioning mitral valves. Volume visualizations of echocardiographic data are often used in clinical routine. However, they lack a clear visualization of the crucial factors for decision making.!##!Methods!#!We build upon patient-specific mitral valve surface models segmented from echocardiography that represent the valve's geometry, but suffer from self-occlusions due to complex 3D shape. We transfer these to 2D maps by unfolding their geometry, resulting in a novel 2D representation that maintains anatomical resemblance to the 3D geometry. It can be visualized together with color mappings and presented to physicians to diagnose the pathology in one gaze without the need for further scene interaction. Furthermore, it facilitates the computation of a Pathology Score, which can be used for diagnosis support.!##!Results!#!Quality and effectiveness of the proposed methods were evaluated through a user survey conducted with domain experts. We assessed pathology detection accuracy using 3D valve models in comparison with the novel visualizations. Classification accuracy increased by 5.3% across all tested valves and by 10.0% for prolapsed valves. Further, the participants' understanding of the relation between 3D and 2D views was evaluated. The Pathology Score is found to have potential to support discriminating pathologic valves from normal valves.!##!Conclusions!#!In summary, our survey shows that pathology detection can be improved in comparison with simple 3D surface visualizations of the mitral valve. The correspondence between the 2D and 3D representations is comprehensible, and color-coded pathophysiological magnitudes further support the clinical assessment