Publications by authors named "Leonardo Geronzi"

Article Synopsis
  • Predicting the growth of ascending aortic aneurysms (AscAA) is complex due to factors like aortic shape, tissue behavior, and blood flow.
  • The study uses a flow-structural growth and remodeling (FSG) model to simulate AscAA growth, starting with an initial tissue injury and using blood flow data from simulations to guide the model.
  • The findings suggest that adjusting model parameters, such as the direction of blood flow and tissue tension, significantly affects growth patterns, and this approach could be used for further patient-specific predictions in clinical settings.
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Introduction: The pre-operative planning and intra-operative navigation of the endovascular aneurysm repair (EVAR) procedure are currently challenged by the aortic deformations that occur due to the insertion of a stiff guidewire. Hence, a fast and accurate predictive tool may help clinicians in the decision-making process and during surgical navigation, potentially reducing the radiations and contrast dose. To this aim, we generated a reduced order model (ROM) trained on parametric finite element simulations of the aortic wall-guidewire interaction.

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Ascending aorta simulations provide insight into patient-specific hemodynamic conditions. Numerous studies have assessed fluid biomarkers which show a potential to aid clinicians in the diagnosis process. Unfortunately, there exists a large disparity in the computational methodology used to model turbulence and viscosity.

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Objective: We propose a procedure for calibrating 4 parameters governing the mechanical boundary conditions (BCs) of a thoracic aorta (TA) model derived from one patient with ascending aortic aneurysm. The BCs reproduce the visco-elastic structural support provided by the soft tissue and the spine and allow for the inclusion of the heart motion effect.

Methods: We first segment the TA from magnetic resonance imaging (MRI) angiography and derive the heart motion by tracking the aortic annulus from cine-MRI.

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Article Synopsis
  • The study investigates the prediction of ascending aortic aneurysm growth using local and global shape features.
  • It includes 70 patients with aneurysms, analyzing 3D data to compute various shape features and develop regression models for growth prediction.
  • Results indicate that global shape features, particularly from PLS analysis, significantly enhance prediction accuracy, revealing that larger aneurysms near the heart tend to grow faster.
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The current guidelines for the ascending aortic aneurysm (AsAA) treatment recommend surgery mainly according to the maximum diameter assessment. This criterion has already proven to be often inefficient in identifying patients at high risk of aneurysm growth and rupture. In this study, we propose a method to compute a set of local shape features that, in addition to the maximum diameter , are intended to improve the classification performances for the ascending aortic aneurysm growth risk assessment.

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Objective: In the management of the aortic aneurysm, 4D flow magnetic resonance Imaging provides valuable information for the computation of new biomarkers using computational fluid dynamics (CFD). However, accurate segmentation of the aorta is required. Thus, our objective is to evaluate the performance of two automatic segmentation methods on the calculation of aortic wall pressure.

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