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Emanuele Vignali

Researcher at University of Pisa

Publications -  29
Citations -  359

Emanuele Vignali is an academic researcher from University of Pisa. The author has contributed to research in topics: Medicine & Computer science. The author has an hindex of 5, co-authored 16 publications receiving 150 citations.

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4D Printing of a Bioinspired Microneedle Array with Backward‐Facing Barbs for Enhanced Tissue Adhesion

TL;DR: Improved tissue adhesion of the bioinspired MN allows for more stable and robust performance for drug delivery, biofluid collection, and biosensing.
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A 3D printed melt-compounded antibiotic loaded thermoplastic polyurethane heart valve ring design: an integrated framework of experimental material tests and numerical simulations

TL;DR: In this article, the authors discuss valve pathologies such as valve stenosis, regurgitation, failure and similar, for which usually a valve substitution is performed. But valve substitution may not always be beneficial.
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Computational fluid dynamic study for aTAA hemodynamics: an integrated image-based and RBF mesh morphing approach.

TL;DR: A novel framework for the fluid dynamics analysis of healthy subjects and patients affected by ascending thoracic aorta aneurysm (aTAA) and the proposed integrated approach of RBF morphing technique and CFD simulation for aTAA was demonstrated.
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3D Printing in Modern Cardiology.

TL;DR: 3D printed models could be useful in interventional planning, although prospective studies with comprehensive and clinically meaningful endpoints are required to demonstrate the clinical utility.
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Modeling biomechanical interaction between soft tissue and soft robotic instruments: importance of constitutive anisotropic hyperelastic formulations:

TL;DR: A minimally invasive aortic valve positioning process through a previously designed soft robot was simulated, and the adoption of the weighting process for the fitting was successful, as it permitted an accurate prediction in the region of interest through models with less parameters.