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"Finite element" Keyword-tagged Publications:

Title Authors PubMed ID
1 3D bioheat transfer mapping reveals nanomagnetic particles effectiveness in radiofrequency hyperthermia breast cancer treatment comparing to experimental study Kavousi M; Saadatmand E; Masoumbeigi M; Mahdavi R; Riyahi Alam N; 39557504
PHYSICS
2 Investigation of Macroscopic Mechanical Behavior of Magnetorheological Elastomers under Shear Deformation Using Microscale Representative Volume Element Approach Abdollahi I; Sedaghati R; 38794567
ENCS
3 Design Optimization of a Hybrid-Driven Soft Surgical Robot with Biomimetic Constraints Roshanfar M; Dargahi J; Hooshiar A; 38275456
ENCS
4 On the soft tissue ultrasound elastography using FEM based inversion approach Eshaghinia SS; Taghvaeipour A; Aghdam MM; Rivaz H; 38240143
ENCS
5 The influence of inter-bubble spacing on the resonance response of ultrasound contrast agent microbubbles Yusefi H; Helfield B; 36223708
BIOLOGY
6 Optical Fiber Array Sensor for Force Estimation and Localization in TAVI Procedure: Design, Modeling, Analysis and Validation Bandari N; Dargahi J; Packirisamy M; 34450813
ENCS
7 Finite Element Modelling of a Reflection Differential Split-D Eddy Current Probe Scanning Surface Notches. Mohseni E, França DR, Viens M, Xie WF, Xu B 32214578
ENCS
8 Adaptive Neuro-fuzzy Inference System Trained for Sizing Semi-elliptical Notches Scanned by Eddy Currents. Mohseni E, Viens M, Xie WF 31929668
ENCS
9 Influence of Head Tissue Conductivity Uncertainties on EEG Dipole Reconstruction. Vorwerk J, Aydin Ü, Wolters CH, Butson CR 31231178
PERFORM
10 Zoomed MRI Guided by Combined EEG/MEG Source Analysis: A Multimodal Approach for Optimizing Presurgical Epilepsy Work-up and its Application in a Multi-focal Epilepsy Patient Case Study. Aydin Ü, Rampp S, Wollbrink A, Kugel H, Cho J-, Knösche TR, Grova C, Wellmer J, Wolters CH 28510905
PERFORM

 

Title:On the soft tissue ultrasound elastography using FEM based inversion approach
Authors:Eshaghinia SSTaghvaeipour AAghdam MMRivaz H
Link:https://pubmed.ncbi.nlm.nih.gov/38240143/
DOI:10.1177/09544119231224674
Publication:Proceedings of the Institution of Mechanical Engineers. Part H, Journal of engineering in medicine
Keywords:Elastographycancerfinite element methodinverse problemtissue mechanics
PMID:38240143 Category: Date Added:2024-01-19
Dept Affiliation: ENCS
1 Mechanical Engineering Department, Amirkabir University of Technology (Tehran Polytechnic), Tehran, Iran.
2 Department of Electrical and Computer Engineering, Concordia University, Montreal, QC, Canada.

Description:

Elastography is a medical imaging modality that enables visualization of tissue stiffness. It involves quasi-static or harmonic mechanical stimulation of the tissue to generate a displacement field which is used as input in an inversion algorithm to reconstruct tissue elastic modulus. This paper considers quasi-static stimulation and presents a novel inversion technique for elastic modulus reconstruction. The technique follows an inverse finite element framework. Reconstructed elastic modulus maps produced in this technique do not depend on the initial guess, while it is computationally less involved than iterative reconstruction approaches. The method was first evaluated using simulated data (in-silico) where modulus reconstruction's sensitivity to displacement noise and elastic modulus was assessed. To demonstrate the method's performance, displacement fields of two tissue mimicking phantoms determined using three different motion tracking techniques were used as input to the developed elastography method to reconstruct the distribution of relative elastic modulus of the inclusion to background tissue. In the next stage, the relative elastic modulus of three clinical cases pertaining to liver cancer patient were determined. The obtained results demonstrate reasonably high elastic modulus reconstruction accuracy in comparison with similar direct methods. Also it is associated with reduced computational cost in comparison with iterative techniques, which suffer from convergence and uniqueness issues, following the same formulation concept. Moreover, in comparison with other methods which need initial guess, the presented method does not require initial guess while it is easy to understand and implement.





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