Document detail
ID

oai:pubmedcentral.nih.gov:1060...

Topic
Article
Author
Bini, Fabiano Pica, Andrada Marinozzi, Franco Giusti, Alessandro Leoncini, Andrea Trimboli, Pierpaolo
Langue
en
Editor

MDPI

Category

Bioengineering

Year

2023

listing date

11/28/2023

Keywords
power mm thyroid target treatment rf ablation
Metrics

Abstract

Radiofrequency (RF) ablation represents an efficient strategy to reduce the volume of thyroid nodules.

In this study, a finite element model was developed with the aim of optimizing RF parameters, e.g., input power and treatment duration, in order to achieve the target volume reduction rate (VRR) for a thyroid nodule.

RF ablation is modelled as a coupled electro-thermal problem wherein the electric field is applied to induce tissue heating.

The electric problem is solved with the Laplace equation, the temperature distribution is estimated with the Pennes bioheat equation, and the thermal damage is evaluated using the Arrhenius equation.

The optimization model is applied to RF electrode with different active tip lengths in the interval from 5 mm to 40 mm at the 5 mm step.

For each case, we also explored the influence of tumour blood perfusion rate on RF ablation outcomes.

The model highlights that longer active tips are more efficient as they require lesser power and shorter treatment time to reach the target VRR.

Moreover, this condition is characterized by a reduced transversal ablation zone.

In addition, a higher blood perfusion increases the heat dispersion, requiring a different combination of RF power and time treatment to achieve the target VRR.

The model may contribute to an improvement in patient-specific RF ablation treatment.

Bini, Fabiano,Pica, Andrada,Marinozzi, Franco,Giusti, Alessandro,Leoncini, Andrea,Trimboli, Pierpaolo, 2023, Model-Optimizing Radiofrequency Parameters of 3D Finite Element Analysis for Ablation of Benign Thyroid Nodules, MDPI

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