Title :
Real-Time Predictive Surgical Control for Cancer Treatment Using Laser Ablation [Life Science]
Author :
Feng, Yusheng ; Fuentes, David
Author_Institution :
Comput. Bioeng. & Control Lab., Univ. of Texas at San Antonio, San Antonio, TX, USA
fDate :
5/1/2011 12:00:00 AM
Abstract :
This article presents an over view on real-time predictive control for laser surgery based on the computational framework that consists of components for numerical implementation of the nonlinear heterogeneous Pennes equation of bioheat transfer including model calibration, remote data transfer, model coregistration, finite element meshing and parallel solution algorithms, cellular damage prediction, and optimal laser control. The goal is to develop a predictive computational tool that may be used by surgeons during a minimally invasive hyper/ hypothermia procedure to destroy cancerous tumors. The tool includes various components of computer models in the computational framework that controls the thermal source and makes a prediction of the treatment outcomes. Simultaneously, model parameters are updated to increase the accuracy based on the real-time intraoperative imaging data from in vivo temperature measurement. Current results show that it is important to consider the heterogeneity in the patient-specific cancerous region and the surrounding domain in order to the accuracy of prediction. By solving the corresponding inverse problem, predicted results can be improved by the experimental data, and capture well-known behavior of decreased perfusion in the damage region and hyperperfusion surrounding the damage region.
Keywords :
cancer; laser ablation; nonlinear equations; patient treatment; predictive control; surgery; bioheat transfer; cancer treatment; cancerous tumors; cellular damage prediction; finite element meshing; laser ablation; laser surgery; minimally invasive hyperthermia procedure; minimally invasive hypothermia procedure; nonlinear heterogeneous Pennes equation; optimal laser control; realtime predictive control; Computational modeling; Data models; Laser modes; Laser surgery; Real time systems; Surgery; Temperature measurement;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2011.940419