Control time reduction using virtual source projection for treating a leg sarcoma with nonlinear perfusion

Purpose: Blood perfusion is a well-known factor that complicates accurate control of heating during hyperthermia treatments of cancer. Since blood perfusion varies as a function of time, temperature and location, determination of appropriate power deposition pattern from multiple antenna array Hyperthermia systems and heterogeneous tissues is a difficult control problem. Therefore, we investigate the applicability of a real-time eigenvalue model reduction (virtual source - VS) reduced-order controller for hyperthermic treatments of tissue with nonlinearly varying perfusion. Methods: We impose a piecewise linear approximation to a set of heat pulses, each consisting of a 1-min heat-up, followed by a 2-min cool-down. The controller is designed for feedback from magnetic resonance temperature images (MRTI) obtained after each iteration of heat pulses to adjust the projected optimal setting of antenna phase and magnitude for selective tumor heating. Simulated temperature patterns with additive Gaussian noise with a standard deviation of 1.0°C and zero mean were used as a surrogate for MRTI. Robustness tests were conducted numerically for a patient's right leg placed at the middle of a water bolus surrounded by a 10-antenna applicator driven at 150 MHz. Robustness tests included added discrepancies in perfusion, electrical and thermal properties, and patient model simplifications. Results: The controller improved selective tumor heating after an average of 4-9 iterative adjustments of power and phase, and fulfilled satisfactory therapeutic outcomes with approximately 75% of tumor volumes heated to temperatures >43°C while maintaining about 93% of healthy tissue volume < 41°C. Adequate sarcoma heating was realized by using only 2 to 3 VSs rather than a much larger number of control signals for all 10 antennas, which reduced the convergence time to only 4 to 9% of the original value. Conclusions: Using a piecewise linear approximation to a set of heat pulses in a VS reduced-order controller, the proposed algorithm greatly improves the efficiency of hyperthermic treatment of leg sarcomas while accommodating practical nonlinear variation of tissue properties such as perfusion.

[1]  P. Vaupel,et al.  Effect of hyperthermia on tumor blood flow. , 1984, Biorheology.

[2]  K.R. Demarest,et al.  Engineering Electromagnetics , 1997, IEEE Electrical Insulation Magazine.

[3]  R Vanderby,et al.  Temperature-dependent versus constant-rate blood perfusion modelling in ferromagnetic thermoseed hyperthermia: results with a model of the human prostate. , 1994, International journal of hyperthermia : the official journal of European Society for Hyperthermic Oncology, North American Hyperthermia Group.

[4]  J. Lagendijk,et al.  Towards patient specific thermal modelling of the prostate , 2006, Physics in Medicine and Biology.

[5]  J. Rhee,et al.  Implication of Blood Flow in Hyperthermic Treatment of Tumors , 1984, IEEE Transactions on Biomedical Engineering.

[6]  P Wust,et al.  A fast algorithm to find optimal controls of multiantenna applicators in regional hyperthermia. , 2001, Physics in medicine and biology.

[7]  Kung-Shan Cheng,et al.  Online feedback focusing algorithm for hyperthermia cancer treatment , 2007, International journal of hyperthermia : the official journal of European Society for Hyperthermic Oncology, North American Hyperthermia Group.

[8]  C Gabriel,et al.  The dielectric properties of biological tissues: I. Literature survey. , 1996, Physics in medicine and biology.

[9]  C. Song Effect of local hyperthermia on blood flow and microenvironment: a review. , 1984, Cancer research.

[10]  R. W. Lau,et al.  The dielectric properties of biological tissues: II. Measurements in the frequency range 10 Hz to 20 GHz. , 1996, Physics in medicine and biology.

[11]  M. Seebass,et al.  Impact of nonlinear heat transfer on temperature control in regional hyperthermia , 1999, IEEE Transactions on Biomedical Engineering.

[12]  M. Kowalski,et al.  A temperature-based feedback control system for electromagnetic phased-array hyperthermia: theory and simulation. , 2003, Physics in medicine and biology.

[13]  Kung-Shan Cheng,et al.  Fast temperature optimization of multi-source hyperthermia applicators with reduced-order modeling of ‘virtual sources’ , 2008, Physics in medicine and biology.

[14]  Kung-Shan Cheng,et al.  Blood perfusion and thermal conduction effects in Gaussian beam, minimum time single-pulse thermal therapies. , 2005, Medical physics.

[15]  R. W. Lau,et al.  The dielectric properties of biological tissues: III. Parametric models for the dielectric spectrum of tissues. , 1996, Physics in medicine and biology.

[16]  H. H. Penns Analysis of tissue and arterial blood temperatures in the resting human forearm , 1948 .