Predicted SAR/temperature changes induced by phase-amplitude steering are minimally affected by uncertainties in tissue properties: a basis for robust on-line adaptive hyperthermia treatment planning

被引:0
作者
Kok, H. P. [1 ,2 ]
Crezee, J. [1 ,2 ]
机构
[1] Amsterdam UMC Locat Univ Amsterdam, Radiat Oncol, Amsterdam, Netherlands
[2] Canc Ctr Amsterdam, Treatment & Qual Life, Canc Biol & Immunol, Amsterdam, Netherlands
关键词
Locoregional hyperthermia; hyperthermia treatment planning; Plan2Heat; Adapt2Heat; RF heating; on-line adaptive planning; REGIONAL HYPERTHERMIA; DEEP HYPERTHERMIA; CERVICAL-CANCER; LOCOREGIONAL HYPERTHERMIA; LOCAL HYPERTHERMIA; BLOOD-FLOW; OPTIMIZATION; SAR; DISTRIBUTIONS; APPLICATOR;
D O I
10.1080/02656736.2025.2483433
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
BackgroundReliability of absolute specific absorption rate (SAR)/temperature levels predicted by treatment planning is strongly affected by tissue parameter uncertainties. Therefore, regular re-optimization to suppress hot spots can accidentally induce new hot spots elsewhere. Adaptive planning methods to avoid this problem re-optimize with respect to the current predicted 3D-distribution. This strategy is robust if reliability of predicted SAR/temperature changes (i.e., increases/decreases) after phase-amplitude adjustments is minimally affected by parameter uncertainties; this work evaluated this robustness.MethodsWe validated the basic concept in an inhomogeneous phantom, followed by a patient model. Uncertainties in electrical conductivity, permittivity and perfusion were mimicked by simulations using 100 random parameter samples from normal distributions. Reliability of predicted SAR/temperature increase/decrease after phase-amplitude adjustments was evaluated. Next, correlations between measured and simulated SAR and SAR changes were determined for phase settings evaluated at the treatment start for a treatment series. Finally, practical use in an adaptive workflow was illustrated.ResultsLocal SAR/temperature increases/decreases after phase-amplitude adjustments can be predicted accurately. For the phantom, the measured 28.5% SAR decrease was predicted accurately(28.5 +/- 0.7%). In the patient model, predicted SAR/temperature changes were typically accurate within a few percent. For the treatment series, correlations between measured and simulated (relative) SAR changes were much better(R2=0.70-0.82) than for absolute SAR levels(R2=0.29). Predictions of steering effects during treatment corresponded qualitatively with measurements/observations.ConclusionPredictions of SAR/temperature increases/decreases induced by phase-amplitude steering are hardly affected by tissue parameter uncertainties. On-line adaptive planning based on predicted changes is thus robust to effectively support clinical steering strategies.
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页数:17
相关论文
共 81 条
[11]   Implementation of treatment planning in the routine clinical procedure of regional hyperthermia treatment of cervical cancer: An overview and the Rotterdam experience [J].
Canters, Richard A. M. ;
Paulides, Margarethus M. ;
Franckena, Martine F. ;
van der Zee, Jacoba ;
van Rhoon, Gerard C. .
INTERNATIONAL JOURNAL OF HYPERTHERMIA, 2012, 28 (06) :570-581
[12]   Online feedback focusing algorithm for hyperthermia cancer treatment [J].
Cheng, Kung-Shan ;
Stakhursky, Vadim ;
Stauffer, Paul ;
Dewhirst, Mark ;
Das, Shiva K. .
INTERNATIONAL JOURNAL OF HYPERTHERMIA, 2007, 23 (07) :539-554
[13]   Fast temperature optimization of multi-source hyperthermia applicators with reduced-order modeling of 'virtual sources' [J].
Cheng, Kung-Shan ;
Stakhursky, Vadim ;
Craciunescu, Oana I. ;
Stauffer, Paul ;
Dewhirst, Mark ;
Das, Shiva K. .
PHYSICS IN MEDICINE AND BIOLOGY, 2008, 53 (06) :1619-1635
[14]   Computational techniques for fast hyperthermia temperature optimization [J].
Das, SK ;
Clegg, ST ;
Samulski, TV .
MEDICAL PHYSICS, 1999, 26 (02) :319-328
[15]   Optimization in hyperthermia treatment planning: The impact of tissue perfusion uncertainty [J].
de Greef, M. ;
Kok, H. P. ;
Correia, D. ;
Bel, A. ;
Crezee, J. .
MEDICAL PHYSICS, 2010, 37 (09) :4540-4550
[16]   Optimization of temperature distributions for regional hyperthermia based on a nonlinear heat transfer model [J].
Erdmann, B ;
Lang, J ;
Seebass, M .
BIOTRANSPORT: HEAT AND MASS TRANSFER IN LIVING SYSTEMS, 1998, 858 :36-46
[17]  
ESHO Taskgroup Committee, 1992, Treatment planning and modelling in hyperthermia, a task group report of the European Society for Hyperthermic Oncology
[18]   Clinical implementation of hyperthermia treatment planning guided steering: A cross over trial to assess its current contribution to treatment quality [J].
Franckena, Martine ;
Canters, Richard ;
Termorshuizen, F. ;
Van Der Zee, Jacoba ;
Van Rhoon, Gerard .
INTERNATIONAL JOURNAL OF HYPERTHERMIA, 2010, 26 (02) :145-157
[19]   Hyperthermia dose-effect relationship in 420 patients with cervical cancer treated with combined radiotherapy and hyperthermia [J].
Franckena, Martine ;
Fatehi, Daryoush ;
de Bruijne, Maarten ;
Canters, Richard A. M. ;
van Norden, Yvette ;
Mens, Jan Willem ;
van Rhoon, Gerard C. ;
van der Zee, Jacoba .
EUROPEAN JOURNAL OF CANCER, 2009, 45 (11) :1969-1978
[20]   The dielectric properties of biological tissues .1. Literature survey [J].
Gabriel, C ;
Gabriel, S ;
Corthout, E .
PHYSICS IN MEDICINE AND BIOLOGY, 1996, 41 (11) :2231-2249