Li Yongjie, Yao Jonathan, Yao Dezhong
School of Life Science and Technology, University of Electronic Science and Technology of China, Chengdu 610054, People's Republic of China.
Phys Med Biol. 2004 May 21;49(10):1915-32. doi: 10.1088/0031-9155/49/10/007.
The selection of suitable beam angles in external beam radiotherapy is at present generally based upon the experience of the human planner. The requirement to automatically select beam angles is particularly highlighted in intensity-modulated radiation therapy (IMRT), in which a smaller number of modulated beams is hoped to be used, in comparison with conformal radiotherapy. It has been proved by many researchers that the selection of suitable beam angles is most valuable for a plan with a small number of beams (< or = 5). In this paper an efficient method is presented to investigate how to improve the dose distributions by selecting suitable coplanar beam angles. In our automatic beam angle selection (ABAS) algorithm, the optimal coplanar beam angles correspond to the lowest objective function value of the dose distributions calculated using the intensity-modulated maps of this group of candidate beams. Due to the complexity of the problem and the large search space involved, the selection of beam angles and the optimization of intensity maps are treated as two separate processes and implemented iteratively. A genetic algorithm (GA) incorporated with an immunity operation is used to select suitable beam angles, and a conjugate gradient (CG) method is used to quickly optimize intensity maps for each selected beam combination based on a dose-based objective function. A pencil-beam-based three-dimensional (3D) full scatter convolution (FSC) algorithm is employed for the dose calculation. Two simulated cases with obvious optimal beam angles are used to verify the validity of the presented technique, and a more complicated case simulating a prostate tumour and two clinical cases are employed to test the efficiency of ABAS. The results show that ABAS is valid and efficient and can improve the dose distributions within a clinically acceptable computation time.
目前,外照射放疗中合适射束角度的选择通常基于放疗计划师的经验。在调强放射治疗(IMRT)中,自动选择射束角度的需求尤为突出,与适形放疗相比,IMRT希望使用较少数量的调强射束。许多研究人员已经证明,对于射束数量较少(≤5个)的计划,选择合适的射束角度非常有价值。本文提出了一种有效的方法来研究如何通过选择合适的共面射束角度来改善剂量分布。在我们的自动射束角度选择(ABAS)算法中,最优共面射束角度对应于使用这组候选射束的调强映射计算出的剂量分布的最低目标函数值。由于问题的复杂性和涉及的搜索空间较大,射束角度的选择和强度映射的优化被视为两个独立的过程并迭代实现。结合免疫操作的遗传算法(GA)用于选择合适的射束角度,共轭梯度(CG)方法用于基于剂量目标函数为每个选定的射束组合快速优化强度映射。剂量计算采用基于笔形束的三维(3D)全散射卷积(FSC)算法。使用两个具有明显最优射束角度的模拟病例来验证所提出技术的有效性,并使用一个模拟前列腺肿瘤的更复杂病例和两个临床病例来测试ABAS的效率。结果表明,ABAS是有效且高效的,并且可以在临床可接受的计算时间内改善剂量分布。