Zhu Lei, Xing Lei
Department of Radiation Oncology, Stanford University, Stanford, California 94305, USA.
Med Phys. 2009 May;36(5):1895-905. doi: 10.1118/1.3110163.
An intensity-modulated radiation therapy (IMRT) field is composed of a series of segmented beams. It is practically important to reduce the number of segments while maintaining the conformality of the final dose distribution. In this article, the authors quantify the complexity of an IMRT fluence map by introducing the concept of sparsity of fluence maps and formulate the inverse planning problem into a framework of compressing sensing. In this approach, the treatment planning is modeled as a multiobjective optimization problem, with one objective on the dose performance and the other on the sparsity of the resultant fluence maps. A Pareto frontier is calculated, and the achieved dose distributions associated with the Pareto efficient points are evaluated using clinical acceptance criteria. The clinically acceptable dose distribution with the smallest number of segments is chosen as the final solution. The method is demonstrated in the application of fixed-gantry IMRT on a prostate patient. The result shows that the total number of segments is greatly reduced while a satisfactory dose distribution is still achieved. With the focus on the sparsity of the optimal solution, the proposed method is distinct from the existing beamlet- or segment-based optimization algorithms.
调强放射治疗(IMRT)射野由一系列分段射束组成。在保持最终剂量分布适形性的同时减少段数具有实际重要意义。在本文中,作者通过引入注量图稀疏性的概念来量化IMRT注量图的复杂性,并将逆向计划问题构建为压缩感知框架。在这种方法中,治疗计划被建模为一个多目标优化问题,一个目标是剂量性能,另一个目标是所得注量图的稀疏性。计算帕累托前沿,并使用临床可接受标准评估与帕累托有效点相关的已实现剂量分布。选择具有最少段数的临床可接受剂量分布作为最终解决方案。该方法在固定机架IMRT应用于前列腺患者的过程中得到了验证。结果表明,段数大幅减少,同时仍能实现令人满意的剂量分布。该方法聚焦于最优解的稀疏性,与现有的基于子野或段的优化算法不同。