Unkelbach Jan, Oelfke Uwe
Department of Medical Physics in Radiation Therapy, Deutsches Krebsforschungszentrum, Im Neuenheimer Feld 280, 69120 Heidelberg, Germany.
Med Phys. 2005 Aug;32(8):2471-83. doi: 10.1118/1.1929167.
We investigate an off-line strategy to incorporate inter fraction organ movements in IMRT treatment planning. Nowadays, imaging modalities located in the treatment room allow for several CT scans of a patient during the course of treatment. These multiple CT scans can be used to estimate a probability distribution of possible patient geometries. This probability distribution can subsequently be used to calculate the expectation value of the delivered dose distribution. In order to incorporate organ movements into the treatment planning process, it was suggested that inverse planning could be based on that probability distribution of patient geometries instead of a single snapshot. However, it was shown that a straightforward optimization of the expectation value of the dose may be insufficient since the expected dose distribution is related to several uncertainties: first, this probability distribution has to be estimated from only a few images. And second, the distribution is only sparsely sampled over the treatment course due to a finite number of fractions. In order to obtain a robust treatment plan these uncertainties should be considered and minimized in the inverse planning process. In the current paper, we calculate a 3D variance distribution in addition to the expectation value of the dose distribution which are simultaneously optimized. The variance is used as a surrogate to quantify the associated risks of a treatment plan. The feasibility of this approach is demonstrated for clinical data of prostate patients. Different scenarios of dose expectation values and corresponding variances are discussed.
我们研究了一种离线策略,用于在调强放射治疗(IMRT)治疗计划中纳入分次间器官运动。如今,位于治疗室的成像模态允许在治疗过程中对患者进行多次CT扫描。这些多次CT扫描可用于估计患者可能几何形状的概率分布。该概率分布随后可用于计算所交付剂量分布的期望值。为了将器官运动纳入治疗计划过程,有人建议逆向计划可以基于患者几何形状的概率分布而不是单个快照。然而,结果表明,直接优化剂量的期望值可能是不够的,因为预期剂量分布与几个不确定性因素有关:首先,这种概率分布必须仅从少数图像中估计。其次,由于分次数量有限,该分布在整个治疗过程中只是稀疏采样。为了获得稳健的治疗计划,这些不确定性因素应在逆向计划过程中加以考虑并最小化。在本文中,除了同时优化剂量分布的期望值外,我们还计算了三维方差分布。方差用作量化治疗计划相关风险的替代指标。针对前列腺癌患者的临床数据证明了该方法的可行性。讨论了剂量期望值和相应方差的不同情况。