Yu Y, Schell M C, Zhang J B
Department of Radiation Oncology, University of Rochester Medical Center, New York 14642-8647, USA.
Med Phys. 1997 Nov;24(11):1742-50. doi: 10.1118/1.597951.
Treatment planning for stereotactic radiosurgery and fractionated radiotherapy is currently a labor intensive, operator-dependent process. Many degrees of freedom exist to make rigorous optimization intractable except by computationally intelligent techniques. The quality of a given plan is determined by an aggregate of clinical objectives, most of which are subject to competing tradeoffs. In this work, we present an autonomous scheme that couples decision theoretic guidance with a genetic algorithm for optimization. Ordinal ranking among a population of viable treatment plans is based on a generalized distance metric, which promotes a decreasing hyperfrontier of the efficient solution set. The solution set is driven toward efficiency by the genetic algorithm, which uses the tournament selection mechanism based on the ordinal ranking. Goals and satisficing conditions can be defined to signal the ultimate and the minimum achievement levels in a given objective. A conventionally challenging case in radiosurgery was used to demonstrate the practical utility and the problem-solving power of the decision theoretic genetic algorithm. Treatment plans with one isocenter and four isocenters were derived under the autonomous scheme and compared to the actual treatment plan manually optimized by the expert planner. Quality assessment based on dose-volume histograms and normal tissue complication probabilities suggested that computational optimization could be driven to offer varying degrees of dosimetric improvement over a human-guided optimization effort. Furthermore, it was possible to achieve a high degree of isodose conformity to the target volume in computational optimization by increasing the degree of freedom in the treatment parameters. The time taken to derive an efficient planning solution was comparable and usually shorter than in the manual planning process, and can be scaled down almost linearly with the number of processors. Overall, the autonomous genetic algorithm scheme was found to be powerful and versatile as a computationally intelligent counterpart to human-guided strategies in treatment optimization for stereotactic radiosurgery and radiotherapy.
立体定向放射外科和分次放射治疗的治疗计划目前是一个劳动密集型、依赖操作人员的过程。存在许多自由度使得除了通过计算智能技术外,难以进行严格的优化。给定计划的质量由一系列临床目标决定,其中大多数目标存在相互竞争的权衡。在这项工作中,我们提出了一种自主方案,该方案将决策理论指导与遗传算法相结合进行优化。可行治疗计划群体中的序数排名基于广义距离度量,这促进了有效解集的递减超前沿。遗传算法使用基于序数排名的锦标赛选择机制将解集推向高效。可以定义目标和满意条件,以表明给定目标中的最终和最低达成水平。使用放射外科中一个传统上具有挑战性的病例来证明决策理论遗传算法的实际效用和解决问题的能力。在自主方案下得出了具有一个等中心和四个等中心的治疗计划,并与由专家规划师手动优化的实际治疗计划进行了比较。基于剂量体积直方图和正常组织并发症概率的质量评估表明,与人工指导的优化工作相比,计算优化可以在不同程度上提供剂量学改善。此外,通过增加治疗参数的自由度,在计算优化中有可能实现与靶体积高度的等剂量适形。得出有效规划解决方案所需的时间相当,并且通常比手动规划过程短,并且几乎可以与处理器数量成线性比例缩小。总体而言,发现自主遗传算法方案作为立体定向放射外科和放射治疗治疗优化中人工指导策略的计算智能对应物,功能强大且用途广泛。