Medical Robotics, University of Lübeck, Ratzeburger Allee 160, D-23562 Lübeck, Germany.
Artif Intell Med. 2011 Jun;52(2):67-75. doi: 10.1016/j.artmed.2011.04.008. Epub 2011 Jun 16.
Robotic radiosurgery uses the kinematic flexibility of a robotic arm to target tumors and lesions from many different directions. This approach allows to focus the dose to the target region while sparing healthy surrounding tissue. However, the flexibility in the placement of treatment beams is also a challenge during treatment planning. We study an approach to make the search for treatment beams more efficient by considering previous treatment plans.
Conventionally, a beam generation heuristic based on randomly selected candidate beams has been proven to be most robust in clinical practice. However, for prevalent types of cancer similarities in patient anatomy and dose prescription exist. We present a case-based approach that introduces a problem specific measure of similarity and allows to generate candidate beams from a database of previous treatment plans. Similarity between treatments is established based on projections of the organs and structures considered during planning, and the desired dose distribution. Solving the inverse planning problem a subset of treatment beams is determined and adapted to the new clinical case.
Preliminary experimental results indicate that the new approach leads to comparable plan quality for substantially fewer candidate beams. For two prostate cases, the dose homogeneity in the target region and the sparing of critical structures is similar for plans based on 400 and 600 candidate beams generated with the novel and the conventional method, respectively. However, the runtime for solving the inverse planning problem for could be reduced by up to 47%, i.e., from approximately 19 min to less than 11 min.
We have shown the feasibility of case-based beam generation for robotic radiosurgery. For prevalent clinical cases with similar anatomy the cased-based approach could substantially reduce planning time while maintaining high plan quality.
机器人放射外科手术利用机器人手臂的运动灵活性,从多个不同方向瞄准肿瘤和病变。这种方法可以将剂量集中在靶区,同时保护周围健康的组织。然而,在治疗计划中,治疗束的放置灵活性也是一个挑战。我们研究了一种通过考虑以前的治疗计划来提高治疗束搜索效率的方法。
传统上,基于随机选择候选束的束生成启发式方法已被证明在临床实践中最为稳健。然而,对于常见类型的癌症,患者解剖结构和剂量处方存在相似性。我们提出了一种基于病例的方法,该方法引入了一种特定于问题的相似性度量,并允许从以前的治疗计划数据库中生成候选束。治疗之间的相似性是基于规划过程中考虑的器官和结构的投影以及所需的剂量分布来建立的。通过解决逆规划问题,确定并适应新临床病例的治疗束子集。
初步实验结果表明,该新方法可在显著减少候选束数量的情况下,产生具有可比质量的计划。对于两个前列腺病例,基于新方法和传统方法生成的 400 和 600 个候选束的计划,靶区的剂量均匀性和关键结构的保护效果相似。然而,逆规划问题的求解时间可以减少 47%,即从大约 19 分钟减少到不到 11 分钟。
我们已经证明了基于病例的机器人放射外科束生成的可行性。对于具有相似解剖结构的常见临床病例,基于病例的方法可以在保持高计划质量的同时,大大减少规划时间。