前列腺VMAT治疗方案的自动启发式优化

C. Fiandra, A. Alparone, E. Gallio, C. Vecchi, G. Balestra, S. Bartoncini, S. Rosati, R. Ragona, U. Ricardi
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引用次数: 4

摘要

目的:探讨遗传算法在自动治疗计划中的应用。方法:采用基于遗传算法(GA)的Python脚本编写前列腺肿瘤VMAT治疗方案。该脚本在RayStation治疗计划系统中使用Python代码实现。研究人员考虑了两种不同的临床处方:39个分量的78 Gy用于计划目标体积(第一组),26个分量的同时综合增强(前列腺床70.2 Gy,精囊61.1 Gy)(第二组)。该脚本根据GA自动优化PTV和OARs的剂量。并与Monaco TPS (M)和Pinnacle3 (AP)的Auto-Planning模块制作的相应方案进行了比较。通过PlanIQ软件的总体评分(TS)对这些计划进行评估,包括靶覆盖和OARs的保留,以及由放射肿瘤学家进行的临床评分(CS)。结果:1组AP、GA、M的TS平均值分别为150.6±30.7、146.3±36.1、137.4±35.7。第二组AP、GA和M的TS平均值分别为163.5±16.8、163.4±24.7和162.9±16.6,差异无统计学意义。在CS方面,第1组和第2组的5名患者中有4名患者的GA值最高。结论:遗传方法在前列腺VMAT计划生成中是可行的,在头颈部和直肠等其他解剖部位的研究正在进行中。
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Automated Heuristic Optimization of Prostate VMAT Treatment Planning
Purpose: To investigate a genetic algorithm approach to automatic treatment planning. Methods: A Python script based on genetic algorithm (GA) was implemented for VMAT treatment planning of prostate tumor. The script was implemented in RayStation treatment planning system using Python code. Two different clinical prescriptions were considered: 78 Gy prescribed to planning target volume in 39 fractions (GROUP 1) and simultaneous integrated boost (70.2 Gy to prostate bed and 61.1 Gy to seminal vesicles) in 26 fractions (GROUP 2). The script automatically optimizes doses to PTV and OARs according to GA. A comparison with corresponding plans created with Monaco TPS (M) and Auto-Planning module of Pinnacle3 (AP) was carried out. The plans were evaluated with a total score (TS) of PlanIQ software in terms of target coverage and sparing of OARs as well as clinical score (CS) performed by a Radiation Oncologist. Results: In GROUP 1, mean value of TS were 150.6 ± 30.7, 146.3 ± 36.1 and 137.4 ± 35.7 for AP, GA and M respectively. For GROUP 2, mean value for TS were 163.5 ± 16.8, 163.4 ± 24.7 and 162.9 ± 16.6 for AP, GA and M respectively with no significance differences. In terms of CS, the highest value has been attributed to GA in four patients out of five for both GROUP 1 and 2. Conclusions: Genetic approach is practicable for prostate VMAT plan generation and studies are underway in other anatomical sites such as Head and Neck and Rectum.
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