Jiang Shengpeng, Xue Yi, Li Ming, Yang Chengwen, Zhang Daguang, Wang Qingxin, Wang Jing, Chen Jie, You Jinqiang, Yuan Zhiyong, Wang Xiaochun, Zhang Xiaodong, Wang Wei
Department of Radiation Ocology, Tianjin Medical University Cancer Institute and Hospital, National Clinical Research Center for Cancer, Key Laboratory of Cancer Prevention and Therapy, Tianjin's Clinical Research Center for Cancer, Key Laboratory of Breast Cancer Prevention and Therapy, Tianjin Medical University, Ministry of Education, Tianjin, China.
Department of Radiation Physics, University of Texas MD Anderson Cancer Center, Houston, TX, United States.
Front Oncol. 2022 Apr 25;12:871871. doi: 10.3389/fonc.2022.871871. eCollection 2022.
As a useful tool, artificial intelligence has surpassed human beings in many fields. Artificial intelligence-based automated radiotherapy planning strategies have been proposed in lots of cancer sites and are the future of treatment planning. Postmastectomy radiotherapy (PMRT) decreases local recurrence probability and improves overall survival, and volumetric modulated arc therapy (VMAT) has gradually become the mainstream technique of radiotherapy. However, there are few customized effective automated treatment planning schemes for postmastectomy VMAT so far. This study investigated an artificial intelligence based automated planning using the MD Anderson Cancer Center AutoPlan (MDAP) system and Pinnacle treatment planning system (TPS), to effectively generate high-quality postmastectomy VMAT plans. In this study, 20 patients treated with PMRT were retrospectively investigated, including 10 left- and 10 right-sided postmastectomy patients. Chest wall and the supraclavicular, subclavicular, and internal mammary regions were delineated as target volume by radiation oncologists, and 50 Gy in 25 fractions was prescribed. Organs at risk including heart, spinal cord, left lung, right lung, and lungs were also contoured. All patients were planned with VMAT using 2 arcs. An optimization objective template was summarized based on the dose of clinical plans and requirements from oncologists. Several treatment planning parameters were investigated using an artificial intelligence algorithm, including collimation angle, jaw collimator mode, gantry spacing resolution (GSR), and number of start optimization times. The treatment planning parameters with the best performance or that were most preferred were applied to the automated treatment planning method. Dosimetric indexes of automated treatment plans (autoplans) and manual clinical plans were compared by the paired t-test. The jaw tracking mode, 2-degree GSR, and 3 rounds of optimization were selected in all the PMRT autoplans. Additionally, the 350- and 10-degree collimation angles were selected in the left- and right-sided PMRT autoplans, respectively. The uniformity index and conformity index of the planning target volume, mean heart dose, spinal cord D, mean lung dose, and V and V of the lung of autoplans were significantly better compared with the manual clinical plans. An artificial intelligence-based automated treatment planning method for postmastectomy VMAT has been developed to ensure plan quality and improve clinical efficiency.
作为一种有用的工具,人工智能在许多领域已经超越了人类。基于人工智能的自动化放射治疗计划策略已在许多癌症部位被提出,并且是治疗计划的未来发展方向。乳房切除术后放疗(PMRT)可降低局部复发概率并提高总生存率,容积调强弧形放疗(VMAT)已逐渐成为放射治疗的主流技术。然而,到目前为止,针对乳房切除术后VMAT几乎没有定制的有效的自动化治疗计划方案。本研究使用MD安德森癌症中心自动计划(MDAP)系统和Pinnacle治疗计划系统(TPS)研究了基于人工智能的自动化计划,以有效地生成高质量的乳房切除术后VMAT计划。在本研究中,对20例行PMRT治疗的患者进行了回顾性研究,包括10例左侧和10例右侧乳房切除术后患者。放射肿瘤学家将胸壁以及锁骨上、锁骨下和内乳区域划定为靶区体积,并规定分25次给予50 Gy剂量。还勾勒出包括心脏、脊髓、左肺、右肺和双肺在内的危及器官。所有患者均采用双弧VMAT计划。根据临床计划的剂量和肿瘤学家的要求总结了一个优化目标模板。使用人工智能算法研究了几个治疗计划参数,包括准直角度、颌部准直器模式、机架间距分辨率(GSR)和起始优化次数。将性能最佳或最优选的治疗计划参数应用于自动化治疗计划方法。通过配对t检验比较自动化治疗计划(自动计划)和手动临床计划的剂量学指标。在所有PMRT自动计划中均选择了颌部跟踪模式、2度GSR和3轮优化。此外,在左侧和右侧PMRT自动计划中分别选择了350度和10度的准直角度。与手动临床计划相比,自动计划的计划靶区体积的均匀性指数和适形指数、平均心脏剂量、脊髓D、平均肺剂量以及肺的V和V均明显更好。已开发出一种基于人工智能的乳房切除术后VMAT自动化治疗计划方法,以确保计划质量并提高临床效率。