首页> 外文会议>International Workshop on Artificial Intelligence in Radiation Therapy;International Conference on Medical Image Computing and Computer Assisted Intervention >Using Supervised Learning and Guided Monte Carlo Tree Search for Beam Orientation Optimization in Radiation Therapy
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Using Supervised Learning and Guided Monte Carlo Tree Search for Beam Orientation Optimization in Radiation Therapy

机译:使用监督学习和引导蒙特卡罗树搜索进行放射治疗中的光束方向优化

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In clinical practice, the beam orientation selection process is either tediously done by the planner or based on specific protocols, typically yielding suboptimal and inefficient solutions. Column generation (CG) has been shown to produce superior plans compared to those of human selected beams, especially in highly non-coplanar plans such as An Radiotherapy. In this work, we applied AI to explore the decision space of beam orientation selection. At first, a supervised deep learning neural network (SL) is trained to mimic a CG generated policy. By iteratively using SL to predict the next beam, a set of beam orientations would be selected. However, iteratively using SL to select the next beam does not guarantee the plan's quality. Although the teacher policy, CG, is an efficient method, it is a greedy algorithm and still finds suboptimal solutions that are subject to improvement. To address this, a reinforcement learning application of guided Monte Carlo tree search (GTS) was implemented, coupled with SL to guide the traversal through the tree, and update the fitness values of its nodes. To test the feasibility of GTS, 13 test prostate cancer patients were evaluated. Our results show that we maintained a similar planning target volume (PTV) coverage within 2% error margin, reduce the organ at risk (OAR) mean dose, and in general improve the objective function value, while decreasing the computation time.
机译:在临床实践中,光束定向选择过程要么是由计划者单调乏味地完成,要么是基于特定的协议,通常会产生次优且效率低下的解决方案。与人类选择的光束相比,柱生成(CG)已显示出更好的计划,尤其是在高度非共面的计划(例如放射治疗)中。在这项工作中,我们应用AI来探索光束方向选择的决策空间。首先,对受监督的深度学习神经网络(SL)进行训练以模仿CG生成的策略。通过迭代地使用SL来预测下一个光束,将选择一组光束方向。但是,反复使用SL选择下一个光束并不能保证计划的质量。尽管教师策略CG是一种有效的方法,但它是一种贪婪的算法,仍然发现有待改进的次优解决方案。为了解决这个问题,实施了引导式蒙特卡洛树搜索(GTS)的强化学习应用程序,并结合了SL来引导遍历树的遍历并更新其节点的适应度值。为了测试GTS的可行性,评估了13位测试的前列腺癌患者。我们的结果表明,我们在2%的误差范围内保持了相似的计划目标体积(PTV)覆盖率,降低了风险器官(OAR)平均剂量,并总体上提高了目标函数值,同时减少了计算时间。

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