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深度强化学习在非小细胞肺癌分割放疗中的应用。

Deep Reinforcement Learning for Fractionated Radiotherapy in Non-Small Cell Lung Carcinoma.

机构信息

Unit of Computer Systems & Bioinformatics, Department of Engineering, University Campus Bio-Medico of Rome, Via Alvaro del Portillo 21, 00128, Roma, Italy.

Radiation Oncology, Department of Medicine, University Campus Bio-Medico of Rome, Via Alvaro del Portillo 21, 00128, Roma, Italy.

出版信息

Artif Intell Med. 2021 Sep;119:102137. doi: 10.1016/j.artmed.2021.102137. Epub 2021 Aug 15.

Abstract

Lung cancer is by far the leading cause of cancer death among both men and women. Radiation therapy is one of the main approaches to lung cancer treatment, and its planning is crucial for the therapy outcome. However, the current practice that uniformly delivers the dose does not take into account the patient-specific tumour features that may affect treatment success. Since radiation therapy is by its very nature a sequential procedure, Deep Reinforcement Learning (DRL) is a well-suited methodology to overcome this limitation. In this respect, in this work we present a DRL controller optimizing the daily dose fraction delivered to the patient on the basis of CT scans collected over time during the therapy, offering a personalized treatment not only for volume adaptation, as currently intended, but also for daily fractionation. Furthermore, this contribution introduces a virtual radiotherapy environment based on a set of ordinary differential equations modelling the tissue radiosensitivity by combining both the effect of the radiotherapy treatment and cell growth. Their parameters are estimated from CT scans routinely collected using the Particle Swarm Optimization algorithm. This permits the DRL to learn the optimal behaviour through an iterative trial and error process with the environment. We performed several experiments considering three rewards functions modelling treatment strategies with different tissue aggressiveness and two exploration strategies for the exploration-exploitation dilemma. The results show that our DRL approach can adapt to radiation therapy treatment, optimizing its behaviour according to the different reward functions and outperforming the current clinical practice.

摘要

肺癌是男性和女性癌症死亡的主要原因。放射治疗是肺癌治疗的主要方法之一,其计划对于治疗结果至关重要。然而,目前的统一剂量给药方法并没有考虑到可能影响治疗成功的患者特定肿瘤特征。由于放射治疗本质上是一个顺序过程,因此深度强化学习(DRL)是克服这一限制的一种合适方法。在这方面,在这项工作中,我们提出了一种 DRL 控制器,该控制器根据治疗过程中随时间收集的 CT 扫描,优化每天向患者提供的剂量分数,提供个性化治疗,不仅针对体积适应,如目前预期的那样,而且针对每日分割。此外,这项贡献引入了一个虚拟放射治疗环境,该环境基于一组常微分方程,通过结合放射治疗的效果和细胞生长来模拟组织放射敏感性。它们的参数是使用粒子群优化算法从常规收集的 CT 扫描中估计的。这使得 DRL 能够通过与环境的迭代试错过程来学习最佳行为。我们进行了几项实验,考虑了三种奖励功能,这些功能模拟了具有不同组织侵袭性的治疗策略,以及探索-开发困境的两种探索策略。结果表明,我们的 DRL 方法可以适应放射治疗,根据不同的奖励功能优化其行为,并优于当前的临床实践。

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