肿瘤放射治疗剂量预测方法综述

Xiaoyan Kui , Fang Liu , Min Yang , Hao Wang , Canwei Liu , Dan Huang , Qinsong Li , Liming Chen , Beiji Zou
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引用次数: 0

摘要

放射治疗(RT)是目前临床上治疗肿瘤的主要方法。在开始治疗前,精确划分计划靶区(PTV)和危险器官(OAR)至关重要。这种分割和剂量预测算法有助于剂量分布的计算和评估,最终有助于治疗计划的完善。为了全面了解当前剂量预测方法的研究情况,我们精心收集并总结了 2017 年至 2023 年间发表的论文。首先,我们介绍了严谨的文献检索方法,对汇集的论文进行了统计分析,并详细概述了该领域常用且一贯采用的评价指标。然后,我们重点对剂量预测方法的演变轨迹进行了详细调查。这一全面调查涵盖了从传统的基于知识的规划(KBP)方法到新兴的基于深度学习的方法,其中包括输入改进方法、基于 U-Net 的方法、基于 GAN 的方法以及其他基于深度学习的方法。在整个论述过程中,我们仔细概述了这些不同方法固有的优势和局限性。最后,我们总结了该领域面临的主要挑战,并提出了几个有效解决这些挑战的前瞻性研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A review of dose prediction methods for tumor radiation therapy

A review of dose prediction methods for tumor radiation therapy

Radiation therapy (RT) is currently the main clinical treatment of tumors. Before treatment initiation, precise delineation of the planned target volume (PTV) and organs at risk (OAR) is essential. This segmentation, together with the dose prediction algorithm, aids in the calculation and evaluation of the dose distribution, and ultimately in the refinement of the treatment plan. To provide a comprehensive view of the current landscape of research on dose prediction methods, we meticulously collected and summarized papers published between 2017 and 2023. First, we present our rigorous literature search approach, providing a statistical analysis of the pooled papers and an elaborate overview of the evaluation metrics that are commonly and consistently employed in this domain. Then, we focus on a detailed survey of the evolutionary trajectories of dose prediction methods. This comprehensive investigation covers a spectrum ranging from traditional Knowledge-Based Planning (KBP) methods to emerging deep learning-based methods, which include input improvement methods, U-Net-based methods, GAN-based methods, and other deep learning-based methods. Throughout this exposition, we have carefully outlined the strengths and limitations inherent in these various approaches. Finally, we conclude with a summary of the primary challenges facing the field and propose several prospective research directions to effectively address them.

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