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粒子群优化算法在放射治疗直接孔径优化问题中的应用

Particle Swarm Optimisation Applied to the Direct Aperture Optimisation Problem in Radiation Therapy.

作者信息

Tello-Valenzuela Gonzalo, Moyano Mauricio, Cabrera-Guerrero Guillermo

机构信息

Escuela de Ingeniería Informática, Pontificia Universidad Católica de Valparaíso, Av. Brasil 2241, Valparaíso 2362807, Chile.

出版信息

Cancers (Basel). 2023 Oct 6;15(19):4868. doi: 10.3390/cancers15194868.

Abstract

Intensity modulated radiation therapy (IMRT) is one of the most used techniques for cancer treatment. Using a linear accelerator, it delivers radiation directly at the cancerogenic cells in the tumour, reducing the impact of the radiation on the organs surrounding the tumour. The complexity of the IMRT problem forces researchers to subdivide it into three sub-problems that are addressed sequentially. Using this sequential approach, we first need to find a beam angle configuration that will be the set of irradiation points (beam angles) over which the tumour radiation is delivered. This first problem is called the Beam Angle Optimisation (BAO) problem. Then, we must optimise the radiation intensity delivered from each angle to the tumour. This second problem is called the Fluence Map Optimisation (FMO) problem. Finally, we need to generate a set of apertures for each beam angle, making the intensities computed in the previous step deliverable. This third problem is called the Sequencing problem. Solving these three sub-problems sequentially allows clinicians to obtain a treatment plan that can be delivered from a physical point of view. However, the obtained treatment plans generally have too many apertures, resulting in long delivery times. One strategy to avoid this problem is the Direct Aperture Optimisation (DAO) problem. In the DAO problem, the idea is to merge the FMO and the Sequencing problem. Hence, optimising the radiation's intensities considers the physical constraints of the delivery process. The DAO problem is usually modelled as a Mixed-Integer optimisation problem and aims to determine the aperture shapes and their corresponding radiation intensities, considering the physical constraints imposed by the Multi-Leaf Collimator device. In solving the DAO problem, generating clinically acceptable treatments without additional sequencing steps to deliver to the patients is possible. In this work, we propose to solve the DAO problem using the well-known Particle Swarm Optimisation (PSO) algorithm. Our approach integrates the use of mathematical programming to optimise the intensities and utilizes PSO to optimise the aperture shapes. Additionally, we introduce a reparation heuristic to enhance aperture shapes with minimal impact on the treatment plan. We apply our proposed algorithm to prostate cancer cases and compare our results with those obtained in the sequential approach. Results show that the PSO obtains competitive results compared to the sequential approach, receiving less radiation time (beam on time) and using the available apertures with major efficiency.

摘要

调强放射治疗(IMRT)是癌症治疗中最常用的技术之一。它使用直线加速器,将辐射直接传递到肿瘤中的致癌细胞,减少辐射对肿瘤周围器官的影响。IMRT问题的复杂性迫使研究人员将其细分为三个依次解决的子问题。采用这种顺序方法,我们首先需要找到一个射束角度配置,它将是传递肿瘤辐射的一组照射点(射束角度)。这个第一个问题被称为射束角度优化(BAO)问题。然后,我们必须优化从每个角度传递到肿瘤的辐射强度。这个第二个问题被称为通量图优化(FMO)问题。最后,我们需要为每个射束角度生成一组孔径,使上一步计算出的强度能够传递。这个第三个问题被称为排序问题。依次解决这三个子问题使临床医生能够获得一个从物理角度可以传递的治疗计划。然而,所获得的治疗计划通常有太多的孔径,导致传递时间长。避免这个问题的一种策略是直接孔径优化(DAO)问题。在DAO问题中,其理念是将FMO和排序问题合并。因此,优化辐射强度时会考虑传递过程的物理约束。DAO问题通常被建模为一个混合整数优化问题,旨在确定孔径形状及其相应的辐射强度,同时考虑多叶准直器设备施加的物理约束。在解决DAO问题时,有可能在不进行额外排序步骤的情况下生成临床上可接受的治疗方案并提供给患者。在这项工作中,我们提议使用著名的粒子群优化(PSO)算法来解决DAO问题。我们的方法整合了使用数学规划来优化强度,并利用PSO来优化孔径形状。此外,我们引入了一种修复启发式方法,以在对治疗计划影响最小的情况下增强孔径形状。我们将我们提出的算法应用于前列腺癌病例,并将我们的结果与顺序方法获得的结果进行比较。结果表明,与顺序方法相比,PSO获得了有竞争力的结果,辐射时间(束流开启时间)更短,并且更高效地使用了可用孔径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2870/10571781/2be33b548bdb/cancers-15-04868-g001.jpg

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