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The 'Juggler' Algorithm: A Hybrid Deformable Image Registration Algorithm for Adaptive Radiotherapy

机译:“变戏法者”算法:用于自适应放射治疗的混合可变形图像配准算法

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Fast deformable registration can potentially facilitate the clinical implementation of adaptive radiation therapy (ART), which allows for daily organ deformations not accounted for in radiotherapy treatment planning, which typically utilizes a static organ model, to be incorporated into the fractionated treatment. Existing deformable registration algorithms typically utilize a specific diffusion model, and require a large number of iterations to achieve convergence. This limits the online applications of deformable image registration for clinical radiotherapy, such as daily patient setup variations involving organ deformation, where high registration precision is required. We propose a hybrid algorithm, the "Juggler", based on a multi-diffusion model to achieve fast convergence. The Juggler achieves fast convergence by applying two different diffusion models: ⅰ) one being optimized quickly for matching high gradient features, i.e. bony anatomies; and ⅱ) the other being optimized for further matching low gradient features, i.e. soft tissue. The regulation of these 2 competing criteria is achieved using a threshold of a similarity measure, such as cross correlation or mutual information. A multi-resolution scheme was applied for faster convergence involving large deformations. Comparisons of the Juggler algorithm were carried out with demons method, accelerated demons method, and free-form deformable registration using 4D CT lung imaging from 5 patients. Based on comparisons of difference images and similarity measure computations, the Juggler produced a superior registration result. It achieved the desired convergence within 30 iterations, and typically required <90sec to register two 3D image sets of size 256x256x40 using a 3.2 GHz PC. This hybrid registration strategy successfully incorporates the benefits of different diffusion models into a single unified model.
机译:快速的可变形配准可潜在地促进适应性放射治疗(ART)的临床实施,该技术允许将日常放射线器官变形纳入放射治疗计划中,而放射治疗计划通常利用静态器官模型将其纳入分级治疗。现有的可变形配准算法通常利用特定的扩散模型,并且需要大量迭代才能实现收敛。这限制了可变形图像配准在在线放射治疗中的在线应用,例如涉及器官变形的每日患者设置变化,在这些场合需要较高的配准精度。我们提出了一种基于多重扩散模型的混合算法“ Juggler”,以实现快速收敛。杂耍演员通过应用两种不同的扩散模型来实现快速收敛:ⅰ)一种被快速优化以匹配高梯度特征,即骨骼解剖结构; ⅱ)另一个被优化以进一步匹配低梯度特征,即软组织。这两个竞争标准的调节是使用相似性度量(例如互相关或互信息)的阈值实现的。多分辨率方案适用于涉及大变形的更快收敛。使用5例患者的4D CT肺部成像,使用恶魔法,加速恶魔法和自由形式的可变形配准对Juggler算法进行了比较。基于差异图像的比较和相似性度量计算,Juggler产生了出色的配准结果。它在30次迭代中实现了所需的收敛,通常需要90秒以内,才能使用3.2 GHz PC注册两个大小为256x256x40的3D图像集。这种混合注册策略成功地将不同扩散模型的优势整合到一个统一的模型中。

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