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Evaluation of atlas fusion strategies for segmentation of head and neck lymph nodes for radiotherapy planning

机译:评估图谱融合策略分割头颈部淋巴结以进行放射治疗计划

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摘要

Accurate segmentation of lymph nodes in head and neck (H&N) CT images is essential for the radiotherapy planning of the H&N cancer. Atlas-based segmentation methods are widely used for the automated segmentation of such structures. Multi-atlas approaches are proven to be more accurate and robust than using a single atlas. We have recently proposed a general Markov random field (MRF)-based framework that can perform edge-preserving smoothing of the labels at the time of fusing the labels itself. There are three main contributions of this paper: First, we reformulate the “shape based averaging” (SBA) fusion method to fit into the general MRF-based fusion framework. Second, we evaluate the following fusion algorithms for the segmentation of H&N lymph nodes: (i) STAPLE, (ii) SBA, (iii) SBA+MRF, (iv) majority voting (MV), (v) MV+MRF, (vi) global weighted voting (GWV), (vii) GWV+MRF, (viii) local weighted voting (LWV) and (ix) LWV+MRF. Finally, we also study the effect varying the number of atlases on the performance of the above algorithms.
机译:头颈(H&N)CT图像中淋巴结的准确分割对于H&N癌症的放射治疗计划至关重要。基于图集的分割方法已广泛用于此类结构的自动分割。事实证明,多图集方法比使用单个图集更准确,更可靠。最近,我们提出了一种基于通用马尔可夫随机场(MRF)的框架,该框架可以在融合标签本身时对标签进行边缘保留的平滑处理。本文的三个主要贡献是:首先,我们重新制定了“基于形状的平均”(SBA)融合方法,以适合基于MRF的通用融合框架。其次,我们评估以下用于H&N淋巴结分割的融合算法:(i)STAPLE,(ii)SBA,(iii)SBA + MRF,(iv)多数投票(MV),(v)MV + MRF,( vi)全球加权投票(GWV),(vii)GWV + MRF,(viii)本地加权投票(LWV)和(ix)LWV + MRF。最后,我们还研究了改变图集数量对上述算法性能的影响。

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