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WE-E-213CD-02:基于高斯加权多图谱的头颈部放射治疗计划分割

WE-E-213CD-02: Gaussian Weighted Multi-Atlas Based Segmentation for Head and Neck Radiotherapy Planning.

作者信息

Peroni M, Sharp G C, Golland P, Baroni G

机构信息

Department of Bioengineering, Politecnico di Milano, Milano, Italy.

Department of Radiation Oncology, Massachusetts General Hospital, Boston, MA.

出版信息

Med Phys. 2012 Jun;39(6Part27):3959. doi: 10.1118/1.4736158.

Abstract

PURPOSE

To develop a multi-atlas segmentation strategy for IMRT head and neck therapy planning.

METHODS

The method was tested on thirty-one head and neck simulation CTs, without demographic or pathology pre-clustering. We compare Fixed Number (FN) and Thresholding (TH) selection (based on normalized mutual information ranking) of the atlases to be included for current patient segmentation. Next step is a pairwise demons Deformable Registration (DR) onto current patient CT. DR was extended to automatically compensate for patient different field of view. Propagated labels are combined according to a Gaussian Weighted (GW) fusion rule, adapted to poor soft tissues contrast. Agreement with manual segmentation was quantified in terms of Dice Similarity Coefficient (DSC). Selection methods, number of atlases used, as well as GW, average and majority voting fusion were discriminated by means of Friedman Test (a=5%). Experimental tuning of the algorithm parameters was performed on five patients, deriving an optimal configuration for each structure.

RESULTS

DSC reduction was not significant when ten or more atlases are selected, whereas DSC for single most similar atlas selection is 10% lower in median. DSC of FN selection rule were significantly higher for most structures. Tubular structures may benefit from computing average contour rather than looking at the singular voxel contribution, whereas the best performing strategy for all other structures was GW. When half database is selected, final median DSC were 0.86, 0.80, 0.51, 0.81, 0.69 and 0.79 for mandible, spine, optical nerves, eyes, parotids and brainstem respectively.

CONCLUSION

We developed an efficient algorithm for multiatlas based segmentation of planning CT volumes, based on DR and GW. FN selection of database atlases is foreseen to increase computational efficiency. The absence of clinical pre-clustering and specific imaging protocol on database subjects makes the results closer to real clinical application. "Progetto Roberto Rocca" funded by the Fondazione Fratelli Agostino and Enrico Rocca, Italy.

摘要

目的

开发一种用于调强放射治疗(IMRT)头颈部治疗计划的多图谱分割策略。

方法

该方法在31例头颈部模拟CT上进行测试,未进行人口统计学或病理学预聚类。我们比较了为当前患者分割而纳入的图谱的固定数量(FN)和阈值化(TH)选择(基于归一化互信息排名)。下一步是将成对的魔鬼可变形配准(DR)应用于当前患者的CT。DR被扩展以自动补偿患者不同的视野。根据高斯加权(GW)融合规则组合传播的标签,以适应软组织对比度差的情况。通过骰子相似系数(DSC)对与手动分割的一致性进行量化。通过Friedman检验(α = 5%)区分选择方法、使用的图谱数量以及GW、平均和多数投票融合。在五名患者上对算法参数进行实验调整,为每个结构得出最佳配置。

结果

当选择10个或更多图谱时,DSC降低不显著,而单个最相似图谱选择的DSC中位数低10%。对于大多数结构,FN选择规则的DSC显著更高。管状结构可能受益于计算平均轮廓而不是查看单个体素贡献,而对于所有其他结构,表现最佳的策略是GW。当选择一半数据库时,下颌骨、脊柱、视神经、眼睛、腮腺和脑干的最终DSC中位数分别为0.86、0.80、0.51、0.81、0.69和0.79。

结论

我们基于DR和GW开发了一种用于计划CT体积的多图谱分割的高效算法。预计通过FN选择数据库图谱可提高计算效率。数据库受试者缺乏临床预聚类和特定成像协议使结果更接近实际临床应用。由意大利Fondazione Fratelli Agostino和Enrico Rocca资助的“Progetto Roberto Rocca”。

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