基于mri的头颈部肿瘤分割,采用15倍交叉验证集合。

Frank N Mol, Luuk van der Hoek, Baoqiang Ma, Bharath Chowdhary Nagam, Nanna M Sijtsema, Lisanne V van Dijk, Kerstin Bunte, Rifka Vlijm, Peter M A van Ooijen
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引用次数: 0

摘要

与CT和PET相比,MRI提供的优越的软组织分化可以更准确地分割肿瘤,潜在地增强适应性放疗治疗计划。头颈部肿瘤分割mr引导应用挑战(HNTSMRG-24)包括两个任务:在(1)放疗前(预rt)和(2)放疗中(中rt)获得的t2加权MRI体积上分割原发性总肿瘤体积(GTVp)和转移性淋巴结(GTVn)。训练数据集由150例患者的数据组成,包括rt前、中期和rt前的MRI体积,注册到相应的rt中期体积。每个MRI体积都伴随着一个标签掩码,由至少三位专家的独立注释合并而成。对于这两项任务,我们建议采用nnU-Net V2框架,使用15倍交叉验证集合,而不是标准的5倍,以增加鲁棒性和可变性。对于pre-RT分割,我们用相应的中期rt数据增强初始训练数据(150个pre-RT体积和掩码)。对于中rt分割,我们选择了三通道输入,除了中rt MRI体积外,还包括注册的前rt MRI体积和相应的掩码。在盲测试集上计算GTVp和GTVn的聚合骰子相似系数的平均值,并确定所提出方法的质量。这些指标分别确定两个任务的方法的最终排名。我们团队提出的方法RUG_UMCG的最终盲测试(50例患者)结果显示,任务1的汇总骰子相似系数为0.81 (GTVp为0.77,GTVn为0.85),任务2的汇总骰子相似系数为0.70 (GTVp为0.54,GTVn为0.86)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI-Based Head and Neck Tumor Segmentation Using nnU-Net with 15-Fold Cross-Validation Ensemble.

The superior soft tissue differentiation provided by MRI may enable more accurate tumor segmentation compared to CT and PET, potentially enhancing adaptive radiotherapy treatment planning. The Head and Neck Tumor Segmentation for MR-Guided Applications challenge (HNTSMRG-24) comprises two tasks: segmentation of primary gross tumor volume (GTVp) and metastatic lymph nodes (GTVn) on T2-weighted MRI volumes obtained at (1) pre-radiotherapy (pre-RT) and (2) mid-radiotherapy (mid-RT). The training dataset consists of data from 150 patients, including MRI volumes of pre-RT, mid-RT, and pre-RT registered to the corresponding mid-RT volumes. Each MRI volume is accompanied by a label mask, generated by merging independent annotations from a minimum of three experts. For both tasks, we propose adopting the nnU-Net V2 framework by the use of a 15-fold cross-validation ensemble instead of the standard number of 5 folds for increased robustness and variability. For pre-RT segmentation, we augmented the initial training data (150 pre-RT volumes and masks) with the corresponding mid-RT data. For mid-RT segmentation, we opted for a three-channel input, which, in addition to the mid-RT MRI volume, comprises the registered pre-RT MRI volume and the corresponding mask. The mean of the aggregated Dice Similarity Coefficient for GTVp and GTVn is computed on a blind test set and determines the quality of the proposed methods. These metrics determine the final ranking of methods for both tasks separately. The final blind testing (50 patients) of the methods proposed by our team, RUG_UMCG, resulted in an aggregated Dice Similarity Coefficient of 0.81 (0.77 for GTVp and 0.85 for GTVn) for Task 1 and 0.70 (0.54 for GTVp and 0.86 for GTVn) for Task 2.

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