增强的nnU-Net结构用于头颈部肿瘤适应性放疗的自动MRI分割。

Jessica Kächele, Maximilian Zenk, Maximilian Rokuss, Constantin Ulrich, Tassilo Wald, Klaus H Maier-Hein
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引用次数: 0

摘要

MRI在头颈癌(HNC)放射治疗计划中的应用越来越多,这表明需要精确的肿瘤分割以提高治疗效果并减少副作用。这项工作介绍了由mic-dkfz团队为HNTS-MRG 2024挑战开发的分割模型,重点是在两个放疗(RT)阶段(RT前)和2-4周(RT中期)从MRI图像中自动分割HNC肿瘤。对于任务1(预rt分割),我们构建了nnU-Net框架,并用更大的残差编码器架构对其进行了增强。我们结合了广泛的数据增强,并通过在不同的公共3D医学成像数据集上预训练模型来应用迁移学习。对于任务2(中期rt分割),我们采用纵向方法,将注册的预rt图像及其分割作为附加输入集成到nnU-Net框架中。在测试集上,我们的模型在任务1和任务2中分别获得了81.2和72.7的平均聚合骰子相似系数(aggDSC)分数。特别是原发肿瘤(GTVp)的分割具有挑战性,并具有进一步优化的潜力。这些结果证明了将先进的架构、迁移学习和纵向数据集成相结合,在mri引导的适应性放射治疗中实现自动肿瘤分割的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced nnU-Net Architectures for Automated MRI Segmentation of Head and Neck Tumors in Adaptive Radiation Therapy.

The increasing utilization of MRI in radiation therapy planning for head and neck cancer (HNC) highlights the need for precise tumor segmentation to enhance treatment efficacy and reduce side effects. This work presents segmentation models developed for the HNTS-MRG 2024 challenge by the team mic-dkfz, focusing on automated segmentation of HNC tumors from MRI images at two radiotherapy (RT) stages: before (pre-RT) and 2-4 weeks into RT (mid-RT). For Task 1 (pre-RT segmentation), we built upon the nnU-Net framework, enhancing it with the larger Residual Encoder architecture. We incorporated extensive data augmentation and applied transfer learning by pre-training the model on a diverse set of public 3D medical imaging datasets. For Task 2 (mid-RT segmentation), we adopted a longitudinal approach by integrating registered pre-RT images and their segmentations as additional inputs into the nnU-Net framework. On the test set, our models achieved mean aggregated Dice Similarity Coefficient (aggDSC) scores of 81.2 for Task 1 and 72.7 for Task 2. Especially the primary tumor (GTVp) segmentation is challenging and presents potential for further optimization. These results demonstrate the effectiveness of combining advanced architectures, transfer learning, and longitudinal data integration for automated tumor segmentation in MRI-guided adaptive radiation therapy.

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