Deep Learning for Longitudinal Gross Tumor Volume Segmentation in MRI-Guided Adaptive Radiotherapy for Head and Neck Cancer.

Xin Tie, Weijie Chen, Zachary Huemann, Brayden Schott, Nuohao Liu, Tyler J Bradshaw
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Abstract

Accurate segmentation of gross tumor volume (GTV) is essential for effective MRI-guided adaptive radiotherapy (MRgART) in head and neck cancer. However, manual segmentation of the GTV over the course of therapy is time-consuming and prone to interobserver variability. Deep learning (DL) has the potential to overcome these challenges by automatically delineating GTVs. In this study, our team, UW LAIR, tackled the challenges of both pre-radiotherapy (pre-RT) (Task 1) and mid-radiotherapy (mid-RT) (Task 2) tumor volume segmentation. To this end, we developed a series of DL models for longitudinal GTV segmentation. The backbone of our models for both tasks was SegResNet with deep supervision. For Task 1, we trained the model using a combined dataset of pre-RT and mid-RT MRI data, which resulted in the improved aggregated Dice similarity coefficient (DSCagg) on a hold-out internal testing set compared to models trained solely on pre-RT MRI data. In Task 2, we introduced mask-aware attention modules, enabling pre-RT GTV masks to influence intermediate features learned from mid-RT data. This attention-based approach yielded slight improvements over the baseline method, which concatenated mid-RT MRI with pre-RT GTV masks as input. In the final testing phase, the ensemble of 10 pre-RT segmentation models achieved an average DSCagg of 0.794, with 0.745 for primary GTV (GTVp) and 0.844 for metastatic lymph nodes (GTVn) in Task 1. For Task 2, the ensemble of 10 mid-RT segmentation models attained an average DSCagg of 0.733, with 0.607 for GTVp and 0.859 for GTVn, leading us to achieve 1st place. In summary, we presented a collection of DL models that could facilitate GTV segmentation in MRgART, offering the potential to streamline radiation oncology workflows.

深度学习在mri引导的头颈部肿瘤自适应放疗中的纵向总体肿瘤体积分割。
准确分割总肿瘤体积(GTV)是有效的mri引导下头颈部肿瘤自适应放疗(MRgART)的必要条件。然而,在治疗过程中手动分割GTV是费时的,而且容易引起观察者之间的差异。深度学习(DL)有潜力通过自动描绘gtv来克服这些挑战。在这项研究中,我们的团队UW LAIR解决了放疗前(pre-RT)(任务1)和放疗中(mid-RT)(任务2)肿瘤体积分割的挑战。为此,我们开发了一系列用于纵向GTV分割的深度学习模型。这两个任务的模型的支柱是具有深度监督的SegResNet。对于任务1,我们使用前rt和中rt MRI数据的组合数据集训练模型,与仅使用前rt MRI数据训练的模型相比,这导致了在保留内部测试集上的聚合骰子相似系数(DSCagg)的改进。在任务2中,我们引入了掩码感知的注意力模块,使pre-RT GTV掩码能够影响从中期rt数据中学习到的中间特征。这种基于注意力的方法比基线方法产生了轻微的改进,基线方法将rt中期MRI与rt前GTV掩模连接作为输入。在最后的测试阶段,10个预rt分割模型的集合平均DSCagg为0.794,其中任务1中原发性GTV (GTVp)为0.745,转移性淋巴结(GTVn)为0.844。在Task 2中,10个mid-RT分割模型的集合平均DSCagg为0.733,其中GTVp为0.607,GTVn为0.859,我们获得了第一名。总之,我们提出了一组可以促进MRgART中GTV分割的DL模型,提供了简化放射肿瘤学工作流程的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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