Enhancing Head and Neck Tumor Segmentation in MRI: The Impact of Image Preprocessing and Model Ensembling.

Mehdi Astaraki, Iuliana Toma-Dasu
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Abstract

The adoption of online adaptive MR-guided radiotherapy (MRgRT) for Head and Neck Cancer (HNC) treatment faces challenges due to the complexity of manual HNC tumor delineation. This study focused on the problem of HNC tumor segmentation and investigated the effects of different preprocessing techniques, robust segmentation models, and ensembling steps on segmentation accuracy to propose an optimal solution. We contributed to the MICCAI Head and Neck Tumor Segmentation for MR-Guided Applications (HNTS-MRG) challenge which contains segmentation of HNC tumors in Task1) pre-RT and Task2) mid-RT MR images. In the internal validation phase, the most accurate results were achieved by ensembling two models trained on maximally cropped and contrast-enhanced images which yielded average volumetric Dice scores of (0.680, 0.785) and (0.493, 0.810) for (GTVp, GTVn) on pre-RT and mid-RT volumes. For the final testing phase, the models were submitted under the team's name of "Stockholm_Trio" and the overall segmentation performance achieved aggregated Dice scores of (0.795, 0.849) and (0.553, 0.865) for pre- and mid-RT tasks, respectively. The developed models are available at https://github.com/Astarakee/miccai24.

增强MRI头颈部肿瘤分割:图像预处理和模型集成的影响。
由于手工绘制HNC肿瘤的复杂性,采用在线自适应磁共振引导放疗(MRgRT)治疗头颈癌(HNC)面临挑战。本研究针对HNC肿瘤分割问题,研究了不同预处理技术、鲁棒分割模型和集成步骤对分割精度的影响,并提出了最优解。我们参与了MICCAI头颈部肿瘤分割MR引导应用(HNTS-MRG)挑战,其中包括在Task1) rt前和Task2) rt中期MR图像中分割HNC肿瘤。在内部验证阶段,最准确的结果是通过集成在最大裁剪和对比度增强图像上训练的两个模型获得的,在rt前和rt中期体积上(GTVp, GTVn)的平均体积Dice分数为(0.680,0.785)和(0.493,0.810)。在最后的测试阶段,模型以“Stockholm_Trio”的团队名称提交,总体分割性能分别为rt前和rt中期任务实现了汇总Dice得分(0.795,0.849)和(0.553,0.865)。开发的模型可在https://github.com/Astarakee/miccai24上获得。
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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