论文标题

解决基于深度学习的头部和颈器官细分的类不平衡问题

Tackling the Class Imbalance Problem of Deep Learning Based Head and Neck Organ Segmentation

论文作者

Tappeiner, Elias, Welk, Martin, Schubert, Rainer

论文摘要

对有风险的器官(OAR)的分割是对图像引导放射治疗的癌症治疗所需的前提。因此,分割任务的自动化具有很高的临床相关性。基于深度学习(DL)的医学图像细分目前是最成功的方法,但背景类别的过度侵蚀和解剖学上给出的器官尺寸差异,这在头部和颈部(HAN)区域最为严重。为了解决HAN区域特定的类不平衡问题,我们首先优化了基于引入的类不平衡测量值的当前最佳性能通用分段框架NNU-NET的斑块大小,其次,引入了类自适应骰子损失,以进一步补偿高度不平衡的设置。 Both the patch-size and the loss function are parameters with direct influence on the class imbalance and their optimization leads to a 3\% increase of the Dice score and 22% reduction of the 95% Hausdorff distance compared to the baseline, finally reaching $0.8\pm0.15$ and $3.17\pm1.7$ mm for the segmentation of seven HAN organs using a single and simple neural network.贴片大小的优化和类自适应骰子损失都可以在当前基于DL的分段方法中整合,并且可以增加类不平衡分段任务的性能。

The segmentation of organs at risk (OAR) is a required precondition for the cancer treatment with image guided radiation therapy. The automation of the segmentation task is therefore of high clinical relevance. Deep Learning (DL) based medical image segmentation is currently the most successful approach, but suffers from the over-presence of the background class and the anatomically given organ size difference, which is most severe in the head and neck (HAN) area. To tackle the HAN area specific class imbalance problem we first optimize the patch-size of the currently best performing general purpose segmentation framework, the nnU-Net, based on the introduced class imbalance measurement, and second, introduce the class adaptive Dice loss to further compensate for the highly imbalanced setting. Both the patch-size and the loss function are parameters with direct influence on the class imbalance and their optimization leads to a 3\% increase of the Dice score and 22% reduction of the 95% Hausdorff distance compared to the baseline, finally reaching $0.8\pm0.15$ and $3.17\pm1.7$ mm for the segmentation of seven HAN organs using a single and simple neural network. The patch-size optimization and the class adaptive Dice loss are both simply integrable in current DL based segmentation approaches and allow to increase the performance for class imbalanced segmentation tasks.

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