基于三维全卷积神经网络的脑器官自动分割用于放射治疗计划。

Hongyi Duanmu, Jinkoo Kim, Praitayini Kanakaraj, Andrew Wang, John Joshua, Jun Kong, Fusheng Wang
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引用次数: 8

摘要

三维器官轮廓是放射治疗治疗计划的重要步骤,用于器官剂量估计以及优化计划以减少危险器官的剂量。手工轮廓是耗时的,其临床间的可变性对研究结果有不利影响。这些器官在大小上也有很大的差异——体积上的差异可达两个数量级。在本文中,我们提出了一种新颖的基于3D全卷积神经网络(FCNN)的脑器官自动分割方法BrainSegNet。BrainSegNet采用多分辨率路径方法,并使用加权损失函数来解决器官大小大变异性的主要挑战。我们用46个脑CT图像集和相应的专家器官轮廓作为参考来评估我们的方法。与LiviaNet和V-Net相比,BrainSegNet在分割细小或薄的器官(如交叉、视神经和耳蜗)方面具有优越的性能,在分割大型器官方面也优于这些方法。BrainSegNet可以将一个体积的人工轮廓时间从一个小时减少到不到两分钟,在提高放射治疗工作流程效率方面具有很大的潜力。
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AUTOMATIC BRAIN ORGAN SEGMENTATION WITH 3D FULLY CONVOLUTIONAL NEURAL NETWORK FOR RADIATION THERAPY TREATMENT PLANNING.

3D organ contouring is an essential step in radiation therapy treatment planning for organ dose estimation as well as for optimizing plans to reduce organs-at-risk doses. Manual contouring is time-consuming and its inter-clinician variability adversely affects the outcomes study. Such organs also vary dramatically on sizes - up to two orders of magnitude difference in volumes. In this paper, we present BrainSegNet, a novel 3D fully convolutional neural network (FCNN) based approach for automatic segmentation of brain organs. BrainSegNet takes a multiple resolution paths approach and uses a weighted loss function to solve the major challenge of the large variability in organ sizes. We evaluated our approach with a dataset of 46 Brain CT image volumes with corresponding expert organ contours as reference. Compared with those of LiviaNet and V-Net, BrainSegNet has a superior performance in segmenting tiny or thin organs, such as chiasm, optic nerves, and cochlea, and outperforms these methods in segmenting large organs as well. BrainSegNet can reduce the manual contouring time of a volume from an hour to less than two minutes, and holds high potential to improve the efficiency of radiation therapy workflow.

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