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Inception Modules Enhance Brain Tumor Segmentation

机译:初始模块增强脑肿瘤分割

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摘要

Magnetic resonance images of brain tumors are routinely used in neuro-oncology clinics for diagnosis, treatment planning, and post-treatment tumor surveillance. Currently, physicians spend considerable time manually delineating different structures of the brain. Spatial and structural variations, as well as intensity inhomogeneity across images, make the problem of computer-assisted segmentation very challenging. We propose a new image segmentation framework for tumor delineation that benefits from two state-of-the-art machine learning architectures in computer vision, i.e., Inception modules and U-Net image segmentation architecture. Furthermore, our framework includes two learning regimes, i.e., learning to segment intra-tumoral structures (necrotic and non-enhancing tumor core, peritumoral edema, and enhancing tumor) or learning to segment glioma sub-regions (whole tumor, tumor core, and enhancing tumor). These learning regimes are incorporated into a newly proposed loss function which is based on the Dice similarity coefficient (DSC). In our experiments, we quantified the impact of introducing the Inception modules in the U-Net architecture, as well as, changing the objective function for the learning algorithm from segmenting the intra-tumoral structures to glioma sub-regions. We found that incorporating Inception modules significantly improved the segmentation performance (p < 0.001) for all glioma sub-regions. Moreover, in architectures with Inception modules, the models trained with the learning objective of segmenting the intra-tumoral structures outperformed the models trained with the objective of segmenting the glioma sub-regions for the whole tumor (p < 0.001). The improved performance is linked to multiscale features extracted by newly introduced Inception module and the modified loss function based on the DSC.
机译:脑肿瘤的磁共振图像通常在神经肿瘤诊所用于诊断,治疗计划和治疗后肿瘤监测。当前,医师花费大量时间手动描绘大脑的不同结构。空间和结构的变化,以及整个图像的强度不均匀性,使得计算机辅助分割的问题非常具有挑战性。我们提出了一种用于肿瘤描绘的新图像分割框架,该框架受益于计算机视觉中的两种最先进的机器学习架构,即Inception模块和U-Net图像分割架构。此外,我们的框架包括两种学习方式,即学会分割肿瘤内结构(坏死和不增强的肿瘤核心,肿瘤周围水肿和增强肿瘤)或学会分割神经胶质瘤子区域(整个肿瘤,肿瘤核心和增强肿瘤)。这些学习机制被合并到一个新提出的基于Dice相似系数(DSC)的损失函数中。在我们的实验中,我们量化了在U-Net架构中引入Inception模块的影响,以及将学习算法的目标功能从将肿瘤内结构分割为神经胶质瘤子区域的方法都进行了量化。我们发现,合并Inception模块可以显着改善所有神经胶质瘤子区域的分割性能(p <0.001)。此外,在具有Inception模块的体系结构中,以分割肿瘤内结构为学习目标训练的模型优于以分割整个肿瘤的神经胶质瘤子区域为目标训练的模型(p <0.001)。改进的性能与新引入的Inception模块提取的多尺度特征以及基于DSC的修正损失函数有关。

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