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Memory Network-Based Quality Normalization of Magnetic Resonance Images for Brain Segmentation

机译:基于存储网络的基于网络的磁共振图像的脑部分割的质量标准化

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Medical images of the same modality but acquired at different centers, with different machines, using different protocols, and by different operators may have highly variable quality. Due to its limited generalization ability, a deep learning model usually cannot achieve the same performance on another database as it has done on the database with which it was trained. In this paper, we use the segmentation of brain magnetic resonance (MR) images as a case study to investigate the possibility of improving the performance of medical image analysis via normalizing the quality of images. Specifically, we propose a memory network (MemNet)-based algorithm to normalize the quality of brain MR images and adopt the widely used 3D U-Net to segment the images before and after quality normalization. We evaluated the proposed algorithm on the benchmark IBSR V2.0 database. Our results suggest that the MemNet-based algorithm can not only normalize and improve the quality of brain MR images, but also enable the same 3D U-Net to produce substantially more accurate segmentation of major brain tissues.
机译:在不同的中心,使用不同的协议以及不同的操作员使用不同的机器,以及不同的操作员可以具有高度可变的质量。由于其有限的泛化能力,深度学习模型通常无法在另一个数据库上实现相同的性能,因为它在培训的数据库上完成了它。在本文中,我们使用脑磁共振(MR)图像的分割作为案例研究,以研究通过标准化图像质量来提高医学图像分析的性能的可能性。具体而言,我们提出了一种基于存储器网络(MEMNet)的算法,以规范大脑MR图像的质量,并采用广泛使用的3D U-NET在质量归一化之前和之后分段图像。我们在基准IBSR v2.0数据库上评估了所提出的算法。我们的研究结果表明,基于MemNet算法不仅可以规范和改善脑部MR图像的质量,也使相同的3D掌中产生重大脑组织的显着更准确的分割。

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