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Tumor Segmentation in Brain MRI: U-Nets versus Feature Pyramid Network

机译:脑MRI中的肿瘤细分:U-NET与特征金字塔网络

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Manifestations of brain tumors can trigger various psychiatric symptoms. Brain tumor detection can efficiently solve or reduce chances of occurrences of diseases, such as Alzheimer's disease, dementia-based disorders, multiple sclerosis and bipolar disorder. In this paper, we propose a segmentation-based approach to detect brain tumors in MRI11Authors contributed equally to the manuscript.. We provide a comparative study between two different U-Net architectures (U-Net: baseline and U-Net: ResNeXt50 backbone) and a Feature Pyramid Network (FPN) that are trained/validated on the TCGA-LGG dataset of size 3, 929 images. U-Net architecture with ResNeXt50 backbone achieves the best Dice coefficient of 0.932, while baseline U-Net and FPN separately achieve Dice coefficients of 0.846 and 0.899, respectively. The results obtained from U-Net with ResNeXt50 backbone outperform previous works.
机译:脑肿瘤的表现可以引发各种精神症状。脑肿瘤检测可以有效地解决或减少疾病发生的可能性,例如阿尔茨海默病,基于痴呆症的疾病,多发性硬化症和双相情感障碍。在本文中,我们提出了一种基于分段的方法来检测MRI中的脑肿瘤 1 1 作者贡献了稿件。我们在两个不同的U-Net架构(U-Net:基线和U-Net:Resnext50骨架)之间提供了一个比较研究,并且在TCGA上训练/验证的特征金字塔网络(FPN) -Lgg DataSet大小3,929图像。具有Resnext50骨架的U-Net架构实现了0.932的最佳骰子系数,而基线U-Net和FPN分别达到0.846和0.899的骰子系数。从U-Net获得的结果与Resnext50骨架优于以前的作品。

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