Custom administering attention module for segmentation of magnetic resonance imaging of the brain

Nagveni B. Sangolgi, S. Sasikala
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引用次数: 0

Abstract

Taking into account how brain tumors and gliomas are notorious forms of cancer, the medical field has found several methods to diagnose these diseases, with many algorithms that can segment out the cancer cells in the magnetic resonance imaging (MRI) scans of the brain. This paper has proposed a similar segmenting algorithm called a custom administering attention module. This solution uses a custom U-Net model along with a custom administering attention module that uses an attention mechanism to classify and segment the glioma cells using long-range dependency of the feature maps. The customizations lead to a reduction in code complexity and memory cost. The final model has been tested on the BraTS 2019 dataset and has been compared with other state-of-the-art methods for displaying how much better the proposed model has performed in the category of enhancing, non-enhancing and peritumoral gliomas.
用于脑磁共振成像分割的定制管理注意力模块
考虑到脑肿瘤和神经胶质瘤是臭名昭著的癌症形式,医学界已经找到了几种诊断这些疾病的方法,有许多算法可以在大脑的磁共振成像(MRI)扫描中分割出癌细胞。本文提出了一种类似的分割算法,称为自定义管理注意力模块。该解决方案使用自定义U-Net模型以及自定义管理注意模块,该模块使用注意机制来使用特征图的远程依赖性对胶质瘤细胞进行分类和分割。自定义可以降低代码复杂性和内存成本。最终的模型已经在BraTS 2019数据集上进行了测试,并与其他最先进的方法进行了比较,以显示所提出的模型在增强、非增强和肿瘤周围胶质瘤类别中的表现有多好。
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CiteScore
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