fse - gan用于脑肿瘤MRI解剖的设计

Thirumagal E, K. Saruladha
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引用次数: 3

摘要

脑肿瘤是脑内异常细胞的聚集或生长。肿瘤可由神经细胞、脑细胞、细胞膜、腺体、神经胶质细胞等形成。在脑肿瘤患者的治疗中,准确分割脑肿瘤区域是非常重要的。生成式对抗网络(GAN)是一种很有前途的深度神经网络技术,它由两个相互作用的神经网络生成器和判别器组成。本文提出了一种基于特征拼接的挤压和兴奋- gan (fse - gan)方法,用于MRI中脑肿瘤区域的分割。提出的fse - gan采用ResNet作为基本神经网络架构。它包括带发生器的特征拼接技术,用于生成清晰的MRI图像;带鉴别器的挤压和兴奋块技术,用于分割脑肿瘤区域。实验使用来自Kaggle的脑MRI图像数据集在WGAN-GP、Info-GAN和fse - gan架构上进行。实验结果表明,与WGAN-GP和Info-GAN相比,fse - gan具有更好的正确率、精密度、查全率和f1分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of FCSE-GAN for Dissection of Brain Tumour in MRI
Brain tumour is the collection or growth of abnormal cells in brain. The tumours can develop from nerve cells, brain cells, membranes, glands, glial cells, etc. For treating patients with brain tumours, it is important to segment the brain tumour area accurately. The Generative adversarial network (GAN) is a promising deep neural network technique which has two neural networks namely Generator and Discriminator which acts opposite to each other. This paper proposes FCSE-GAN (Feature Concatenation based Squeeze and Excitation-GAN) for segmenting the brain tumour area in MRI. The proposed FCSE-GAN uses ResNet as basic neural network architecture. It includes feature concatenation technique with generator for generating sharp MRI images and Squeeze and excitation block with discriminator for segmenting the brain tumour area. The experiments were conducted using Brain MRI image dataset from Kaggle on WGAN-GP, Info-GAN and FCSE-GAN architectures. The experimental results shows that FCSE-GAN yields better accuracy, precision, recall and F1-score when compared to WGAN-GP and Info-GAN.
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