基于核磁共振成像的卷积神经网络脑肿瘤分割:最新分割网络的比较分析

Ahmet Furkan Bayram, Caglar Gurkan, Abdulkadir Budak, Hakan Karatas
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引用次数: 1

摘要

脑肿瘤的发病率很高。脑瘤会导致严重的疾病。此外,脑瘤在大多数人身上会引起各种各样的症状。这项研究的目的是分割大脑中的肿瘤。为此,最先进的架构,如UNet、Attention UNet、Residual UNet、Attention Residual UNet、Residual UNet++、Inception UNet、LinkNet和SegNet被用于分段。利用592张磁共振(MR)图像进行分割架构的训练和测试。对比分析中,Attention UNet预测效果最佳,dice评分为0.886,IoU评分为0.795,灵敏度为0.881,特异性为0.993,精密度为0.891,准确度为0.986。
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Convolutional Neural Networks for MRI-Based Brain Tumor Segmentation: A Comparative Analysis of State-of-the-Art Segmentation Networks
The prevalence of brain tumor is quite high. Brain tumor causes critical diseases. Also, brain tumor causes a variety of symptoms in most people. This study aims to segmentation of the tumor in the brain. For this purpose, state-of-art architectures, such as UNet, Attention UNet, Residual UNet, Attention Residual UNet, Residual UNet++, Inception UNet, LinkNet, and SegNet were used for segmentation. 592 magnetic resonance (MR) images were utilized in the training and testing of segmentation architectures. In the comparative analysis, Attention UNet achieved the best predictive performance with a 0.886 dice score, 0.795 IoU score, 0.881 sensitivity, 0.993 specificity, 0.891 precision, and 0.986 accuracy.
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