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Automatic segmentation of brain tumour in MR images using an enhanced deep learning approach

机译:利用增强的深度学习方法自动分割MR图像中的脑肿瘤

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The presented manuscript proposes a fully automatic deep learning method to quantify the tumour region in brain Magnetic Resonance images as the accurate diagnosis of brain tumour region is necessary for the treatment of the patients. The irregular and confusing boundaries of tumours regions make it a challenging task to accurately figure out such regions. Another challenge with the segmentation task is of preserving the boundary details of the segmented tumour regions. The proposed network focuses on delineating the irregular tumour region as the best feature maps are learnt by the network, which is used for decoding; thus, it preserves the accurate boundary and pixel details. The proposed method incorporates internal residual connections in encoder and decoder to transfer feature maps directly to the successive layers to avoid loss of information contained in the images. The use of cross channel normalization (CCN) and parametric rectified linear unit (PRELU) gives a more balanced network output. The trained network produced remarkable results when tested on images of other datasets. Further, external clinical validation was performed by comparison of the algorithmic segmented images with those generated by a manual segmentation done by an experienced radiologist. We have termed our network as CCN-PR-Seg-net.
机译:所提出的稿件提出了一种全自动深度学习方法,以量化脑磁共振图像中的肿瘤区域,因为对患者的治疗是必要的脑肿瘤区域所必需的。肿瘤地区的不规则和令人困惑的界限使其成为准确弄清楚这些地区的具有挑战性的任务。与分割任务的另一个挑战是保留分段肿瘤区域的边界细节。所提出的网络侧重于将不规则肿瘤区域描绘,因为网络的最佳特征图是由网络学习的,用于解码;因此,它保留了准确的边界和像素细节。该方法包括编码器和解码器中的内部残余连接,将特征直接映射到连续层,以避免丢失图像中包含的信息。使用跨通道归一化(CCN)和参数整流线性单元(PRELU)提供了更平衡的网络输出。训练有素的网络在在其他数据集的图像上测试时产生了显着的结果。此外,通过将算法分段图像与由经验丰富的放射科医师完成的手动分段产生的那些进行比较来执行外部临床验证。我们已将我们的网络称为CCN-PR-SEG-NET。

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