基于深度学习的MRI神经胶质瘤亚区分割方法

Jiten Chaudhary, Rajneesh Rani, A. Kamboj
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引用次数: 4

摘要

脑肿瘤是最危险和危及生命的疾病之一。为了确定肿瘤的类型,制定治疗方案和估计患者的总体生存时间,从图像中准确分割肿瘤区域是非常重要的。人工分割的过程非常耗时且容易出错;因此,本文旨在提供一种基于深度学习的方法,从MR图像中自动分割肿瘤区域。本文提出了一种基于深度神经网络的脑肿瘤(胶质瘤)自动分割方法。强度归一化和数据增强被纳入图像的预处理步骤。该模型在多通道磁共振成像(MRI)图像上进行训练。该模型输出输入图像中脑肿瘤区域的高分辨率分割。在基准BRATS 2013数据集上对该模型进行了评估。采用Dice评分、敏感性和阳性预测值(positive predictive value, PPV)进行评价。通过在相似条件下训练非常流行的UNet模型,验证了该模型的优越性能。结果表明,该模型在临床水平上对胶质瘤区域的MRI分割是有效的。该模型可以被医生用来确定肿瘤区域的确切位置。该模型是对UNet模型的改进。与UNet模型相比,该模型具有更少的层和更少的参数。这有助于网络在图像较少的数据库上进行训练,并获得更好的结果。此外,将网络学习到的瓶颈特征信息与跳跃连接路径融合,丰富了特征映射。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-based approach for segmentation of glioma sub-regions in MRI
Brain tumor is one of the most dangerous and life-threatening disease. In order to decide the type of tumor, devising a treatment plan and estimating the overall survival time of the patient, accurate segmentation of tumor region from images is extremely important. The process of manual segmentation is very time-consuming and prone to errors; therefore, this paper aims to provide a deep learning based method, that automatically segment the tumor region from MR images.,In this paper, the authors propose a deep neural network for automatic brain tumor (Glioma) segmentation. Intensity normalization and data augmentation have been incorporated as pre-processing steps for the images. The proposed model is trained on multichannel magnetic resonance imaging (MRI) images. The model outputs high-resolution segmentations of brain tumor regions in the input images.,The proposed model is evaluated on benchmark BRATS 2013 dataset. To evaluate the performance, the authors have used Dice score, sensitivity and positive predictive value (PPV). The superior performance of the proposed model is validated by training very popular UNet model in the similar conditions. The results indicate that proposed model has obtained promising results and is effective for segmentation of Glioma regions in MRI at a clinical level.,The model can be used by doctors to identify the exact location of the tumorous region.,The proposed model is an improvement to the UNet model. The model has fewer layers and a smaller number of parameters in comparison to the UNet model. This helps the network to train over databases with fewer images and gives superior results. Moreover, the information of bottleneck feature learned by the network has been fused with skip connection path to enrich the feature map.
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