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Brain Tumor Segmentation Using a Multi-path CNN Based Method

机译:使用基于多路径CNN的方法进行脑肿瘤分割

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In this paper an automatic brain tumor segmentation approach based on a multi-path Convolutional Neural Network (CNN) is presented. Proposition of the method was motivated by the success of multi-path CNNs, DeepMedic[1] and the method presented in [2], where the local and contextual pieces of information for segmentation were obtained from multi-scale regions. In addition to that, the method exploits the fact that very often tumor introduces high asymmetry to the brain. In order to help model in distinguishing between brain lesions and healthy brain structures such as sulci, gyri and ventricles, the model is provided with spatial information, as well. The model's training and hyper-parameter tuning were performed on the BraTS 2017 training dataset, model's validation was done on the BraTS 2017 validation dataset and the final results are reported on the BraTS 2017 testing dataset. The average Dice scores obtained on the testing dataset are 0.6049, 0.8436 and 0.6938 for enhancing tumor, whole tumor and tumor core, respectively.
机译:本文提出了一种基于多路径卷积神经网络(CNN)的脑肿瘤自动分割方法。多路径CNN,DeepMedic [1]和[2]中提出的方法的成功推动了该方法的提出,在该方法中,从多尺度区域获得了用于分割的局部和上下文信息。除此之外,该方法还利用了肿瘤经常向大脑引入高度不对称的事实。为了帮助模型区分脑部病变和健康的大脑结构(如沟,脑回和脑室),该模型还提供了空间信息。在BraTS 2017训练数据集上执行了模型的训练和超参数调整,在BraTS 2017验证数据集上进行了模型验证,并在BraTS 2017测试数据集上报告了最终结果。在测试数据集上获得的增强肿瘤,整个肿瘤和肿瘤核心的平均Dice得分分别为0.6049、0.8436和0.6938。

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