The research on developing CNN-based fully-automated Brain-Tumor-Segmentation systems has been progressed rapidly. For the systems to be applicable in practice, a good The research on developing CNN-based fully-automated Brain-Tumor-Segmentation systems has been progressed rapidly. For the systems to be applicable in practice, a good processing quality and reliability are the must. Moreover, for wide applications of such systems, a minimization of computation complexity is desirable, which can also result in a minimization of randomness in computation and, consequently, a better performance consistency. To this end, the CNN in the proposed system has a unique structure with 2 distinguished characters. Firstly, the three paths of its feature extraction block are designed to extract, from the multi-modality input, comprehensive feature information of mono-modality, paired-modality and cross-modality data, respectively. Also, it has a particular three-branch classification block to identify the pixels of 4 classes. Each branch is trained separately so that the parameters are updated specifically with the corresponding ground truth data of a target tumor areas. The convolution layers of the system are custom-designed with specific purposes, resulting in a very simple config of 61,843 parameters in total. The proposed system is tested extensively with BraTS2018 and BraTS2019 datasets. The mean Dice scores, obtained from the ten experiments on BraTS2018 validation samples, are 0.787+0.003, 0.886+0.002, 0.801+0.007, for enhancing tumor, whole tumor and tumor core, respectively, and 0.751+0.007, 0.885+0.002, 0.776+0.004 on BraTS2019. The test results demonstrate that the proposed system is able to perform high-quality segmentation in a consistent manner. Furthermore, its extremely low computation complexity will facilitate its implementation/application in various environments.
翻译:开发基于CNN的全自动脑-图摩-部分系统的研究进展迅速, 开发基于CNN的全自动脑-图文-部分系统的研究进展迅速, 开发基于CNN的全自动脑- 图文-部分系统的研究进展迅速, 要实际应用这些系统, 必须有良好的处理质量和可靠性。 此外, 要广泛应用这些系统, 最小化计算复杂性是可取的, 这还会导致计算中的随机性最小化, 从而实现更好的性能一致性。 为此, 拟设系统中的CNN有独特的结构, 有2个不同的字符。 首先, 其特征提取区的三个路径, 从多模式投入中提取一个单一模式、配对式、配对式和交叉模块数据。 此外, 该系统有一个特定的三分层分类块, 确定4级的像素。 每个分支将进行单独培训, 以便具体更新参数, 与一个目标肿瘤区域的相应地面数据数据更新, 2个不同的字符串点。 184, 将产生一个常规的系统, 与一个特定数据级化的系统, 以最高级的SBRA- dealalalalal 数据级, 进行最高级的操作, 。