Crossbar-Net: A Novel Convolutional Neural Network for Kidney Tumor Segmentation in CT Images

分割 人工智能 计算机科学 计算机视觉 图像分割 卷积神经网络 豪斯多夫距离 模式识别(心理学) 尺度空间分割 光学(聚焦) 相似性(几何) 一般化 基于分割的对象分类 边界(拓扑) 质心 人工神经网络 深度学习 图像处理 医学影像学 模糊逻辑 特征提取 图像纹理
作者
Qian Yu,Yinghuan Shi,Jinquan Sun,Yang Gao,Jianbing Zhu,Yakang Dai
出处
期刊:IEEE transactions on image processing [Institute of Electrical and Electronics Engineers]
卷期号:28 (8): 4060-4074 被引量:105
标识
DOI:10.1109/tip.2019.2905537
摘要

Due to the unpredictable location, fuzzy texture and diverse shape, accurate segmentation of the kidney tumor in CT images is an important yet challenging task. To this end, we in this paper present a cascaded trainable segmentation model termed as Crossbar-Net. Our method combines two novel schemes: (1) we originally proposed the crossbar patches, which consists of two orthogonal non-squared patches (i.e., the vertical patch and horizontal patch). The crossbar patches are able to capture both the global and local appearance information of the kidney tumors from both the vertical and horizontal directions simultaneously. (2) With the obtained crossbar patches, we iteratively train two sub-models (i.e., horizontal sub-model and vertical sub-model) in a cascaded training manner. During the training, the trained sub-models are encouraged to become more focus on the difficult parts of the tumor automatically (i.e., mis-segmented regions). Specifically, the vertical (horizontal) sub-model is required to help segment the mis-segmented regions for the horizontal (vertical) sub-model. Thus, the two sub-models could complement each other to achieve the self-improvement until convergence. In the experiment, we evaluate our method on a real CT kidney tumor dataset which is collected from 94 different patients including 3,500 CT slices. Compared with the state-of-the-art segmentation methods, the results demonstrate the superior performance of our method on the Dice similarity coefficient, true positive fraction, centroid distance and Hausdorff distance. Moreover, to exploit the generalization to other segmentation tasks, we also extend our Crossbar-Net to two related segmentation tasks: (1) cardiac segmentation in MR images and (2) breast mass segmentation in X-ray images, showing the promising results for these two tasks. Our implementation is released at https: //github.com/Qianyu1226/Crossbar-Net.
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