Zhang Xinru, Liu Chenghao, Ou Ni, Zeng Xiangzhu, Zhuo Zhizheng, Duan Yunyun, Xiong Xiaoliang, Yu Yizhou, Liu Zhiwen, Liu Yaou, Ye Chuyang
School of Integrated Circuits and Electronics, Beijing Institute of Technology, Beijing, China.
School of Automation, Beijing Institute of Technology, Beijing, China.
Neuroimage. 2023 May 1;271:120041. doi: 10.1016/j.neuroimage.2023.120041. Epub 2023 Mar 17.
Brain lesion segmentation provides a valuable tool for clinical diagnosis and research, and convolutional neural networks (CNNs) have achieved unprecedented success in the segmentation task. Data augmentation is a widely used strategy to improve the training of CNNs. In particular, data augmentation approaches that mix pairs of annotated training images have been developed. These methods are easy to implement and have achieved promising results in various image processing tasks. However, existing data augmentation approaches based on image mixing are not designed for brain lesions and may not perform well for brain lesion segmentation. Thus, the design of this type of simple data augmentation method for brain lesion segmentation is still an open problem. In this work, we propose a simple yet effective data augmentation approach, dubbed as CarveMix, for CNN-based brain lesion segmentation. Like other mixing-based methods, CarveMix stochastically combines two existing annotated images (annotated for brain lesions only) to obtain new labeled samples. To make our method more suitable for brain lesion segmentation, CarveMix is lesion-aware, where the image combination is performed with a focus on the lesions and preserves the lesion information. Specifically, from one annotated image we carve a region of interest (ROI) according to the lesion location and geometry with a variable ROI size. The carved ROI then replaces the corresponding voxels in a second annotated image to synthesize new labeled images for network training, and additional harmonization steps are applied for heterogeneous data where the two annotated images can originate from different sources. Besides, we further propose to model the mass effect that is unique to whole brain tumor segmentation during image mixing. To evaluate the proposed method, experiments were performed on multiple publicly available or private datasets, and the results show that our method improves the accuracy of brain lesion segmentation. The code of the proposed method is available at https://github.com/ZhangxinruBIT/CarveMix.git.
脑病变分割为临床诊断和研究提供了一个有价值的工具,而卷积神经网络(CNN)在分割任务中取得了前所未有的成功。数据增强是一种广泛使用的提高CNN训练效果的策略。特别是,已经开发出了混合成对标注训练图像的数据增强方法。这些方法易于实现,并且在各种图像处理任务中取得了不错的成果。然而,现有的基于图像混合的数据增强方法并非针对脑病变设计,可能在脑病变分割中表现不佳。因此,设计这种用于脑病变分割的简单数据增强方法仍然是一个未解决的问题。在这项工作中,我们提出了一种简单而有效的数据增强方法,称为CarveMix,用于基于CNN的脑病变分割。与其他基于混合的方法一样,CarveMix随机组合两个现有的标注图像(仅针对脑病变进行标注)以获得新的标记样本。为了使我们的方法更适合脑病变分割,CarveMix是病变感知的,其中图像组合是围绕病变进行的,并保留病变信息。具体来说,我们从一个标注图像中根据病变位置和几何形状以可变的感兴趣区域(ROI)大小切割出一个感兴趣区域。然后,切割出的ROI替换第二个标注图像中的相应体素,以合成用于网络训练的新标记图像,并且对于两个标注图像可能来自不同来源的异构数据应用额外的协调步骤。此外,我们还进一步提出在图像混合过程中对全脑肿瘤分割特有的占位效应进行建模。为了评估所提出的方法,我们在多个公开可用或私有数据集上进行了实验,结果表明我们的方法提高了脑病变分割的准确性。所提出方法的代码可在https://github.com/ZhangxinruBIT/CarveMix.git获取。