School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing 100083, China.
Department of Neurosurgery, Beijing Tiantan Hospital, Capital Medical University, Beijing 100070, China; China National Clinical Research Center for Neurological Diseases, Beijing 100070, China.
Comput Med Imaging Graph. 2023 Jul;107:102229. doi: 10.1016/j.compmedimag.2023.102229. Epub 2023 Apr 6.
Cerebrovascular imaging is a common examination. Its accurate cerebrovascular segmentation become an important auxiliary method for the diagnosis and treatment of cerebrovascular diseases, which has received extensive attention from researchers. Deep learning is a heuristic method that encourages researchers to derive answers from the images by driving datasets. With the continuous development of datasets and deep learning theory, it has achieved important success for cerebrovascular segmentation. Detailed survey is an important reference for researchers. To comprehensively analyze the newest cerebrovascular segmentation, we have organized and discussed researches centered on deep learning. This survey comprehensively reviews deep learning for cerebrovascular segmentation since 2015, it mainly includes sliding window based models, U-Net based models, other CNNs based models, small-sample based models, semi-supervised or unsupervised models, fusion based models, Transformer based models, and graphics based models. We organize the structures, improvement, and important parameters of these models, as well as analyze development trends and quantitative assessment. Finally, we have discussed the challenges and opportunities of possible research directions, hoping that our survey can provide researchers with convenient reference.
脑血管成像检查较为常见。准确的脑血管分割成为脑血管疾病诊断和治疗的重要辅助方法,受到研究人员的广泛关注。深度学习是一种启发式方法,通过驱动数据集来鼓励研究人员从图像中得出答案。随着数据集和深度学习理论的不断发展,它已经在脑血管分割方面取得了重要的成功。详细的调查是研究人员的重要参考。为了全面分析最新的脑血管分割,我们围绕深度学习组织和讨论了研究。本综述全面回顾了 2015 年以来基于深度学习的脑血管分割研究,主要包括基于滑动窗口的模型、基于 U-Net 的模型、基于其他 CNN 的模型、基于小样本的模型、半监督或无监督的模型、基于融合的模型、基于 Transformer 的模型和基于图形的模型。我们组织了这些模型的结构、改进和重要参数,并分析了发展趋势和定量评估。最后,我们讨论了可能的研究方向的挑战和机遇,希望我们的综述能为研究人员提供方便的参考。