Zang Di, Zhao Xiangyu, Qiao Yuanfang, Huo Jiayu, Wu Xuehai, Wang Zhe, Xu Zeyu, Zheng Ruizhe, Qi Zengxin, Mao Ying, Zhang Lichi
Department of Neurosurgery, Huashan Hospital, Shanghai Medical College, Fudan University, Shanghai, 200040, China.
National Center for Neurological Disorders, Shanghai, 200040, China.
Brain Inform. 2023 Jan 19;10(1):3. doi: 10.1186/s40708-022-00181-5.
Brain network analysis based on structural and functional magnetic resonance imaging (MRI) is considered as an effective method for consciousness evaluation of hydrocephalus patients, which can also be applied to facilitate the ameliorative effect of lumbar cerebrospinal fluid drainage (LCFD). Automatic brain parcellation is a prerequisite for brain network construction. However, hydrocephalus images usually have large deformations and lesion erosions, which becomes challenging for ensuring effective brain parcellation works. In this paper, we develop a novel and robust method for segmenting brain regions of hydrocephalus images. Our main contribution is to design an innovative inpainting method that can amend the large deformations and lesion erosions in hydrocephalus images, and synthesize the normal brain version without injury. The synthesized images can effectively support brain parcellation tasks and lay the foundation for the subsequent brain network construction work. Specifically, the novelty of the inpainting method is that it can utilize the symmetric properties of the brain structure to ensure the quality of the synthesized results. Experiments show that the proposed brain abnormality inpainting method can effectively aid the brain network construction, and improve the CRS-R score estimation which represents the patient's consciousness states. Furthermore, the brain network analysis based on our enhanced brain parcellation method has demonstrated potential imaging biomarkers for better interpreting and understanding the recovery of consciousness in patients with secondary hydrocephalus.
基于结构和功能磁共振成像(MRI)的脑网络分析被认为是评估脑积水患者意识的一种有效方法,该方法也可用于促进腰椎脑脊液引流(LCFD)的改善效果。自动脑图谱分割是构建脑网络的前提条件。然而,脑积水图像通常存在较大变形和病变侵蚀,这使得确保有效的脑图谱分割工作具有挑战性。在本文中,我们开发了一种新颖且稳健的方法来分割脑积水图像的脑区。我们的主要贡献在于设计了一种创新的修复方法,该方法可以修正脑积水图像中的大变形和病变侵蚀,并合成无损伤的正常脑版本。合成的图像能够有效地支持脑图谱分割任务,并为后续的脑网络构建工作奠定基础。具体而言,修复方法的新颖之处在于它可以利用脑结构的对称特性来确保合成结果的质量。实验表明,所提出的脑异常修复方法能够有效地辅助脑网络构建,并提高代表患者意识状态的CRS-R评分估计。此外,基于我们改进的脑图谱分割方法的脑网络分析已经展示了潜在的成像生物标志物,用于更好地解释和理解继发性脑积水患者的意识恢复情况。