Zhang Jianwei, Shi Yonggang
Stevens Neuroimaging and Informatics Institute, Keck School of Medicine, University of Southern California (USC), Los Angeles, CA 90033, USA.
Ming Hsieh Department of Electrical and Computer Engineering, Viterbi School of Engineering, University of Southern California (USC), Los Angeles, CA 90089, USA.
Med Image Comput Comput Assist Interv. 2023 Oct;14224:55-62. doi: 10.1007/978-3-031-43904-9_6. Epub 2023 Oct 1.
Cortical thickness is an important biomarker associated with gray matter atrophy in neurodegenerative diseases. In order to conduct meaningful comparisons of cortical thickness between different subjects, it is imperative to establish correspondence among surface meshes. Conventional methods achieve this by projecting surface onto canonical domains such as the unit sphere or averaging feature values in anatomical regions of interest (ROIs). However, due to the natural variability in cortical topography, perfect anatomically meaningful one-to-one mapping can be hardly achieved and the practice of averaging leads to the loss of detailed information. For example, two subjects may have different number of gyral structures in the same region, and thus mapping can result in gyral/sulcal mismatch which introduces noise and averaging in detailed local information loss. Therefore, it is necessary to develop new method that can overcome these intrinsic problems to construct more meaningful comparison for atrophy detection. To address these limitations, we propose a novel personalized patch-based method to improve cortical thickness comparison across subjects. Our model segments the brain surface into patches based on gyral and sulcal structures to reduce mismatches in mapping method while still preserving detailed topological information which is potentially discarded in averaging. Moreover,the personalized templates for each patch account for the variability of folding patterns, as not all subjects are comparable. Finally, through normality assessment experiments, we demonstrate that our model performs better than standard spherical registration in detecting atrophy in patients with mild cognitive impairment (MCI) and Alzheimer's disease (AD).
皮质厚度是与神经退行性疾病中灰质萎缩相关的重要生物标志物。为了在不同受试者之间进行有意义的皮质厚度比较,在表面网格之间建立对应关系至关重要。传统方法通过将表面投影到规范域(如单位球体)或在感兴趣的解剖区域(ROI)中平均特征值来实现这一点。然而,由于皮质地形的自然变异性,很难实现完美的具有解剖学意义的一对一映射,并且平均操作会导致详细信息的丢失。例如,两个受试者在同一区域可能有不同数量的脑回结构,因此映射可能会导致脑回/脑沟不匹配,从而引入噪声并导致详细局部信息丢失的平均化。因此,有必要开发一种能够克服这些内在问题的新方法,以构建更有意义的萎缩检测比较。为了解决这些局限性,我们提出了一种基于个性化补丁的新方法来改进跨受试者的皮质厚度比较。我们的模型基于脑回和脑沟结构将脑表面分割成补丁,以减少映射方法中的不匹配,同时仍保留在平均化过程中可能被丢弃的详细拓扑信息。此外,每个补丁的个性化模板考虑了折叠模式的变异性,因为并非所有受试者都是可比的。最后,通过正态性评估实验,我们证明我们的模型在检测轻度认知障碍(MCI)和阿尔茨海默病(AD)患者的萎缩方面比标准球面配准表现更好。