首页> 外文会议>International conference on medical imaging computing and computer-assisted intervention >Discovering Cortical Folding Patterns in Neonatal Cortical Surfaces Using Large-Scale Dataset
【24h】

Discovering Cortical Folding Patterns in Neonatal Cortical Surfaces Using Large-Scale Dataset

机译:使用大规模数据集发现新生儿皮质表面的皮质折叠模式

获取原文

摘要

The cortical folding of the human brain is highly complex and variable across individuals. Mining the major patterns of cortical folding from modern large-scale neuroimaging datasets is of great importance in advancing techniques for neuroimaging analysis and understanding the inter-individual variations of cortical folding and its relationship with cognitive function and disorders. As the primary cortical folding is genetically influenced and has been established at term birth, neonates with the minimal exposure to the complicated postnatal environmental influence are the ideal candidates for understanding the major patterns of cortical folding. In this paper, for the first time, we propose a novel method for discovering the major patterns of cortical folding in a large-scale dataset of neonatal brain MR images (N = 677). In our method, first, cortical folding is characterized by the distribution of sulcal pits, which are the locally deepest points in cortical sulci. Because deep sulcal pits are genetically related, relatively consistent across individuals, and also stable during brain development, they are well suitable for representing and characterizing cortical folding. Then, the similarities between sulcal pit distributions of any two subjects are measured from spatial, geometrical, and topological points of view. Next, these different measurements are adaptively fused together using a similarity network fusion technique, to preserve their common information and also catch their complementary information. Finally, leveraging the fused similarity measurements, a hierarchical affinity propagation algorithm is used to group similar sulcal folding patterns together. The proposed method has been applied to 677 neonatal brains (the largest neonatal dataset to our knowledge) in the central sulcus, superior temporal sulcus, and cingulate sulcus, and revealed multiple distinct and meaningful folding patterns in each region.
机译:人脑的皮质折叠高度复杂并且在个体之间是可变的。从现代大规模神经影像数据集中挖掘出皮质折叠的主要模式,对于先进的神经影像分析技术以及了解皮质折叠的个体差异及其与认知功能和疾病的关系至关重要。由于主要的皮层折叠受到遗传影响,并已在足月出生时建立,因此对复杂的产后环境影响的暴露极少的新生儿是理解皮层折叠主要模式的理想人选。在本文中,我们首次提出了一种新的方法,用于在大规模新生儿脑MR图像(N = 677)数据集中发现皮质折叠的主要模式。在我们的方法中,首先,皮质折叠的特征在于沟基的分布,这是皮质沟中局部最深的点。由于深沟沟是遗传相关的,个体间相对一致,并且在大脑发育过程中也很稳定,因此它们非常适合表示和表征皮层折叠。然后,从空间,几何和拓扑的角度来测量任意两个对象的龈沟分布之间的相似性。接下来,使用相似性网络融合技术将这些不同的测量值自适应地融合在一起,以保留它们的公共信息并捕获其互补信息。最后,利用融合的相似性度量,使用分层的亲和力传播算法将相似的沟折叠模式分组在一起。所提出的方法已应用于中央沟,颞上沟和扣带状沟中的677个新生儿大脑(据我们所知,是最大的新生儿数据集),并且揭示了每个区域中多个不同且有意义的折叠模式。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号