模式识别(心理学)
分歧(语言学)
猕猴
人工智能
联合概率分布
核密度估计
计算机科学
脑形态计量学
认知
相似性(几何)
神经科学
生物
数学
磁共振成像
图像(数学)
统计
哲学
放射科
估计员
医学
语言学
作者
Yuqi Wang,Junle Li,Suhui Jin,Jing Wang,Yating Lv,Qihong Zou,Jinhui Wang,Jinhui Wang,Jinhui Wang
出处
期刊:NeuroImage
[Elsevier BV]
日期:2024-06-07
卷期号:296: 120673-120673
被引量:8
标识
DOI:10.1016/j.neuroimage.2024.120673
摘要
Morphological features sourced from structural magnetic resonance imaging can be used to infer human brain connectivity. Although integrating different morphological features may theoretically be beneficial for obtaining more precise morphological connectivity networks (MCNs), the empirical evidence to support this supposition is scarce. Moreover, the incorporation of different morphological features remains an open question. In this study, we proposed a method to construct cortical MCNs based on multiple morphological features. Specifically, we adopted a multi-dimensional kernel density estimation algorithm to fit regional joint probability distributions (PDs) from different combinations of four morphological features, and estimated inter-regional similarity in the joint PDs via Jensen-Shannon divergence. We evaluated the method by comparing the resultant MCNs with those built based on different single morphological features in terms of topological organization, test-retest reliability, biological plausibility, and behavioral and cognitive relevance. We found that, compared to MCNs built based on different single morphological features, MCNs derived from multiple morphological features displayed less segregated, but more integrated network architecture and different hubs, had higher test-retest reliability, encompassed larger proportions of inter-hemispheric edges and edges between brain regions within the same cytoarchitectonic class, and explained more inter-individual variance in behavior and cognition. These findings were largely reproducible when different brain atlases were used for cortical parcellation. Further analysis of macaque MCNs revealed weak, but significant correlations with axonal connectivity from tract-tracing, independent of the number of morphological features. Altogether, this paper proposes a new method for integrating different morphological features, which will be beneficial for constructing MCNs.
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