Subtle alterations in brain network topology often evade detection by traditional statistical methods. To address this limitation, we introduce a Bayesian inference framework for topological comparison of brain networks that probabilistically models within- and between-group dissimilarities. The framework employs Markov chain Monte Carlo sampling to estimate posterior distributions of test statistics and Bayes factors, enabling graded evidence assessment beyond binary significance testing. Simulations confirmed statistical consistency to permutation testing. Applied to fMRI data from the Duke-UNC Alzheimer's Disease Research Center, the framework detected topology-based network differences that conventional permutation tests failed to reveal, highlighting its enhanced sensitivity to early or subtle brain network alterations in clinical neuroimaging.
翻译:脑网络拓扑结构的细微改变常难以通过传统统计方法检测。为克服此局限,我们提出一种用于脑网络拓扑比较的贝叶斯推断框架,该框架以概率方式建模组内与组间差异。该框架采用马尔可夫链蒙特卡洛采样来估计检验统计量与贝叶斯因子的后验分布,实现超越二元显著性检验的梯度证据评估。仿真实验验证了其与置换检验的统计一致性。应用于杜克-UNC阿尔茨海默病研究中心的fMRI数据时,该框架检测到传统置换检验未能揭示的基于拓扑的网络差异,突显了其在临床神经影像中对早期或细微脑网络改变具有更高的检测灵敏度。