Wei-Xing Li , Qiu-Hua Lin , Chao-Ying Zhang , Yue Han , Huan-Jie Li , Vince D. Calhoun
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引用次数: 0
Abstract
Background
Real-valued mutual information (MI) has been used in spatial functional network connectivity (FNC) to measure high-order and nonlinear dependence between spatial maps extracted from magnitude-only functional magnetic resonance imaging (fMRI). However, real-valued MI cannot fully capture the group differences in spatial FNC from complex-valued fMRI data with magnitude and phase dependence.
Methods
We propose a complete complex-valued MI method according to the chain rule of MI. We fully exploit the dependence among magnitudes and phases of two complex-valued signals using second and fourth-order joint entropies, and propose to use a Gaussian copula transformation with a lower bound property to avoid inaccurate estimation of joint probability density function when computing the joint entropies.
Results
The proposed method achieves more accurate MI estimates than the two histogram-based (normal and symbolic approaches) and kernel density estimation methods for simulated signals, and enhances group differences in spatial functional network connectivity for experimental complex-valued fMRI data.
Comparison with existing methods
Compared with the simplified complex-valued MI and real-valued MI, the proposed method yields higher MI estimation accuracy, leading to 17.4 % and 145.5 % wider MI ranges, and more significant connectivity differences between healthy controls and schizophrenia patients. A unique connection between executive control network (EC) and right frontal parietal areas, and three additional connections mainly related to EC are detected than the simplified complex-valued MI.
Conclusions
With capability in quantifying MI fully and accurately, the proposed complex-valued MI is promising in providing qualified FNC biomarkers for identifying mental disorders such as schizophrenia.
背景:实值互信息(MI)已被用于空间功能网络连接(FNC),以测量从仅有幅度的功能磁共振成像(fMRI)中提取的空间图之间的高阶和非线性依赖性。然而,实值 MI 无法从具有幅度和相位依赖性的复值 fMRI 数据中完全捕捉空间 FNC 的群体差异:方法:我们根据 MI 的链式规则提出了一种完整的复值 MI 方法。我们利用二阶和四阶联合熵充分利用了两个复值信号的幅度和相位之间的依赖性,并提出使用具有下界特性的高斯协方差变换,以避免在计算联合熵时对联合概率密度函数的不准确估计:结果:与基于直方图(正态法和符号法)和核密度估计的两种模拟信号方法相比,所提出的方法实现了更精确的 MI 估计,并增强了实验性复值 fMRI 数据的空间功能网络连接的群体差异:与现有方法比较:与简化的复值MI和实值MI相比,所提出的方法能获得更高的MI估计精度,使MI范围分别扩大了17.4%和145.5%,并使健康对照组和精神分裂症患者之间的连接性差异更加显著。与简化的复杂值 MI 相比,该方法检测到了执行控制网络(EC)与右额顶叶区域之间的独特连接,以及另外三个主要与 EC 相关的连接:结论:所提出的复值多元智能能够全面准确地量化多元智能,有望为识别精神分裂症等精神疾病提供合格的 FNC 生物标记。
期刊介绍:
The Journal of Neuroscience Methods publishes papers that describe new methods that are specifically for neuroscience research conducted in invertebrates, vertebrates or in man. Major methodological improvements or important refinements of established neuroscience methods are also considered for publication. The Journal''s Scope includes all aspects of contemporary neuroscience research, including anatomical, behavioural, biochemical, cellular, computational, molecular, invasive and non-invasive imaging, optogenetic, and physiological research investigations.