论文标题
基于因果关系的特征融合用于大脑神经发展分析
Causality based Feature Fusion for Brain Neuro-Developmental Analysis
论文作者
论文摘要
人脑发育是一个复杂而动态的过程,受遗传学,性激素和环境变化等多种因素的影响。许多有关大脑发育的最新研究检查了由不同大脑区域的时间序列之间的时间相关性定义的功能连通性(FC)。我们建议在大脑成熟过程中添加信息的方向流。为此,我们通过格兰杰因果关系(GC)提取有效的连通性(EC),即两个不同的受试者,即儿童和年轻人。动机是,包括因果相互作用可能会进一步区分两个年龄段之间的大脑联系,并有助于发现大脑区域之间的新联系。这项研究的贡献是三倍。首先,在大脑发育的背景下,缺乏对基于EC的特征提取的关注。为此,我们提出了一种新的基于内核的GC(KGC)方法来学习复杂大脑网络的非线性,其中使用了减少的正弦双曲线多项式(RSP)神经网络作为我们建议的学习者。其次,我们使用因果关系作为大脑区域之间定向连通性的权重。我们的发现表明,相对于儿童,年轻人的联系强度明显更高。此外,我们基于EC的新功能优于费城神经霍普(PNC)研究的基于FC的分析,对不同年龄组的歧视更好。此外,这两组特征(FC + EC)的融合提高了脑年龄的预测准确性超过4%,这表明它们应一起用于大脑发育研究。
Human brain development is a complex and dynamic process that is affected by several factors such as genetics, sex hormones, and environmental changes. A number of recent studies on brain development have examined functional connectivity (FC) defined by the temporal correlation between time series of different brain regions. We propose to add the directional flow of information during brain maturation. To do so, we extract effective connectivity (EC) through Granger causality (GC) for two different groups of subjects, i.e., children and young adults. The motivation is that the inclusion of causal interaction may further discriminate brain connections between two age groups and help to discover new connections between brain regions. The contributions of this study are threefold. First, there has been a lack of attention to EC-based feature extraction in the context of brain development. To this end, we propose a new kernel-based GC (KGC) method to learn nonlinearity of complex brain network, where a reduced Sine hyperbolic polynomial (RSP) neural network was used as our proposed learner. Second, we used causality values as the weight for the directional connectivity between brain regions. Our findings indicated that the strength of connections was significantly higher in young adults relative to children. In addition, our new EC-based feature outperformed FC-based analysis from Philadelphia neurocohort (PNC) study with better discrimination of the different age groups. Moreover, the fusion of these two sets of features (FC + EC) improved brain age prediction accuracy by more than 4%, indicating that they should be used together for brain development studies.