首页> 外文期刊>IEEE Transactions on Medical Imaging >nCREANN: Nonlinear Causal Relationship Estimation by Artificial Neural Network; Applied for Autism Connectivity Study
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nCREANN: Nonlinear Causal Relationship Estimation by Artificial Neural Network; Applied for Autism Connectivity Study

机译:nCREANN:人工神经网络的非线性因果关系估计;

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摘要

Quantifying causal (effective) interactions between different brain regions are very important in neuroscience research. Many conventional methods estimate effective connectivity based on linear models. However, using linear connectivity models may oversimplify the functions and dynamics of the brain. In this paper, we propose a causal relationship estimator called nonlinear Causal Relationship Estimation by Artificial Neural Network (nCREANN) that identifies both linear and nonlinear components of effective connectivity in the brain. Furthermore, it can distinguish between these two types of connectivity components by calculating the linear and nonlinear parts of the network input-output mapping. The nCREANN performance has been verified using synthesized data and then it has been applied on EEG data collected during rest in children with autism spectrum disorder (ASD) and typically developing (TD) children. The results show that overall linear connectivity in TD subjects is higher, while the nonlinear connectivity component is more dominant in ASDs. We suggest that our findings may represent different underlying neural activation dynamics in ASD and TD subjects. The results of nCREANN may provide new insight into the connectivity between the interactive brain regions.
机译:量化不同大脑区域之间的因果(有效)相互作用在神经科学研究中非常重要。许多常规方法基于线性模型来估计有效连通性。但是,使用线性连接模型可能会简化大脑的功能和动力学。在本文中,我们提出了一种因果关系估计器,即通过人工神经网络(nCREANN)进行的非线性因果关系估计,它可以识别大脑中有效连接的线性和非线性成分。此外,它可以通过计算网络输入输出映射的线性和非线性部分来区分这两种类型的连接性组件。已使用合成数据验证了nCREANN的性能,然后将其应用于自闭症谱系障碍(ASD)儿童和典型发育中(TD)儿童休息期间收集的EEG数据。结果表明,TD受试者的整体线性连通性较高,而非线性连通性成分在ASD中占主导地位。我们建议,我们的发现可能代表ASD和TD受试者中不同的潜在神经激活动力学。 nCREANN的结果可能为交互式大脑区域之间的连通性提供新的见解。

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