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Artificial Neural Network Inspired by Neuroimaging Connectivity: Application in Autism Spectrum Disorder

机译:受神经影像连接性启发的人工神经网络:在自闭症谱系障碍中的应用

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Distinguishing the autism spectrum disorder (ASD) from typical control (TC) using resting-state functional magnetic resonance imaging (rs-fMRI) is very difficult because ASD has heterogenetic properties and induce small changes in the brain structure. Moreover, distinguishing ASD from TC using the data obtained from many sites is even more difficult because many factors might negatively affect the classification model leading to unstable results. This difficulty is especially true for existing rs-fMRI analysis methods such as functional connectivity analysis. Recent studies have shown better ASD classification performance using models constructed using recurrent neural network (RNN). However, a blinded application of RNN not considering the multi-site factors is sub-optimal. In this paper, we present an artificial neural network model inspired by the existing functional connectivity analysis modeling. Our model includes layers that play the role of spatial reduction, temporal feature extraction, and combining phenotypic data (inclusive of multisite data) for classifying ASD. We applied the cross validation framework to the multi-site rs-fMRI dataset to test the proposed model. Our best model showed an accuracy of 74.54%, which is superior to the existing functional connectivity analysis with an accuracy of 54.05%.
机译:使用静止状态功能磁共振成像(rs-fMRI)来区分自闭症谱系障碍(ASD)与典型对照(TC)非常困难,因为ASD具有异质性并且会引起大脑结构的微小变化。此外,使用从许多站点获得的数据来区分ASD和TC更加困难,因为许多因素可能会对分类模型产生负面影响,从而导致结果不稳定。对于现有的rs-fMRI分析方法(例如功能连通性分析)而言,这一困难尤其明显。最近的研究表明,使用递归神经网络(RNN)构建的模型具有更好的ASD分类性能。但是,不考虑多站点因素的RNN盲目应用是次优的。在本文中,我们提出了一个受现有功能连接分析模型启发的人工神经网络模型。我们的模型包括发挥空间缩减,时间特征提取以及合并表型数据(包括多位点数据)以对ASD进行分类的层。我们将交叉验证框架应用于多站点rs-fMRI数据集,以测试提出的模型。我们的最佳模型显示出74.54%的准确度,优于现有的功能连接分析,准确度为54.05%。

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