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首页> 外文期刊>Brain Sciences >A Three-Stage Teacher, Student Neural Networks and Sequential Feed Forward Selection-Based Feature Selection Approach for the Classification of Autism Spectrum Disorder
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A Three-Stage Teacher, Student Neural Networks and Sequential Feed Forward Selection-Based Feature Selection Approach for the Classification of Autism Spectrum Disorder

机译:三阶段教师,学生神经网络和基于顺序馈线的基于顺序馈线的特征选择方法,用于自闭症谱系障碍分类

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Autism disorder, generally known as Autism Spectrum Disorder (ASD) is a brain disorder characterized by lack of communication skills, social aloofness and repetitions in the actions in the patients, which is affecting millions of the people across the globe. Accurate identification of autistic patients is considered a challenging task in the domain of brain disorder science. To address this problem, we have proposed a three-stage feature selection approach for the classification of ASD on the preprocessed Autism Brain Imaging Data Exchange (ABIDE) rs-fMRI Dataset. In the first stage, a large neural network which we call a “Teacher ” was trained on the correlation-based connectivity matrix to learn the latent representation of the input. In the second stage an autoencoder which we call a “Student” autoencoder was given the task to learn those trained “Teacher” embeddings using the connectivity matrix input. Lastly, an SFFS-based algorithm was employed to select the subset of most discriminating features between the autistic and healthy controls. On the combined site data across 17 sites, we achieved the maximum 10-fold accuracy of 82% and for the individual site-wise data, based on 5-fold accuracy, our results outperformed other state of the art methods in 13 out of the total 17 site-wise comparisons.
机译:通常称为自闭症谱系(ASD)的自闭症紊乱是一种脑障碍,其特征在于缺乏沟通技巧,社会水果性和重复的患者的行为,这是影响全球数百万的人。准确的自闭症患者的鉴定被认为是脑病科学领域的一个具有挑战性的任务。为了解决这个问题,我们提出了一个三阶段特征选择方法,用于在预处理的自动脑成像数据交换(遵守)RS-FMRI数据集上的ASD分类。在第一阶段,我们称之为“教师”的大型神经网络在基于相关的连接矩阵上培训,以了解输入的潜在表示。在第二阶段,我们称之为“学生”的AutoEncoder的AutoEncoder是使用连接矩阵输入学习那些训练有素的“教师”嵌入的任务。最后,采用基于SFF的算法来选择自闭症和健康控制之间最具区别的特征的子集。在17个站点的组合网站数据上,我们实现了82%的最大10倍,对于各个站点和数据,基于5倍的准确性,我们的结果表现出13个中的其他最新方法总计17个网站明智的比较。

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