LSTM-based Electroencephalogram Classification on Autism Spectrum Disorder

N. A. Ali, A. R. Syafeeza, A. Jaafar, S. Shamsuddin, Norazlin Kamal Nor
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引用次数: 3

Abstract

Autism Spectrum Disorder (ASD) is categorized as a neurodevelopmental disability. Having an automated technology system to classify the ASD trait would have a huge influence on paediatricians, which can aid them in diagnosing ASD in children using a quantifiable method. A novel autism diagnosis method based on a bidirectional long-short-term-memory (LSTM) network's deep learning algorithm is proposed. This multi-layered architecture merges two LSTM blocks with the other direction of propagation to classify the output state on the brain signal data from an electroencephalogram (EEG) on individuals; normal and autism obtained from the Simon Foundation Autism Research Initiative (SFARI) database. The accuracy of 99.6% obtained for 90:10 train:test data distribution, while the accuracy of 97.3% was achieved for 70:30 distribution. The result shows that the proposed approach had better autism classification with upgraded efficiency compared to single LSTM network method and potentially giving a significant contribution in neuroscience research.
基于lstm的自闭症谱系障碍脑电图分类
自闭症谱系障碍(ASD)被归类为神经发育障碍。拥有一个自动化的技术系统来分类ASD特征将对儿科医生产生巨大的影响,这可以帮助他们使用可量化的方法来诊断儿童的ASD。提出了一种基于双向长短期记忆(LSTM)网络深度学习算法的自闭症诊断方法。该多层结构将两个LSTM块与另一个传播方向合并,对个体脑电图信号数据的输出状态进行分类;从西蒙基金会自闭症研究倡议(SFARI)数据库中获得的正常和自闭症数据。90:10训练:测试数据分布的准确率为99.6%,70:30分布的准确率为97.3%。结果表明,该方法与单一LSTM网络方法相比,具有更好的自闭症分类效果和更高的分类效率,有望为神经科学研究做出重要贡献。
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