利用层相关性传播和卷积神经网络检测儿童多动症:脑电图分析

Q3 Health Professions Frontiers in Biomedical Technologies Pub Date : 2023-12-26 DOI:10.18502/fbt.v11i1.14507
Ali Nouri, Zahra Tabanfar
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引用次数: 0

摘要

目的:注意力缺陷多动障碍(ADHD)是一种神经发育障碍,始于儿童早期,往往持续到成年,会导致人格问题和社会行为问题。因此,在早期阶段检测多动症并开发有效的治疗方法是非常有意义的。本研究提出了一种基于深度学习的儿童多动症诊断模型。 材料与方法:本研究使用了 "首届全国电子脑电图数据分析大赛(First-National-EEG-Data-Analysis-Competition-with-Clinical-Application)"数据集。经过预处理后,数据被分割成 3 秒钟的时程,并从这些时程中提取频率特性。对每个通道分别进行傅立叶变换,然后将每个历元的二维矩阵(通道×频率)用作卷积神经网络(CNN)的输入。CNN 由两个卷积层、两个最大池化层、两个全连接层以及用于分类的输出层(共 9 层)组成。为了提高该方法的性能,对每个输入变量的分类输出进行了分析。换句话说,正在使用层相关性传播(LRP)算法研究每个通道/频率在最终分类中的作用。 结果根据 LRP 算法的结果,在下一阶段,只有有效的信道才会被用作卷积神经网络(CNN)的输入。这种方法对验证数据的最终准确率为 94.52%。在这项研究中,特征空间被可视化,有用的通道被挑选出来,深度结构能力被利用来诊断多动症。 结论研究结果表明,所提出的技术可用于有效诊断儿童多动症。
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Detection of ADHD Disorder in Children Using Layer-Wise Relevance Propagation and Convolutional Neural Network: An EEG Analysis
Purpose: Attention-Deficit-Hyperactivity-Disorder (ADHD) is a neurodevelopmental disorder that begins in early childhood and often persists into adulthood, causing personality issues and social behavior problems. Thus, detecting ADHD in its early stages and developing an effective therapy is of tremendous interest. This study presents a deep learning-based model for ADHD diagnosis in children. Materials and Methods: The 'First-National-EEG-Data-Analysis-Competition-with-Clinical-Application' dataset is used for this purpose. Following preprocessing, data is segmented into 3-second epochs, and frequency features are extracted from these epochs. The Fourier transform is applied to each channel separately, and the resulting two-dimensional matrix (channel×frequency) for each epoch is used as the Convolutional Neural Network's (CNN) input. The CNN is made up of two convolutional layers, two max pooling layers and two fully connected layers as well as the output layer (a total of 9 layers) for classification. To improve the method's performance, the output of the classification of each input variable is analyzed. In other words, the role of each channel/frequency in the final classification is being investigated using the Layer-wise Relevance Propagation (LRP) algorithm. Results: According to the results of the LRP algorithm, only efficient channels are employed as Convolutional Neural Network (CNN) inputs in the following stage. This method yields a final accuracy of 94.52% for validation data. In this study, the feature space is visualized, useful channels are selected, and deep structure capabilities are exploited to diagnose ADHD disorder. Conclusion: The findings suggest that the proposed technique can be used to effectively diagnose ADHD in children.
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来源期刊
Frontiers in Biomedical Technologies
Frontiers in Biomedical Technologies Health Professions-Medical Laboratory Technology
CiteScore
0.80
自引率
0.00%
发文量
34
审稿时长
12 weeks
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