基于脑机接口的机器学习分类方法诊断ASD的可行性研究

T. Roopa Rechal, P. Rajesh Kumar, Sk. Ebraheem Khaleelulla
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引用次数: 1

摘要

基于脑电图(EEG)的信号处理方法是确定和监测神经性脑疾病(如自闭症)的重要临床工具。本文介绍了一种整合各种神经影像学方法来表征自闭症大脑的新建议。事实上,诊断和检测这种疾病是具有挑战性的;因此,它需要最有效的检测算法。提出了一种将VMD+PIE+监督学习相结合的自闭症识别新方法,填补了该领域现有的空白。通过波恩大学和Kaggle数据库获取脑电数据集,测试该方法的性能。首先,利用VMD技术对每个脑电信号进行特征提取;然后使用预测器重要性估计(PIE)从提取的特征中选择最佳特征。最后,使用监督学习算法(KNN, SVM和ANN)将信号分类为正常组或自闭症组。结果表明,所提出的技术达到了很高的准确性,为自闭症的诊断和分类提供了一种强有力的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Feasibility Approach in Diagnosing ASD with PIE via Machine Learning Classification Approach using BCI
Electroencephalogram (EEG)-based signal processing methods are essential clinical tools to determine and monitor neurological brain disorders such as autism. This article introduces a novel proposal to integrate various neuroimaging methods to characterize an autistic brain. In fact, it is challenging to diagnose and detect the disorder; therefore, it requires the most efficient algorithms for detection. A novel autism identification approach with a combination of VMD+PIE+supervised learning approach is propounded, which can fill the existing gap in the field. The EEG dataset is acquired via the Bonn University and Kaggle database to test the proposed method's performance. Firstly, the VMD technique is used for extracting features from each EEG signal. Then the Predictor Importance Estimates (PIE) have been employed to select the best features from the extracted features. Finally, using supervised learning algorithms (KNN, SVM and ANN), the signals are categorized into a normal or autistic group. The outcome illustrates that the proposed technique attains high accuracy, indicating a powerful way to diagnose and categorize autism.
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