Singh Kuldeep, Malhotra Jyoteesh
Department of Electronics Technology, Guru Nanak Dev University, Amritsar, Punjab, India.
Department of Engineering & Technology, Guru Nanak Dev University Regional Campus, Jalandhar, Punjab, India.
Phys Eng Sci Med. 2021 Mar;44(1):313-324. doi: 10.1007/s13246-021-00970-y. Epub 2021 Jan 12.
The present paper proposes a smart framework for detection of epileptic seizures using the concepts of IoT technologies, cloud computing and machine learning. This framework processes the acquired scalp EEG signals by Fast Walsh Hadamard transform. Then, the transformed frequency-domain signals are examined using higher-order spectral analysis to extract amplitude and entropy-based statistical features. The extracted features have been selected by means of correlation-based feature selection algorithm to achieve more real-time classification with reduced complexity and delay. Finally, the samples containing selected features have been fed to ensemble machine learning techniques for classification into several classes of EEG states, viz. normal, interictal and ictal. The employed techniques include Dagging, Bagging, Stacking, MultiBoost AB and AdaBoost M1 algorithms in integration with C4.5 decision tree algorithm as the base classifier. The results of the ensemble techniques are also compared with standalone C4.5 decision tree and SVM algorithms. The performance analysis through simulation results reveals that the ensemble of AdaBoost M1 and C4.5 decision tree algorithms with higher-order spectral features is an adequate technique for automated detection of epileptic seizures in real-time. This technique achieves 100% classification accuracy, sensitivity and specificity values with optimally small classification time.
本文提出了一种利用物联网技术、云计算和机器学习概念来检测癫痫发作的智能框架。该框架通过快速沃尔什-哈达玛变换处理采集到的头皮脑电图(EEG)信号。然后,使用高阶谱分析对变换后的频域信号进行检查,以提取基于幅度和熵的统计特征。已通过基于相关性的特征选择算法选择提取的特征,以实现更实时的分类,同时降低复杂度和延迟。最后,将包含所选特征的样本输入到集成机器学习技术中,以分类为几种脑电图状态类别,即正常、发作间期和发作期。所采用的技术包括Dagging、Bagging、Stacking、MultiBoost AB和AdaBoost M1算法,并与作为基础分类器的C4.5决策树算法相结合。还将集成技术的结果与独立的C4.5决策树和支持向量机(SVM)算法进行了比较。通过仿真结果进行的性能分析表明,具有高阶谱特征的AdaBoost M1和C4.5决策树算法的集成是一种用于实时自动检测癫痫发作的合适技术。该技术在最佳小分类时间下实现了100%的分类准确率、灵敏度和特异性值。