Ebrahimzadeh Elias, Fayaz Farahnaz, Rajabion Lila, Seraji Masoud, Aflaki Fatemeh, Hammoud Ahmad, Taghizadeh Zahra, Asgarinejad Mostafa, Soltanian-Zadeh Hamid
School of Electrical and Computer Engineering, College of Engineering, University of Tehran, Tehran, Iran.
School of Cognitive Sciences, Institute for Research in Fundamental Sciences (IPM), Tehran, Iran.
Front Syst Neurosci. 2023 Mar 9;17:919977. doi: 10.3389/fnsys.2023.919977. eCollection 2023.
Predicting the therapeutic result of repetitive transcranial magnetic stimulation (rTMS) treatment could save time and costs as ineffective treatment can be avoided. To this end, we presented a machine-learning-based strategy for classifying patients with major depression disorder (MDD) into responders (R) and nonresponders (NR) to rTMS treatment. Resting state EEG data were recorded using 32 electrodes from 88 MDD patients before treatment. Then, patients underwent 7 weeks of rTMS, and 46 of them responded to treatment. By applying Independent Component Analysis (ICA) on EEG, we identified the relevant brain sources as possible indicators of neural activity in the dorsolateral prefrontal cortex (DLPFC). This was served through estimating the generators of activity in the sensor domain. Subsequently, we added physiological information and placed certain terms and conditions to offer a far more realistic estimation than the classic EEG. Ultimately, those components mapped in accordance with the region of the DLPFC in the sensor domain were chosen. Features extracted from the relevant ICs time series included permutation entropy (PE), fractal dimension (FD), Lempel-Ziv Complexity (LZC), power spectral density, correlation dimension (CD), features based on bispectrum, frontal and prefrontal cordance, and a combination of them. The most relevant features were selected by a Genetic Algorithm (GA). For classifying two groups of R and NR, K-Nearest Neighbor (KNN), Support Vector Machine (SVM), and Multilayer Perceptron (MLP) were applied to predict rTMS treatment response. To evaluate the performance of classifiers, a 10-fold cross-validation method was employed. A statistical test was used to assess the capability of features in differentiating R and NR for further research. EEG characteristics that can predict rTMS treatment response were discovered. The strongest discriminative indicators were EEG beta power, the sum of bispectrum diagonal elements in delta and beta bands, and CD. The Combined feature vector classified R and NR with a high performance of 94.31% accuracy, 92.85% specificity, 95.65% sensitivity, and 92.85% precision using SVM. This result indicates that our proposed method with power and nonlinear and bispectral features from relevant ICs time-series can predict the treatment outcome of rTMS for MDD patients only by one session pretreatment EEG recording. The obtained results show that the proposed method outperforms previous methods.
预测重复经颅磁刺激(rTMS)治疗的效果可以节省时间和成本,因为可以避免无效治疗。为此,我们提出了一种基于机器学习的策略,用于将重度抑郁症(MDD)患者分为对rTMS治疗有反应者(R)和无反应者(NR)。在治疗前,使用32个电极记录了88例MDD患者的静息态脑电图数据。然后,患者接受了7周的rTMS治疗,其中46例对治疗有反应。通过对脑电图应用独立成分分析(ICA),我们确定了相关脑源,作为背外侧前额叶皮层(DLPFC)神经活动的可能指标。这是通过估计传感器域中活动的发生器来实现的。随后,我们添加了生理信息并设定了某些条款和条件,以提供比经典脑电图更现实的估计。最终,选择了那些在传感器域中根据DLPFC区域映射的成分。从相关独立成分的时间序列中提取的特征包括排列熵(PE)、分形维数(FD)、莱姆普尔-齐夫复杂度(LZC)、功率谱密度、关联维数(CD)、基于双谱的特征、额叶和前额叶协调性以及它们的组合。通过遗传算法(GA)选择最相关的特征。为了对R和NR两组进行分类,应用了K近邻(KNN)、支持向量机(SVM)和多层感知器(MLP)来预测rTMS治疗反应。为了评估分类器的性能,采用了10折交叉验证方法。使用统计检验来评估特征区分R和NR的能力,以便进一步研究。发现了可以预测rTMS治疗反应的脑电图特征。最强的判别指标是脑电图β功率、δ和β波段双谱对角元素之和以及CD。使用SVM,组合特征向量对R和NR进行分类,准确率高达94.31%,特异性为92.85%,敏感性为95.65%,精确率为92.85%。这一结果表明,我们提出的利用相关独立成分时间序列的功率、非线性和双谱特征的方法,仅通过一次治疗前脑电图记录就能预测MDD患者的rTMS治疗结果。所得结果表明,所提出的方法优于先前的方法。