Department of Psychiatry, Taipei Veterans General Hospital, Taipei, Taiwan; Division of Psychiatry, School of Medicine, National Yang-Ming Chiao-Tung University, Taipei, Taiwan; Institute of Brain Science and Brain Research Center, School of Medicine, National Yang-Ming Chiao-Tung University, Taipei, Taiwan; Institute of Cognitive Neuroscience, National Central University, Jhongli, Taiwan.
Graduate Institute of Biomedical Electronics and Bioinformatics College of Electrical Engineering and Computer Science, National Taiwan University, Taipei, Taiwan.
J Affect Disord. 2023 Dec 15;343:86-95. doi: 10.1016/j.jad.2023.08.059. Epub 2023 Aug 12.
10-Hz repetitive transcranial magnetic stimulation(rTMS) and intermittent theta-burst stimulation(iTBS) over left prefrontal cortex are FDA-approved, effective options for treatment-resistant depression (TRD). Optimal prediction models for iTBS and rTMS remain elusive. Therefore, our primary objective was to compare prediction accuracy between classification by frontal theta activity alone and machine learning(ML) models by linear and non-linear frontal signals. The second objective was to study an optimal ML model for predicting responses to rTMS and iTBS.
Two rTMS and iTBS datasets (n = 163) were used: one randomized controlled trial dataset (RCTD; n = 96) and one outpatient dataset (OPD; n = 67). Frontal theta and non-linear EEG features that reflect trend, stability, and complexity were extracted. Pretreatment frontal EEG and ML algorithms, including classical support vector machine(SVM), random forest(RF), XGBoost, and CatBoost, were analyzed. Responses were defined as ≥50 % depression improvement after treatment. Response rates between those with and without pretreatment prediction in another independent outpatient cohort (n = 208) were compared.
Prediction accuracy using combined EEG features by SVM was better than frontal theta by logistic regression. The accuracy for OPD patients significantly dropped using the RCTD-trained SVM model. Modern ML models, especially RF (rTMS = 83.3 %, iTBS = 88.9 %, p-value(ACC > NIR) < 0.05 for iTBS), performed significantly above chance and had higher accuracy than SVM using both selected features (p < 0.05, FDR corrected for multiple comparisons) or all EEG features. Response rates among those receiving prediction before treatment were significantly higher than those without prediction (p = 0.035).
The first study combining linear and non-linear EEG features could accurately predict responses to left PFC iTBS. The bootstraps-based ML model (i.e., RF) had the best predictive accuracy for rTMS and iTBS.
10Hz 重复经颅磁刺激(rTMS)和间歇性经颅磁刺激(iTBS)作用于左前额叶皮层已获得美国食品和药物管理局(FDA)批准,是治疗抵抗性抑郁症(TRD)的有效方法。但 iTBS 和 rTMS 的最佳预测模型仍难以确定。因此,我们的主要目标是比较单独通过额部θ活动进行分类和通过线性及非线性额部信号进行机器学习(ML)模型的预测准确性。第二个目标是研究预测 rTMS 和 iTBS 反应的最佳 ML 模型。
使用了两个 rTMS 和 iTBS 数据集(n=163):一个随机对照试验数据集(RCTD;n=96)和一个门诊数据集(OPD;n=67)。提取反映趋势、稳定性和复杂性的额部θ和非线性 EEG 特征。分析了预处理额部 EEG 和 ML 算法,包括经典支持向量机(SVM)、随机森林(RF)、XGBoost 和 CatBoost。以治疗后抑郁改善≥50%定义为反应。比较另一独立门诊队列(n=208)中有无预处理预测的患者之间的反应率。
SVM 结合 EEG 特征的预测准确性优于逻辑回归的额部θ。使用 RCTD 训练的 SVM 模型时,OPD 患者的准确性显著下降。现代 ML 模型,尤其是 RF(rTMS=83.3%,iTBS=88.9%,p 值(ACC>NIR)<0.05 用于 iTBS),显著高于机会水平,并且使用所选特征(p<0.05,FDR 校正多重比较)或所有 EEG 特征时,其准确性均高于 SVM。接受治疗前进行预测的患者的反应率明显高于未进行预测的患者(p=0.035)。
第一项结合线性和非线性 EEG 特征的研究可以准确预测左前额叶皮层 iTBS 的反应。基于引导的 ML 模型(即 RF)对 rTMS 和 iTBS 具有最佳预测准确性。