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Evaluation of Quantitative EEG by Classification and Regression Trees to Characterize Responders to Antidepressant and Placebo Treatment

机译:通过分类和回归树评估定量脑电图,以表征抗抑郁药和安慰剂治疗的反应者

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The study objective was to evaluate the usefulness of Classification and Regression Trees (CART), to classify clinical responders to antidepressant and placebo treatment, utilizing symptom severity and quantitative EEG (QEEG) data. Patients included 51 adults with unipolar depression who completed treatment trials using either fluoxetine, venlafaxine or placebo. Hamilton Depression Rating Scale (HAM-D) and single electrodes data were recorded at baseline, 2, 7, 14, 28 and 56 days. Patients were classified as medication and placebo responders or non-responders. CART analysis of HAM-D scores showed that patients with HAM-D scores lower than 13 by day 7 were more likely to be treatment responders to fluoxetine or venlafaxine compared to non-responders (p=0.001). Youden’s index γ revealed that CART models using QEEG measures were more accurate than HAM-D-based models. For patients given fluoxetine, patients with a decrease at day 2 in θ cordance at AF2 were classified by CART as treatment responders (p=0.02). For those receiving venlafaxine, CART identified a decrease in δ absolute power at day 7 at the PO2 region as characterizing treatment responders (p=0.01). Using all patients receiving medication, CART identified a decrease in δ absolute power at day 2 in the FP1 region as characteristic of nonresponse to medication (p=0.003). Optimal trees from the QEEG CART analysis primarily utilized cordance values, but also incorporated some δ absolute power values. The results of our study suggest that CART may be a useful method for identifying potential outcome predictors in the treatment of major depression.
机译:研究目的是利用症状严重程度和定量脑电图(QEEG)数据评估分类和回归树(CART)的有效性,对抗抑郁药和安慰剂治疗的临床反应者进行分类。患者包括51名单极性抑郁的成年人,他们使用氟西汀,文拉法辛或安慰剂完成了治疗试验。在基线第2、7、14、28和56天记录汉密尔顿抑郁量表(HAM-D)和单电极数据。患者分为药物和安慰剂反应者或无反应者。 CHAM对HAM-D评分的分析表明,到第7天,HAM-D评分低于13的患者比起无反应者,更可能是对氟西汀或文拉法辛的治疗反应者(p = 0.001)。尤登指数γ表示,使用QEEG测度的CART模型比基于HAM-D的模型更为准确。对于接受氟西汀治疗的患者,第2天在AF2时θ焦虑下降的患者被CART分类为治疗反应者(p = 0.02)。对于那些接受文拉法辛治疗的患者,CART确定了PO2区域第7天的δ绝对功率降低是治疗反应者的特征(p = 0.01)。在所有接受药物治疗的患者中,CART确认FP1区域第2天的δ绝对功率降低是对药物无反应的特征(p = 0.003)。通过QEEG CART分析得出的最佳树主要利用了Cordance值,但也合并了一些δ绝对功率值。我们的研究结果表明,CART可能是一种用于识别重度抑郁症潜在预后指标的有用方法。

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