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A Machine Learning Approach Using P300 Responses to Investigate Effect of Clozapine Therapy

机译:一种机器学习方法,采用P300反应调查氯氮平治疗的影响

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Clozapine (CLZ) is uniquely effective as a treatment for medication resistant schizophrenia. Information regarding its mechanism of action may offer clues to the pathophysiology of the disease and to improved treatment. In this study we employ a machine learning (ML) analysis of P300 evoked potentials obtained from quantitative electroencephalography(QEEG) data to identify changes in the brain induced by CLZ treatment. We employ brain source localization (BSL) on the EEG signals to extract source waveforms from specified regions of the brain. A subset of 8 features is selected from a large set of candidate features (consisting of spectral coherences between all identified source waveforms at multiple frequencies) that discriminate (by means of a classifier) between the pre- and post-treatment data for the schizophrenics (SCZ) most responsive to CLZ. We show these same selected features also discriminate between pre-treatment most responsive SCZ and healthy volunteers (HV), but not after treatment. Of note, these same features discriminate the least responsive SCZ from HV both pre- and post-treatment. This analysis suggests that the net beneficial effects of CLZ in SCZ are reflected in a normalization of P300 brain-source generators.
机译:氯氮平(CLZ)作为药物抗性精神分裂症的治疗是独特的有效性。有关其行动机制的信息可以向疾病的病理生理学和改善治疗提供线索。在这项研究中,我们采用了从定量脑电图(QEEG)数据获得的P300诱发电位的机器学习(ML)分析,以识别CLZ治疗诱导的脑中的变化。我们在EEG信号上采用大脑源定位(BSL)以从大脑的指定区域提取源波形。 8个特征的子集选自大量候选特征(由多个频率的所有识别源波形之间的光谱相干),其在精神分裂症的预处理和后处理数据之间区分(通过分类器)( SCZ)对CLZ最敏感。我们展示了这些相同的选定特征,也区分了预处理最敏感的SCZ和健康志愿者(HV),但不在治疗后。值得注意的是,这些特征在预处理和后处理中区分了来自HV的最小响应性SCZ。该分析表明,CLZ在SCZ中的净有益效果反映在P300脑源发生器的标准化中。

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