Advanced Brain Monitoring Inc., Carlsbad, CA, USA.
Weill Cornell Medical College, New York, NY, USA.
J Parkinsons Dis. 2020;10(2):471-480. doi: 10.3233/JPD-191844.
There is a need for reliable and robust Parkinson's disease biomarkers that reflect severity and are sensitive to disease modifying investigational therapeutics.
To demonstrate the utility of EEG as a reliable, quantitative biomarker with potential as a pharmacodynamic endpoint for use in clinical assessments of neuroprotective therapeutics for Parkison's disease.
A multi modal study was performed including aquisition of resting state EEG data and dopamine transporter PET imaging from Parkinson's disease patients off medication and compared against age-matched controls.
Qualitative and test/retest analysis of the EEG data demonstrated the reliability of the methods. Source localization using low resolution brain electromagnetic tomography identified significant differences in Parkinson's patients versus control subjects in the anterior cingulate and temporal lobe, areas with established association to Parkinson's disease pathology. Changes in cortico-cortical and cortico-thalamic coupling were observed as excessive EEG beta coherence in Parkinson's disease patients, and correlated with UPDRS scores and dopamine transporter activity, supporting the potential for cortical EEG coherence to serve as a reliable measure of disease severity. Using machine learning approaches, an EEG discriminant function analysis classifier was identified that parallels the loss of dopamine synapses as measured by dopamine transporter PET.
Our results support the utility of EEG in characterizing alterations in neurophysiological oscillatory activity associated with Parkinson's disease and highlight potential as a reliable method for monitoring disease progression and as a pharmacodynamic endpoint for Parkinson's disease modification therapy.
需要可靠且稳健的帕金森病生物标志物,以反映疾病严重程度,并对潜在的疾病修饰治疗药物敏感。
证明 EEG 作为一种可靠的、定量生物标志物的效用,具有成为帕金森病神经保护治疗临床评估中药效终点的潜力。
进行了一项多模态研究,包括获取帕金森病患者停药时的静息状态 EEG 数据和多巴胺转运体 PET 成像,并与年龄匹配的对照组进行比较。
EEG 数据的定性和测试/重测分析证明了该方法的可靠性。使用低分辨率脑电磁断层成像进行的源定位,确定了帕金森病患者与对照组在扣带回前部和颞叶区域的显著差异,这些区域与帕金森病病理有明确的关联。皮质-皮质和皮质-丘脑耦合的变化在帕金森病患者中观察到过度的 EEG β相干,与 UPDRS 评分和多巴胺转运体活性相关,支持皮质 EEG 相干作为可靠的疾病严重程度测量的潜力。使用机器学习方法,确定了一种 EEG 判别函数分析分类器,该分类器与多巴胺转运体 PET 测量的多巴胺突触丧失相平行。
我们的结果支持 EEG 用于描述与帕金森病相关的神经生理振荡活动的改变,并强调其作为监测疾病进展和作为帕金森病修饰治疗药效终点的可靠方法的潜力。