跳至主要内容
临床试验/NCT05592600
NCT05592600
已完成
不适用

Investigating Electroencephalographic Predictors of Default Mode Network Anticorrelation for Personalized Neurofeedback

Drexel University1 个研究点 分布在 1 个国家目标入组 24 人2023年10月6日
适应症Healthy
干预措施Neurofeedback

概览

阶段
不适用
干预措施
Neurofeedback
疾病 / 适应症
Healthy
发起方
Drexel University
入组人数
24
试验地点
1
主要终点
Association Between EEG Measurements and Default Mode Network Brain Activity Measured With fMRI
状态
已完成
最后更新
上个月

概览

简要总结

Healthy adult subjects will participate in two sessions. The first session will involve measurements of brain activity using simultaneous recordings with electroencephalography (EEG) and functional Magnetic Resonance Imaging (fMRI). During brain activity measurement, participants will perform cognitive tasks assessing attention. The second will involve fMRI-based neurofeedback during simultaneous EEG-fMRI recording. Participants will receive real-time visual feedback of signals measured from specific parts of their brain and will try to control that activity.

详细描述

Neuropsychiatric conditions are increasingly being understood as disorders of intrinsic, functional interactions within and between widespread, distributed, brain networks. Given recent advances in functional Magnetic Resonance Imaging (fMRI) data acquisition and computational analysis, it is now possible to reliably map the functional neuroanatomy of brain networks within individuals, offering a potential avenue for identifying personalized neurotherapeutic targets. However, gold standard treatments (e.g. pharmacotherapy) in current psychiatric practice were not originally designed to target specific brain network interactions and lack protocols that leverage such individual-level data. Real-time neurofeedback- whereby patients observe and learn to regulate selected aspects of their own brain activity- is a candidate approach to personally tailor the normalization of unhealthy communication within and between brain networks. However, to target the major brain networks that function abnormally in neuropsychiatric conditions, neurofeedback relies on fMRI, which is an expensive procedure involving a complex setup and patient burden. The goal of this project is to develop an electroencephalography (EEG) "fingerprint" of fMRI network dynamics so that a neurofeedback system based on EEG (electrodes placed on the scalp) alone can be used to precisely target interactions within and between brain networks. Because EEG devices can be portable and offer relatively simple setup in flexible settings, this research could enable a scalable form of network-based neurofeedback training that patients could regularly access. Aim 1 of this research is identify an optimal model of EEG features that are predictive of fMRI-based default mode network (DMN) "antagonism" within individuals. The investigators focus on this DMN antagonism because it is a major feature that is relevant to cognitive dysfunction in psychiatry disease at a transdiagnostic level. The investigators will collect high-quality, simultaneous EEG-fMRI data in 24 healthy adults (\>100 mins of sampling per participant), including three conditions: (1) resting state, (2) continuous task performance, and (3) continuous fMRI-based neurofeedback from DMN antagonism states. The investigators will apply machine learning-based methods to identify an optimal mapping between EEG signal components and fMRI-based DMN antagonism. Further, the investigators will determine how much individual-level EEG-fMRI sampling is needed to successfully predict DMN antagonism from EEG. Aim 2 of the research is to test whether EEG markers of DMN antagonism are predictive of cognitive task performance fluctuations within individuals. As such, the findings could offer validation of the behavioral relevance of an EEG neurofeedback system that would target DMN antagonism. If successful, the work can lead to development of an accessible, computational psychiatry tool that can be tested in clinical conditions in which DMN antagonism (and related cognitive function) is affected, including attention-deficit/hyperactivity disorder, depression and schizophrenia.

注册库
clinicaltrials.gov
开始日期
2023年10月6日
结束日期
2025年2月24日
最后更新
上个月
研究类型
Interventional
研究设计
Single Group
性别
All

研究者

责任方
Sponsor

入排标准

入选标准

  • Age between 18-35

排除标准

  • History of psychiatric or neurological disorder
  • contraindication for MRI

研究组 & 干预措施

Neurofeedback

Subjects will undergo one session where they will visualize real-time feedback of signals recorded from their brains.

干预措施: Neurofeedback

结局指标

主要结局

Association Between EEG Measurements and Default Mode Network Brain Activity Measured With fMRI

时间窗: Two sessions 3 to 62 days

The investigators determined the degree to which features within EEG signals can approximate fMRI (default mode network activation) while participants performed cognitive tasks and brain activity was recorded with simultaneous EEG-fMRI. Model predictions (EEG prediction of fMRI) within each participant were generated from multiple EEG features, including spectral power in different frequency bands (Theta: 4-7 Hz, Alpha: 8-12 Hz, Beta1: 13-22 Hz, Beta2: 23-29 Hz, Gamma: 30-50 Hz). The average temporal correlation across the two sessions was computed between EEG and fMRI. A higher correlation indicated that EEG was more predictive of fMRI, whereas a lower correlation indicated EEG was less predictive of fMRI.

研究点 (1)

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