Cynthia Kerson, Maha Yazbeck, Behnoosh Shahsavaripoor, Rebekah Walker, Phoebe Manalang-Monnier, Theodore Allen, L Eugene Arnold, Joel Lubar
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引用次数: 0
摘要
注意缺陷多动障碍是一种普遍的综合症,每年花费数十亿美元。根据预测基线脑电图值寻找有意义的干预措施可以减少症状补救的不确定性。本研究旨在加深对ADHD神经生理学的理解,并有助于其个性化治疗方法的发展。本研究回顾性评估了国际协作性ADHD神经反馈(ICAN)随机对照试验(7-10YO, N = 83)中theta/beta比率神经反馈(TBR-NFB)参与者的脑电图连通性。利用机器学习,研究了康纳斯老师和家长评分量表(CTPRS)上注意力不集中的改善与多动症相关网络中特定基线频率连接之间的关系,以寻找临床改善的预测因素。分析还考虑了特定的合并症、缓慢的认知节奏、ADHD表现、前后网络变化和治疗组。腹侧和背侧注意网络的失调,以及所有网络中的delta和hibeta频段是CTPRS临床改善的最强基线连通性预测因子。预测改善的连通性模式在主动NFB和对照组之间存在显著差异。其他发现包括脑电图连接失调、人口统计学和共病连接模式改善的预测因子。机器学习算法识别脑电图的连通性、网络和频率特征,以评估何时考虑ADHD干预。尽管证据不足,但我们研究的脑电图特征预测了ICAN TBR-NFB方案的改善。当考虑对ADHD症状进行干预时,多通道脑电图评估侧重于特定的大脑连接模式,可以为治疗选择提供见解。
EEG Connectivity as Predictor of ICAN ADHD Children's Improvement After Completion of Theta Beta Ratio Neurofeedback: Machine Learning Analyses.
Attention deficit hyperactivity disorder is a prevalent syndrome that costs billions of dollars annually. Finding meaningful interventions based upon predictive baseline EEG values can reduce uncertainty in symptom remediation. This study aims to deepen the understanding of ADHD neurophysiology and contribute to the development of personalized approaches in its treatment. This study retrospectively assessed EEG connectivity of participants in the International Collaborative ADHD Neurofeedback (ICAN) randomized controlled trial (7-10YO, N = 83) of theta/beta ratio neurofeedback (TBR-NFB). Using machine learning, it examined the relationship between inattention improvement on the Conners' Teacher and Parent Rating Scales (CTPRS) and specific baseline frequency connections within networks relevant to ADHD to find predictors of clinical improvement. Analyses were also performed considering specific comorbidities, slow cognitive tempo, ADHD presentation, pre-to-post network changes, and treatment group. Dysregulation in the ventral and dorsal attention networks, and delta and hibeta frequency bands throughout all networks were the strongest baseline connectivity predictors of clinical improvement on the CTPRS. The connectivity patterns predicting improvement differed significantly between active NFB and control. Other findings included predictors of improvements in EEG connectivity dysregulations, demographics, and connectivity patterns of comorbidity. Machine learning algorithms identified EEG features in connectivity, network, and frequency to assess when considering ADHD interventions. There was evidence, albeit weak, that the EEG features we studied predicted improvement with the ICAN TBR-NFB protocol. When considering interventions for ADHD symptoms, a multi-channel EEG evaluation that focuses on specific brain connectivity patterns may offer insight into treatment choice.
期刊介绍:
Applied Psychophysiology and Biofeedback is an international, interdisciplinary journal devoted to study of the interrelationship of physiological systems, cognition, social and environmental parameters, and health. Priority is given to original research, basic and applied, which contributes to the theory, practice, and evaluation of applied psychophysiology and biofeedback. Submissions are also welcomed for consideration in several additional sections that appear in the journal. They consist of conceptual and theoretical articles; evaluative reviews; the Clinical Forum, which includes separate categories for innovative case studies, clinical replication series, extended treatment protocols, and clinical notes and observations; the Discussion Forum, which includes a series of papers centered around a topic of importance to the field; Innovations in Instrumentation; Letters to the Editor, commenting on issues raised in articles previously published in the journal; and select book reviews. Applied Psychophysiology and Biofeedback is the official publication of the Association for Applied Psychophysiology and Biofeedback.