Department of Psychiatry, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Carolina Center for Neurostimulation, University of North Carolina at Chapel Hill, Chapel Hill, NC, USA.
Clin EEG Neurosci. 2023 Jul;54(4):399-408. doi: 10.1177/15500594221112417. Epub 2022 Jul 21.
The Research Domain Criteria (RDoC) initiative challenges researchers to build neurobehavioral models of psychiatric illness with the hope that such models identify better targets that will yield more effective treatment. However, a guide for building such models was not provided and symptom heterogeneity within Diagnostic Statistical Manual categories has hampered progress in identifying endophenotypes that underlie mental illness. We propose that the best chance to discover viable biomarkers and treatment targets for psychiatric illness is to investigate a triangle of relationships: severity of a specific psychiatric symptom that correlates to mental activity that correlates to a neural activity signature. We propose that this is the minimal model complexity required to advance the field of psychiatry. With an understanding of how neural activity relates to the experience of the patient, a genuine understanding for how treatment imparts its therapeutic effect is possible. After the discovery of this three-fold relationship, causal testing is required in which the neural activity pattern is directly enhanced or suppressed to provide causal, instead of just correlational, evidence for the biomarker. We suggest using non-invasive brain stimulation (NIBS) as these techniques provide tools to precisely manipulate spatial and temporal activity patterns. We detail how this approach enabled the discovery of two orthogonal electroencephalography (EEG) activity patterns associated with anhedonia and anxiosomatic symptoms in depression that can serve as future treatment targets. Altogether, we propose a systematic approach for building neurobehavioral models for dimensional psychiatry.
研究领域标准(RDoC)计划挑战研究人员构建精神疾病的神经行为模型,希望这些模型能确定更好的靶点,从而产生更有效的治疗方法。然而,并没有提供构建此类模型的指南,并且诊断统计手册类别中的症状异质性阻碍了确定潜在精神疾病的表型的进展。我们提出,发现精神疾病可行生物标志物和治疗靶点的最佳机会是研究一个三角形关系:与精神活动相关的特定精神症状的严重程度与与神经活动特征相关的精神活动。我们提出,这是推进精神病学领域所需的最小模型复杂性。了解神经活动如何与患者的体验相关,就有可能真正了解治疗如何发挥其治疗效果。在发现这种三重关系之后,需要进行因果关系测试,其中直接增强或抑制神经活动模式,以提供生物标志物的因果关系证据,而不仅仅是相关关系证据。我们建议使用非侵入性脑刺激(NIBS),因为这些技术提供了精确操纵空间和时间活动模式的工具。我们详细介绍了这种方法如何能够发现与抑郁症中快感缺乏和焦虑躯体症状相关的两种正交脑电图(EEG)活动模式,这些模式可以作为未来的治疗靶点。总之,我们提出了一种用于构建维度精神病学神经行为模型的系统方法。