精神分裂症治疗的神经生理生物标志物

Gregory A. Light , Yash B. Joshi , Juan L. Molina , Savita G. Bhakta , John A. Nungaray , Lauren Cardoso , Juliana E. Kotz , Michael L. Thomas , Neal R. Swerdlow
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引用次数: 15

摘要

慢性精神障碍,包括精神分裂症(SZ),在从遗传学到临床表现和治疗敏感性的许多分析水平上都是高度异质性的。这种异质性既反映了共享的生物学途径从一百多个“风险基因”到许多不同的临床表型的分化,也反映了不同的生物学途径趋同于慢性精神病的共享“表型”。开发“下一代”SZ干预措施的成功策略-包括“促认知”药物,认知补救,神经刺激及其组合-将通过使用生物信号或表征治疗敏感亚群的“生物标志物”来解决这些临床异质性途径。在复杂的SZ生物学中识别和检测这些有意义的信号是一项令人烦恼的科学挑战。基于早期听觉信息加工(EAIP)作为认知和功能的强大介质的功能重要性、它们在应对药物和非药物治疗“挑战”时的可塑性,以及它们作为高度定量、稳健和可靠的大脑活动测量的实验特征,我们提出合理的起点是早期听觉信息加工(EAIP)的神经生理测量。在这里,我们描述了我们目前开发用于“下一代”SZ治疗敏感性的神经生理生物标志物的一些方法,以及我们在不久的将来设想的一些潜在的新颖实验策略。
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Neurophysiological biomarkers for schizophrenia therapeutics

Chronic psychotic disorders, including schizophrenia (SZ), are highly heterogeneous at many levels of analysis, from genetics to clinical presentation and treatment sensitivity. This heterogeneity reflects both a divergence of shared biological pathways moving from over a hundred “risk genes” to many different clinical phenotypes, and the convergence of distinct biological pathways to a shared “phenocopies” of chronic psychosis. Successful strategies for developing “next generation” interventions in SZ – including “pro-cognitive” medications, cognitive remediation, neurostimulation and combinations thereof – will address these pathways to clinical heterogeneity by using biological signals, or “biomarkers” that characterize treatment-sensitive subpopulations. Identifying and detecting these meaningful signals in the complex biology of SZ is a vexing scientific challenge. We propose that rational starting points are neurophysiological measures of early auditory information processing (EAIP), based on their functional importance as strong mediators of both cognition and function in SZ, their plasticity in response to both pharmacologic and non-pharmacologic therapeutic “challenge”, and their experimental characteristics as highly quantitative, robust and reliable measures of brain activity. Here we describe some of our current approaches to developing neurophysiological biomarkers for “next generation” therapeutic sensitivity in SZ, and some potentially novel experimental strategies that we envision on the near horizon.

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来源期刊
Biomarkers in Neuropsychiatry
Biomarkers in Neuropsychiatry Medicine-Psychiatry and Mental Health
CiteScore
4.00
自引率
0.00%
发文量
12
审稿时长
7 weeks
期刊最新文献
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