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齿状回基因表达系统的整体状态测量可预测对抗抑郁药敏感的行为。

Global state measures of the dentate gyrus gene expression system predict antidepressant-sensitive behaviors.

作者信息

Samuels Benjamin A, Leonardo E David, Dranovsky Alex, Williams Amanda, Wong Erik, Nesbitt Addie May I, McCurdy Richard D, Hen Rene, Alter Mark

机构信息

Departments of Psychiatry and Neuroscience, Columbia University, New York, New York, United States of America.

AstraZeneca Pharmaceuticals, CNS Discovery, Wilmington, Delaware, United States of America.

出版信息

PLoS One. 2014 Jan 17;9(1):e85136. doi: 10.1371/journal.pone.0085136. eCollection 2014.

Abstract

BACKGROUND

Selective serotonin reuptake inhibitors (SSRIs) such as fluoxetine are the most common form of medication treatment for major depression. However, approximately 50% of depressed patients fail to achieve an effective treatment response. Understanding how gene expression systems respond to treatments may be critical for understanding antidepressant resistance.

METHODS

We take a novel approach to this problem by demonstrating that the gene expression system of the dentate gyrus responds to fluoxetine (FLX), a commonly used antidepressant medication, in a stereotyped-manner involving changes in the expression levels of thousands of genes. The aggregate behavior of this large-scale systemic response was quantified with principal components analysis (PCA) yielding a single quantitative measure of the global gene expression system state.

RESULTS

Quantitative measures of system state were highly correlated with variability in levels of antidepressant-sensitive behaviors in a mouse model of depression treated with fluoxetine. Analysis of dorsal and ventral dentate samples in the same mice indicated that system state co-varied across these regions despite their reported functional differences. Aggregate measures of gene expression system state were very robust and remained unchanged when different microarray data processing algorithms were used and even when completely different sets of gene expression levels were used for their calculation.

CONCLUSIONS

System state measures provide a robust method to quantify and relate global gene expression system state variability to behavior and treatment. State variability also suggests that the diversity of reported changes in gene expression levels in response to treatments such as fluoxetine may represent different perspectives on unified but noisy global gene expression system state level responses. Studying regulation of gene expression systems at the state level may be useful in guiding new approaches to augmentation of traditional antidepressant treatments.

摘要

背景

选择性5-羟色胺再摄取抑制剂(SSRI),如氟西汀,是治疗重度抑郁症最常用的药物形式。然而,约50%的抑郁症患者未能获得有效的治疗反应。了解基因表达系统如何对治疗产生反应对于理解抗抑郁药耐药性可能至关重要。

方法

我们采用了一种新颖的方法来解决这个问题,即证明齿状回的基因表达系统对常用抗抑郁药物氟西汀(FLX)以一种刻板的方式做出反应,这种反应涉及数千个基因表达水平的变化。通过主成分分析(PCA)对这种大规模系统反应的总体行为进行量化,从而得出全球基因表达系统状态的单一量化指标。

结果

在用氟西汀治疗的抑郁症小鼠模型中,系统状态的量化指标与抗抑郁药敏感行为水平的变异性高度相关。对同一小鼠的背侧和腹侧齿状回样本进行分析表明,尽管有报道称这些区域存在功能差异,但系统状态在这些区域共同变化。当使用不同的微阵列数据处理算法时,甚至当使用完全不同的基因表达水平集进行计算时,基因表达系统状态的总体指标都非常稳健且保持不变。

结论

系统状态指标提供了一种稳健的方法来量化全球基因表达系统状态的变异性,并将其与行为和治疗联系起来。状态变异性还表明,对氟西汀等治疗的反应中报道的基因表达水平变化的多样性可能代表了对统一但有噪声的全球基因表达系统状态水平反应的不同观点。在状态水平上研究基因表达系统的调控可能有助于指导增强传统抗抑郁治疗的新方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2eb9/3894967/3cf899f7b8cb/pone.0085136.g001.jpg

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