Hunsberger J G, Chibane F L, Elkahloun A G, Henderson R, Singh R, Lawson J, Cruceanu C, Nagarajan V, Turecki G, Squassina A, Medeiros C D, Del Zompo M, Rouleau G A, Alda M, Chuang D-M
Molecular Neurobiology Section, National Institute of Mental Health (NIMH), National Institutes of Health, Bethesda, MD, USA.
National Human Genome Research Institute (NHGRI), National Institutes of Health, Bethesda, MD, USA.
Transl Psychiatry. 2015 Feb 3;5(2):e504. doi: 10.1038/tp.2014.139.
We developed a novel integrative genomic tool called GRANITE (Genetic Regulatory Analysis of Networks Investigational Tool Environment) that can effectively analyze large complex data sets to generate interactive networks. GRANITE is an open-source tool and invaluable resource for a variety of genomic fields. Although our analysis is confined to static expression data, GRANITE has the capability of evaluating time-course data and generating interactive networks that may shed light on acute versus chronic treatment, as well as evaluating dose response and providing insight into mechanisms that underlie therapeutic versus sub-therapeutic doses or toxic doses. As a proof-of-concept study, we investigated lithium (Li) response in bipolar disorder (BD). BD is a severe mood disorder marked by cycles of mania and depression. Li is one of the most commonly prescribed and decidedly effective treatments for many patients (responders), although its mode of action is not yet fully understood, nor is it effective in every patient (non-responders). In an in vitro study, we compared vehicle versus chronic Li treatment in patient-derived lymphoblastoid cells (LCLs) (derived from either responders or non-responders) using both microRNA (miRNA) and messenger RNA gene expression profiling. We present both Li responder and non-responder network visualizations created by our GRANITE analysis in BD. We identified by network visualization that the Let-7 family is consistently downregulated by Li in both groups where this miRNA family has been implicated in neurodegeneration, cell survival and synaptic development. We discuss the potential of this analysis for investigating treatment response and even providing clinicians with a tool for predicting treatment response in their patients, as well as for providing the industry with a tool for identifying network nodes as targets for novel drug discovery.
我们开发了一种名为GRANITE(网络研究工具环境的遗传调控分析)的新型综合基因组工具,它可以有效地分析大型复杂数据集以生成交互式网络。GRANITE是一种开源工具,对各种基因组领域来说都是宝贵的资源。尽管我们的分析仅限于静态表达数据,但GRANITE有能力评估时间进程数据并生成交互式网络,这可能有助于阐明急性与慢性治疗,以及评估剂量反应,并深入了解治疗剂量与亚治疗剂量或毒性剂量背后的机制。作为一项概念验证研究,我们研究了双相情感障碍(BD)中锂(Li)的反应。BD是一种严重的情绪障碍,其特征是躁狂和抑郁发作周期。锂是许多患者(有反应者)最常用且疗效确切的治疗方法之一,尽管其作用机制尚未完全了解,而且并非对每个患者(无反应者)都有效。在一项体外研究中,我们使用微小RNA(miRNA)和信使核糖核酸基因表达谱,比较了在患者来源的淋巴母细胞系(LCLs)(来自有反应者或无反应者)中载体与慢性锂治疗的效果。我们展示了通过GRANITE分析在双相情感障碍中创建的锂反应者和无反应者网络可视化结果。通过网络可视化,我们发现在两组中Let-7家族均持续被锂下调,而该miRNA家族与神经退行性变、细胞存活和突触发育有关。我们讨论了这种分析在研究治疗反应方面的潜力,甚至为临床医生提供一种预测患者治疗反应的工具,以及为制药行业提供一种将网络节点识别为新药发现靶点的工具。