Aubry Soline, Shin William, Crary John F, Lefort Roger, Qureshi Yasir H, Lefebvre Celine, Califano Andrea, Shelanski Michael L
Taub Institute for Research on Alzheimer's Disease & the Aging Brain and the Department of Pathology & Cell Biology, Columbia University, New York, NY, 10032, United States of America.
Department of Systems Biology, Columbia University, New York, NY, 10032, United States of America; Herbert Irving Comprehensive Cancer Center, Columbia University, New York, NY, 10032, United States of America; Department of Biological Sciences, Columbia University, New York, NY, 10027, United States of America.
PLoS One. 2015 Mar 17;10(3):e0120352. doi: 10.1371/journal.pone.0120352. eCollection 2015.
Alzheimer's disease (AD) is a complex multifactorial disorder with poorly characterized pathogenesis. Our understanding of this disease would thus benefit from an approach that addresses this complexity by elucidating the regulatory networks that are dysregulated in the neural compartment of AD patients, across distinct brain regions. Here, we use a Systems Biology (SB) approach, which has been highly successful in the dissection of cancer related phenotypes, to reverse engineer the transcriptional regulation layer of human neuronal cells and interrogate it to infer candidate Master Regulators (MRs) responsible for disease progression. Analysis of gene expression profiles from laser-captured neurons from AD and controls subjects, using the Algorithm for the Reconstruction of Accurate Cellular Networks (ARACNe), yielded an interactome consisting of 488,353 transcription-factor/target interactions. Interrogation of this interactome, using the Master Regulator INference algorithm (MARINa), identified an unbiased set of candidate MRs causally responsible for regulating the transcriptional signature of AD progression. Experimental assays in autopsy-derived human brain tissue showed that three of the top candidate MRs (YY1, p300 and ZMYM3) are indeed biochemically and histopathologically dysregulated in AD brains compared to controls. Our results additionally implicate p53 and loss of acetylation homeostasis in the neurodegenerative process. This study suggests that an integrative, SB approach can be applied to AD and other neurodegenerative diseases, and provide significant novel insight on the disease progression.
阿尔茨海默病(AD)是一种复杂的多因素疾病,其发病机制尚不明确。因此,通过阐明AD患者不同脑区神经部分失调的调控网络来应对这种复杂性的方法,将有助于我们对该疾病的理解。在这里,我们使用系统生物学(SB)方法,这种方法在剖析癌症相关表型方面非常成功,来反向构建人类神经元细胞的转录调控层,并对其进行探究以推断负责疾病进展的候选主调控因子(MRs)。使用精确细胞网络重建算法(ARACNe)对来自AD患者和对照受试者的激光捕获神经元的基因表达谱进行分析,产生了一个由488,353个转录因子/靶标相互作用组成的相互作用组。使用主调控因子推断算法(MARINa)对这个相互作用组进行探究,确定了一组无偏倚的候选MRs,它们因果性地负责调节AD进展的转录特征。对尸检获得的人脑组织进行的实验分析表明,与对照组相比,AD大脑中排名靠前的三个候选MRs(YY1、p300和ZMYM3)在生化和组织病理学上确实失调。我们的结果还表明p53和乙酰化稳态的丧失与神经退行性过程有关。这项研究表明,一种综合的SB方法可以应用于AD和其他神经退行性疾病,并为疾病进展提供重要的新见解。