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基于知识的紧凑型疾病模型:从高通量数据到理解复杂疾病致病机制的快速途径。

Knowledge-Based Compact Disease Models: A Rapid Path from High-Throughput Data to Understanding Causative Mechanisms for a Complex Disease.

作者信息

Mayburd Anatoly, Baranova Ancha

机构信息

The Center of the Study of Chronic Metabolic and Rare Diseases, School of Systems Biology, College of Science, George Mason University, Fairfax, VA, 22030, USA.

Research Centre for Medical Genetics, RAMS, Moskvorechie 1, Moscow, Russia.

出版信息

Methods Mol Biol. 2017;1613:425-461. doi: 10.1007/978-1-4939-7027-8_17.

Abstract

High-throughput profiling of human tissues typically yields the gene lists composed of a variety of more or less relevant molecular entities. These lists are riddle by false positive observations that often obstruct generation of mechanistic hypothesis that may explain complex phenotype. From general probabilistic considerations, the gene lists enriched by the mechanistically relevant targets can be far more useful for subsequent experimental design or data interpretation. Using Alzheimer's disease as example, the candidate gene lists were processed into different tiers of evidence consistency established by enrichment analysis across subdatasets collected within the same experiment and across different experiments and platforms. The cutoffs were established empirically through ontological and semantic enrichment; resultant shortened gene list was reexpanded by Ingenuity Pathway Assistant tool. The resulting subnetworks provided the basis for generating mechanistic hypotheses that were partially validated by mined experimental evidence. This approach differs from previous consistency-based studies in that the cutoff on the Receiver Operating Characteristic of the true-false separation process is optimized by flexible selection of the consistency building procedure. The resultant Compact Disease Models (CDM) composed of the gene list distilled by this analytic technique and its network-based representation allowed us to highlight possible role of the protein traffic vesicles in the pathogenesis of Alzheimer's. Considering the distances and complexity of protein trafficking in neurons, it is plausible to hypothesize that spontaneous protein misfolding along with a shortage of growth stimulation may provide a shortcut to neurodegeneration. Several potentially overlapping scenarios of early-stage Alzheimer pathogenesis are discussed, with an emphasis on the protective effects of Angiotensin receptor 1 (AT-1) mediated antihypertensive response on cytoskeleton remodeling, along with neuronal activation of oncogenes, luteinizing hormone signaling and insulin-related growth regulation, forming a pleiotropic model of its early stages. Compact Disease Model generation is a flexible approach for high-throughput data analysis that allows extraction of meaningful, mechanism-centered gene sets compatible with instant translation of the results into testable hypotheses.

摘要

对人体组织进行高通量分析通常会生成由各种或多或少相关分子实体组成的基因列表。这些列表充斥着假阳性观察结果,常常阻碍可能解释复杂表型的机制假说的产生。从一般概率考虑,通过机制相关靶点富集的基因列表对于后续实验设计或数据解释可能更有用。以阿尔茨海默病为例,候选基因列表被处理成不同层次的证据一致性,这些一致性是通过对同一实验中收集的子数据集以及不同实验和平台进行富集分析而建立的。通过本体论和语义富集凭经验确定截断值;所得缩短的基因列表通过 Ingenuity Pathway Assistant 工具重新扩展。所得的子网为生成机制假说提供了基础,这些假说部分得到了挖掘出的实验证据的验证。这种方法与以前基于一致性的研究不同,在于通过灵活选择一致性构建程序来优化真假分离过程的接受者操作特征的截断值。由这种分析技术提炼出的基因列表及其基于网络的表示组成的所得紧凑疾病模型(CDM),使我们能够突出蛋白质运输囊泡在阿尔茨海默病发病机制中的可能作用。考虑到神经元中蛋白质运输的距离和复杂性,可以合理地假设自发蛋白质错误折叠以及生长刺激的缺乏可能为神经退行性变提供一条捷径。讨论了早期阿尔茨海默病发病机制的几种可能重叠的情况,重点是血管紧张素受体 1(AT-1)介导的抗高血压反应对细胞骨架重塑的保护作用,以及癌基因的神经元激活、促黄体生成素信号传导和胰岛素相关生长调节,形成其早期的多效性模型。紧凑疾病模型生成是一种灵活的高通量数据分析方法,允许提取有意义的、以机制为中心的基因集,这些基因集与将结果立即转化为可测试假说兼容。

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