Bourdakou Marilena M, Athanasiadis Emmanouil I, Spyrou George M
Center of Systems Biology, Biomedical Research Foundation, Academy of Athens, Soranou Ephessiou 4, 115 27 Athens, Greece.
Department of Informatics and Telecommunications, University of Athens, 15784 Ilissia Athens, Greece.
Sci Rep. 2016 Feb 19;6:20518. doi: 10.1038/srep20518.
Systemic approaches are essential in the discovery of disease-specific genes, offering a different perspective and new tools on the analysis of several types of molecular relationships, such as gene co-expression or protein-protein interactions. However, due to lack of experimental information, this analysis is not fully applicable. The aim of this study is to reveal the multi-potent contribution of statistical network inference methods in highlighting significant genes and interactions. We have investigated the ability of statistical co-expression networks to highlight and prioritize genes for breast cancer subtypes and stages in terms of: (i) classification efficiency, (ii) gene network pattern conservation, (iii) indication of involved molecular mechanisms and (iv) systems level momentum to drug repurposing pipelines. We have found that statistical network inference methods are advantageous in gene prioritization, are capable to contribute to meaningful network signature discovery, give insights regarding the disease-related mechanisms and boost drug discovery pipelines from a systems point of view.
系统方法对于发现疾病特异性基因至关重要,它为分析多种类型的分子关系(如基因共表达或蛋白质-蛋白质相互作用)提供了不同的视角和新工具。然而,由于缺乏实验信息,这种分析并不完全适用。本研究的目的是揭示统计网络推断方法在突出重要基因和相互作用方面的多方面贡献。我们从以下几个方面研究了统计共表达网络突出乳腺癌亚型和阶段相关基因并对其进行优先级排序的能力:(i)分类效率,(ii)基因网络模式保守性,(iii)所涉及分子机制的指示,以及(iv)对药物再利用管道的系统层面推动作用。我们发现,统计网络推断方法在基因优先级排序方面具有优势,能够有助于发现有意义的网络特征,提供有关疾病相关机制的见解,并从系统角度推动药物发现管道的发展。