Centre for Individualized Medicine, Department of Pediatrics, Faculty of Medicine, 58185 Linköping, Sweden.
Department of Physics, Biology and Computer Science, Center for Complex Network Research, Northeastern University, Boston, MA 02115 USA.
Genome Med. 2014 Oct 17;6(10):82. doi: 10.1186/s13073-014-0082-6. eCollection 2014.
Many common diseases, such as asthma, diabetes or obesity, involve altered interactions between thousands of genes. High-throughput techniques (omics) allow identification of such genes and their products, but functional understanding is a formidable challenge. Network-based analyses of omics data have identified modules of disease-associated genes that have been used to obtain both a systems level and a molecular understanding of disease mechanisms. For example, in allergy a module was used to find a novel candidate gene that was validated by functional and clinical studies. Such analyses play important roles in systems medicine. This is an emerging discipline that aims to gain a translational understanding of the complex mechanisms underlying common diseases. In this review, we will explain and provide examples of how network-based analyses of omics data, in combination with functional and clinical studies, are aiding our understanding of disease, as well as helping to prioritize diagnostic markers or therapeutic candidate genes. Such analyses involve significant problems and limitations, which will be discussed. We also highlight the steps needed for clinical implementation.
许多常见疾病,如哮喘、糖尿病或肥胖症,都涉及数千个基因之间相互作用的改变。高通量技术(组学)可以识别这些基因及其产物,但功能理解是一个巨大的挑战。基于网络的组学数据分析已经确定了与疾病相关的基因模块,这些模块被用于获得疾病机制的系统水平和分子水平的理解。例如,在过敏中,一个模块被用于寻找一个新的候选基因,该基因通过功能和临床研究得到了验证。此类分析在系统医学中发挥着重要作用。这是一个新兴的学科,旨在深入了解常见疾病背后的复杂机制。在这篇综述中,我们将解释并举例说明如何结合功能和临床研究,对组学数据进行基于网络的分析,以帮助我们理解疾病,并有助于确定诊断标志物或治疗候选基因。这些分析涉及到许多问题和局限性,我们也将进行讨论。我们还强调了临床实施所需的步骤。