Exploring the genetics underlying autoimmune diseases with network analysis and link prediction

Gregorio Alanis-Lobato, C. Cannistraci, T. Ravasi
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引用次数: 9

Abstract

Ever since the first Genome Wide Association Study (GWAS) was carried out we have seen an important number of discoveries of biological and clinical relevance. However, there are some scientists that consider that these research outcomes and their utility are far from what was expected from this experimental design. We instead believe that the thousands of genetic variants associated with complex disorders by means of GWASs are an extremely valuable source of information that needs to be mined in a different way. Based on this philosophy, we followed a holistic perspective to analyze GWAS data and explored the structural properties of the network representation of one of these datasets with the aim to advance our understanding of the genetic intricacies underlying autoimmune human diseases. The simplicity, computational efficiency and precision of the tools proposed in this paper represent a new means to address GWAS data and contribute to the better exploitation of these rich sources of information.
利用网络分析和链接预测探索自身免疫性疾病的遗传学基础
自从第一次全基因组关联研究(GWAS)开展以来,我们已经看到了许多与生物学和临床相关的重要发现。然而,也有一些科学家认为,这些研究成果和他们的效用远远没有达到预期的实验设计。相反,我们认为,通过GWASs发现的与复杂疾病相关的数千种遗传变异是非常有价值的信息来源,需要以不同的方式进行挖掘。基于这一理念,我们遵循整体视角来分析GWAS数据,并探索其中一个数据集的网络表示的结构特性,旨在促进我们对自身免疫性人类疾病背后的遗传复杂性的理解。本文提出的工具的简单性、计算效率和精度代表了一种处理GWAS数据的新方法,有助于更好地利用这些丰富的信息源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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