ASACO: Automatic and Serial Analysis of CO-expression to discover gene modifiers with potential use in drug repurposing.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Cristina Moral-Turón, Gualberto Asencio-Cortés, Francesc Rodriguez-Diaz, Alejandro Rubio, Alberto G Navarro, Ana M Brokate-Llanos, Andrés Garzón, Manuel J Muñoz, Antonio J Pérez-Pulido
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引用次数: 0

Abstract

Massive gene expression analyses are widely used to find differentially expressed genes under specific conditions. The results of these experiments are often available in public databases that are undergoing a growth similar to that of molecular sequence databases in the past. This now allows novel secondary computational tools to emerge that use such information to gain new knowledge. If several genes have a similar expression profile across heterogeneous transcriptomics experiments, they could be functionally related. These associations are usually useful for the annotation of uncharacterized genes. In addition, the search for genes with opposite expression profiles is useful for finding negative regulators and proposing inhibitory compounds in drug repurposing projects. Here we present a new web application, Automatic and Serial Analysis of CO-expression (ASACO), which has the potential to discover positive and negative correlator genes to a given query gene, based on thousands of public transcriptomics experiments. In addition, examples of use are presented, comparing with previous contrasted knowledge. The results obtained propose ASACO as a useful tool to improve knowledge about genes associated with human diseases and noncoding genes. ASACO is available at http://www.bioinfocabd.upo.es/asaco/.

ASACO:通过对 CO 表达进行自动和序列分析,发现可能用于药物再利用的基因修饰因子。
大规模基因表达分析被广泛用于寻找特定条件下的差异表达基因。这些实验的结果通常可以在公共数据库中找到,而公共数据库的发展与过去分子序列数据库的发展类似。这使得利用这些信息获取新知识的新型二次计算工具应运而生。如果多个基因在不同的转录组学实验中具有相似的表达谱,那么它们在功能上可能是相关的。这些关联通常有助于对未定性基因进行注释。此外,在药物再利用项目中,搜索具有相反表达谱的基因对于寻找负调控因子和提出抑制性化合物也很有用。在此,我们介绍一种新的网络应用程序--CO-expression 自动和序列分析(ASACO),它可以根据成千上万的公开转录组学实验,发现与给定查询基因正相关和负相关的基因。此外,还介绍了使用实例,并与之前的知识进行了对比。研究结果表明,ASACO 是提高人类疾病相关基因和非编码基因知识的有用工具。ASACO 可在 http://www.bioinfocabd.upo.es/asaco/ 上查阅。
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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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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