Audouze Karine, Brunak Søren, Grandjean Philippe
Center for Biological Sequence Analysis, Department of Systems Biology, Technical University of Denmark, DK-2800 Lyngby, Denmark.
Sci Rep. 2013;3:2712. doi: 10.1038/srep02712.
Computational meta-analysis can link environmental chemicals to genes and proteins involved in human diseases, thereby elucidating possible etiologies and pathogeneses of non-communicable diseases. We used an integrated computational systems biology approach to examine possible pathogenetic linkages in type 2 diabetes (T2D) through genome-wide associations, disease similarities, and published empirical evidence. Ten environmental chemicals were found to be potentially linked to T2D, the highest scores were observed for arsenic, 2,3,7,8-tetrachlorodibenzo-p-dioxin, hexachlorobenzene, and perfluorooctanoic acid. For these substances we integrated disease and pathway annotations on top of protein interactions to reveal possible pathogenetic pathways that deserve empirical testing. The approach is general and can address other public health concerns in addition to identifying diabetogenic chemicals, and offers thus promising guidance for future research in regard to the etiology and pathogenesis of complex diseases.
计算性荟萃分析可以将环境化学物质与参与人类疾病的基因和蛋白质联系起来,从而阐明非传染性疾病可能的病因和发病机制。我们使用一种综合的计算系统生物学方法,通过全基因组关联、疾病相似性和已发表的实证证据,来研究2型糖尿病(T2D)中可能的发病机制联系。发现有十种环境化学物质可能与T2D相关,其中砷、2,3,7,8-四氯二苯并对二恶英、六氯苯和全氟辛酸的得分最高。对于这些物质,我们在蛋白质相互作用的基础上整合了疾病和通路注释,以揭示值得进行实证检验的可能发病机制途径。该方法具有通用性,除了识别致糖尿病化学物质外,还可以解决其他公共卫生问题,因此为未来关于复杂疾病病因和发病机制的研究提供了有前景的指导。