Incorporating Tissue-Specific Gene Expression Data to Improve Chemical-Disease Inference of in Silico Toxicogenomics Methods.

IF 6.8 Q1 TOXICOLOGY
Shan-Shan Wang, Chia-Chi Wang, Chien-Lun Wang, Ying-Chi Lin, Chun-Wei Tung
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引用次数: 0

Abstract

In silico toxicogenomics methods are resource- and time-efficient approaches for inferring chemical-protein-disease associations with potential mechanism information for exploring toxicological effects. However, current in silico toxicogenomics systems make inferences based on only chemical-protein interactions without considering tissue-specific gene/protein expressions. As a result, inferred diseases could be overpredicted with false positives. In this work, six tissue-specific expression datasets of genes and proteins were collected from the Expression Atlas. Genes were then categorized into high, medium, and low expression levels in a tissue- and dataset-specific manner. Subsequently, the tissue-specific expression datasets were incorporated into the chemical-protein-disease inference process of our ChemDIS system by filtering out relatively low-expressed genes. By incorporating tissue-specific gene/protein expression data, the enrichment rate for chemical-disease inference was largely improved with up to 62.26% improvement. A case study of melamine showed the ability of the proposed method to identify more specific disease terms that are consistent with the literature. A user-friendly user interface was implemented in the ChemDIS system. The methodology is expected to be useful for chemical-disease inference and can be implemented for other in silico toxicogenomics tools.

纳入组织特异性基因表达数据,改进硅学毒物基因组学方法的化学-疾病推断。
硅学毒物基因组学方法是一种节省资源和时间的方法,可用于推断化学物质-蛋白质-疾病之间的关联,并提供潜在的机制信息,以探索毒理学效应。然而,目前的硅学毒物基因组学系统只根据化学-蛋白质相互作用进行推断,而不考虑特定组织的基因/蛋白质表达。因此,推断出的疾病可能会出现假阳性。在这项工作中,我们从表达图谱中收集了六个组织特异性基因和蛋白质表达数据集。然后以特定组织和数据集的方式将基因分为高、中和低表达水平。随后,通过过滤相对低表达的基因,将组织特异性表达数据集纳入到我们的 ChemDIS 系统的化学-蛋白质-疾病推断过程中。通过纳入组织特异性基因/蛋白质表达数据,化学-疾病推断的富集率得到了很大程度的提高,最高提高了 62.26%。对三聚氰胺的案例研究表明,所提出的方法能够识别与文献一致的更具体的疾病术语。在 ChemDIS 系统中实现了友好的用户界面。该方法有望用于化学疾病推断,并可用于其他硅学毒物基因组学工具。
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来源期刊
CiteScore
5.30
自引率
1.70%
发文量
21
审稿时长
10 weeks
期刊介绍: The Journal of Xenobiotics publishes original studies concerning the beneficial (pharmacology) and detrimental effects (toxicology) of xenobiotics in all organisms. A xenobiotic (“stranger to life”) is defined as a chemical that is not usually found at significant concentrations or expected to reside for long periods in organisms. In addition to man-made chemicals, natural products could also be of interest if they have potent biological properties, special medicinal properties or that a given organism is at risk of exposure in the environment. Topics dealing with abiotic- and biotic-based transformations in various media (xenobiochemistry) and environmental toxicology are also of interest. Areas of interests include the identification of key physical and chemical properties of molecules that predict biological effects and persistence in the environment; the molecular mode of action of xenobiotics; biochemical and physiological interactions leading to change in organism health; pathophysiological interactions of natural and synthetic chemicals; development of biochemical indicators including new “-omics” approaches to identify biomarkers of exposure or effects for xenobiotics.
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