使用转录组学数据和基于关键特征的基因集进行人类健康危害评估的工作流程。

IF 4.1 3区 医学 Q2 TOXICOLOGY
Han-Hsuan D Tsai, King D Oware, Fred A Wright, Weihsueh A Chiu, Ivan Rusyn
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引用次数: 0

摘要

关键特性(KCs)是与不同类型的人类健康危害相关的化学品的特性。KCs用于支持危害识别的系统评审。转录组学数据是机制数据的丰富来源,经常通过“富集”的途径/基因集进行解释。由于路径冗余、数据分析复杂以及与危害识别的相关性不明确,在监管科学中解释此类分析可能具有挑战性。我们假设通过交叉定位途径/基因集和KCs,可以提高转录组数据的可解释性。我们将7个危险性状的72个已发表的KC归纳为34个总体KC术语。来自Reactome和京都基因与基因组百科全书(KEGG)的基因集被映射到这些基因集,从而产生“KC基因集”。这些组表现出最小的重叠,并且在基因数量上有所不同。比较来自Reactome和KEGG的相同KC基因集,发现相似性较低,表明互补性。使用已知具有器官特异性毒性的化学物质的公开转录组数据集来测试这些KC基因集的性能:在小鼠肝脏中测试苯和2,3,7,8-四氯二苯并对二恶英,以及在人类诱导的多能干细胞衍生的心肌细胞中测试药物舒尼替尼和阿莫西林。我们发现与受测试化合物影响的机制相关的KC项高度富集,而阴性对照(阿莫西林)的富集有限,具有边际意义。本研究的影响在于提出了一种基于KCs的毒物基因组学数据分析的计算方法,并促进了在化学危害识别过程中对这些数据的透明解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A workflow for human health hazard evaluation using transcriptomic data and Key Characteristics-based gene sets.

Key characteristics (KCs) are properties of chemicals that are associated with different types of human health hazards. KCs are used for systematic reviews in support of hazard identification. Transcriptomic data are a rich source of mechanistic data and are frequently interpreted through "enriched" pathways/gene sets. Such analyses may be challenging to interpret in regulatory science because of redundancy among pathways, complex data analyses, and unclear relevance to hazard identification. We hypothesized that by cross-mapping pathways/gene sets and KCs, the interpretability of transcriptomic data can be improved. We summarized 72 published KCs across 7 hazard traits into 34 umbrella KC terms. Gene sets from Reactome and Kyoto Encyclopedia of Genes and Genomes (KEGG) were mapped to these, resulting in "KC gene sets." These sets exhibit minimal overlap and vary in the number of genes. Comparisons of the same KC gene sets mapped from Reactome and KEGG revealed low similarity, indicating complementarity. Performance of these KC gene sets was tested using publicly available transcriptomic datasets of chemicals with known organ-specific toxicity: benzene and 2,3,7,8-tetrachlorodibenzo-p-dioxin tested in mouse liver and drugs sunitinib and amoxicillin tested in human-induced pluripotent stem cell-derived cardiomyocytes. We found that KC terms related to the mechanisms affected by tested compounds were highly enriched, while the negative control (amoxicillin) showed limited enrichment with marginal significance. This study's impact is in presenting a computational approach based on KCs for the analysis of toxicogenomic data and facilitating transparent interpretation of these data in the process of chemical hazard identification.

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来源期刊
Toxicological Sciences
Toxicological Sciences 医学-毒理学
CiteScore
7.70
自引率
7.90%
发文量
118
审稿时长
1.5 months
期刊介绍: The mission of Toxicological Sciences, the official journal of the Society of Toxicology, is to publish a broad spectrum of impactful research in the field of toxicology. The primary focus of Toxicological Sciences is on original research articles. The journal also provides expert insight via contemporary and systematic reviews, as well as forum articles and editorial content that addresses important topics in the field. The scope of Toxicological Sciences is focused on a broad spectrum of impactful toxicological research that will advance the multidisciplinary field of toxicology ranging from basic research to model development and application, and decision making. Submissions will include diverse technologies and approaches including, but not limited to: bioinformatics and computational biology, biochemistry, exposure science, histopathology, mass spectrometry, molecular biology, population-based sciences, tissue and cell-based systems, and whole-animal studies. Integrative approaches that combine realistic exposure scenarios with impactful analyses that move the field forward are encouraged.
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