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Of text and gene – using text mining methods to uncover hidden knowledge in toxicogenomics

机译:文本和基因–使用文本挖掘方法发现毒理基因组学中的隐藏知识

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Background Toxicogenomics studies often profile gene expression from assays involving multiple doses and time points. The dose- and time-dependent pattern is of great importance to assess toxicity but computational approaches are lacking to effectively utilize this characteristic in toxicity assessment. Topic modeling is a text mining approach, but may be used analogously in toxicogenomics due to the similar data structures between text and gene dysregulation. Results Topic modeling was applied to a very large toxicogenomics dataset containing microarray gene expression data from >15,000 samples associated with 131 drugs tested in three different assay platforms (i.e., in vitro assay, in vivo repeated dose study and in vivo single dose experiment) with a design including multiple doses and time points. A set of “topics” which each consist of a set of genes was determined, by which the varying sensitivity of three assay systems was observed. We found that the drug-dependent effect was more pronounced in the two in vivo systems than the in vitro system, while the time-dependent effect was most strongly reflected in the in vitro system followed by the single dose study and lastly the repeated dose experiment. The dose-dependent effect was similar across three assay systems. Although the results indicated a challenge to extrapolate the in vitro results to the in vivo situation, we did notice that, for some drugs but not for all the drugs, the similarity in gene expression patterns was observed across all three assay systems, indicating a possibility of using in vitro systems with careful designs (such as the choice of dose and time point), to replace the in vivo testing strategy. Nonetheless, a potential to replace the repeated dose study by the single-dose short-term methodology was strongly implied. Conclusions The study demonstrated that text mining methodologies such as topic modeling provide an alternative method compared to traditional means for data reduction in toxicogenomics, enhancing researchers’ capabilities to interpret biological information.
机译:背景技术毒物基因组学研究通常从涉及多个剂量和时间点的测定中分析基因表达。剂量和时间依赖性模式对于评估毒性非常重要,但缺乏在毒性评估中有效利用此特征的计算方法。主题建模是一种文本挖掘方法,但由于文本和基因失调之间的数据结构相似,因此可以类似地用于毒物基因组学研究。结果主题建模应用于一个非常庞大的毒理基因组学数据集,其中包含来自131种药物的15,000多个样品的微阵列基因表达数据,这些样品在三种不同的测定平台(即体外测定,体内重复剂量研究和体内单剂量实验)中进行了测试,包含多个剂量和时间点的设计。确定了一组分别由一组基因组成的“主题”,通过这些主题可以观察到三种测定系统的变化敏感性。我们发现,在两个体内系统中,药物依赖性作用要比体外系统更为明显,而时间依赖性作用在体外系统中最为明显,随后是单剂量研究,最后是重复剂量实验。在三种测定系统中,剂量依赖性效应相似。尽管结果表明将体外结果推论到体内情况是一项挑战,但我们确实注意到,对于某些药物而非所有药物,在所有三种测定系统中均观察到了基因表达模式的相似性,这表明可能使用精心设计的体外系统(例如剂量和时间点的选择)来代替体内测试策略。但是,强烈暗示有可能用单剂量短期方法代替重复剂量研究。结论结论该研究表明,与传统方法相比,文本挖掘方法(例如主题建模)提供了另一种方法来减少毒理基因组学中的数据,从而增强了研究人员解释生物信息的能力。

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