Liu Yuan, Jing Runyu, Wen Zhining, Li Menglong
College of Chemistry, Sichuan University, Chengdu, China.
College of Cybersecurity, Sichuan University, Chengdu, China.
Front Pharmacol. 2020 Jan 8;10:1489. doi: 10.3389/fphar.2019.01489. eCollection 2019.
Toxicogenomics (TGx) is a powerful method to evaluate toxicity and is widely used in both and assays. For TGx, reduction, refinement, and replacement represent the unremitting pursuit of live-animal tests, but assays, as alternatives, usually demonstrate poor correlation with real assays. In living subjects, in addition to drug effects, inner-environmental reactions also affect genetic variation, and these two factors are further jointly reflected in gene abundance. Thus, finding a strategy to factorize inner-environmental factor from assays based on gene expression levels and to further utilize data to better simulate data is needed. We proposed a strategy based on post-modified non-negative matrix factorization, which can estimate the gene expression profiles and contents of major factors in samples. The applicability of the strategy was first verified, and the strategy was then utilized to simulate data by correcting data. The similarities between real data and simulated data (single-dose 0.72, repeat-doses 0.75) were higher than those observed when directly comparing real data with data (single-dose 0.56, repeat-doses 0.70). Moreover, by keeping environment-related factor, a simulation can always be generated by using data to provide potential substitutions for TGx and to reduce the launch of live-animal tests.
毒理基因组学(TGx)是一种评估毒性的强大方法,广泛应用于体内和体外试验。对于体内TGx而言,减少、优化和替代是对活体动物试验的不懈追求,但体外试验作为替代方法,通常与真实的体内试验相关性较差。在活体受试者中,除药物作用外,内环境反应也会影响基因变异,这两个因素进一步共同反映在基因丰度上。因此,需要找到一种策略,从基于基因表达水平的体外试验中分解出内环境因素,并进一步利用体外数据更好地模拟体内数据。我们提出了一种基于后修饰非负矩阵分解的策略,该策略可以估计样本中的基因表达谱和主要因素的含量。首先验证了该策略的适用性,然后利用该策略通过校正体外数据来模拟体内数据。真实体内数据与模拟数据(单剂量0.72,重复剂量0.75)之间的相似性高于直接将真实体内数据与体外数据比较时观察到的相似性(单剂量0.56,重复剂量0.70)。此外,通过保留与环境相关的因素,总是可以利用体外数据生成模拟,为体内TGx提供潜在替代方法,并减少活体动物试验的开展。