Stemina Biomarker Discovery, Inc., 504 S. Rosa Rd., Suite 150, Madison, WI 53719, USA.
Toxicol Appl Pharmacol. 2010 Aug 15;247(1):18-27. doi: 10.1016/j.taap.2010.05.007. Epub 2010 May 21.
Teratogens, substances that may cause fetal abnormalities during development, are responsible for a significant number of birth defects. Animal models used to predict teratogenicity often do not faithfully correlate to human response. Here, we seek to develop a more predictive developmental toxicity model based on an in vitro method that utilizes both human embryonic stem (hES) cells and metabolomics to discover biomarkers of developmental toxicity. We developed a method where hES cells were dosed with several drugs of known teratogenicity then LC-MS analysis was performed to measure changes in abundance levels of small molecules in response to drug dosing. Statistical analysis was employed to select for specific mass features that can provide a prediction of the developmental toxicity of a substance. These molecules can serve as biomarkers of developmental toxicity, leading to better prediction of teratogenicity. In particular, our work shows a correlation between teratogenicity and changes of greater than 10% in the ratio of arginine to asymmetric dimethylarginine levels. In addition, this study resulted in the establishment of a predictive model based on the most informative mass features. This model was subsequently tested for its predictive accuracy in two blinded studies using eight drugs of known teratogenicity, where it correctly predicted the teratogenicity for seven of the eight drugs. Thus, our initial data shows that this platform is a robust alternative to animal and other in vitro models for the prediction of the developmental toxicity of chemicals that may also provide invaluable information about the underlying biochemical pathways.
致畸物是指在发育过程中可能导致胎儿畸形的物质,它们是许多出生缺陷的罪魁祸首。用于预测致畸性的动物模型通常与人类的反应并不完全相关。在这里,我们试图开发一种更具预测性的发育毒性模型,该模型基于一种体外方法,该方法同时利用人类胚胎干细胞(hES)和代谢组学来发现发育毒性的生物标志物。我们开发了一种方法,即用几种已知致畸性的药物处理 hES 细胞,然后进行 LC-MS 分析,以测量药物处理后小分子丰度水平的变化。统计分析用于选择可以预测物质发育毒性的特定质量特征。这些分子可以作为发育毒性的生物标志物,从而更好地预测致畸性。特别是,我们的工作表明致畸性与精氨酸与非对称二甲基精氨酸水平的比值变化大于 10%之间存在相关性。此外,这项研究还基于最具信息量的质量特征建立了一个预测模型。然后,该模型在两项使用已知致畸性的八种药物的盲法研究中进行了预测准确性测试,其中七种药物的致畸性得到了正确预测。因此,我们的初步数据表明,该平台是动物和其他体外模型的可靠替代品,可用于预测化学物质的发育毒性,还可以提供有关潜在生化途径的宝贵信息。