Bindley Bioscience Center at Purdue University Discovery Park, West Lafayette, Indiana, USA.
PLoS One. 2012;7(10):e45226. doi: 10.1371/journal.pone.0045226. Epub 2012 Oct 15.
Early evaluation of new drug entities for their potential to cause mitochondrial dysfunction is becoming an important task for drug development. Multi-parametric high-content screening (mp-HCS) of mitochondrial toxicity holds promise as a lead in-vitro strategy for drug testing and safety evaluations. In this study, we have developed a mp-HCS and multi-parametric data analysis scheme for assessing cell responses to induced mitochondrial perturbation. The mp-HCS measurements are shown to be robust enough to allow for quantitative comparison of biological systems with different metabolic pathways simulated by alteration of growth media. Substitution of medium glucose for galactose sensitized cells to drug action and revealed novel response parameters. Each compound was quantitatively characterized according to induced phenotypic changes of cell morphology and functionality measured by fluorescent biomarkers for mitochondrial activity, plasma membrane permeability, and nuclear morphology. Descriptors of drug effects were established by generation of a SCRIT (Specialized-Cell-Response-to-Induced-Toxicity) vector, consisting of normalized statistical measures of each parameter at each dose and growth condition. The dimensionality of SCRIT vectors depends on the number of parameters chosen, which in turn depends on the hypothesis being tested. Specifically, incorporation of three parameters of response into SCRIT vectors enabled clustering of 84 training compounds with known pharmacological and toxicological activities according to the degree of toxicity and mitochondrial involvement. Inclusion of 6 parameters enabled the resolution of more subtle differences between compounds within a common therapeutic class; scoring enabled a ranking of statins in direct agreement with clinical outcomes. Comparison of drug-induced changes required variations in glucose for separation of mitochondrial dysfunction from other types of cytotoxicity. These results also demonstrate that the number of drugs in a training set, the choice of parameters used in analysis, and statistical measures are fundamental for specific hypothesis testing and assessment of quantitative phenotypic differences.
早期评估新药是否有可能引起线粒体功能障碍,这对于药物开发来说是一项重要任务。多参数高内涵筛选(mp-HCS)在检测和评估药物毒性方面具有成为药物测试的先导策略的潜力。在这项研究中,我们开发了一种用于评估细胞对诱导的线粒体扰动的反应的 mp-HCS 和多参数数据分析方案。mp-HCS 测量结果非常稳健,足以允许通过改变生长培养基来模拟不同代谢途径的生物系统进行定量比较。用半乳糖替代培养基中的葡萄糖会使细胞对药物作用敏感,并揭示出新的反应参数。根据荧光生物标志物测量的线粒体活性、质膜通透性和核形态的细胞形态和功能变化,对每个化合物进行定量特征描述。通过生成 SCRIT(专门的细胞对诱导毒性的反应)向量来建立药物作用的描述符,该向量由每个剂量和生长条件下每个参数的归一化统计度量组成。SCRIT 向量的维数取决于选择的参数数量,而参数数量又取决于正在测试的假设。具体而言,将三个反应参数纳入 SCRIT 向量中,可以根据毒性和线粒体参与程度对具有已知药理学和毒理学活性的 84 种训练化合物进行聚类。纳入 6 个参数可以在常见治疗类别内更细微地区分化合物之间的差异;评分可以根据与临床结果直接一致的他汀类药物进行排名。比较药物诱导的变化需要葡萄糖的变化,以便将线粒体功能障碍与其他类型的细胞毒性区分开来。这些结果还表明,训练集中的药物数量、分析中使用的参数选择以及统计度量对于特定假设检验和评估定量表型差异都是至关重要的。