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A high content screening assay to predict human drug-induced liver injury during drug discovery

机译:高含量筛选试验可预测药物发现过程中人为药物引起的肝损伤

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IntroductionAdverse drug reactions are a major cause for failures of drug development programs, drug withdrawals and use restrictions. Early hazard identification and diligent risk avoidance strategies are therefore essential. For drug-induced liver injury (DILI), this is difficult using conventional safety testing. To reduce the risk for DILI, drug candidates with a high risk need to be identified and deselected. And, to produce drug candidates without that risk associated, risk factors need to be assessed early during drug discovery, such that lead series can be optimized on safety parameters. This requires methods that allow for medium-to-high throughput compound profiling and that generate quantitative results suitable to establish structure-activity-relationships during lead optimization programs. MethodsWe present the validation of such a method, a novel high content screening assay based on six parameters (nuclei counts, nuclear area, plasma membrane integrity, lysosomal activity, mitochondrial membrane potential (MMP), and mitochondrial area) using ~. 100 drugs of which the clinical hepatotoxicity profile is known. Results/discussionWe find that a 100-fold TI between the lowest toxic concentration and the therapeutic Cmax is optimal to classify compounds as hepatotoxic or non-hepatotoxic, based on the individual parameters. Most parameters have ~. 50% sensitivity and ~. 90% specificity. Drugs hitting ≥. 2 parameters at a concentration below 100-fold their Cmax are typically hepatotoxic, whereas non-hepatotoxic drugs typically hit <. 2 parameters within that 100-fold TI. In a zone classification model, based on nuclei count, MMP and human Cmax, we identified an area without a single false positive, while maintaining 45% sensitivity. Hierarchical clustering using the multi-parametric dataset roughly separates toxic from non-toxic compounds. We employ the assay in discovery projects to prioritize novel compound series during hit-to-lead, to steer away from a DILI risk during lead optimization, for risk assessment towards candidate selection and to provide guidance of safe human exposure levels.
机译:简介药物不良反应是导致药物开发计划失败,停药和使用限制的主要原因。因此,早期危害识别和勤奋的风险规避策略至关重要。对于药物性肝损伤(DILI),使用常规安全性测试很难做到这一点。为了降低DILI的风险,需要识别和取消选择高风险的候选药物。并且,为了生产没有这种风险的候选药物,需要在药物发现期间及早评估风险因素,以便可以在安全性参数上优化线索系列。这需要允许中到高通量化合物分析的方法,并产生适合在潜在客户优化程序期间建立结构-活性-关系的定量结果的方法。方法我们使用〜来验证这种方法的有效性,该方法是基于六个参数(核计数,核面积,质膜完整性,溶酶体活性,线粒体膜电位(MMP)和线粒体面积)的新颖的高含量筛选试验。临床肝毒性特征已知的100种药物。结果/讨论我们发现,最低毒性浓度与治疗性Cmax之间的100倍TI最适合根据个体参数将化合物分类为肝毒性或非肝毒性。大多数参数都有〜。灵敏度为50%〜。 90%的特异性。药物击中≥。浓度低于其Cmax的100倍的2个参数通常具有肝毒性,而非肝毒性药物通常达到<。该100倍TI内有2个参数。在区域分类模型中,基于核计数,MMP和人类Cmax,我们确定了一个区域,没有单个假阳性,同时保持了45%的灵敏度。使用多参数数据集的层次聚类可以将有毒化合物与无毒化合物大致分开。我们在发现项目中使用该检测方法,以在铅击中确定新化合物序列的优先级,以避开铅优化过程中的DILI风险,为候选人选择进行风险评估,并为安全的人类暴露水平提供指导。

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