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A high-throughput metabolomics method to predict high concentration cytotoxicity of drugs from low concentration profiles

机译:一种高通量代谢组学方法,可从低浓度曲线预测药物的高浓度细胞毒性

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摘要

A major source of drug attrition in pharmacological development is drug toxicity, which eventually manifests itself in detrimental physiological effects. These effects can be assessed in large sample cohorts, but generating rich sets of output variables that are necessary to predict toxicity from lower drug dosages is problematic. Currently the throughput of methods that enable multi-parametric cellular readouts over many drugs and large ranges of concentrations is limited. Since metabolism is at the core of drug toxicity, we develop here a high-throughput intracellular metabolomics platform for relative measurement of 50–100 targeted metabolites by flow injection-tandem mass spectrometry. Specifically we focused on central metabolism of the yeast Saccharomyces cerevisiae because potential cytotoxic effects of drugs can be expected to affect this ubiquitous core network. By machine learning based on intracellular metabolite responses to 41 drugs that were administered at seven concentrations over three orders of magnitude, we demonstrate prediction of cytotoxicity in yeast from intracellular metabolome patterns obtained at much lower drug concentrations that exert no physiological toxicity. Furthermore, the 13C-determined intracellular response of metabolic fluxes to drug treatment demonstrates the functional performance of the network to be rather robust, until growth was compromised. Thus we provide evidence that phenotypic robustness to drug challenges is achieved by a flexible make-up of the metabolome.
机译:药理学发展中药物耗竭的主要来源是药物毒性,其最终表现为有害的生理作用。可以在大样本人群中评估这些影响,但是生成从低剂量药物中预测毒性所必需的丰富输出变量集是有问题的。当前,使得能够对许多药物和大范围浓度进行多参数细胞读出的方法的通量受到限制。由于代谢是药物毒性的核心,因此我们在这里开发了一种高通量的细胞内代谢组学平台,用于通过流动注射串联质谱法相对测量50-100种目标代谢物。具体来说,我们专注于酿酒酵母的中央代谢,因为可以预期药物的潜在细胞毒性作用会影响这种普遍存在的核心网络。通过基于细胞内代谢产物对41种药物的机器学习进行机器学习,这些药物在三个数量级上以七个浓度施用,我们证明了从细胞内代谢组模式预测的酵母细胞毒性,而细胞内代谢组模式在低得多的药物浓度下却没有生理毒性。此外,由 13 C确定的代谢通量对药物治疗的细胞内反应表明,网络的功能性能相当强健,直到生长受到损害。因此,我们提供了证据,证明了通过灵活配置新的代谢组来实现对药物挑战的表型鲁棒性。

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