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Integrating complex genomic datasets and tumour cell sensitivity profiles to address a simple question: which patients should get this drug?

机译:整合复杂的基因组数据集和肿瘤细胞敏感性概况以解决一个简单的问题:哪些患者应该服用这种药物?

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摘要

It is becoming increasingly apparent that cancer drug therapies can only reach their full potential through appropriate patient selection. Matching drugs and cancer patients has proven to be a complex challenge, due in large part to the substantial molecular heterogeneity inherent to human cancers. This is not only a major hurdle to the improvement of the use of current treatments but also for the development of novel therapies and the ability to steer them to the relevant clinical indications. In this commentary we discuss recent studies from Kuo et al., published this month in BMC Medicine, in which they used a panel of cancer cell lines as a model for capturing patient heterogeneity at the genomic and proteomic level in order to identify potential biomarkers for predicting the clinical activity of a novel candidate chemotherapeutic across a patient population. The findings highlight the ability of a 'systems approach' to develop a better understanding of the properties of novel candidate therapeutics and to guide clinical testing and application.See the associated research paper by Kuo et al:
机译:越来越明显的是,只有通过适当的患者选择,抗癌药物才能发挥其全部潜力。药物和癌症患者的匹配已被证明是一项复杂的挑战,这在很大程度上归因于人类癌症固有的分子异质性。这不仅是改善当前疗法使用的主要障碍,而且是开发新疗法以及将其引导至相关临床适应症的能力。在这篇评论中,我们讨论了来自Kuo等人的最新研究,该研究于本月在BMC Medicine上发表,他们在研究中使用一组癌细胞系作为模型来捕获患者在基因组和蛋白质组学水平上的异质性,从而确定潜在的生物标志物。预测整个患者人群中新型候选化学疗法的临床活性。这些发现强调了``系统方法''能够更好地理解新型候选疗法的特性并指导临床测试和应用的能力。请参见Kuo等人的相关研究论文:

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