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首页> 外文期刊>Journal of the American Medical Informatics Association : >Comparison and validation of genomic predictors for anticancer drug sensitivity
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Comparison and validation of genomic predictors for anticancer drug sensitivity

机译:基因组预测因子抗癌药敏感性的比较和验证

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Background: An enduring challenge in personalized medicine lies in selecting the right drug for each individual patient. While testing of drugs on patients in large trials is the only way to assess their clinical efficacy and toxicity, we dramatically lack resources to test the hundreds of drugs currently under development. Therefore the use of preclinical model systems has been intensively investigated as this approach enables response to hundreds of drugs to be tested in multiple cell lines in parallel. Methods: Two large-scale pharmacogenomic studies recently screened multiple anticancer drugs on over 1000 cell lines. We propose to combine these datasets to build and robustly validate genomic predictors of drug response. We compared five different approaches for building predictors of increasing complexity. We assessed their performance in cross-validation and in two large validation sets, one containing the same cell lines present in the training set and another dataset composed of cell lines that have never been used during the training phase. Results: Sixteen drugs were found in common between the datasets. We were able to validate multivariate predictors for three out of the 16 tested drugs, namely irinotecan, PD-0325901, and PLX4720. Moreover, we observed that response to 17-AAG, an inhibitor of Hsp90, could be efficiently predicted by the expression level of a single gene, NQO1. Conclusion: These results suggest that genomic predictors could be robustly validated for specific drugs. If successfully validated in patients' tumor cells, and subsequently in clinical trials, they could act as companion tests for the corresponding drugs and play an important role in personalized medicine.
机译:背景:个性化医疗的持久挑战在于为每位患者选择合适的药物。虽然在大型试验中对患者进行药物测试是评估其临床疗效和毒性的唯一方法,但我们严重缺乏资源来测试目前正在开发的数百种药物。因此,已经对临床前模型系统的使用进行了深入研究,因为这种方法能够对在多个细胞系中并行测试的数百种药物产生反应。方法:两项大规模的药物基因组学研究最近在1000多个细胞系中筛选了多种抗癌药物。我们建议结合这些数据集来构建和可靠地验证药物反应的基因组预测因子。我们比较了五种不同的方法来建立复杂性不断提高的预测指标。我们评估了它们在交叉验证和两个大型验证集中的性能,其中一个包含训练集中存在的相同细胞系,另一个包含训练阶段从未使用过的细胞系组成的数据集。结果:在数据集之间共发现16种药物。我们能够验证16种受测药物中有3种的多变量预测因子,即伊立替康,PD-0325901和PLX4720。此外,我们观察到可以通过单个基因NQO1的表达水平有效预测对Hsp90抑制剂17-AAG的反应。结论:这些结果表明,基因组预测因子可以针对特定药物进行有效验证。如果在患者的肿瘤细胞中以及随后的临床试验中成功验证,它们可以作为相应药物的伴随测试,并在个性化医学中发挥重要作用。

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