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Precision and recall oncology: combining multiple gene mutations for improved identification of drug-sensitive tumours

机译:精确度和召回肿瘤学:结合多个基因突变以改善对药物敏感性肿瘤的鉴定

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摘要

Cancer drug therapies are only effective in a small proportion of patients. To make things worse, our ability to identify these responsive patients before administering a treatment is generally very limited. The recent arrival of large-scale pharmacogenomic data sets, which measure the sensitivity of molecularly profiled cancer cell lines to a panel of drugs, has boosted research on the discovery of drug sensitivity markers. However, no systematic comparison of widely-used single-gene markers with multi-gene machine-learning markers exploiting genomic data has been so far conducted. We therefore assessed the performance offered by these two types of models in discriminating between sensitive and resistant cell lines to a given drug. This was carried out for each of 127 considered drugs using genomic data characterising the cell lines. We found that the proportion of cell lines predicted to be sensitive that are actually sensitive (precision) varies strongly with the drug and type of model used. Furthermore, the proportion of sensitive cell lines that are correctly predicted as sensitive (recall) of the best single-gene marker was lower than that of the multi-gene marker in 118 of the 127 tested drugs. We conclude that single-gene markers are only able to identify those drug-sensitive cell lines with the considered actionable mutation, unlike multi-gene markers that can in principle combine multiple gene mutations to identify additional sensitive cell lines. We also found that cell line sensitivities to some drugs (e.g. Temsirolimus, 17-AAG or Methotrexate) are better predicted by these machine-learning models.
机译:癌症药物疗法仅对一小部分患者有效。更糟糕的是,我们在进行治疗之前识别这些反应性患者的能力通常非常有限。大规模药物基因组学数据集的到来,该数据集可测量分子分析的癌细胞系对一组药物的敏感性,从而促进了对药物敏感性标记物发现的研究。然而,到目前为止,尚未进行广泛利用的单基因标记与利用基因组数据的多基因机器学习标记的系统比较。因此,我们评估了这两种类型的模型在区分对给定药物的敏感和耐药细胞系中提供的性能。使用表征细胞系的基因组数据,对127种考虑药物中的每一种进行了这项研究。我们发现,实际上预测为敏感(精确)的敏感细胞系的比例随所用药物和所用模型的类型而有很大差异。此外,在127种测试药物中,正确预测为最佳单基因标记物敏感(召回)的敏感细胞系的比例低于多基因标记物的比例。我们得出的结论是,单基因标记只能识别具有可操作突变的药物敏感性细胞系,而多基因标记原则上可以结合多个基因突变来识别其他敏感细胞系。我们还发现,通过这些机器学习模型可以更好地预测细胞系对某些药物(例如替莫罗莫司,17-AAG或甲氨蝶呤)的敏感性。

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