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首页> 外文期刊>Frontiers in Pharmacology >Pathway Based Analysis of Mutation Data Is Efficient for Scoring Target Cancer Drugs
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Pathway Based Analysis of Mutation Data Is Efficient for Scoring Target Cancer Drugs

机译:基于路径的突变数据分析可有效评估目标癌症药物

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Despite the significant achievements in chemotherapy, cancer remains one of the leading causes of death. Target therapy revolutionized this field, but efficiencies of target drugs show dramatic variation among individual patients. Personalization of target therapies remains, therefore, a challenge in oncology. Here, we proposed molecular pathway-based algorithm for scoring of target drugs using high throughput mutation data to personalize their clinical efficacies. This algorithm was validated on 3,800 exome mutation profiles from The Cancer Genome Atlas (TCGA) project for 128 target drugs. The output values termed Mutational Drug Scores (MDS) showed positive correlation with the published drug efficiencies in clinical trials. We also used MDS approach to simulate all known protein coding genes as the putative drug targets. The model used was built on the basis of 18,273 mutation profiles from COSMIC database for eight cancer types. We found that the MDS algorithm-predicted hits frequently coincide with those already used as targets of the existing cancer drugs, but several novel candidates can be considered promising for further developments. Our results evidence that the MDS is applicable to ranking of anticancer drugs and can be applied for the identification of novel molecular targets.
机译:尽管化学疗法取得了重大成就,但癌症仍然是主要的死亡原因之一。靶向疗法彻底改变了这一领域,但是靶向药物的效率在各个患者之间显示出巨大的差异。因此,目标疗法的个性化仍然是肿瘤学的一个挑战。在这里,我们提出了使用高通量突变数据对目标药物进行评分的基于分子途径的算法,以个性化其临床疗效。该算法已在来自癌症基因组图谱(TCGA)项目的3,800个外显子组突变图谱上得到验证,该配置文件可用于128种目标药物。称为突变药物评分(MDS)的输出值与临床试验中已发表的药物功效呈正相关。我们还使用MDS方法模拟了所有已知的蛋白质编码基因作为推定的药物靶标。使用的模型是基于COSMIC数据库中针对八种癌症类型的18,273个突变谱建立的。我们发现,MDS算法预测的命中率经常与已经用作现有抗癌药物靶点的命中率一致,但是可以认为有几种新颖的候选物有望进一步发展。我们的结果证明,MDS适用于抗癌药物的排名,并可用于鉴定新的分子靶标。

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