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A bioinformatics approach for precision medicine off-label drug drug selection among triple negative breast cancer patients

机译:一种在三阴性乳腺癌患者中精确选择药品即购即用药物的生物信息学方法

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摘要

>Background Cancer has been extensively characterized on the basis of genomics. The integration of genetic information about cancers with data on how the cancers respond to target based therapy to help to optimum cancer treatment.>Objective The increasing usage of sequencing technology in cancer research and clinical practice has enormously advanced our understanding of cancer mechanisms. The cancer precision medicine is becoming a reality. Although off-label drug usage is a common practice in treating cancer, it suffers from the lack of knowledge base for proper cancer drug selections. This eminent need has become even more apparent considering the upcoming genomics data.>Methods In this paper, a personalized medicine knowledge base is constructed by integrating various cancer drugs, drug-target database, and knowledge sources for the proper cancer drugs and their target selections. Based on the knowledge base, a bioinformatics approach for cancer drugs selection in precision medicine is developed. It integrates personal molecular profile data, including copy number variation, mutation, and gene expression.>Results By analyzing the 85 triple negative breast cancer (TNBC) patient data in the Cancer Genome Altar, we have shown that 71.7% of the TNBC patients have FDA approved drug targets, and 51.7% of the patients have more than one drug target. Sixty-five drug targets are identified as TNBC treatment targets and 85 candidate drugs are recommended. Many existing TNBC candidate targets, such as Poly (ADP-Ribose) Polymerase 1 (PARP1), Cell division protein kinase 6 (CDK6), epidermal growth factor receptor, etc., were identified. On the other hand, we found some additional targets that are not yet fully investigated in the TNBC, such as Gamma-Glutamyl Hydrolase (GGH), Thymidylate Synthetase (TYMS), Protein Tyrosine Kinase 6 (PTK6), Topoisomerase (DNA) I, Mitochondrial (TOP1MT), Smoothened, Frizzled Class Receptor (SMO), etc. Our additional analysis of target and drug selection strategy is also fully supported by the drug screening data on TNBC cell lines in the Cancer Cell Line Encyclopedia.>Conclusions The proposed bioinformatics approach lays a foundation for cancer precision medicine. It supplies much needed knowledge base for the off-label cancer drug usage in clinics.
机译:>背景癌症已经在基因组学的基础上得到了广泛的表征。将有关癌症的遗传信息与有关癌症如何响应基于靶标的治疗方法的数据相结合,以帮助优化癌症治疗的方法。>目的测序技术在癌症研究和临床实践中的日益普及极大地增进了我们的理解癌症机制。癌症精准医学正在成为现实。尽管标签外药物的使用是治疗癌症的一种常见做法,但它缺乏正确选择癌症药物的知识库。考虑到即将到来的基因组学数据,这种迫切需求变得更加明显。>方法在本文中,通过整合各种抗癌药物,药物靶点数据库和适当的知识来源,构建了个性化的医学知识库。癌症药物及其目标选择。基于该知识库,开发了一种在精确医学中选择癌症药物的生物信息学方法。它整合了个人分子概况数据,包括拷贝数变异,突变和基因表达。>结果通过分析癌症基因组坛中的85例三阴性乳腺癌(TNBC)患者数据,我们发现71.7 TNBC患者中有%具有FDA批准的药物靶标,而51.7%的患者中有一个以上的药物靶标。 TNBC治疗目标已确定为65种药物目标,建议使用85种候选药物。确定了许多现有的TNBC候选靶标,例如聚(ADP-核糖)聚合酶1(PARP1),细胞分裂蛋白激酶6(CDK6),表皮生长因子受体等。另一方面,我们发现了TNBC中尚未完全研究的其他一些靶标,例如γ-谷氨酰水解酶(GGH),胸苷酸合成酶(TYMS),酪氨酸激酶6(PTK6),拓扑异构酶(DNA)I,线粒体(TOP1MT),平滑的,卷曲的类受体(SMO)等。《癌细胞系大全》中TNBC细胞系的药物筛选数据也充分支持了我们对靶标和药物选择策略的额外分析。>结论< / strong>拟议的生物信息学方法为癌症精密医学奠定了基础。它为临床上的标签外癌症药物使用提供了急需的知识库。

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