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Integrated Approaches for the Use of Large Datasets to Identify Rational Therapies for the Treatment of Lung Cancers

机译:使用大数据集确定治疗肺癌的合理疗法的综合方法

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摘要

The benefit and burden of contemporary techniques for the molecular characterization of samples is the vast amount of data generated. In the era of “big data”, it has become imperative that we develop multi-disciplinary teams combining scientists, clinicians, and data analysts. In this review, we discuss a number of approaches developed by our University of Texas MD Anderson Lung Cancer Multidisciplinary Program to process and utilize such large datasets with the goal of identifying rational therapeutic options for biomarker-driven patient subsets. Large integrated datasets such as the The Cancer Genome Atlas (TCGA) for patient samples and the Cancer Cell Line Encyclopedia (CCLE) for tumor derived cell lines include genomic, transcriptomic, methylation, miRNA, and proteomic profiling alongside clinical data. To best use these datasets to address urgent questions such as whether we can define molecular subtypes of disease with specific therapeutic vulnerabilities, to quantify states such as epithelial-to-mesenchymal transition that are associated with resistance to treatment, or to identify potential therapeutic agents in models of cancer that are resistant to standard treatments required the development of tools for systematic, unbiased high-throughput analysis. Together, such tools, used in a multi-disciplinary environment, can be leveraged to identify novel treatments for molecularly defined subsets of cancer patients, which can be easily and rapidly translated from benchtop to bedside.
机译:现代技术对样品进行分子表征的好处和负担是生成了大量数据。在“大数据”时代,我们必须建立由科学家,临床医生和数据分析师组成的多学科团队。在这篇综述中,我们讨论了由德克萨斯大学MD安德森分校肺癌多学科计划开发的多种方法,用于处理和利用如此庞大的数据集,目的是为生物标记物驱动的患者亚群确定合理的治疗选择。大型综合数据集,例如用于患者样品的癌症基因组图谱(TCGA)和用于肿瘤衍生细胞系的癌细胞系百科全书(CCLE),包括基因组,转录组,甲基化,miRNA和蛋白质组分析以及临床数据。为了最好地利用这些数据集来解决紧迫的问题,例如我们是否可以定义具有特定治疗脆弱性的疾病分子亚型,量化与治疗耐药性相关的状态,例如上皮向间充质转化,还是确定潜在的治疗药物对标准治疗有抗药性的癌症模型需要开发用于系统,无偏见的高通量分析的工具。在一起使用,可以将这些工具用于多学科环境,以鉴定针对癌症患者的分子定义子集的新型治疗方法,这些方法可以轻松,快速地从台式转换为床旁。

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