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Cancer Bioinformatic Methods to Infer Meaningful Data From Small-Size Cohorts

机译:癌症生物信息学方法可从小型队列中推断出有意义的数据

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Whole-genome analyses have uncovered that most cancer-relevant genes cluster into 12 signaling pathways. Knowledge of the signaling pathways and associated gene signatures not only allows us to understand the mechanisms of oncogenesis inherent to specific cancers but also provides us with drug targets, molecular diagnostic and prognosis factors, as well as biomarkers for patient risk stratification and treatment. Publicly available genomic data sets constitute a wealth of gene mining opportunities for hypothesis generation and testing. However, the increasingly recognized genetic and epigenetic inter- and intratumor heterogeneity, combined with the preponderance of small-size cohorts, hamper reliable analysis and discovery. Here, we review two methods that are used to infer meaningful biological events from small-size data sets and discuss some of their applications and limitations.
机译:全基因组分析发现大多数与癌症相关的基因聚集成12条信号通路。对信号通路和相关基因签名的了解不仅使我们了解特定癌症固有的致癌机制,而且还为我们提供了药物靶标,分子诊断和预后因素以及用于患者风险分层和治疗的生物标记。公开可用的基因组数据集为假设的产生和检验提供了大量的基因挖掘机会。但是,越来越多的公认的遗传和表观遗传学的肿瘤内和肿瘤异质性,再加上小规模人群的优势,阻碍了可靠的分析和发现。在这里,我们回顾了两种用于从小型数据集推断有意义的生物事件的方法,并讨论了它们的一些应用和局限性。

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