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Identification of oncogenic genes for colon adenocarcinoma from genomics data

机译:从基因组学数据鉴定结肠腺癌的致癌基因

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Identification of oncogenic genes from comprehensive genomics data with large sample size is of challenge. Here, we apply a well-established computational model, Bayesian factor and regression model (BFRM), to predict unknown colon cancer genes from colon adenocarcinoma genomic data. The BFRM takes advantages of its latent factors to characterize the underlying association between genes and the large number of colon cancer patients. Based on the known cancer genes in Online Mendelian Inheritance in Man (OMIM), we addressed three important latent factors focusing on characterization of heterogeneity of expression patterns related to specific oncogenic genes from the microarray data of 174 colon cancer patients. We found that the three latent factors can be employed to predict unknown colon cancer genes using the known oncogenic genes. These predicted unknown cancer genes were extensively validated by using the new somatic genes identified in the same patients from DNA sequencing data.
机译:从大量样本的全面基因组学数据中鉴定致癌基因是一个挑战。在这里,我们应用完善的计算模型,贝叶斯因子和回归模型(BFRM),从结肠腺癌基因组数据预测未知的结肠癌基因。 BFRM利用其潜在因素来表征基因与大量结肠癌患者之间的潜在关联。基于在线人类孟德尔遗传(OMIM)中已知的癌症基因,我们针对174个结肠癌患者的微阵列数据,研究了三个重要的潜在因素,重点关注与特定致癌基因相关的表达模式的异质性表征。我们发现这三个潜在因素可用于使用已知的致癌基因预测未知的结肠癌基因。这些预测的未知癌症基因通过使用从DNA测序数据中在同一患者中鉴定出的新体细胞基因得到了广泛验证。

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