模板驱动基因选择程序。

N Knowlton, I Dozmorov, K D Kyker, R Saban, C Cadwell, M B Centola, R E Hurst
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引用次数: 3

摘要

通常用于分析微阵列数据的分层聚类和统计技术本身并不代表潜在的生物学。在此,提出了一种涉及监督学习和无监督学习特征的混合方法。这种方法是基于模板匹配,其中固有恶性肿瘤的变量和表达恶性表型的能力的相互作用被建模。永生化的正常尿路上皮细胞和不同恶性肿瘤的膀胱癌细胞在常规的二维组织培养和三维细胞外基质(ecm)上生长,这些细胞外基质允许或限制恶性表型的表达。转录组代表了两个变量的影响——固有恶性和ECM的调节作用。通过对每个固有恶性和表达恶性表型的生物学变量赋值,构建了一个模板,该模板封装了它们之间的相互作用。观察到基因表达与模板呈正相关和负相关,但当进行迭代相关时,模板的不同模型收敛于同一实际模板。鉴定了21个基因的子集,这与两个先验模型或一个优化模型相关,该模型高于95%的置信限,该模型在数据集的5000个排列的自举重采样中确定。多个基因表达相关系数均> 0.8。上游转录调控元件(TREs)分析证实,这些基因不是随机选择的一组基因。在鉴定出TREs的20个基因样本中,有几个TREs被鉴定为显著过表达,并且几个基因的高相关性与转录共调控一致。作者建议,模板方法可用于鉴定一组独特的基因,以供进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Template-driven gene selection procedure.

The hierarchical clustering and statistical techniques usually used to analyse microarray data do not inherently represent the underlying biology. Herein, a hybrid approach involving characteristics of both supervised and unsupervised learning is presented. This approach is based on template matching in which the interaction of the variables of inherent malignancy and the ability to express the malignant phenotype are modelled. Immortalised normal urothelial cells and bladder cancer cells of different malignancy were grown in conventional two-dimensional tissue culture and in three dimensions on extracellular matrices (ECMs) that were either permissive or restrictive for expression of the malignant phenotype. The transcriptome represents the effects of two variables--inherent malignancy and the modulatory effect of ECM. By assigning values to each of the biological variables of inherent malignancy and the ability to express the malignant phenotype, a template was constructed, which encapsulated the interaction between them. Gene expression correlating both positively and negatively with the template was observed, but when iterative correlations were carried out, the different models for the template converged on the same actual template. A subset of 21 genes was identified, which correlated with two a priori models or an optimised model above the 95% confidence limits identified in a bootstrap resampling with 5000 permutations of the data set. The correlation coefficients of expression of several genes were > 0.8. Analysis of upstream transcriptional regulatory elements (TREs) confirmed that these genes were not a randomly selected set of genes. Several TREs were identified as significantly over-expressed in the sample of 20 genes for which TREs were identified, and the high correlations of several genes were consistent with transcriptional co-regulation. The authors suggest that the template method can be used to identify a unique set of genes for further investigation.

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