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Graph based fusion of miRNA and mRNA expression data improves clinical outcome prediction in prostate cancer

机译:基于图的miRNA和mRNA表达数据融合改善了前列腺癌的临床预后

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摘要

BackgroundOne of the main goals in cancer studies including high-throughput microRNA (miRNA) and mRNA data is to find and assess prognostic signatures capable of predicting clinical outcome. Both mRNA and miRNA expression changes in cancer diseases are described to reflect clinical characteristics like staging and prognosis. Furthermore, miRNA abundance can directly affect target transcripts and translation in tumor cells. Prediction models are trained to identify either mRNA or miRNA signatures for patient stratification. With the increasing number of microarray studies collecting mRNA and miRNA from the same patient cohort there is a need for statistical methods to integrate or fuse both kinds of data into one prediction model in order to find a combined signature that improves the prediction.
机译:背景技术包括高通量microRNA(miRNA)和mRNA数据在内的癌症研究的主要目标之一是发现和评估能够预测临床结果的预后标志。描述了癌症疾病中的mRNA和miRNA表达变化,以反映临床特征,例如分期和预后。此外,miRNA的丰度可以直接影响靶转录物和肿瘤细胞的翻译。训练预测模型以识别用于患者分层的mRNA或miRNA特征。随着越来越多的微阵列研究从同一个患者队列中收集mRNA和miRNA,需要一种统计方法将两种数据整合或融合到一个预测模型中,以找到改善预测的组合特征。

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