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Ensemble classifier based on context specific miRNA regulation modules: a new method for cancer outcome prediction

机译:基于上下文特定的miRNA调控模块的集成分类器:癌症预后的新方法

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BackgroundMany calssifiers which are constructed with chosen gene markers have been proposed to forecast the prognosis of patients who suffer from breast cancer. However, few of them has been applied in clinical practice because of the bad generalization, which results from the situation that markers selected by one method are very different from those obtained by anohter mothod, and thus such markers always lack discriminative capability in the other data sets.MethodsIn this work, a new ensemble classifier, on the basis of context specific miRNA regulation modules, has been proposed to forecast the metastasis risk of cancer sufferers. First, we defined all of the miRNAs which regulate the same context as a module that contains miRNAs and their regulating context, and applied the CoMi (Context-specific miRNA activity) score in order to illustrate a miRNA's effect which happened in a particular background; then the miRNA regulation modules with distinguising abilities were detected and each of them was responsible for building a weak classifier separately; at last, by using majority voting strategy, we integrated all weak classifiers to establish an ensembled one that was applied to forecast the prognosis of patients who suffer from cancer.ResultsAfter comparing, the results on the cohorts containing over 1,000 samples showed that the proposed ensemble classifier is superior to other three classifiers based on miRNA expression profiles, mRNA expression profiles and CoMi activity patterns respectively. Significantly, our method outperforms the representative works. Moreover, the detected modules from different data sets show great stability (with p-value of 6.40e-08). For investigating the biological significance of those selected modules, case studies have been done by us and the results suggested that our method do help to reveal latent mechanism in metastasis of breast cancer.ConclusionsOne context specific miRNA regulation module can uncover one critical biological process and its involved miRNAs that are related to the cancer outcome, and several modules together can help to study the biological mechanism in cancer metastasis, thus the classifer based on ensembling multiple classifers which were built with different context specific miRNA regulation modules has showed promising performances in terms with both prediction accuracy and generalization.
机译:背景技术已经提出了许多用选定的基因标记构建的钙化剂,以预测患有乳腺癌的患者的预后。但是,由于泛化性差,因此很少将它们应用到临床实践中,这是由于以下情况导致的:使用一种方法选择的标记与通过另一种方法获得的标记非常不同,因此此类标记在其他数据中始终缺乏判别能力在这项工作中,基于上下文特定的miRNA调控模块,提出了一个新的集成分类器,以预测癌症患者的转移风险。首先,我们定义了所有与包含miRNA及其调控环境的模块调控相同环境的miRNA,并应用CoMi(特定于环境的miRNA活性)评分来说明在特定背景下发生的miRNA的作用。然后检测具有区分能力的miRNA调控模块,每个模块分别负责构建弱分类器。最后,通过多数表决策略,我们综合了所有弱分类器,建立了一个完整的分类器,用于预测癌症患者的预后。结果经过比较,在包含1,000多个样本的队列中的结果表明,拟议的集合基于miRNA表达谱,mRNA表达谱和CoMi活性模式,该分类器优于其他三个分类器。重要的是,我们的方法优于代表性作品。此外,从不同数据集中检测到的模块显示出很高的稳定性(p值为6.40e-08)。为了研究这些选定模块的生物学意义,我们进行了案例研究,结果表明我们的方法确实有助于揭示乳腺癌转移的潜在机制。结论一个上下文相关的miRNA调控模块可以揭示一个关键的生物学过程及其过程。涉及到的与癌症结果相关的miRNA,几个模块一起可以帮助研究癌症转移的生物学机制,因此基于集合了多个分类器的分类器,这些分类器是用不同的上下文特定miRNA调控模块构建的,在预测准确性和概括性。

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