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Topologically inferring pathway activity toward precise cancer classification via integrating genomic and metabolomic data: prostate cancer as a case

机译:通过整合基因组和代谢组学数据来拓扑学推断通路活动以实现精确的癌症分类:以前列腺癌为例

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摘要

Precise cancer classification is a central challenge in clinical cancer research such as diagnosis, prognosis and metastasis prediction. Most existing cancer classification methods based on gene or metabolite biomarkers were limited to single genomics or metabolomics, and lacked integration and utilization of multiple ‘omics’ data. The accuracy and robustness of these methods when applied to independent cohorts of patients must be improved. In this study, we propose a directed random walk-based method to evaluate the topological importance of each gene in a reconstructed gene–metabolite graph by integrating information from matched gene expression profiles and metabolomic profiles. The joint use of gene and metabolite information contributes to accurate evaluation of the topological importance of genes and reproducible pathway activities. We constructed classifiers using reproducible pathway activities for precise cancer classification and risk metabolic pathway identification. We applied the proposed method to the classification of prostate cancer. Within-dataset experiments and cross-dataset experiments on three independent datasets demonstrated that the proposed method achieved a more accurate and robust overall performance compared to several existing classification methods. The resulting risk pathways and topologically important differential genes and metabolites provide biologically informative models for prostate cancer prognosis and therapeutic strategies development.
机译:精确的癌症分类是临床癌症研究(例如诊断,预后和转移预测)中的主要挑战。现有的大多数基于基因或代谢物生物标记物的癌症分类方法仅限于单个基因组学或代谢组学,并且缺乏对多个“组学”数据的整合和利用。当将这些方法应用于独立队列时,必须提高这些方法的准确性和鲁棒性。在这项研究中,我们提出了一种有向随机游动法,通过整合匹配的基因表达谱和代谢组学谱中的信息,来评估重构的基因-代谢物图中每个基因的拓扑重要性。基因和代谢物信息的联合使用有助于准确评估基因的拓扑重要性和可重现的途径活性。我们使用可再现的途径活动构建分类器,以进行精确的癌症分类和风险代谢途径识别。我们将提出的方法应用于前列腺癌的分类。在三个独立的数据集上进行的数据集内实验和交叉数据集实验表明,与几种现有分类方法相比,该方法可实现更准确,更可靠的整体性能。由此产生的风险途径和拓扑上重要的差异基因和代谢产物为前列腺癌的预后和治疗策略的发展提供了生物学信息模型。

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