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Data-Driven Metabolic Pathway Compositions Enhance Cancer Survival Prediction

机译:数据驱动的代谢途径成分增强了癌症生存预测

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摘要

Altered cellular metabolism is an important characteristic and driver of cancer. Surprisingly, however, we find here that aggregating individual gene expression using canonical metabolic pathways fails to enhance the classification of noncancerous vs. cancerous tissues and the prediction of cancer patient survival. This supports the notion that metabolic alterations in cancer rewire cellular metabolism through unconventional pathways. Here we present MCF (Metabolic classifier and feature generator), which incorporates gene expression measurements into a human metabolic network to infer new cancer-mediated pathway compositions that enhance cancer vs. adjacent noncancerous tissue classification across five different cancer types. MCF outperforms standard classifiers based on individual gene expression and on canonical human curated metabolic pathways. It successfully builds robust classifiers integrating different datasets of the same cancer type. Reassuringly, the MCF pathways identified lead to metabolites known to be associated with the pertaining specific cancer types. Aggregating gene expression through MCF pathways leads to markedly better predictions of breast cancer patients’ survival in an independent cohort than using the canonical human metabolic pathways (C-index = 0.69 vs. 0.52, respectively). Notably, the survival predictive power of individual MCF pathways strongly correlates with their power in predicting cancer vs. noncancerous samples. The more predictive composite pathways identified via MCF are hence more likely to capture key metabolic alterations occurring in cancer than the canonical pathways characterizing healthy human metabolism.
机译:细胞代谢改变是癌症的重要特征和驱动力。然而,令人惊讶的是,我们在这里发现使用规范性代谢途径聚集单个基因表达不能增强非癌性组织与癌性组织的分类以及癌症患者存活率的预测。这支持了癌症中的代谢改变通过非常规途径改变细胞代谢的观点。在这里,我们介绍MCF(代谢分类器和特征生成器),它将基因表达测量结果整合到人类代谢网络中,以推断新的癌症介导的通路成分,从而增强了五种不同癌症类型中的癌与相邻的非癌组织分类。 MCF优于基于个体基因表达和规范的人类策划代谢途径的标准分类器。它成功建立了强大的分类器,整合了相同癌症类型的不同数据集。令人放心的是,已鉴定的MCF途径导致已知与特定癌症类型相关的代谢产物。通过MCF途径聚合基因表达比使用规范的人类代谢途径能更好地预测乳腺癌患者在独立队列中的生存情况(分别为C-index = 0.69 vs. 0.52)。值得注意的是,单个MCF途径的生存预测能力与其预测癌症和非癌性样本的能力密切相关。因此,与表征健康人类新陈代谢的经典途径相比,通过MCF鉴定出的更具预测性的复合途径更有可能捕获癌症中发生的关键代谢改变。

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