Tessem May-Britt, Bertilsson Helena, Angelsen Anders, Bathen Tone F, Drabløs Finn, Rye Morten Beck
St. Olavs Hospital, Trondheim University Hospital, Trondheim, Norway.
MI Lab, Department of Circulation and Medical Imaging, Norwegian University of Science and Technology (NTNU), Trondheim, Norway.
PLoS One. 2016 Apr 21;11(4):e0153727. doi: 10.1371/journal.pone.0153727. eCollection 2016.
Molecular analysis of patient tissue samples is essential to characterize the in vivo variability in human cancers which are not accessible in cell-lines or animal models. This applies particularly to studies of tumor metabolism. The challenge is, however, the complex mixture of various tissue types within each sample, such as benign epithelium, stroma and cancer tissue, which can introduce systematic biases when cancers are compared to normal samples. In this study we apply a simple strategy to remove such biases using sample selections where the average content of stroma tissue is balanced between the sample groups. The strategy is applied to a prostate cancer patient cohort where data from MR spectroscopy and gene expression have been collected from and integrated on the exact same tissue samples. We reveal in vivo changes in cancer-relevant metabolic pathways which are otherwise hidden in the data due to tissue confounding. In particular, lowered levels of putrescine are connected to increased expression of SRM, reduced levels of citrate are attributed to upregulation of genes promoting fatty acid synthesis, and increased succinate levels coincide with reduced expression of SUCLA2 and SDHD. In addition, the strategy also highlights important metabolic differences between the stroma, epithelium and prostate cancer. These results show that important in vivo metabolic features of cancer can be revealed from patient data only if the heterogeneous tissue composition is properly accounted for in the analysis.
对患者组织样本进行分子分析对于表征人类癌症的体内变异性至关重要,而这些变异性在细胞系或动物模型中是无法获取的。这尤其适用于肿瘤代谢研究。然而,挑战在于每个样本中各种组织类型的复杂混合,如良性上皮、基质和癌组织,在将癌症与正常样本进行比较时,这可能会引入系统性偏差。在本研究中,我们应用一种简单的策略,通过样本选择来消除此类偏差,使样本组之间基质组织的平均含量保持平衡。该策略应用于一个前列腺癌患者队列,其中磁共振波谱和基因表达数据是从完全相同的组织样本中收集并整合的。我们揭示了癌症相关代谢途径的体内变化,这些变化由于组织混杂在数据中原本是隐藏的。特别是,腐胺水平降低与SRM表达增加有关,柠檬酸盐水平降低归因于促进脂肪酸合成的基因上调,琥珀酸盐水平升高与SUCLA2和SDHD表达降低一致。此外,该策略还突出了基质、上皮和前列腺癌之间重要的代谢差异。这些结果表明,只有在分析中适当考虑异质组织组成,才能从患者数据中揭示癌症重要 的体内代谢特征。