Evangelista Erin B, Kwee Sandi A, Sato Miles M, Wang Lu, Rettenmeier Christoph, Xie Guoxiang, Jia Wei, Wong Linda L
The Queen's Medical Center, Honolulu, HI 96813, USA.
University of Hawaii Cancer Center, University of Hawaii at Manoa, Honolulu, HI 96813, USA.
Diagnostics (Basel). 2019 Oct 29;9(4):167. doi: 10.3390/diagnostics9040167.
Hepatocellular carcinoma (HCC) pathogenesis involves the alteration of multiple liver-specific metabolic pathways. We systematically profiled cancer- and liver-related classes of metabolites in HCC and adjacent liver tissues and applied supervised machine learning to compare their potential yield for HCC biomarkers.
Tumor and corresponding liver tissue samples were profiled as follows: Bile acids by ultra-performance liquid chromatography (LC) coupled to tandem mass spectrometry (MS), phospholipids by LC-MS/MS, and other small molecules including free fatty acids by gas chromatography-time of flight MS. The overall classification performance of metabolomic signatures derived by support vector machine (SVM) and random forests machine learning algorithms was then compared across classes of metabolite.
For each metabolite class, there was a plateau in classification performance with signatures of 10 metabolites. Phospholipid signatures consistently showed the highest discrimination for HCC followed by signatures derived from small molecules, free fatty acids, and bile acids with area under the receiver operating characteristic curve (AUC) values of 0.963, 0.934, 0.895, 0.695, respectively, for SVM-generated signatures comprised of 10 metabolites. Similar classification performance patterns were observed with signatures derived by random forests.
Membrane phospholipids are a promising source of tissue biomarkers for discriminating between HCC tumor and liver tissue.
肝细胞癌(HCC)的发病机制涉及多种肝脏特异性代谢途径的改变。我们系统地分析了HCC及邻近肝组织中与癌症和肝脏相关的代谢物类别,并应用监督式机器学习来比较它们作为HCC生物标志物的潜在价值。
对肿瘤及相应肝组织样本进行如下分析:采用超高效液相色谱(LC)与串联质谱(MS)联用分析胆汁酸,采用LC-MS/MS分析磷脂,采用气相色谱-飞行时间质谱分析包括游离脂肪酸在内的其他小分子。然后比较支持向量机(SVM)和随机森林机器学习算法得出的代谢组学特征在不同代谢物类别中的总体分类性能。
对于每一类代谢物,由10种代谢物组成的特征在分类性能上都出现了一个平台期。磷脂特征对HCC的区分能力始终最高,其次是小分子、游离脂肪酸和胆汁酸的特征,对于由10种代谢物组成的SVM生成的特征,其受试者工作特征曲线(AUC)下面积值分别为0.963、0.934、0.895、0.695。随机森林得出的特征也观察到类似的分类性能模式。
膜磷脂是区分HCC肿瘤和肝组织的有前景的组织生物标志物来源。