Wei Yiping, Jasbi Paniz, Shi Xiaojian, Turner Cassidy, Hrovat Jonathon, Liu Li, Rabena Yuri, Porter Peggy, Gu Haiwei
Arizona Metabolomics Laboratory, College of Health Solutions, Arizona State University, Scottsdale, Arizona 85259, United States.
Systems Biology Institute, Cellular and Molecular Physiology, Yale School of Medicine, West Haven, Connecticut 06516, United States.
J Proteome Res. 2021 Jun 4;20(6):3124-3133. doi: 10.1021/acs.jproteome.1c00019. Epub 2021 May 25.
Breast cancer (BC) is a common cause of morbidity and mortality, particularly in women. Moreover, the discovery of diagnostic biomarkers for early BC remains a challenging task. Previously, we [Jasbi et al. 2019, 1105, 26-37] demonstrated a targeted metabolic profiling approach capable of identifying metabolite marker candidates that could enable highly sensitive and specific detection of BC. However, the coverage of this targeted method was limited and exhibited suboptimal classification of early BC (EBC). To expand the metabolome coverage and articulate a better panel of metabolites or mass spectral features for classification of EBC, we evaluated untargeted liquid chromatography quadrupole time-of-flight mass spectrometry (LC-QTOF-MS) data, both individually as well as in conjunction with previously published targeted LC-triple quadruple (QQQ)-MS data. Variable importance in projection scores were used to refine the biomarker panel, whereas orthogonal partial least squares-discriminant analysis was used to operationalize the enhanced biomarker panel for early diagnosis. In this approach, 33 altered metabolites/features were detected by LC-QTOF-MS from 124 BC patients and 86 healthy controls. For EBC diagnosis, significance testing and analysis of the area under receiver operating characteristic (AUROC) curve identified six metabolites/features [ethyl ()-3-hydroxyhexanoate; caprylic acid; hypoxanthine; and 358.0018, 354.0053, and 356.0037] with < 0.05 and AUROC > 0.7. These metabolites informed the construction of EBC diagnostic models; evaluation of model performance for the prediction of EBC showed an AUROC = 0.938 (95% CI: 0.895-0.975), with sensitivity = 0.90 when specificity = 0.90. Using the combined untargeted and targeted data set, eight metabolic pathways of potential biological relevance were indicated to be significantly altered as a result of EBC. Metabolic pathway analysis showed fatty acid and aminoacyl-tRNA biosynthesis as well as inositol phosphate metabolism to be most impacted in response to the disease. The combination of untargeted and targeted metabolomics platforms has provided a highly predictive and accurate method for BC and EBC diagnosis from plasma samples. Furthermore, such a complementary approach yielded critical information regarding potential pathogenic mechanisms underlying EBC that, although critical to improved prognosis and enhanced survival, are understudied in the current literature. All mass spectrometry data and deidentified subject metadata analyzed in this study have been deposited to Mendeley Data and are publicly available (DOI: 10.17632/kcjg8ybk45.1).
乳腺癌(BC)是发病和死亡的常见原因,在女性中尤为如此。此外,发现早期乳腺癌的诊断生物标志物仍然是一项具有挑战性的任务。此前,我们[Jasbi等人,2019年,1105,26 - 37]展示了一种靶向代谢谱分析方法,该方法能够识别代谢物标志物候选物,从而实现对乳腺癌的高灵敏度和特异性检测。然而,这种靶向方法的覆盖范围有限,对早期乳腺癌(EBC)的分类表现欠佳。为了扩大代谢组覆盖范围并阐明用于EBC分类的更好的代谢物或质谱特征组合,我们评估了非靶向液相色谱四极杆飞行时间质谱(LC - QTOF - MS)数据,包括单独评估以及与先前发表的靶向液相色谱三重四极杆(QQQ) - MS数据结合评估。投影得分中的变量重要性用于优化生物标志物组合,而正交偏最小二乘判别分析用于实施增强的生物标志物组合以进行早期诊断。在这种方法中,通过LC - QTOF - MS从124例BC患者和86例健康对照中检测到33种改变的代谢物/特征。对于EBC诊断,通过显著性检验和受试者工作特征(AUROC)曲线下面积分析,确定了六种代谢物/特征[() - 3 - 羟基己酸乙酯;辛酸;次黄嘌呤;以及358.0018、354.0053和
356.0037],其P值<0.05且AUROC>0.7。这些代谢物为EBC诊断模型的构建提供了依据;对EBC预测模型性能的评估显示AUROC = 0.938(95% CI:0.895 - 0.975),当特异性 = 0.90时灵敏度 = 0.90。使用非靶向和靶向数据集的组合,表明有八条潜在生物学相关的代谢途径因EBC而发生显著改变。代谢途径分析表明,脂肪酸和氨酰 - tRNA生物合成以及肌醇磷酸代谢受该疾病影响最大。非靶向和靶向代谢组学平台的结合为从血浆样本中诊断BC和EBC提供了一种高度预测性和准确性的方法。此外,这种互补方法产生了关于EBC潜在致病机制的关键信息,尽管这些信息对于改善预后和提高生存率至关重要,但在当前文献中研究较少。本研究中分析的所有质谱数据和去识别化的受试者元数据已存入Mendeley Data并可公开获取(DOI:10.17632/kcjg8ybk45.1)。