Department of Circulation and Medical Imaging, Norwegian University of Science and Technology (NTNU), Trondheim, Norway.
J Proteome Res. 2010 Feb 5;9(2):972-9. doi: 10.1021/pr9008783.
Axillary lymph node status together with estrogen and progesterone receptor status are important prognostic factors in breast cancer. In this study, the potential of using MR metabolomics for prediction of these prognostic factors was evaluated. Biopsies from breast cancer patients (n = 160) were excised during surgery and analyzed by high resolution magic angle spinning MR spectroscopy (HR MAS MRS). The spectral data were preprocessed and variable stability (VAST) scaled, and training and test sets were generated using the Kennard-Stone and SPXY sample selection algorithms. The data were analyzed by partial least-squares discriminant analysis (PLS-DA), probabilistic neural networks (PNNs) and Bayesian belief networks (BBNs), and blind samples (n = 50) were predicted for verification. Estrogen and progesterone receptor status was successfully predicted from the MR spectra, and were best predicted by PLS-DA with a correct classification of 44 of 50 and 39 of 50 samples, respectively. Lymph node status was best predicted by BBN with 34 of 50 samples correctly classified, indicating a relationship between metabolic profile and lymph node status. Thus, MR profiles contain prognostic information that may be of benefit in treatment planning, and MR metabolomics may become an important tool for diagnosis of breast cancer patients.
腋窝淋巴结状态以及雌激素和孕激素受体状态是乳腺癌的重要预后因素。在这项研究中,评估了使用磁共振代谢组学预测这些预后因素的潜力。在手术过程中切除乳腺癌患者(n = 160)的活检组织,并通过高分辨率魔角旋转磁共振波谱(HRMAS MRS)进行分析。对光谱数据进行预处理和变量稳定性(VAST)缩放,并使用 Kennard-Stone 和 SPXY 样本选择算法生成训练集和测试集。通过偏最小二乘判别分析(PLS-DA)、概率神经网络(PNNs)和贝叶斯置信网络(BBNs)对数据进行分析,并对盲样(n = 50)进行预测以进行验证。成功地从磁共振谱中预测了雌激素和孕激素受体状态,PLS-DA 的预测效果最佳,分别正确分类了 50 个样本中的 44 个和 39 个样本。BBN 对淋巴结状态的预测效果最佳,正确分类了 50 个样本中的 34 个,表明代谢谱与淋巴结状态之间存在关系。因此,MR 图谱包含可能有益于治疗计划的预后信息,而 MR 代谢组学可能成为诊断乳腺癌患者的重要工具。