Department of Engineering Science, University of Oxford, Begbroke Science Park, Woodstock Road, Oxford, OX5 1PF, UK.
Analyst. 2019 Jan 28;144(3):913-920. doi: 10.1039/c8an01437j.
Chronic fatigue syndrome (CFS), also called myalgic encephalomyelitis (ME), is a debilitating disorder characterized by physical and mental exhaustion. Mitochondrial and energetic dysfunction has been investigated in CFS patients due to a hallmark relationship with fatigue; however, no consistent conclusion has yet been achieved. Single-cell Raman spectra (SCRS) are label-free biochemical profiles, indicating phenotypic fingerprints of single cells. In this study, we applied a new approach using single-cell Raman microspectroscopy (SCRM) to examine ρ0 cells that lack mitochondrial DNA (mtDNA), and peripheral blood mononuclear cells (PBMCs) from CFS patients and healthy controls. The experimental results show that Raman bands associated with phenylalanine in ρ0 cells and CFS patient PBMCs were significantly higher than those of the wild-type model and healthy controls. As similar changes were observed in the ρ0 cell model with a known deficiency in the mitochondrial respiratory chain as well as in CFS patients, our results suggest that the increase in cellular phenylalanine may be related to mitochondrial/energetic dysfunction in both systems. Interestingly, phenylalanine can be used as a potential biomarker for the diagnosis of CFS by SCRM. A machine learning classification model achieved an accuracy rate of 98% correctly assigning Raman spectra to either the CFS group or the control group. SCRM combined with a machine learning algorithm therefore has the potential to become a diagnostic tool for CFS.
慢性疲劳综合征(CFS),也称为肌痛性脑脊髓炎(ME),是一种使人虚弱的疾病,其特征是身体和精神疲惫。由于与疲劳有标志性的关系,已经在 CFS 患者中研究了线粒体和能量功能障碍;然而,尚未得出一致的结论。单细胞拉曼光谱(SCRS)是无标记的生化特征,可指示单细胞的表型指纹。在这项研究中,我们应用了一种新的方法,使用单细胞拉曼显微镜(SCRM)来检查缺乏线粒体 DNA(mtDNA)的 ρ0 细胞和 CFS 患者和健康对照者的外周血单核细胞(PBMCs)。实验结果表明,ρ0 细胞和 CFS 患者 PBMCs 中与苯丙氨酸相关的拉曼带明显高于野生型模型和健康对照组。由于在已知线粒体呼吸链缺陷的 ρ0 细胞模型以及 CFS 患者中观察到类似的变化,我们的结果表明细胞苯丙氨酸的增加可能与两个系统中的线粒体/能量功能障碍有关。有趣的是,苯丙氨酸可通过 SCRM 用作 CFS 的潜在诊断标志物。机器学习分类模型的准确率为 98%,可正确地将拉曼光谱分配给 CFS 组或对照组。因此,SCRM 与机器学习算法相结合有可能成为 CFS 的诊断工具。