Wang Xianqin, Zhang Meiling, Ma Jianshe, Zhang Yuan, Hong Guangliang, Sun Fa, Lin Guanyang, Hu Lufeng
Analytical and Testing Center, Wenzhou Medical University.
Biol Pharm Bull. 2015;38(3):470-5. doi: 10.1248/bpb.b14-00781.
Numerous people die of paraquat (PQ) poisoning every year in the world. Although several studies regarding paraquat (PQ) poisoning have been conducted, the metabolic changes in plasma remain unknown. In this study, the metabolomics of 15 PQ poisoned patients with plasma PQ concentrations in excess of 0.1 µg/mL and 16 healthy volunteers were investigated. The plasma samples were evaluated through the use of gas chromatography-mass spectrometry (GC/MS) and analyzed by partial least-squares discriminant analysis (PLS-DA). Based on the metabolomics data, a support vector machine (SVM) discrimination model was developed. The results showed the plasma levels of urea, glucose oxime and L-phenylalanine decreased and cholesterol increased in PQ poisoned patients in comparison to healthy volunteers. The SVM discrimination model was developed, and performed with a high degree of accuracy, to distinguish PQ poisoned patients from healthy volunteers. In conclusion, metabolic pathways including the urea cycle, and amino acid, glucose, and cholesterol metabolism were impaired after PQ poisoning. An SVM discrimination model, based on metabolomics data, was established and may become a new powerful tool for the diagnosis of PQ poisoning.
每年全球都有许多人死于百草枯(PQ)中毒。尽管已经开展了多项关于百草枯(PQ)中毒的研究,但血浆中的代谢变化仍不清楚。在本研究中,对15名血浆PQ浓度超过0.1µg/mL的PQ中毒患者和16名健康志愿者进行了代谢组学研究。通过气相色谱-质谱联用(GC/MS)对血浆样本进行评估,并采用偏最小二乘判别分析(PLS-DA)进行分析。基于代谢组学数据,建立了支持向量机(SVM)判别模型。结果显示,与健康志愿者相比,PQ中毒患者血浆中的尿素、葡萄糖肟和L-苯丙氨酸水平降低,胆固醇水平升高。建立了SVM判别模型,该模型在区分PQ中毒患者和健康志愿者方面具有很高的准确性。总之,PQ中毒后尿素循环以及氨基酸、葡萄糖和胆固醇代谢等代谢途径受到损害。基于代谢组学数据建立了SVM判别模型,该模型可能成为诊断PQ中毒的一种新的有力工具。