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用于评估多发性骨髓瘤患者治疗反应和预后的血清异常代谢物

Serum Abnormal Metabolites for Evaluating Therapeutic Response and Prognosis of Patients With Multiple Myeloma.

作者信息

Wei Yujun, Wang Jinying, Chen Fei, Li Xin, Zhang Jiajia, Shen Man, Tang Ran, Huang Zhongxia

机构信息

Multiple Myeloma Medical Center of Beijing, Department of Hematology, Beijing Chao-yang Hospital, Capital Medical University, Beijing, China.

Multiple Myeloma Medical Center of Beijing, Beijing Chao-yang Hospital, Capital Medical University, Beijing, China.

出版信息

Front Oncol. 2022 Feb 28;12:808290. doi: 10.3389/fonc.2022.808290. eCollection 2022.

Abstract

AIMS

To evaluate abnormal metabolites related to treatment response and prognosis of multiple myeloma (MM) patients through ultra performance liquid chromatography tandem mass spectrometry (UPLC-MS).

METHODS

Forty-six symptomatic MM patients were included in this study who had a prior high level of positive monoclonal proteins before receiving targeted therapy with bortezomib-based regimens. UPLC-MS along with traditional immunofixation was performed on MM diagnostic samples and effective serum samples, and UPLC-MS was used to target valuable metabolic markers related to M protein.MM patients were segregated into pre-therapy (pre-T) and post-therapy (post-T) groups according to the response after chemotherapy. A monoclonal protein could be detected at baseline in 33 newly diagnosed MM (NDMM), 13 refractory and relapsed MM (RRMM) patients and 20 healthy controls (HC) by immunofixation.

RESULTS

Between pre-T and post-T patients, the data showed that 32, 28 and 3 different metabolites were significantly correlated with M protein in IgG, IgA and light chain-type MM, respectively. These identified metabolites were significantly enriched in arginine and proline metabolism as well as glycerophospholipid metabolism pathways. Among them, PC (19:0/22:2) was displayed to increase significantly and consistently with M protein in each subtype of MM after treatment, which obviously indicated that it was related to the treatment response of MM. Further survival analysis of metabolic markers found that aspartic acid, LysoPE (16:0), SM (d18:1/17:0), PC (18:0/24:1), PC (16:0/16:0), TG (18:1/18:1/22:5) and LysoPE (18:2) reaching a certain cutoff value may be associated with shorter progression free survival (PFS). Finally, Cox multivariate regression analysis identified three factors were independent prognostic factors of MM. Moreover, there were significantly different in PC (19:0/22:2) and in aspartic acid between MM patients and healthy people.

CONCLUSION

This work identified significant metabolic disorders in 46 pairs off pre- and post-therapy MM patients, specifically in arginine, proline and glycerophospholipid pathways. The abnormal metabolites have the potential to serve as new biomarkers for evaluating treatment response and prognosis, as well as early monitoring of disease activity. Therefore, these systematic studies on abnormal metabolites as biomarkers for diagnosis and treatment will provide the evidence for future precise treatment of MM.

摘要

目的

通过超高效液相色谱串联质谱法(UPLC-MS)评估与多发性骨髓瘤(MM)患者治疗反应和预后相关的异常代谢物。

方法

本研究纳入了46例有症状的MM患者,这些患者在接受基于硼替佐米方案的靶向治疗前单克隆蛋白水平较高。对MM诊断样本和有效血清样本进行UPLC-MS以及传统免疫固定电泳检测,并使用UPLC-MS靶向与M蛋白相关的有价值的代谢标志物。根据化疗后的反应将MM患者分为治疗前(pre-T)和治疗后(post-T)组。通过免疫固定电泳在33例新诊断的MM(NDMM)、13例难治性和复发性MM(RRMM)患者以及20例健康对照(HC)的基线时可检测到单克隆蛋白。

结果

在pre-T和post-T患者之间,数据显示分别有32、28和3种不同的代谢物与IgG、IgA和轻链型MM中的M蛋白显著相关。这些鉴定出的代谢物在精氨酸和脯氨酸代谢以及甘油磷脂代谢途径中显著富集。其中,PC(19:0/22:2)在治疗后MM的各亚型中均显示与M蛋白显著且持续增加,这明显表明它与MM的治疗反应有关。对代谢标志物的进一步生存分析发现,天冬氨酸、溶血磷脂酰乙醇胺(LysoPE,16:0)、鞘磷脂(SM,d18:1/17:0)、磷脂酰胆碱(PC,18:0/24:1)、PC(16:0/16:0)、甘油三酯(TG,18:1/18:1/22:5)和LysoPE(18:2)达到一定临界值可能与无进展生存期(PFS)较短有关。最后,Cox多因素回归分析确定三个因素是MM的独立预后因素。此外,MM患者与健康人之间PC(19:0/22:2)和天冬氨酸存在显著差异。

结论

本研究确定了46对治疗前和治疗后MM患者存在显著的代谢紊乱,特别是在精氨酸、脯氨酸和甘油磷脂途径。这些异常代谢物有潜力作为评估治疗反应和预后以及疾病活动早期监测的新生物标志物。因此,这些关于异常代谢物作为诊断和治疗生物标志物的系统研究将为未来MM的精准治疗提供依据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/28e3/8919723/9ff23d20a0e5/fonc-12-808290-g001.jpg

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