Plasma metabolites and inflammatory proteins profiling predict outcome of Fufang Duzhong Jiangu granules treating Kashin–Beck disease

IF 1.8 4区 医学 Q4 BIOCHEMICAL RESEARCH METHODS
Xingxing Deng, Hui Niu, Qian Zhang, Jinfeng Wen, Yijun Zhao, Gaowa Naren, Huan Liu, Xiong Guo, Feng Zhang, Cuiyan Wu
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引用次数: 0

Abstract

To investigate predictive biomarkers that could be used to identify patients’ response to treatment, plasma metabolomics and proteomics analyses were performed in Kashin–Beck disease (KBD) patients treated with Fufang Duzhong Jiangu Granules (FDJG). Plasma was collected from 12 KBD patients before treatment and 1 month after FDJG treatment. LC–MS and olink proteomics were employed for obtaining plasma metabolomics profiling and inflammatory protein profiles. Patients were classified into responders and non-responders based on drug efficacy. Enrichment analyses of differential metabolites and proteins of the responders at baseline and after treatment were conducted to study the mechanism of drug action. Differential metabolites and proteins between the two groups were screened as biomarkers to predict the drug efficacy. The receiver operating characteristic curve was used to evaluate the prediction accuracy of biomarkers. The changes in metabolites and inflammatory proteins in responders after treatment reflected the mechanism of FDJG treatment for KBD, which may act on glycerophospholipid metabolism, d-glutamine and d-glutamate metabolism, nitrogen metabolism and NF-kappa B signaling pathway. Three metabolites were identified as potential predictors: N-undecanoylglycine, β-aminopropionitrile and PC [18:3(6Z,9Z,12Z)/20:4(8Z,11Z,14Z,17Z)]. For inflammatory protein, interleukin-8 was identified as a predictive biomarker to detect responders. Combined use of these four biomarkers had high predictive ability (area under the curve = 0.972).

血浆代谢物和炎症蛋白图谱预测复方杜仲健骨颗粒治疗卡欣贝克病的疗效
为了研究可用于识别患者治疗反应的预测性生物标志物,研究人员对接受复方杜仲化痰颗粒(FDJG)治疗的卡欣贝克病(KBD)患者进行了血浆代谢组学和蛋白质组学分析。研究收集了 12 名 KBD 患者治疗前和治疗后 1 个月的血浆。采用 LC-MS 和 olink 蛋白组学方法获得血浆代谢组学图谱和炎症蛋白图谱。根据药物疗效将患者分为应答者和非应答者。对应答者在基线和治疗后的不同代谢物和蛋白质进行了富集分析,以研究药物的作用机制。两组之间的差异代谢物和蛋白质被筛选为预测药物疗效的生物标志物。采用接收者操作特征曲线来评估生物标志物的预测准确性。治疗后应答者代谢物和炎症蛋白的变化反映了FDJG治疗KBD的机制,它可能作用于甘油磷脂代谢、d-谷氨酰胺和d-谷氨酸代谢、氮代谢和NF-kappa B信号通路。有三种代谢物被确定为潜在的预测因子:N-十一碳酰甘氨酸、β-氨基丙腈和 PC [18:3(6Z,9Z,12Z)/20:4(8Z,11Z,14Z,17Z)]。在炎症蛋白方面,白细胞介素-8 被确定为检测应答者的预测性生物标志物。综合使用这四种生物标志物具有很高的预测能力(曲线下面积 = 0.972)。
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来源期刊
Biomedical Chromatography
Biomedical Chromatography 生物-分析化学
CiteScore
3.60
自引率
5.60%
发文量
268
审稿时长
2.3 months
期刊介绍: Biomedical Chromatography is devoted to the publication of original papers on the applications of chromatography and allied techniques in the biological and medical sciences. Research papers and review articles cover the methods and techniques relevant to the separation, identification and determination of substances in biochemistry, biotechnology, molecular biology, cell biology, clinical chemistry, pharmacology and related disciplines. These include the analysis of body fluids, cells and tissues, purification of biologically important compounds, pharmaco-kinetics and sequencing methods using HPLC, GC, HPLC-MS, TLC, paper chromatography, affinity chromatography, gel filtration, electrophoresis and related techniques.
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