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首页> 外文期刊>Journal of molecular cell biology >Personalized evaluation based on quantitative proteomics for drug-treated patients with chronic kidney disease.
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Personalized evaluation based on quantitative proteomics for drug-treated patients with chronic kidney disease.

机译:基于定量蛋白质组学的药物治疗慢性肾脏病患者的个性化评估。

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摘要

The patient's response to drug treatment is usually systems-wide based on multi-spots through either direct or indirect targets. Thus, the evaluation of the treatment cannot rely on single targeted biomarker, especially for complex diseases such as chronic kidney disease. In the present study, we performed a systems-wide analysis using proteomic approach to quantify changes in the proteomic profiles of the plasma from IgA nephropathy (IgAN) patients before and after treatment. In particular, the patient-to-health distances based on global proteome quantification before and after treatment were calculated and considered as quantitative readouts to measure patient divergences from the healthy condition. We found that the patient-to-health distance nicely correlated with the patient's response to drug treatment and long-term prognosis, which created a self-tracking platform for personalized evaluation. In addition, the steroid treatment plays a role in immunosuppression, while the Chinese Traditional Medicine (TCM) can modulate whole-body systems. Our results indicated that STC therapy normalized the proteomic profile more significantly than SA therapy. This work provides an omics-based and systematic platform for personalized evaluation of disease treatment. This strategy could help us to evaluate treatment outcomes and predict prognosis in patients with IgAN and other complex diseases.
机译:患者对药物治疗的反应通常基于直接或间接目标的多点,在整个系统范围内。因此,治疗的评估不能依靠单一的靶向生物标志物,特别是对于复杂的疾病,例如慢性肾脏疾病。在本研究中,我们使用蛋白质组学方法进行了全系统分析,以量化治疗前后IgA肾病(IgAN)患者血浆蛋白质组学特征的变化。特别是,根据治疗前后的整体蛋白质组定量计算了患者到健康的距离,并将其视为定量读数,以衡量患者与健康状况的差异。我们发现,患者到健康的距离与患者对药物治疗和长期预后的反应密切相关,从而创建了用于个性化评估的自我跟踪平台。此外,类固醇治疗在免疫抑制中起作用,而中药(TCM)可以调节全身系统。我们的结果表明,STC治疗比SA治疗更能使蛋白质组学特征正常化。这项工作为疾病治疗的个性化评估提供了基于组学的系统平台。该策略可以帮助我们评估IgAN和其他复杂疾病患者的治疗效果并预测预后。

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