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首页> 外文期刊>Journal of International Medical Research >Serum proteomic analysis of Mycobacterium tuberculosis antigens for discriminating active tuberculosis from latent infection
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Serum proteomic analysis of Mycobacterium tuberculosis antigens for discriminating active tuberculosis from latent infection

机译:<斜斜体结核分枝杆菌的血清蛋白质组学分析抗原与潜伏感染的抗原活性结核病

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摘要

Objective Serum proteomic analysis of tuberculosis (TB) antigens to identify biomarkers enabling discrimination of active TB (ATB) from latent TB infection (LTBI). Methods Serum samples from patients with ATB, individuals with LTBI and healthy controls (HCs) were used to probe proteome microarrays. Based on signal intensities of IgG and IgM antibodies, 100 TB proteins were selected for fabrication of mini-protein microarrays, which were then used to screen 204 serum samples. Results Proteome microarray analyses showed that 58 IgG or IgM specific antibodies were significantly more abundant in ATB patients than in individuals with LTBI or HCs. Serological evaluation of mini-protein microarrays demonstrated that average levels of 15 specific antibodies were higher in ATB patients than in individuals with LTBI or HCs. This combination of 15 TB serum biomarkers had a sensitivity of 85.4% and specificity of 90.3% in discriminating ATB from LTBI. Conclusion Combinations of serum biomarkers can offer improved diagnostic performance in discriminating ATB from LTBI. Five biomarkers (MT1560.1, Rv0049, Rv0270, Rv1597 and Rv3480c) associated with ATB induced stronger IgM responses in these patients.
机译:客观血清结核(TB)抗原的血清蛋白质组学分析,鉴定潜伏TB感染(LTBI)辨别活性TB(atb)的生物标志物。方法采用患病患者的血清样品,患有LTBI和健康对照(HCS)的个体探测蛋白质组微阵列。基于IgG和IgM抗体的信号强度,选择100 TB蛋白质用于制备迷你蛋白质微阵列,然后用于筛选204个血清样品。结果蛋白质组微阵列分析表明,ATB患者的58个IgG或IgM特异性抗体显着越来越丰富,而不是用LTBI或HCS中的个体。微型蛋白质微阵列的血清学评估表明,在患有LTBI或HCs的个体中,ATB患者的平均水平的15个特异性抗体水平较高。 15 TB血清生物标志物的这种组合具有85.4%的敏感性,并且在LTBI鉴别ATB时敏感度为90.3%。结论血清生物标志物的组合可以提高来自LTBI的鉴别atb的改善诊断性能。五个生物标志物(MT1560.1,RV0049,RV0270,RV1597和RV3480C)与ATB诱导这些患者中的较强的IgM反应。

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