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免疫评分模型在鉴别活动性结核病与潜伏性结核感染及监测抗结核治疗中的应用。

Application of ImmunoScore Model for the Differentiation between Active Tuberculosis and Latent Tuberculosis Infection as Well as Monitoring Anti-tuberculosis Therapy.

机构信息

Department of Laboratory Medicine, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.

Wuhan Pulmonary Hospital, Wuhan Institute for Tuberculosis Control, Wuhan, China.

出版信息

Front Cell Infect Microbiol. 2017 Oct 30;7:457. doi: 10.3389/fcimb.2017.00457. eCollection 2017.

Abstract

Tuberculosis (TB) is a leading global public health problem. To achieve the end TB strategy, non-invasive markers for diagnosis and treatment monitoring of TB disease are urgently needed, especially in high-endemic countries such as China. Interferon-gamma release assays (IGRAs) and tuberculin skin test (TST), frequently used immunological methods for TB detection, are intrinsically unable to discriminate active tuberculosis (ATB) from latent tuberculosis infection (LTBI). Thus, the specificity of these methods in the diagnosis of ATB is dependent upon the local prevalence of LTBI. The pathogen-detecting methods such as acid-fast staining and culture, all have limitations in clinical application. ImmunoScore (IS) is a new promising prognostic tool which was commonly used in tumor. However, the importance of host immunity has also been demonstrated in TB pathogenesis, which implies the possibility of using IS model for ATB diagnosis and therapy monitoring. In the present study, we focused on the performance of IS model in the differentiation between ATB and LTBI and in treatment monitoring of TB disease. We have totally screened five immunological markers (four non-specific markers and one TB-specific marker) and successfully established IS model by using Lasso logistic regression analysis. As expected, the IS model can effectively distinguish ATB from LTBI (with a sensitivity of 95.7% and a specificity of 92.1%) and also has potential value in the treatment monitoring of TB disease.

摘要

结核病(TB)是一个主要的全球公共卫生问题。为了实现终结结核病战略,迫切需要用于结核病疾病诊断和治疗监测的非侵入性标志物,特别是在中国等结核病高负担国家。干扰素-γ释放试验(IGRAs)和结核菌素皮肤试验(TST)是常用于结核病检测的免疫方法,但它们本质上无法区分活动性结核病(ATB)和潜伏性结核感染(LTBI)。因此,这些方法在 ATB 诊断中的特异性取决于 LTBI 的当地流行率。病原体检测方法,如抗酸染色和培养,在临床应用中都有局限性。ImmunoScore(IS)是一种新的有前途的肿瘤预后工具,已被广泛应用。然而,宿主免疫在结核病发病机制中的重要性也得到了证明,这意味着有可能使用 IS 模型进行 ATB 诊断和治疗监测。在本研究中,我们专注于 IS 模型在区分 ATB 和 LTBI 以及在结核病治疗监测中的性能。我们总共筛选了五个免疫标志物(四个非特异性标志物和一个 TB 特异性标志物),并通过使用 Lasso 逻辑回归分析成功建立了 IS 模型。正如预期的那样,IS 模型可以有效地将 ATB 与 LTBI 区分开来(敏感性为 95.7%,特异性为 92.1%),并且在结核病治疗监测中也具有潜在价值。

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