Unlocking the potential of miRNAs in detecting pulmonary tuberculosis: prospects and pitfalls.

IF 4.5 2区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Expert Reviews in Molecular Medicine Pub Date : 2024-12-06 DOI:10.1017/erm.2024.29
Rakesh Arya, Surendra Kumar, Joseph M Vinetz, Jong Joo Kim, Reetika Chaurasia
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Abstract

Tuberculosis (TB) is one of the deadliest infectious diseases globally, ranking as 13th leading cause of mortality and morbidity. According to the Global Tuberculosis Report 2022, TB claimed the lives of 1.6 million people worldwide in 2021. Among the casualties, 1 870 000 individuals with HIV co-infections contributed to 6.7% of the total fatalities, accounting TB as the second most lethal infectious disease following COVID-19. In the quest to identify biomarkers for disease progression and anti-TB therapy, microRNAs (miRNAs) have gained attention due to their precise regulatory role in gene expression in disease stages and their ability to distinguish latent and active TB, enabling the development of early TB prognostic signatures. miRNAs are stable in biological fluids and therefore will be useful for non-invasive and broad sample collection. However, their inherent lack of specificity and experimental variations may lead to false-positive outcomes. These limitations can be overcome by integrating standard protocols with machine learning, presenting a novel tool for TB diagnostics and therapeutics. This review summarizes, discusses and highlights the potential of miRNAs as a biomarker, particularly their differential expression at disease stages. The review assesses the advantages and obstacles associated with miRNA-based diagnostic biomarkers in pulmonary TB and facilitates rapid, point-of-care testing.

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释放mirna检测肺结核的潜力:前景和缺陷。
结核病是全球最致命的传染病之一,在导致死亡和发病的原因中排名第13位。根据《2022年全球结核病报告》,2021年全球有160万人死于结核病。在死亡人数中,187万合并感染艾滋病毒的人占总死亡人数的6.7%,使结核病成为仅次于COVID-19的第二大致命传染病。在寻找疾病进展和抗结核治疗的生物标志物的过程中,microRNAs (miRNAs)由于其在疾病阶段对基因表达的精确调控作用以及区分潜伏性和活动性结核病的能力而受到关注,从而能够开发早期结核病预后特征。mirna在生物液体中是稳定的,因此将有助于非侵入性和广泛的样本收集。然而,它们固有的缺乏特异性和实验差异可能导致假阳性结果。通过将标准协议与机器学习相结合,可以克服这些限制,从而为结核病诊断和治疗提供一种新的工具。这篇综述总结、讨论并强调了mirna作为生物标志物的潜力,特别是它们在疾病阶段的差异表达。该综述评估了基于mirna的诊断性生物标志物在肺结核中的优势和障碍,并促进了快速的即时检测。
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来源期刊
Expert Reviews in Molecular Medicine
Expert Reviews in Molecular Medicine BIOCHEMISTRY & MOLECULAR BIOLOGY-MEDICINE, RESEARCH & EXPERIMENTAL
CiteScore
7.40
自引率
1.60%
发文量
45
期刊介绍: Expert Reviews in Molecular Medicine is an innovative online journal featuring authoritative and timely Reviews covering gene therapy, immunotherapeutics, drug design, vaccines, genetic testing, pathogenesis, microbiology, genomics, molecular epidemiology and diagnostic techniques. We especially welcome reviews on translational aspects of molecular medicine, particularly those related to the application of new understanding of the molecular basis of disease to experimental medicine and clinical practice.
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