Department of Medical Laboratory Sciences, College of Medicine and Health Sciences, Wollo University, Dessie, Ethiopia.
Department of Public Health, College of Health Science, Debre Tabor University, Debre Tabor, Ethiopia.
BMC Infect Dis. 2024 Sep 19;24(1):1011. doi: 10.1186/s12879-024-09915-8.
The COVID-19 pandemic has caused an unprecedented health threat globally, necessitating innovative and efficient diagnostic approaches for timely identification of infected individuals. Despite few emerging reports, the clinical utility of circulating microRNAs (miRNAs) in early and accurate diagnosis of COVID-19 is not well-evidenced. Hence, this meta-analysis aimed to explore the diagnostic potential of circulating miRNAs for COVID-19. The protocol for this study was officially recorded on PROSPERO under registration number CRD42023494959.
Electronic databases including Embase, PubMed, Scopus, and other sources were exhaustively searched to recover studies published until 16th January, 2024. Pooled specificity, sensitivity, positive likelihood ratio (PLR), negative likelihood ratio (NLR), diagnostic ratio (DOR), positive predictive value (PPV), negative predictive value (NPV), and area under the curve (AUC) were computed from the metadata using Stata 14.0 software. Risk of bias appraisal of included articles was carried out using Review Manager (Rev-Man) 5.3 package through the modified QUADAS-2 tool. Subgroup, heterogeneity, meta-regression and sensitivity analyses were undertaken. Publication bias and clinical applicability were also evaluated via Deeks' funnel plot and Fagan nomogram (scattergram), respectively.
A total of 43 studies from 13 eligible articles, involving 5175 participants (3281 COVID-19 patients and 1894 healthy controls), were analyzed. Our results depicted that miRNAs exhibit enhanced pooled specificity 0.91 (95% CI: 0.88-0.94), sensitivity 0.94 (95% CI: 0.91-0.96), DOR of 159 (95% CI: 87-288), and AUC values of 0.97 (95% CI: 0.95-0.98) with high pooled PPV 96% (95% CI: 94-97%) and NPV 88% (95% CI: 86-90%) values. Additionally, highest diagnostic capacity was observed in studies involving larger sample size (greater than 100) and those involving the African population, demonstrating consistent diagnostic effectiveness across various specimen types. Notably, a total of 12 distinct miRNAs were identified as suitable for both exclusion and confirmation of COVID-19 cases, denoting their potential clinical applicability.
Our study depicted that miRNAs show significantly high diagnostic accuracy in differentiating COVID-19 patients from healthy counterparts, suggesting their possible use as viable biomarkers. Nonetheless, thorough and wide-ranging longitudinal researches are necessary to confirm the clinical applicability of miRNAs in diagnosing COVID-19.
COVID-19 大流行在全球范围内造成了前所未有的健康威胁,因此需要创新和高效的诊断方法来及时识别感染个体。尽管有一些新的报告,但循环 microRNAs(miRNAs)在 COVID-19 的早期和准确诊断中的临床应用尚未得到充分证实。因此,本荟萃分析旨在探讨循环 miRNAs 对 COVID-19 的诊断潜力。本研究的方案已在 PROSPERO 上正式记录,注册号为 CRD42023494959。
通过 Embase、PubMed、Scopus 等电子数据库进行全面检索,以检索截至 2024 年 1 月 16 日发表的研究。使用 Stata 14.0 软件从元数据中计算合并的特异性、敏感性、阳性似然比 (PLR)、阴性似然比 (NLR)、诊断比值 (DOR)、阳性预测值 (PPV)、阴性预测值 (NPV) 和曲线下面积 (AUC)。使用修改后的 QUADAS-2 工具通过 Review Manager (Rev-Man) 5.3 包对纳入文章进行偏倚风险评估。进行了亚组分析、异质性分析、荟萃回归分析和敏感性分析。还分别通过 Deeks 漏斗图和 Fagan 列线图(散点图)评估发表偏倚和临床适用性。
共纳入 13 项合格文章中的 43 项研究,涉及 5175 名参与者(3281 名 COVID-19 患者和 1894 名健康对照者)。结果显示,miRNAs 的合并特异性为 0.91(95%CI:0.88-0.94),敏感性为 0.94(95%CI:0.91-0.96),DOR 为 159(95%CI:87-288),AUC 值为 0.97(95%CI:0.95-0.98),合并阳性预测值为 96%(95%CI:94-97%),阴性预测值为 88%(95%CI:86-90%)。此外,在纳入研究中,样本量较大(大于 100 例)和涉及非洲人群的研究中观察到最高的诊断能力,表明其在各种标本类型中具有一致的诊断效果。值得注意的是,总共确定了 12 种不同的 miRNAs 可用于排除和确认 COVID-19 病例,表明它们具有潜在的临床适用性。
本研究表明,miRNAs 在区分 COVID-19 患者与健康对照方面具有显著的高诊断准确性,提示它们可能作为可行的生物标志物使用。然而,需要进行全面和广泛的纵向研究来确认 miRNAs 在诊断 COVID-19 中的临床适用性。