PPGEMN, School of Engineering, Mackenzie Presbyterian University, São Paulo 01302-907, SP, Brazil.
MackGraphe-Mackenzie Institute for Research in Graphene and Nanotechnologies, Mackenzie Presbyterian Institute, São Paulo 01302-907, SP, Brazil.
Int J Mol Sci. 2024 Nov 6;25(22):11899. doi: 10.3390/ijms252211899.
Omics approaches were extensively applied during the coronavirus disease 2019 (COVID-19) pandemic to understand the disease, identify biomarkers with diagnostic and prognostic value, and discover new molecular targets for medications. COVID-19 continues to challenge the healthcare system as the virus mutates, becoming more transmissible or adept at evading the immune system, causing resurgent epidemic waves over the last few years. In this study, we used saliva from volunteers who were negative and positive for COVID-19 when Omicron and its variants became dominant. We applied a direct solid-phase extraction approach followed by non-target metabolomics analysis to identify potential salivary signatures of hospital-recruited volunteers to establish a model for COVID-19 screening. Our model, which aimed to differentiate COVID-19-positive individuals from controls in a hospital setting, was based on 39 compounds and achieved high sensitivity (85%/100%), specificity (82%/84%), and accuracy (84%/92%) in training and validation sets, respectively. The salivary diagnostic signatures were mainly composed of amino acids and lipids and were related to a heightened innate immune antiviral response and an attenuated inflammatory profile. The higher abundance of thyrotropin-releasing hormone in the COVID-19 positive group highlighted the endocrine imbalance in low-severity disease, as first reported here, underscoring the need for further studies in this area.
在 2019 年冠状病毒病(COVID-19)大流行期间,广泛应用组学方法来了解该疾病,识别具有诊断和预后价值的生物标志物,并发现新的药物治疗分子靶点。由于病毒不断变异,变得更具传染性或更善于逃避免疫系统,在过去几年中导致疫情反复出现,COVID-19 继续对医疗系统构成挑战。在这项研究中,我们使用了 Omicron 及其变体成为优势株时 COVID-19 阴性和阳性志愿者的唾液。我们应用直接固相萃取方法,随后进行非靶向代谢组学分析,以确定招募到医院的志愿者的潜在唾液特征,从而建立 COVID-19 筛查模型。我们的模型旨在区分医院环境中 COVID-19 阳性个体与对照者,该模型基于 39 种化合物,在训练集和验证集中的灵敏度分别为 85%/100%和特异性分别为 82%/84%和准确性分别为 84%/92%。唾液诊断特征主要由氨基酸和脂质组成,与增强的先天抗病毒免疫反应和减弱的炎症特征有关。在 COVID-19 阳性组中促甲状腺激素释放激素的丰度较高,突出了这里首次报道的低严重度疾病中的内分泌失衡,强调需要在该领域进一步研究。