Zhou Ying, Yuan Shuofeng, To Kelvin Kai-Wang, Xu Xiaohan, Li Hongyan, Cai Jian-Piao, Luo Cuiting, Hung Ivan Fan-Ngai, Chan Kwok-Hung, Yuen Kwok-Yung, Li Yu-Feng, Chan Jasper Fuk-Woo, Sun Hongzhe
Department of Chemistry, State Key Laboratory of Synthetic Chemistry, CAS-HKU Joint Laboratory of Metallomics on Health and Environment, The University of Hong Kong Pokfulam Hong Kong Special Administrative Region China
State Key Laboratory of Emerging Infectious Diseases, Carol Yu Centre for Infection, Department of Microbiology, School of Clinical Medicine, Li Ka Shing Faculty of Medicine, The University of Hong Kong Pokfulam Hong Kong Special Administrative Region China
Chem Sci. 2022 Feb 14;13(11):3216-3226. doi: 10.1039/d1sc05852e. eCollection 2022 Mar 16.
The ongoing COVID-19 pandemic caused by SARS-CoV-2 highlights the urgent need to develop sensitive methods for diagnosis and prognosis. To achieve this, multidimensional detection of SARS-CoV-2 related parameters including virus loads, immune response, and inflammation factors is crucial. Herein, by using metal-tagged antibodies as reporting probes, we developed a multiplex metal-detection based assay (MMDA) method as a general multiplex assay strategy for biofluids. This strategy provides extremely high multiplexing capability (theoretically over 100) compared with other reported biofluid assay methods. As a proof-of-concept, MMDA was used for serologic profiling of anti-SARS-CoV-2 antibodies. The MMDA exhibits significantly higher sensitivity and specificity than ELISA for the detection of anti-SARS-CoV-2 antibodies. By integrating the high dimensional data exploration/visualization tool (tSNE) and machine learning algorithms with in-depth analysis of multiplex data, we classified COVID-19 patients into different subgroups based on their distinct antibody landscape. We unbiasedly identified anti-SARS-CoV-2-nucleocapsid IgG and IgA as the most potently induced types of antibodies for COVID-19 diagnosis, and anti-SARS-CoV-2-spike IgA as a biomarker for disease severity stratification. MMDA represents a more accurate method for the diagnosis and disease severity stratification of the ongoing COVID-19 pandemic, as well as for biomarker discovery of other diseases.
由严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引起的持续的2019冠状病毒病(COVID-19)大流行凸显了开发敏感的诊断和预后方法的迫切需求。为实现这一目标,对包括病毒载量、免疫反应和炎症因子在内的SARS-CoV-2相关参数进行多维检测至关重要。在此,通过使用金属标记抗体作为报告探针,我们开发了一种基于多重金属检测的分析方法(MMDA),作为一种用于生物流体的通用多重分析策略。与其他已报道的生物流体分析方法相比,该策略具有极高的多重检测能力(理论上超过100种)。作为概念验证,MMDA被用于抗SARS-CoV-2抗体的血清学分析。在检测抗SARS-CoV-2抗体方面,MMDA表现出比酶联免疫吸附测定(ELISA)显著更高的灵敏度和特异性。通过将高维数据探索/可视化工具(t-SNE)和机器学习算法与多重数据的深入分析相结合,我们根据COVID-19患者不同的抗体图谱将他们分为不同的亚组。我们 unbiasedly 确定抗SARS-CoV-2核衣壳IgG和IgA是COVID-19诊断中诱导最强烈的抗体类型,抗SARS-CoV-2刺突IgA是疾病严重程度分层的生物标志物。MMDA代表了一种用于正在进行的COVID-19大流行的诊断和疾病严重程度分层以及其他疾病生物标志物发现的更准确方法。 (注:“unbiasedly”这个词在上下文中可能有误,不太明确其确切含义,这里保留原文翻译。)