Ma Qing-Lan, Huang Fei-Ming, Guo Wei, Feng Kai-Yan, Huang Tao, Cai Yu-Dong
School of Life Sciences, Shanghai University, Shanghai 200444, China.
Key Laboratory of Stem Cell Biology, Shanghai Jiao Tong University School of Medicine (SJTUSM) & Shanghai Institutes for Biological Sciences (SIBS), Chinese Academy of Sciences (CAS), Shanghai 200030, China.
Life (Basel). 2023 May 31;13(6):1304. doi: 10.3390/life13061304.
Vaccines trigger an immunological response that includes B and T cells, with B cells producing antibodies. SARS-CoV-2 immunity weakens over time after vaccination. Discovering key changes in antigen-reactive antibodies over time after vaccination could help improve vaccine efficiency. In this study, we collected data on blood antibody levels in a cohort of healthcare workers vaccinated for COVID-19 and obtained 73 antigens in samples from four groups according to the duration after vaccination, including 104 unvaccinated healthcare workers, 534 healthcare workers within 60 days after vaccination, 594 healthcare workers between 60 and 180 days after vaccination, and 141 healthcare workers over 180 days after vaccination. Our work was a reanalysis of the data originally collected at Irvine University. This data was obtained in Orange County, California, USA, with the collection process commencing in December 2020. British variant (B.1.1.7), South African variant (B.1.351), and Brazilian/Japanese variant (P.1) were the most prevalent strains during the sampling period. An efficient machine learning based framework containing four feature selection methods (least absolute shrinkage and selection operator, light gradient boosting machine, Monte Carlo feature selection, and maximum relevance minimum redundancy) and four classification algorithms (decision tree, k-nearest neighbor, random forest, and support vector machine) was designed to select essential antibodies against specific antigens. Several efficient classifiers with a weighted F1 value around 0.75 were constructed. The antigen microarray used for identifying antibody levels in the coronavirus features ten distinct SARS-CoV-2 antigens, comprising various segments of both nucleocapsid protein (NP) and spike protein (S). This study revealed that S1 + S2, S1.mFcTag, S1.HisTag, S1, S2, Spike.RBD.His.Bac, Spike.RBD.rFc, and S1.RBD.mFc were most highly ranked among all features, where S1 and S2 are the subunits of Spike, and the suffixes represent the tagging information of different recombinant proteins. Meanwhile, the classification rules were obtained from the optimal decision tree to explain quantitatively the roles of antigens in the classification. This study identified antibodies associated with decreased clinical immunity based on populations with different time spans after vaccination. These antibodies have important implications for maintaining long-term immunity to SARS-CoV-2.
疫苗会引发包括B细胞和T细胞的免疫反应,其中B细胞会产生抗体。接种疫苗后,针对严重急性呼吸综合征冠状病毒2(SARS-CoV-2)的免疫力会随着时间减弱。发现接种疫苗后抗原反应性抗体随时间的关键变化,可能有助于提高疫苗效率。在这项研究中,我们收集了一组接种过新冠病毒疫苗的医护人员的血液抗体水平数据,并根据接种后的时长将样本分为四组,获取了73种抗原的数据,这四组包括104名未接种疫苗的医护人员、534名接种疫苗后60天内的医护人员、594名接种疫苗后60至180天的医护人员以及141名接种疫苗后超过180天的医护人员。我们的工作是对最初在欧文大学收集的数据进行重新分析。这些数据是在美国加利福尼亚州奥兰治县获取的,收集工作于2020年12月开始。英国变种(B.1.1.7)、南非变种(B.1.351)以及巴西/日本变种(P.1)是采样期间最普遍的毒株。设计了一个基于机器学习的高效框架,该框架包含四种特征选择方法(最小绝对收缩和选择算子、轻梯度提升机、蒙特卡罗特征选择以及最大相关最小冗余)和四种分类算法(决策树、k近邻、随机森林和支持向量机),用于选择针对特定抗原的关键抗体。构建了几个加权F1值约为0.75的高效分类器。用于识别冠状病毒中抗体水平的抗原微阵列包含十种不同的SARS-CoV-2抗原,包括核衣壳蛋白(NP)和刺突蛋白(S)的各个片段。这项研究表明,在所有特征中,S1 + S2、S1.mFc标签、S1.His标签、S1、S2、Spike.RBD.His.Bac、Spike.RBD.rFc和S1.RBD.mFc的排名最高,其中S1和S2是刺突蛋白的亚基,后缀代表不同重组蛋白的标签信息。同时,从最优决策树中获得分类规则,以定量解释抗原在分类中的作用。这项研究基于接种疫苗后不同时间跨度的人群,确定了与临床免疫力下降相关的抗体。这些抗体对于维持对SARS-CoV-2的长期免疫力具有重要意义。