Papadopoulos Dimitris, Ntanasis-Stathopoulos Ioannis, Gavriatopoulou Maria, Evangelakou Zoi, Malandrakis Panagiotis, Manola Maria S, Gianniou Despoina D, Kastritis Efstathios, Trougakos Ioannis P, Dimopoulos Meletios A, Karalis Vangelis, Terpos Evangelos
Section of Pharmaceutical Technology, Department of Pharmacy, School of Health Sciences, National and Kapodistrian University of Athens, 15784 Athens, Greece.
Department of Clinical Therapeutics, School of Medicine, National and Kapodistrian University of Athens, 11528 Athens, Greece.
Biomedicines. 2022 Jan 18;10(2):204. doi: 10.3390/biomedicines10020204.
Vaccination against SARS-CoV-2 with BNT162b2 mRNA vaccine plays a critical role in COVID-19 prevention. Although BNT162b2 is highly effective against COVID-19, a time-dependent decrease in neutralizing antibodies (NAbs) is observed. The aim of this study was to identify the individual features that may predict NAbs levels after vaccination. Machine learning techniques were applied to data from 302 subjects. Principal component analysis (PCA), factor analysis of mixed data (FAMD), k-means clustering, and random forest were used. PCA and FAMD showed that younger subjects had higher levels of neutralizing antibodies than older subjects. The effect of age is strongest near the vaccination date and appears to decrease with time. Obesity was associated with lower antibody response. Gender had no effect on NAbs at nine months, but there was a modest association at earlier time points. Participants with autoimmune disease had lower inhibitory levels than participants without autoimmune disease. K-Means clustering showed the natural grouping of subjects into five categories in which the characteristics of some individuals predominated. Random forest allowed the characteristics to be ordered by importance. Older age, higher body mass index, and the presence of autoimmune diseases had negative effects on the development of NAbs against SARS-CoV-2, nine months after full vaccination.
使用BNT162b2 mRNA疫苗接种预防SARS-CoV-2在COVID-19预防中起着关键作用。尽管BNT162b2对COVID-19非常有效,但观察到中和抗体(NAbs)随时间下降。本研究的目的是确定可能预测接种疫苗后NAbs水平的个体特征。机器学习技术应用于302名受试者的数据。使用了主成分分析(PCA)、混合数据因子分析(FAMD)、k均值聚类和随机森林。PCA和FAMD显示,年轻受试者的中和抗体水平高于老年受试者。年龄的影响在接种日期附近最强,并且似乎随时间减弱。肥胖与较低的抗体反应相关。九个月时性别对NAbs没有影响,但在较早时间点有适度关联。患有自身免疫性疾病的参与者的抑制水平低于没有自身免疫性疾病的参与者。K均值聚类显示受试者自然分为五类,其中一些个体的特征占主导。随机森林可以按重要性对特征进行排序。完全接种疫苗九个月后,年龄较大、体重指数较高和患有自身免疫性疾病对针对SARS-CoV-2的NAbs产生有负面影响。