Adabor Emmanuel S
School of Technology, Ghana Institute of Management and Public Administration, Accra, Ghana.
Heliyon. 2021 Nov 12;7(11):e08384. doi: 10.1016/j.heliyon.2021.e08384. eCollection 2021 Nov.
An accurate assessment of antigenic similarity between influenza viruses is important for vaccine strain recommendations and influenza surveillance. Due to the mechanisms that result in frequent changes in the antigenicities of strains, it is desirable to obtain an antigenic similarity measure that accounts for specific changes in strains that are of epidemiological importance in influenza. Empirically grounded statistical models best achieve this. In this study, an interpretable machine-learning model was developed using distinguishing features of antigenic variants to analyze antigenic similarity. The features comprised of cluster information, amino acid sequences located in known antigenic and receptor-binding sites of influenza A (H3N2). In order to assess validity of parameters, accuracy and relevance of model to vaccine effectiveness, the model was applied to influenza A (H3N2) viruses due to their abundant genetic data and epidemiological relevance to influenza surveillance. An application of the model revealed that all model parameters were statistically significant to determining antigenic similarity between strains. Furthermore, upon evaluating the model for predicting antigenic similarity between strains, it achieved 95% area under Receiver Operating Characteristic curve (AUC), 94% accuracy, 76% precision, 97% specificity, 68% sensitivity and a diagnostic odds ratio (DOR) of 83.19. Above all, the model was found to be strongly related to influenza vaccine effectiveness to indicate the correlation between vaccine effectiveness and antigenic similarity between vaccine and circulating strains in an epidemic. The study predicts probabilities of antigenic similarity and estimates changes in strains that lead to antigenic variants. A successful application of the methods presented in this study would complement the global efforts in influenza surveillance.
准确评估流感病毒之间的抗原相似性对于疫苗株推荐和流感监测至关重要。由于导致毒株抗原性频繁变化的机制,需要获得一种抗原相似性度量方法,该方法能够考虑到在流感中具有流行病学重要性的毒株的特定变化。基于经验的统计模型最能实现这一点。在本研究中,利用抗原变体的显著特征开发了一种可解释的机器学习模型,以分析抗原相似性。这些特征包括聚类信息、位于甲型流感病毒(H3N2)已知抗原位点和受体结合位点的氨基酸序列。为了评估参数的有效性、模型对疫苗效力的准确性和相关性,由于甲型流感病毒(H3N2)具有丰富的遗传数据以及与流感监测的流行病学相关性,该模型被应用于甲型流感病毒(H3N2)。该模型的应用表明,所有模型参数在确定毒株之间的抗原相似性方面具有统计学意义。此外,在评估该模型预测毒株之间抗原相似性时,其受试者工作特征曲线下面积(AUC)达到95%,准确率为94%,精确率为76%,特异性为97%,灵敏度为68%,诊断比值比(DOR)为83.19。最重要的是,发现该模型与流感疫苗效力密切相关,表明在疫情中疫苗效力与疫苗株和流行毒株之间的抗原相似性之间的相关性。该研究预测了抗原相似性的概率,并估计了导致抗原变体的毒株变化。本研究中提出的方法的成功应用将补充全球流感监测工作。