季节性流感
病毒学
生物
2019年冠状病毒病(COVID-19)
医学
内科学
传染病(医学专业)
疾病
作者
Yilin Chen,Feng Tang,Zicheng Cao,Jinfeng Zeng,Zekai Qiu,Chi Zhang,Haoyu Long,Pei‐Wen Cheng,Qianru Sun,Wenjie Han,Kang Tang,Jing Tang,Yang Zhao,Dechao Tian,Xiangjun Du
标识
DOI:10.1016/j.jiph.2024.04.024
摘要
The prevalence of different types/subtypes varies across seasons and countries for seasonal influenza viruses, indicating underlying interactions between types/subtypes. The global interaction patterns and determinants for seasonal influenza types/subtypes need to be explored. Influenza epidemiological surveillance data, as well as multidimensional data that include population-related, environment-related, and virus-related factors from 55 countries worldwide were used to explore type/subtype interactions based on Spearman correlation coefficient. The machine learning method Extreme Gradient Boosting (XGBoost) and interpretable framework SHapley Additive exPlanation (SHAP) were utilized to quantify contributing factors and their effects on interactions among influenza types/subtypes. Additionally, causal relationships between types/subtypes were also explored based on Convergent Cross-mapping (CCM). A consistent globally negative correlation exists between influenza A/H3N2 and A/H1N1. Meanwhile, interactions between influenza A (H3N2/H1N1) and B show significant differences across countries, primarily influenced by population-related factors. Influenza A has a stronger driving force than influenza B, and A/H3N2 has a stronger driving force than A/H1N1. The research elucidated the globally complex and heterogeneous interaction patterns among influenza type/subtypes, identifying key factors shaping their interactions. This sheds light on better seasonal influenza prediction and model construction, informing targeted prevention strategies and ultimately reducing the global burden of seasonal influenza.
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