Boianelli Alessandro, Nguyen Van Kinh, Ebensen Thomas, Schulze Kai, Wilk Esther, Sharma Niharika, Stegemann-Koniszewski Sabine, Bruder Dunja, Toapanta Franklin R, Guzmán Carlos A, Meyer-Hermann Michael, Hernandez-Vargas Esteban A
Systems Medicine of Infectious Diseases, Department of Systems Immunology and Braunschweig Integrated Centre of Systems Biology, Helmholtz Centre for Infection Research, Braunschweig 38124, Germany.
Department of Vaccinology and Applied Microbiology, Helmholtz Centre for Infection Research, Braunschweig 38124, Germany.
Viruses. 2015 Oct 12;7(10):5274-304. doi: 10.3390/v7102875.
Influenza A virus (IAV) infection represents a global threat causing seasonal outbreaks and pandemics. Additionally, secondary bacterial infections, caused mainly by Streptococcus pneumoniae, are one of the main complications and responsible for the enhanced morbidity and mortality associated with IAV infections. In spite of the significant advances in our knowledge of IAV infections, holistic comprehension of the interplay between IAV and the host immune response (IR) remains largely fragmented. During the last decade, mathematical modeling has been instrumental to explain and quantify IAV dynamics. In this paper, we review not only the state of the art of mathematical models of IAV infection but also the methodologies exploited for parameter estimation. We focus on the adaptive IR control of IAV infection and the possible mechanisms that could promote a secondary bacterial coinfection. To exemplify IAV dynamics and identifiability issues, a mathematical model to explain the interactions between adaptive IR and IAV infection is considered. Furthermore, in this paper we propose a roadmap for future influenza research. The development of a mathematical modeling framework with a secondary bacterial coinfection, immunosenescence, host genetic factors and responsiveness to vaccination will be pivotal to advance IAV infection understanding and treatment optimization.
甲型流感病毒(IAV)感染是一种全球性威胁,可引发季节性疫情和大流行。此外,主要由肺炎链球菌引起的继发性细菌感染是主要并发症之一,也是导致IAV感染相关发病率和死亡率上升的原因。尽管我们对IAV感染的认识取得了重大进展,但对IAV与宿主免疫反应(IR)之间相互作用的整体理解在很大程度上仍然支离破碎。在过去十年中,数学建模有助于解释和量化IAV动态。在本文中,我们不仅回顾了IAV感染数学模型的现状,还回顾了用于参数估计的方法。我们关注IAV感染的适应性IR控制以及可能促进继发性细菌共感染的机制。为了举例说明IAV动态和可识别性问题,我们考虑了一个解释适应性IR与IAV感染之间相互作用的数学模型。此外,在本文中我们提出了未来流感研究的路线图。开发一个包含继发性细菌共感染、免疫衰老、宿主遗传因素和疫苗接种反应性的数学建模框架对于推进IAV感染理解和治疗优化至关重要。