White Peter J, Abubakar Ibrahim
MRC Centre for Outbreak Analysis and Modelling and NIHR Health Protection Research Unit in Modelling Methodology, Imperial College London School of Public HealthLondon, UK; Modelling and Economics Unit, Centre for Infectious Disease Surveillance and Control, Public Health EnglandLondon, UK.
TB Section, Respiratory Diseases Department, Centre for Infectious Disease Surveillance and Control, Public Health EnglandLondon, UK; Research Department of Infection and Population Health, University College LondonLondon, UK; MRC Clinical Trials Unit, University College LondonLondon, UK.
Front Microbiol. 2016 May 3;7:394. doi: 10.3389/fmicb.2016.00394. eCollection 2016.
Tuberculosis control and elimination remains a challenge for public health even in low-burden countries. New technology and novel approaches to case-finding, diagnosis, and treatment are causes for optimism but they need to be used cost-effectively. This in turn requires improved understanding of the epidemiology of TB and analysis of the effectiveness and cost-effectiveness of different interventions. We describe the contribution that mathematical modeling can make to understanding epidemiology and control of TB in different groups, guiding improved approaches to public health interventions. We emphasize that modeling is not a substitute for collecting data but rather is complementary to empirical research, helping determine what are the key questions to address to maximize the public-health impact of research, helping to plan studies, and making maximal use of available data, particularly from surveillance, and observational studies. We provide examples of how modeling and related empirical research inform policy and discuss how a combination of these approaches can be used to address current questions of key importance, including use of whole-genome sequencing, screening and treatment for latent infection, and combating drug resistance.
即使在低负担国家,结核病控制和消除仍是公共卫生面临的一项挑战。用于病例发现、诊断和治疗的新技术及新方法带来了乐观前景,但必须以具有成本效益的方式加以应用。而这反过来又需要更好地了解结核病流行病学,并分析不同干预措施的有效性和成本效益。我们阐述了数学建模在理解不同人群中结核病流行病学及控制方面所能发挥的作用,以及如何指导改进公共卫生干预措施。我们强调,建模并非收集数据的替代品,而是对实证研究的补充,有助于确定为使研究对公共卫生产生最大影响而需解决的关键问题,有助于规划研究,并最大限度地利用现有数据,尤其是来自监测和观察性研究的数据。我们举例说明建模及相关实证研究如何为政策提供信息,并讨论如何结合使用这些方法来解决当前至关重要的问题,包括全基因组测序的应用、潜伏感染的筛查和治疗以及抗击耐药性。