Zwerling Alice, Shrestha Sourya, Dowdy David W
Johns Hopkins Bloomberg School of Public Health, Baltimore, MD 21205, USA.
Adv Med. 2015;2015:907267. doi: 10.1155/2015/907267. Epub 2015 Mar 15.
As novel diagnostics, therapies, and algorithms are developed to improve case finding, diagnosis, and clinical management of patients with TB, policymakers must make difficult decisions and choose among multiple new technologies while operating under heavy resource constrained settings. Mathematical modelling can provide helpful insight by describing the types of interventions likely to maximize impact on the population level and highlighting those gaps in our current knowledge that are most important for making such assessments. This review discusses the major contributions of TB transmission models in general, namely, the ability to improve our understanding of the epidemiology of TB. We focus particularly on those elements that are important to appropriately understand the role of TB diagnosis and treatment (i.e., what elements of better diagnosis or treatment are likely to have greatest population-level impact) and yet remain poorly understood at present. It is essential for modellers, decision-makers, and epidemiologists alike to recognize these outstanding gaps in knowledge and understand their potential influence on model projections that may guide critical policy choices (e.g., investment and scale-up decisions).
随着新型诊断方法、治疗手段和算法的不断发展,旨在改善结核病患者的病例发现、诊断及临床管理,政策制定者必须在资源严重受限的情况下做出艰难决策,并在多种新技术中进行选择。数学建模能够通过描述可能对人群层面产生最大影响的干预措施类型,并突出当前知识中对进行此类评估最为重要的差距,从而提供有益的见解。本综述讨论了结核病传播模型的主要贡献,即提高我们对结核病流行病学理解的能力。我们特别关注那些对于恰当理解结核病诊断和治疗的作用至关重要的要素(即更好的诊断或治疗的哪些要素可能对人群层面产生最大影响),而目前这些要素仍未得到充分理解。对于建模者、决策者和流行病学家而言,认识到这些突出的知识差距并理解它们对可能指导关键政策选择(如投资和扩大规模决策)的模型预测的潜在影响至关重要。