论文标题
链接地统计图和传输模型的统计方法:东非淋巴丝虫病的应用
Statistical methods for linking geostatistical maps and transmission models: Application to lymphatic filariasis in East Africa
论文作者
论文摘要
传染病仍然是人类死亡和痛苦的主要原因之一。数学模型已被建立为捕获推动疾病传播的特征,预测流行病的发展,从而指导控制疾病的策略的发展。流行病学兴趣的另一个重要领域是开发地统计学方法,用于分析来自空间引用的患病率调查的数据。患病率的地图是有用的,不仅用于实现更精确的疾病风险分层,还可以通过识别受影响的地区来指导更可靠的空间控制计划。尽管在每个领域都取得了方法论的进步,但链接传输模型和地统计图的努力受到限制。在这一事实中,我们开发了一种贝叶斯方法,该方法将疾病患病率的细尺度地统计图与传播模型相结合,以提供对控制计划对疾病的当前和未来影响的定量,空间上明确的预测。然后,这些估计值可以在地方层面使用,以确定建议的干预方案的有效性并允许研究替代策略。该方法已应用于东非的淋巴丝虫病,以估计不同干预策略对疾病的影响。
Infectious diseases remain one of the major causes of human mortality and suffering. Mathematical models have been established as an important tool for capturing the features that drive the spread of the disease, predicting the progression of an epidemic and hence guiding the development of strategies to control it. Another important area of epidemiological interest is the development of geostatistical methods for the analysis of data from spatially referenced prevalence surveys. Maps of prevalence are useful, not only for enabling a more precise disease risk stratification, but also for guiding the planning of more reliable spatial control programmes by identifying affected areas. Despite the methodological advances that have been made in each area independently, efforts to link transmission models and geostatistical maps have been limited. Motivated by this fact, we developed a Bayesian approach that combines fine-scale geostatistical maps of disease prevalence with transmission models to provide quantitative, spatially explicit projections of the current and future impact of control programs against a disease. These estimates can then be used at a local level to identify the effectiveness of suggested intervention schemes and allow investigation of alternative strategies. The methodology has been applied to lymphatic filariasis in East Africa to provide estimates of the impact of different intervention strategies against the disease.