Christopher Jackson, Belen Zapata-Diomedi, James Woodcock
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引用次数: 0
摘要
一种广泛使用的确定公共卫生干预措施对健康的长期影响的模型通常被称为 "多州生命表",它需要按年龄和性别估算多种疾病的发病率、病死率,有时还需要估算缓解率。一般来说,并非每种疾病和每种环境都有发病率和病死率的直接数据。例如,我们可能知道的是人口死亡率和患病率,而不是病例死亡率和发病率。本文提出了贝叶斯连续时间多状态模型,用于估计基于不完整数据的疾病状态之间的转换率。该模型建立在以往方法的基础上,使用了具有透明数据生成假设的正式统计模型,同时提供了易于使用的 R 软件包。不同年龄和地区人群的比率可以通过样条或层次模型灵活地联系起来。以前的方法也得到了扩展,允许通过日历时间呈现特定年龄的趋势。根据全球疾病负担研究的发病率、流行率和死亡率数据,该模型可用于估算英格兰城市地区多种疾病的病死率。估算结果可用于建立与这些疾病和地区相关的健康影响模型。我们对不同的发病率假设进行了比较,并检查了不同数据来源的影响。
Bayesian multistate modelling of incomplete chronic disease burden data.
A widely-used model for determining the long-term health impacts of public health interventions, often called a "multistate lifetable", requires estimates of incidence, case fatality, and sometimes also remission rates, for multiple diseases by age and gender. Generally, direct data on both incidence and case fatality are not available in every disease and setting. For example, we may know population mortality and prevalence rather than case fatality and incidence. This paper presents Bayesian continuous-time multistate models for estimating transition rates between disease states based on incomplete data. This builds on previous methods by using a formal statistical model with transparent data-generating assumptions, while providing accessible software as an R package. Rates for people of different ages and areas can be related flexibly through splines or hierarchical models. Previous methods are also extended to allow age-specific trends through calendar time. The model is used to estimate case fatality for multiple diseases in the city regions of England, based on incidence, prevalence and mortality data from the Global Burden of Disease study. The estimates can be used to inform health impact models relating to those diseases and areas. Different assumptions about rates are compared, and we check the influence of different data sources.
期刊介绍:
Series A (Statistics in Society) publishes high quality papers that demonstrate how statistical thinking, design and analyses play a vital role in all walks of life and benefit society in general. There is no restriction on subject-matter: any interesting, topical and revelatory applications of statistics are welcome. For example, important applications of statistical and related data science methodology in medicine, business and commerce, industry, economics and finance, education and teaching, physical and biomedical sciences, the environment, the law, government and politics, demography, psychology, sociology and sport all fall within the journal''s remit. The journal is therefore aimed at a wide statistical audience and at professional statisticians in particular. Its emphasis is on well-written and clearly reasoned quantitative approaches to problems in the real world rather than the exposition of technical detail. Thus, although the methodological basis of papers must be sound and adequately explained, methodology per se should not be the main focus of a Series A paper. Of particular interest are papers on topical or contentious statistical issues, papers which give reviews or exposés of current statistical concerns and papers which demonstrate how appropriate statistical thinking has contributed to our understanding of important substantive questions. Historical, professional and biographical contributions are also welcome, as are discussions of methods of data collection and of ethical issues, provided that all such papers have substantial statistical relevance.