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Bayesian inference for comorbid disease risks using marginal disease risks and correlation information from a separate source.

机译:使用边际疾病风险和来自单独来源的相关信息,贝叶斯推断出合并症的风险。

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BACKGROUND: Public health interventions are increasingly being evaluated for their cost-effectiveness. Such interventions act 'upstream' on the determinants of ill health and commonly reduce the incidence of several diseases. Diseases that share determinants are usually correlated at an individual level, which we observe as comorbidity. This paper is motivated by the problem of estimating comorbid disease state risks when only single disease risk estimates are available. METHODS: A case study is presented based on a physical activity cost-effectiveness model. The correlation between the risk of coronary heart disease, stroke and diabetes is estimated from cross sectional data using a Bayesian multivariate probit model. This is then combined with disease specific marginal baseline risks and intervention effects to give comorbid disease state risks. The expected numbers of QALYs gained through avoiding the comorbid states is estimated from disease specific utility data under a range of assumptions. Finally, the incremental benefit of physical activity is calculated under these utility assumptions. The difference in incremental benefit due to the intervention's impact on reducing or increasing the disease risk correlations is explored in a sensitivity analysis. RESULTS: If comorbidity is not taken into account, incremental benefit is overestimated compared with all scenarios in which the comorbidity is included in the model. Overestimation is greatest when physical activity is assumed to reduce disease state co-occurrence as well as disease risk. CONCLUSIONS: The proposed method reduces overestimation of benefit and allows the sensitivity to different assumptions about the correlation between disease risks to be determined.
机译:背景:公共卫生干预措施的成本效益正在不断得到评估。这些干预措施是疾病健康决定因素的“上游”措施,通常可以减少几种疾病的发生率。共享决定因素的疾病通常在个体水平上相关,我们将其视为合并症。本文的目的是在只有单一疾病风险估计数的情况下估计共病疾病状态风险。方法:基于体育锻炼成本效益模型提出了一个案例研究。冠心病,中风和糖尿病风险之间的相关性是使用贝叶斯多元概率模型从横截面数据估算得出的。然后,将其与特定于疾病的边际基线风险和干预效果相结合,以给出并存的疾病状态风险。在一系列假设下,根据疾病特定的效用数据估算了通过避免合并症获得的QALY的预期数量。最后,在这些效用假设下计算了体育锻炼的增量收益。在敏感性分析中探讨了由于干预措施对减少或增加疾病风险相关性的影响而带来的增量收益差异。结果:如果不考虑合并症,与模型中包括合并症的所有情况相比,增量收益被高估了。当假设进行体育锻炼以减少疾病状态的同时发生以及疾病风险时,高估就最大。结论:所提出的方法减少了利益的高估,并允许确定关于疾病风险之间相关性的不同假设的敏感性。

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