Glümer C, Yuyun M, Griffin S, Farewell D, Spiegelhalter D, Kinmonth A L, Wareham N J
Medical Research Council Epidemiology Unit, Elsie Widdowson Laboratories, 120 Fulbourn Road, Cambridge, CB1 9NL, UK.
Diabetologia. 2006 Jul;49(7):1536-44. doi: 10.1007/s00125-006-0248-x. Epub 2006 Apr 26.
AIMS/HYPOTHESIS: The cost-effectiveness of screening for diabetes is unknown but has been modelled previously. None of these models has taken account of uncertainty. We aimed to describe these uncertainties in a model where the outcome was CHD risk.
Our model used population data from the Danish Inter99 study, and simulations were run in a theoretical population of 1,000,000 individuals. CHD risk was estimated using the UK Prospective Diabetes Study (UKPDS) risk engine, and risk reduction from published randomised clinical trials. Probabilistic sensitivity analysis was used to provide confidence intervals for modelled outputs. Uncertain parameter values were independently simulated from distributions derived from existing literature and deterministic sensitivity analysis performed using multiple model runs under different strategy choices and using extreme parameter estimates.
In the least conservative model (low costs and multiplicative risk reduction for combined treatments), the 95% confidence interval of the incremental cost-effectiveness ratio varied from pound23,300-82,000. The major contributors to this uncertainty were treatment risk reduction model parameters: the risk reduction for hypertension treatment and UKPDS risk model intercept. Overall cost-effectiveness ratio was not sensitive to decisions about which groups to screen, nor the costs of screening or treatment. It was strongly affected by assumptions about how treatments combine to reduce risk.
CONCLUSIONS/INTERPRETATION: Our model suggests that there is considerable uncertainty about whether or not screening for diabetes would be cost-effective. The most important but uncertain parameter is the effect of treatment. In addition to directly influencing current policy decisions, health care modelling can identify important unknown or uncertain parameters that may be the target of future research.
目的/假设:糖尿病筛查的成本效益尚不清楚,但此前已有相关模型。这些模型均未考虑不确定性因素。我们旨在构建一个以冠心病风险为结果的模型,描述这些不确定性。
我们的模型使用了丹麦Inter99研究的人群数据,并在一个理论上包含100万个体的人群中进行模拟。使用英国前瞻性糖尿病研究(UKPDS)风险引擎及已发表的随机临床试验中的风险降低数据,估算冠心病风险。采用概率敏感性分析为模型输出结果提供置信区间。从现有文献得出的分布中独立模拟不确定参数值,并在不同策略选择下使用多个模型运行以及极端参数估计进行确定性敏感性分析。
在最不保守的模型(联合治疗成本低且风险降低为乘法关系)中,增量成本效益比的95%置信区间为23,300英镑至82,000英镑。这种不确定性的主要来源是治疗风险降低模型参数:高血压治疗的风险降低以及UKPDS风险模型截距。总体成本效益比对于筛查哪些人群的决策、筛查或治疗成本均不敏感。它受到关于治疗如何联合降低风险的假设的强烈影响。
结论/解读:我们的模型表明,糖尿病筛查是否具有成本效益存在相当大的不确定性。最重要但不确定的参数是治疗效果。除了直接影响当前的政策决策外,卫生保健建模还可以识别出可能成为未来研究目标的重要未知或不确定参数。