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Clarifying differences in natural history between models of screening: the case of colorectal cancer.

机译:澄清筛查模型之间自然史的差异:大肠癌病例。

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BACKGROUND: Microsimulation models are important decision support tools for screening. However, their complexity makes them difficult to understand and limits realization of their full potential. Therefore, it is important to develop documentation that clarifies their structure and assumptions. The authors demonstrate this problem and explore a solution for natural history using 3 independently developed colorectal cancer screening models. METHODS: The authors first project effectiveness and cost-effectiveness of colonoscopy screening for the 3 models (CRC-SPIN, SimCRC, and MISCAN). Next, they provide a conventional presentation of each model, including information on structure and parameter values. Finally, they report the simulated reduction in clinical cancer incidence following a one-time complete removal of adenomas and preclinical cancers for each model. They call this new measure the maximum clinical incidence reduction (MCLIR). RESULTS: Projected effectiveness varies widely across models. For example, estimated mortality reduction for colonoscopy screening every 10 years from age 50 to 80 years, with surveillance in adenoma patients, ranges from 65% to 92%. Given only conventional information, it is difficult to explain these differences, largely because differences in structure make parameter values incomparable. In contrast, the MCLIR clearly shows the impact of model differences on the key feature of natural history, the dwell time of preclinical disease. Dwell times vary from 8 to 25 years across models and help explain differences in projected screening effectiveness. CONCLUSIONS: The authors propose a new measure, the MCLIR, which summarizes the implications for predicted screening effectiveness of differences in natural history assumptions. Including the MCLIR in the standard description of a screening model would improve the transparency of these models.
机译:背景:微观仿真模型是用于筛选的重要决策支持工具。但是,它们的复杂性使它们难以理解,并限制了其全部潜力的实现。因此,开发文档以阐明其结构和假设很重要。作者演示了这个问题,并使用3种独立开发的结肠直肠癌筛查模型探索了自然史解决方案。方法:作者首先计划对三种模型(CRC-SPIN,SimCRC和MISCAN)进行结肠镜检查的有效性和成本效益。接下来,它们提供了每个模型的常规表示形式,包括有关结构和参数值的信息。最后,他们报告了针对每种模型一次性完全去除腺瘤和临床前癌症后,临床癌症发病率的模拟下降。他们称此新措施为最大的临床发病率降低(MCLIR)。结果:不同模型的预期效果差异很大。例如,从50岁到80岁每10年进行一次结肠镜检查所估计的死亡率降低(在腺瘤患者中进行监测)范围从65%到92%。仅给出常规信息,很难解释这些差异,主要是因为结构差异使参数值无法比拟。相反,MCLIR清楚地表明了模型差异对自然史的关键特征,临床前疾病的停留时间的影响。不同模型的保压时间从8年到25年不等,有助于解释预计的筛查效果的差异。结论:作者提出了一种新的测量方法,即MCLIR,该方法总结了自然历史假设差异对预测筛选效果的影响。在筛查模型的标准描述中包括MCLIR将提高这些模型的透明度。

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