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基于人群数据的模型估算:分解癌症筛查带来的死亡率降低。

Disaggregating the mortality reductions due to cancer screening: model-based estimates from population-based data.

机构信息

Department of Epidemiology, Biostatistics and Occupational Health, McGill University, 1020 Pine Ave. West, Montréal, QC, H3A 1A2, Canada.

Department of Public Health Programmes, Randers Regional Hospital, Randers, Denmark.

出版信息

Eur J Epidemiol. 2018 May;33(5):465-472. doi: 10.1007/s10654-017-0339-7. Epub 2017 Dec 5.

Abstract

The mortality impact in cancer screening trials and population programs is usually expressed as a single hazard ratio or percentage reduction. This measure ignores the number/spacing of rounds of screening, and the location in follow-up time of the averted deaths vis-a-vis the first and last screens. If screening works as intended, hazard ratios are a strong function of the two Lexis time-dimensions. We show how the number and timing of the rounds of screening can be included in a model that specifies what each round of screening accomplishes. We show how this model can be used to disaggregate the observed reductions (i.e., make them time-and screening-history specific), and to project the impact of other regimens. We use data on breast cancer screening to illustrate this model, which we had already described in technical terms in a statistical journal. Using the numbers of invitations different cohorts received, we fitted the model to the age- and follow-up-year-specific numbers of breast cancer deaths in Funen, Denmark. From November 1993 onwards, women aged 50-69 in Funen were invited to mammography screening every two years, while those in comparison regions were not. Under the proportional hazards model, the overall fitted hazard ratio was 0.82 (average reduction 18%). Using a (non-proportional-hazards) model that included the timing information, the fitted reductions ranged from 0 to 30%, being largest in those Lexis cells that had received the greatest number of invitations and where sufficient time had elapsed for the impacts to manifest. The reductions produced by cancer screening have been underestimated by inattention to their timing. By including the determinants of the hazard ratios in a regression-type model, the proposed approach provides a way to disaggregate the mortality reductions and project the reductions produced by other regimes/durations.

摘要

癌症筛查试验和人群计划中的死亡率影响通常用单一的危险比或百分比减少来表示。这种衡量方法忽略了筛查轮数和筛查间隔,以及避免的死亡相对于第一和最后一次筛查在随访时间中的位置。如果筛查按预期进行,危险比是 Lexis 时间维度的两个强烈函数。我们展示了如何在指定每轮筛查完成的内容的模型中纳入筛查轮数和时间的信息。我们展示了如何使用该模型对观察到的减少量进行细分(即,使其与时间和筛查史有关),并预测其他方案的影响。我们使用乳腺癌筛查数据来说明该模型,我们已经在统计学杂志上以技术术语描述了该模型。我们使用不同队列收到的邀请数量,根据年龄和随访年份特定的丹麦菲英岛乳腺癌死亡人数来拟合模型。从 1993 年 11 月开始,菲英岛 50-69 岁的女性每两年接受一次乳房 X 光筛查,而比较地区的女性则没有。在比例风险模型下,整体拟合的危险比为 0.82(平均减少 18%)。使用包含时间信息的(非比例风险)模型,拟合的减少量从 0 到 30%不等,在收到最多邀请且足够时间流逝以显现影响的 Lexis 单元中最大。由于忽视了筛查时间因素,癌症筛查的减少量被低估了。通过在回归模型中纳入危险比的决定因素,所提出的方法提供了一种细分死亡率减少量并预测其他方案/持续时间产生的减少量的方法。

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